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- #LyX 2.3 created this file. For more info see http://www.lyx.org/
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- \end_header
- \begin_body
- \begin_layout Title
- Bioinformatic analysis of complex, high-throughput genomic and epigenomic
- data in the context of immunology and transplant rejection
- \end_layout
- \begin_layout Author
- A thesis presented
- \begin_inset Newline newline
- \end_inset
- by
- \begin_inset Newline newline
- \end_inset
- Ryan C.
- Thompson
- \begin_inset Newline newline
- \end_inset
- to
- \begin_inset Newline newline
- \end_inset
- The Scripps Research Institute Graduate Program
- \begin_inset Newline newline
- \end_inset
- in partial fulfillment of the requirements for the degree of
- \begin_inset Newline newline
- \end_inset
- Doctor of Philosophy in the subject of Biology
- \begin_inset Newline newline
- \end_inset
- for
- \begin_inset Newline newline
- \end_inset
- The Scripps Research Institute
- \begin_inset Newline newline
- \end_inset
- La Jolla, California
- \end_layout
- \begin_layout Date
- May 2019
- \end_layout
- \begin_layout Standard
- [Copyright notice]
- \end_layout
- \begin_layout Standard
- [Thesis acceptance form]
- \end_layout
- \begin_layout Standard
- [Dedication]
- \end_layout
- \begin_layout Standard
- [Acknowledgements]
- \end_layout
- \begin_layout Standard
- \begin_inset CommandInset toc
- LatexCommand tableofcontents
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset FloatList table
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset FloatList figure
- \end_inset
- \end_layout
- \begin_layout Standard
- [List of Abbreviations]
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Look into auto-generated nomenclature list: https://wiki.lyx.org/Tips/Nomenclature
- \end_layout
- \end_inset
- \end_layout
- \begin_layout List of TODOs
- \end_layout
- \begin_layout Standard
- [Abstract]
- \end_layout
- \begin_layout Chapter*
- Abstract
- \end_layout
- \begin_layout Chapter
- Introduction
- \end_layout
- \begin_layout Section
- Background & Significance
- \end_layout
- \begin_layout Subsection
- Biological motivation
- \end_layout
- \begin_layout Itemize
- Rejection is the major long-term threat to organ and tissue grafts
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Common mechanisms of rejection
- \end_layout
- \begin_layout Itemize
- Effective immune suppression requires monitoring for rejection and tuning
-
- \end_layout
- \begin_layout Itemize
- Current tests for rejection (tissue biopsy) are invasive and biased
- \end_layout
- \begin_layout Itemize
- A blood test based on microarrays would be less biased and invasive
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Memory cells are resistant to immune suppression
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Mechanisms of resistance in memory cells are poorly understood
- \end_layout
- \begin_layout Itemize
- A better understanding of immune memory formation is needed
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Mesenchymal stem cell infusion is a promising new treatment to prevent/delay
- rejection
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Demonstrated in mice, but not yet in primates
- \end_layout
- \begin_layout Itemize
- Mechanism currently unknown, but MSC are known to be immune modulatory
- \end_layout
- \end_deeper
- \begin_layout Subsection
- Overview of bioinformatic analysis methods
- \end_layout
- \begin_layout Standard
- An overview of all the methods used, including what problem they solve,
- what assumptions they make, and a basic description of how they work.
- \end_layout
- \begin_layout Itemize
- ChIP-seq Peak calling
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Cross-correlation analysis to determine fragment size
- \end_layout
- \begin_layout Itemize
- Broad vs narrow peaks
- \end_layout
- \begin_layout Itemize
- SICER for broad peaks
- \end_layout
- \begin_layout Itemize
- IDR for biologically reproducible peaks
- \end_layout
- \begin_layout Itemize
- csaw peak filtering guidelines for unbiased downstream analysis
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Normalization is non-trivial and application-dependant
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Expression arrays: RMA & fRMA; why fRMA is needed
- \end_layout
- \begin_layout Itemize
- Methylation arrays: M-value transformation approximates normal data but
- induces heteroskedasticity
- \end_layout
- \begin_layout Itemize
- RNA-seq: normalize based on assumption that the average gene is not changing
- \end_layout
- \begin_layout Itemize
- ChIP-seq: complex with many considerations, dependent on experimental methods,
- biological system, and analysis goals
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Limma: The standard linear modeling framework for genomics
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- empirical Bayes variance modeling: limma's core feature
- \end_layout
- \begin_layout Itemize
- edgeR & DESeq2: Extend with negative bonomial GLM for RNA-seq and other
- count data
- \end_layout
- \begin_layout Itemize
- voom: Extend with precision weights to model mean-variance trend
- \end_layout
- \begin_layout Itemize
- arrayWeights and duplicateCorrelation to handle complex variance structures
- \end_layout
- \end_deeper
- \begin_layout Itemize
- sva and ComBat for batch correction
- \end_layout
- \begin_layout Itemize
- Factor analysis: PCA, MDS, MOFA
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Batch-corrected PCA is informative, but careful application is required
- to avoid bias
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Gene set analysis: camera and SPIA
- \end_layout
- \begin_layout Section
- Innovation
- \end_layout
- \begin_layout Itemize
- MSC infusion to improve transplant outcomes (prevent/delay rejection)
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Characterize MSC response to interferon gamma
- \end_layout
- \begin_layout Itemize
- IFN-g is thought to stimulate their function
- \end_layout
- \begin_layout Itemize
- Test IFN-g treated MSC infusion as a therapy to delay graft rejection in
- cynomolgus monkeys
- \end_layout
- \begin_layout Itemize
- Monitor animals post-transplant using blood RNA-seq at serial time points
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Investigate dynamics of histone marks in CD4 T-cell activation and memory
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Previous studies have looked at single snapshots of histone marks
- \end_layout
- \begin_layout Itemize
- Instead, look at changes in histone marks across activation and memory
- \end_layout
- \end_deeper
- \begin_layout Itemize
- High-throughput sequencing and microarray technologies
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Powerful methods for assaying gene expression and epigenetics across entire
- genomes
- \end_layout
- \begin_layout Itemize
- Proper analysis requires finding and exploiting systematic genome-wide trends
- \end_layout
- \end_deeper
- \begin_layout Chapter
- Reproducible genome-wide epigenetic analysis of H3K4 and H3K27 methylation
- in naive and memory CD4 T-cell activation
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Author list: Me, Sarah, Dan
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Section
- Approach
- \end_layout
- \begin_layout Itemize
- CD4 T-cells are central to all adaptive immune responses and memory
- \end_layout
- \begin_layout Itemize
- H3K4 and H3K27 methylation are major epigenetic regulators of gene expression
- \end_layout
- \begin_layout Itemize
- Canonically, H3K4 is activating and H3K27 is inhibitory, but the reality
- is complex
- \end_layout
- \begin_layout Itemize
- Looking at these marks during CD4 activation and memory should reveal new
- mechanistic details
- \end_layout
- \begin_layout Itemize
- Test
- \begin_inset Quotes eld
- \end_inset
- poised promoter
- \begin_inset Quotes erd
- \end_inset
- hypothesis in which H3K4 and H3K27 are both methylated
- \end_layout
- \begin_layout Itemize
- Expand scope of analysis beyond simple promoter counts
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Analyze peaks genome-wide, including in intergenic regions
- \end_layout
- \begin_layout Itemize
- Analysis of coverage distribution shape within promoters, e.g.
- upstream vs downstream coverage
- \end_layout
- \end_deeper
- \begin_layout Section
- Methods
- \end_layout
- \begin_layout Itemize
- Re-analyze previously published CD4 ChIP-seq & RNA-seq data
- \begin_inset CommandInset citation
- LatexCommand cite
- key "LaMere2016,Lamere2017"
- literal "true"
- \end_inset
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Completely reimplement analysis from scratch as a reproducible workflow
- \end_layout
- \begin_layout Itemize
- Use newly published methods & algorithms not available during the original
- analysis: SICER, csaw, MOFA, ComBat, sva, GREAT, and more
- \end_layout
- \end_deeper
- \begin_layout Itemize
- SICER, IDR, csaw, & GREAT to call ChIP-seq peaks genome-wide, perform differenti
- al abundance analysis, and relate those peaks to gene expression
- \end_layout
- \begin_layout Itemize
- Promoter counts in sliding windows around each gene's highest-expressed
- TSS to investigate coverage distribution within promoters
- \end_layout
- \begin_layout Section
- Results
- \end_layout
- \begin_layout Standard
- \begin_inset Note Note
- status open
- \begin_layout Plain Layout
- Focus on what hypotheses were tested, then select figures that show how
- those hypotheses were tested, even if the result is a negative.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Subsection
- H3K4 and H3K27 methylation occur in broad regions and are enriched near
- promoters
- \end_layout
- \begin_layout Itemize
- Figures comparing MACS (non-broad peak caller) to SICER/epic (broad peak
- caller)
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Compare peak sizes and number of called peaks
- \end_layout
- \begin_layout Itemize
- Show representative IDR consistency plots for both
- \end_layout
- \end_deeper
- \begin_layout Itemize
- IDR analysis shows that SICER-called peaks are much more reproducible between
- biological replicates
- \end_layout
- \begin_layout Itemize
- Each histone mark is enriched within a certain radius of gene TSS positions,
- but that radius is different for each mark (figure)
- \end_layout
- \begin_layout Subsection
- RNA-seq has a large confounding batch effect
- \end_layout
- \begin_layout Itemize
- RNA-seq batch effect can be partially corrected, but still induces uncorrectable
- biases in downstream analysis
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Figure showing MDS plot before & after ComBat
- \end_layout
- \begin_layout Itemize
- Figure relating sample weights to batches, cell types, time points, etc.,
- showing that one batch is significantly worse quality
- \end_layout
- \begin_layout Itemize
- Figures showing p-value histograms for within-batch and cross-batch contrasts,
- showing that cross-batch contrasts have attenuated signal, as do comparisons
- within the bad batch
- \end_layout
- \end_deeper
- \begin_layout Subsection
- ChIP-seq must be corrected for hidden confounding factors
- \end_layout
- \begin_layout Itemize
- Figures showing pre- and post-SVA MDS plots for each histone mark
- \end_layout
- \begin_layout Itemize
- Figures showing BCV plots with and without SVA for each histone mark
- \end_layout
- \begin_layout Subsection
- H3K4 and H3K27 promoter methylation has broadly the expected correlation
- with gene expression
- \end_layout
- \begin_layout Itemize
- H3K4 is correlated with higher expression, and H3K27 is correlated with
- lower expression genome-wide
- \end_layout
- \begin_layout Itemize
- Figures showing these correlations: box/violin plots of expression distributions
- with every combination of peak presence/absence in promoter
- \end_layout
- \begin_layout Itemize
- Appropriate statistical tests showing significant differences in expected
- directions
- \end_layout
- \begin_layout Subsection
- MOFA recovers biologically relevant variation from blind analysis by correlating
- across datasets
- \end_layout
- \begin_layout Itemize
- MOFA
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Argelaguet2018"
- literal "false"
- \end_inset
- successfully separates biologically relevant patterns of variation from
- technical confounding factors without knowing the sample labels, by finding
- latent factors that explain variation across multiple data sets.
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Figure: show percent-variance-explained plot from MOFA and PCA-like plots
- for the relevant latent factors
- \end_layout
- \begin_layout Itemize
- MOFA analysis also shows that batch effect correction can't get much better
- than it already is (Figure comparing blind MOFA batch correction to ComBat
- correction)
- \end_layout
- \end_deeper
- \begin_layout Subsection
- Naive-to-memory convergence observed in H3K4 and RNA-seq data, not in H3K27me3
- \end_layout
- \begin_layout Itemize
- H3K4 and RNA-seq data show clear evidence of naive convergence with memory
- between days 1 and 5 (MDS plot figure, also compare with last figure from
-
- \begin_inset CommandInset citation
- LatexCommand cite
- key "LaMere2016"
- literal "false"
- \end_inset
- )
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Get explicit permission from Sarah to include the figure
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Itemize
- Table of numbers of genes different between N & M at each time point, showing
- dwindling differences at later time points, consistent with convergence
- \end_layout
- \begin_layout Itemize
- Similar figure for H3K27me3 showing lack of convergence
- \end_layout
- \begin_layout Subsection
- Effect of promoter coverage upstream vs downstream of TSS
- \end_layout
- \begin_layout Itemize
- H3K4me peaks seem to correlate with increased expression as long as they
- are anywhere near the TSS
- \end_layout
- \begin_layout Itemize
- H3K27me3 peaks can have different correlations to gene expression depending
- on their position relative to TSS (e.g.
- upstream vs downstream) Results consistent with
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Young2011"
- literal "false"
- \end_inset
- \end_layout
- \begin_layout Section
- Discussion
- \end_layout
- \begin_layout Itemize
- "Promoter radius" is not constant and must be defined empirically for a
- given data set
- \end_layout
- \begin_layout Itemize
- MOFA shows great promise for accelerating discovery of major biological
- effects in multi-omics datasets
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- MOFA was added to this analysis late and played primarily a confirmatory
- role, but it was able to confirm earlier conclusions with much less prior
- information (no sample labels) and much less analyst effort
- \end_layout
- \begin_layout Itemize
- MOFA confirmed that the already-implemented batch correction in the RNA-seq
- data was already performing as well as possible given the limitations of
- the data
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Naive-to-memory convergence implies that naive cells are differentiating
- into memory cells, and that gene expression and H3K4 methylation are involved
- in this differentiation while H3K27me3 is less involved
- \end_layout
- \begin_layout Itemize
- H3K27me3, canonically regarded as a deactivating mark, seems to have a more
- complex
- \end_layout
- \begin_layout Itemize
- Discuss advantages of developing using a reproducible workflow
- \end_layout
- \begin_layout Chapter
- Improving array-based analyses of transplant rejection by optimizing data
- preprocessing
- \end_layout
- \begin_layout Standard
- \begin_inset Note Note
- status open
- \begin_layout Plain Layout
- Author list: Me, Sunil, Tom, Padma, Dan
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Section
- Approach
- \end_layout
- \begin_layout Subsection
- Proper pre-processing is essential for array data
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- This section could probably use some citations
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Microarrays, bead ararys, and similar assays produce raw data in the form
- of fluorescence intensity measurements, with the each intensity measurement
- proportional to the abundance of some fluorescently-labelled target DNA
- or RNA sequence that base pairs to a specific probe sequence.
- However, these measurements for each probe are also affected my many technical
- confounding factors, such as the concentration of target material, strength
- of off-target binding, and the sensitivity of the imaging sensor.
- Some array designs also use multiple probe sequences for each target.
- Hence, extensive pre-processing of array data is necessary to normalize
- out the effects of these technical factors and summarize the information
- from multiple probes to arrive at a single usable estimate of abundance
- or other relevant quantity, such as a ratio of two abundances, for each
- target.
- \end_layout
- \begin_layout Standard
- The choice of pre-processing algorithms used in the analysis of an array
- data set can have a large effect on the results of that analysis.
- However, despite their importance, these steps are often neglected or rushed
- in order to get to the more scientifically interesting analysis steps involving
- the actual biology of the system under study.
- Hence, it is often possible to achieve substantial gains in statistical
- power, model goodness-of-fit, or other relevant performance measures, by
- checking the assumptions made by each preprocessing step and choosing specific
- normalization methods tailored to the specific goals of the current analysis.
- \end_layout
- \begin_layout Subsection
- Normalization for clinical microarray classifiers must be single-channel
- \end_layout
- \begin_layout Subsubsection
- Standard normalization methods are unsuitable for clinical application
- \end_layout
- \begin_layout Standard
- As the cost of performing microarray assays falls, there is increasing interest
- in using genomic assays for diagnostic purposes, such as distinguishing
- healthy transplants (TX) from transplants undergoing acute rejection (AR)
- or acute dysfunction with no rejection (ADNR).
- However, the the standard normalization algorithm used for microarray data,
- Robust Multi-chip Average (RMA)
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Irizarry2003a"
- literal "false"
- \end_inset
- , is not applicable in a clinical setting.
- Two of the steps in RMA, quantile normalization and probe summarization
- by median polish, depend on every array in the data set being normalized.
- This means that adding or removing any arrays from a data set changes the
- normalized values for all arrays, and data sets that have been normalized
- separately cannot be compared to each other.
- Hence, when using RMA, any arrays to be analyzed together must also be
- normalized together, and the set of arrays included in the data set must
- be held constant throughout an analysis.
- \end_layout
- \begin_layout Standard
- These limitations present serious impediments to the use of arrays as a
- diagnostic tool.
- When training a classifier, the samples to be classified must not be involved
- in any step of the training process, lest their inclusion bias the training
- process.
- Once a classifier is deployed in a clinical setting, the samples to be
- classified will not even
- \emph on
- exist
- \emph default
- at the time of training, so including them would be impossible even if
- it were statistically justifiable.
- Therefore, any machine learning application for microarrays demands that
- the normalized expression values computed for an array must depend only
- on information contained within that array.
- This would ensure that each array's normalization is independent of every
- other array, and that arrays normalized separately can still be compared
- to each other without bias.
- Such a normalization is commonly referred to as
- \begin_inset Quotes eld
- \end_inset
- single-channel normalization
- \begin_inset Quotes erd
- \end_inset
- .
- \end_layout
- \begin_layout Subsubsection
- Several strategies are available to meet clinical normalization requirements
- \end_layout
- \begin_layout Standard
- Frozen RMA (fRMA) addresses these concerns by replacing the quantile normalizati
- on and median polish with alternatives that do not introduce inter-array
- dependence, allowing each array to be normalized independently of all others
-
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCall2010"
- literal "false"
- \end_inset
- .
- Quantile normalization is performed against a pre-generated set of quantiles
- learned from a collection of 850 publically available arrays sampled from
- a wide variety of tissues in the Gene Expression Omnibus (GEO).
- Each array's probe intensity distribution is normalized against these pre-gener
- ated quantiles.
- The median polish step is replaced with a robust weighted average of probe
- intensities, using inverse variance weights learned from the same public
- GEO data.
- The result is a normalization that satisfies the requirements mentioned
- above: each array is normalized independently of all others, and any two
- normalized arrays can be compared directly to each other.
- \end_layout
- \begin_layout Standard
- One important limitation of fRMA is that it requires a separate reference
- data set from which to learn the parameters (reference quantiles and probe
- weights) that will be used to normalize each array.
- These parameters are specific to a given array platform, and pre-generated
- parameters are only provided for the most common platforms, such as Affymetrix
- hgu133plus2.
- For a less common platform, such as hthgu133pluspm, is is necessary to
- learn custom parameters from in-house data before fRMA can be used to normalize
- samples on that platform
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCall2011"
- literal "false"
- \end_inset
- .
- \end_layout
- \begin_layout Standard
- One other option is the aptly-named Single Channel Array Normalization (SCAN),
- which adapts a normalization method originally designed for tiling arrays
-
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Piccolo2012"
- literal "false"
- \end_inset
- .
- SCAN is truly single-channel in that it does not require a set of normalization
- paramters estimated from an external set of reference samples like fRMA
- does.
- \end_layout
- \begin_layout Subsection
- Heteroskedasticity must be accounted for in methylation array data
- \end_layout
- \begin_layout Subsubsection
- Methylation array preprocessing induces heteroskedasticity
- \end_layout
- \begin_layout Standard
- DNA methylation arrays are a relatively new kind of assay that uses microarrays
- to measure the degree of methylation on cytosines in specific regions arrayed
- across the genome.
- First, bisulfite treatment converts all unmethylated cytosines to uracil
- (which then become thymine after amplication) while leaving methylated
- cytosines unaffected.
- Then, each target region is interrogated with two probes: one binds to
- the original genomic sequence and interrogates the level of methylated
- DNA, and the other binds to the sequence with all Cs replaced by Ts and
- interrogates the level of unmethylated DNA.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/methylvoom/sigmoid.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:Sigmoid-beta-m-mapping"
- \end_inset
- \series bold
- Sigmoid shape of the mapping between β and M values
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- After normalization, these two probe intensities are summarized in one of
- two ways, each with advantages and disadvantages.
- β
- \series bold
-
- \series default
- values, interpreted as fraction of DNA copies methylated, range from 0 to
- 1.
- β
- \series bold
-
- \series default
- values are conceptually easy to interpret, but the constrained range makes
- them unsuitable for linear modeling, and their error distributions are
- highly non-normal, which also frustrates linear modeling.
- M-values, interpreted as the log ratio of methylated to unmethylated copies,
- are computed by mapping the beta values from
- \begin_inset Formula $[0,1]$
- \end_inset
- onto
- \begin_inset Formula $(-\infty,+\infty)$
- \end_inset
- using a sigmoid curve (Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:Sigmoid-beta-m-mapping"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- This transformation results in values with better statistical perperties:
- the unconstrained range is suitable for linear modeling, and the error
- distributions are more normal.
- Hence, most linear modeling and other statistical testing on methylation
- arrays is performed using M-values.
- \end_layout
- \begin_layout Standard
- However, the steep slope of the sigmoid transformation near 0 and 1 tends
- to over-exaggerate small differences in β values near those extremes, which
- in turn amplifies the error in those values, leading to a U-shaped trend
- in the mean-variance curve: extreme values have higher variances than values
- near the middle.
- This mean-variance dependency must be accounted for when fitting the linear
- model for differential methylation, or else the variance will be systematically
- overestimated for probes with moderate M-values and underestimated for
- probes with extreme M-values.
- \end_layout
- \begin_layout Subsubsection
- The voom method for RNA-seq data can model M-value heteroskedasticity
- \end_layout
- \begin_layout Standard
- RNA-seq read count data are also known to show heteroskedasticity, and the
- voom method was developed for modeling this heteroskedasticity by estimating
- the mean-variance trend in the data and using this trend to assign precision
- weights to each observation
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Law2013"
- literal "false"
- \end_inset
- .
- While methylation array data are not derived from counts and have a very
- different mean-variance relationship from that of typical RNA-seq data,
- the voom method makes no specific assumptions on the shape of the mean-variance
- relationship - it only assumes that the relationship is smooth enough to
- model using a lowess curve.
- Hence, the method is sufficiently general to model the mean-variance relationsh
- ip in methylation array data.
- However, the standard implementation of voom assumes that the input is
- given in raw read counts, and it must be adapted to run on methylation
- M-values.
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Put code on Github and reference it
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Section
- Methods
- \end_layout
- \begin_layout Subsection
- Evaluation of classifier performance with different normalization methods
- \end_layout
- \begin_layout Standard
- For testing different normalizations, a data set of 157 hgu133plus2 arrays
- was used, consisting of blood samples from kidney transplant patients whose
- grafts had been graded as TX, AR, or ADNR via biopsy and histology (46
- TX, 69 AR, 42 ADNR)
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Kurian2014"
- literal "true"
- \end_inset
- .
- Additionally, an external validation set of 75 samples was gathered from
- public GEO data (37 TX, 38 AR, no ADNR).
-
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status collapsed
- \begin_layout Plain Layout
- Find appropriate GEO identifiers if possible.
- Kurian 2014 says GSE15296, but this seems to be different data.
- I also need to look up the GEO accession for the external validation set.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- To evaluate the effect of each normalization on classifier performance,
- the same classifier training and validation procedure was used after each
- normalization method.
- The PAM package was used to train a nearest shrunken centroid classifier
- on the training set and select the appropriate threshold for centroid shrinking.
- Then the trained classifier was used to predict the class probabilities
- of each validation sample.
- From these class probabilities, ROC curves and area-under-curve (AUC) values
- were generated
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Turck2011"
- literal "false"
- \end_inset
- .
- Each normalization was tested on two different sets of training and validation
- samples.
- For internal validation, the 115 TX and AR arrays in the internal set were
- split at random into two equal sized sets, one for training and one for
- validation, each containing the same numbers of TX and AR samples as the
- other set.
- For external validation, the full set of 115 TX and AR samples were used
- as a training set, and the 75 external TX and AR samples were used as the
- validation set.
- Thus, 2 ROC curves and AUC values were generated for each normalization
- method: one internal and one external.
- Because the external validation set contains no ADNR samples, only classificati
- on of TX and AR samples was considered.
- The ADNR samples were included during normalization but excluded from all
- classifier training and validation.
- This ensures that the performance on internal and external validation sets
- is directly comparable.
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status collapsed
- \begin_layout Plain Layout
- Summarize the get.best.threshold algorithm for PAM threshold selection
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Six different normalization strategies were evaluated.
- First, 2 well-known non-single-channel normalization methods were considered:
- RMA and dChip
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Li2001,Irizarry2003a"
- literal "false"
- \end_inset
- .
- Since RMA produces expression values on a log2 scale and dChip does not,
- the values from dChip were log2 transformed after normalization.
- Next, RMA and dChip followed by Global Rank-invariant Set Normalization
- (GRSN) were tested
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Pelz2008"
- literal "false"
- \end_inset
- .
- Post-processing with GRSN does not turn RMA or dChip into single-channel
- methods, but it may help mitigate batch effects and is therefore useful
- as a benchmark.
- Lastly, the two single-channel normalization methods, fRMA and SCAN, were
- tested
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCall2010,Piccolo2012"
- literal "false"
- \end_inset
- .
- When evaluting internal validation performance, only the 157 internal samples
- were normalized; when evaluating external validation performance, all 157
- internal samples and 75 external samples were normalized together.
- \end_layout
- \begin_layout Standard
- For demonstrating the problem with separate normalization of training and
- validation data, one additional normalization was performed: the internal
- and external sets were each normalized separately using RMA, and the normalized
- data for each set were combined into a single set with no further attempts
- at normalizing between the two sets.
- The represents approximately how RMA would have to be used in a clinical
- setting, where the samples to be classified are not available at the time
- the classifier is trained.
- \end_layout
- \begin_layout Subsection
- Generating custom fRMA vectors for hthgu133pluspm array platform
- \end_layout
- \begin_layout Standard
- In order to enable fRMA normalization for the hthgu133pluspm array platform,
- custom fRMA normalization vectors were trained using the frmaTools package
-
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCall2011"
- literal "false"
- \end_inset
- .
- Separate vectors were created for two types of samples: kidney graft biopsy
- samples and blood samples from graft recipients.
- For training, a 341 kidney biopsy samples from 2 data sets and 965 blood
- samples from 5 data sets were used as the reference set.
- Arrays were groups into batches based on unique combinations of sample
- type (blood or biopsy), diagnosis (TX, AR, etc.), data set, and scan date.
- Thus, each batch represents arrays of the same kind that were run together
- on the same day.
- For estimating the probe inverse variance weights, frmaTools requires equal-siz
- ed batches, which means a batch size must be chosen, and then batches smaller
- than that size must be ignored, while batches larger than the chosen size
- must be downsampled.
- This downsampling is performed randomly, so the sampling process is repeated
- 5 times and the resulting normalizations are compared to each other.
- \end_layout
- \begin_layout Standard
- To evaluate the consistency of the generated normalization vectors, the
- 5 fRMA vector sets generated from 5 random batch samplings were each used
- to normalize the same 20 randomly selected samples from each tissue.
- Then the normalized expression values for each probe on each array were
- compared across all normalizations.
- Each fRMA normalization was also compared against the normalized expression
- values obtained by normalizing the same 20 samples with ordinary RMA.
- \end_layout
- \begin_layout Subsection
- Modeling methylation array M-value heteroskedasticy with modified voom implement
- ation
- \end_layout
- \begin_layout Itemize
- Methylation arrays for differential methylation in rejection vs.
- healthy transplant
- \end_layout
- \begin_layout Itemize
- Adapt voom method originally designed for RNA-seq to model mean-variance
- dependence
- \end_layout
- \begin_layout Itemize
- Use sample precision weighting, duplicateCorrelation, and sva to adjust
- for other confounding factors
- \end_layout
- \begin_layout Section
- Results
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Improve subsection titles in this section
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Subsection
- fRMA eliminates unwanted dependence of classifier training on normalization
- strategy caused by RMA
- \end_layout
- \begin_layout Subsubsection
- Separate normalization with RMA introduces unwanted biases in classification
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/PAM/predplot.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:Classifier-probabilities-RMA"
- \end_inset
- \series bold
- Classifier probabilities on validation samples when normalized with RMA
- together vs.
- separately.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- To demonstrate the problem with non-single-channel methods, we considered
- the problem of training a classifier to distinguish TX from AR using the
- samples from the internal set as training data, evaluating performance
- on the external set.
- First, training and evaluation were performed after normalizing all array
- samples together as a single set using RMA, and second, the internal samples
- were normalized separately from the external samples and the training and
- evaluation were repeated.
- For each sample in the validation set, the classifier probabilities from
- both classifiers were plotted against each other (Fig.
-
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:Classifier-probabilities-RMA"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- As expected, separate normalization biases the classifier probabilities,
- resulting in several misclassifications.
- In this case, the bias from separate normalization causes the classifier
- to assign a lower probability of AR to every sample.
-
- \end_layout
- \begin_layout Subsubsection
- fRMA and SCAN achieve maintain classification performance while eliminating
- dependence on normalization strategy
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/PAM/ROC-TXvsAR-internal.pdf
- width 100col%
- groupId colwidth
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:ROC-PAM-int"
- \end_inset
- ROC curves for PAM on internal validation data using different normalization
- strategies
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float table
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Tabular
- <lyxtabular version="3" rows="7" columns="4">
- <features tabularvalignment="middle">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <row>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
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- \color none
- Normalization
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- Single-channel
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- \color none
- Internal Validation AUC
- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- External Validation AUC
- \end_layout
- \end_inset
- </cell>
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- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
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- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- No
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- \end_inset
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- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
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- 0.852
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 0.713
- \end_layout
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- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- No
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
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- 0.657
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- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- RMA + GRSN
- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- No
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 0.816
- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- 0.750
- \end_layout
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- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
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- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- No
- \end_layout
- \end_inset
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- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 0.875
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- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
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- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- Yes
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 0.863
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 0.718
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- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- SCAN
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- Yes
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- 0.853
- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- </cell>
- </row>
- </lyxtabular>
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "tab:AUC-PAM"
- \end_inset
- \series bold
- AUC values for internal and external validation with 6 different normalization
- strategies.
- \series default
- Only fRMA and SCAN are single-channel normalizations.
- The other 4 normalizations are for comparison.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- For internal validation, the 6 methods' AUC values ranged from 0.816 to 0.891,
- as shown in Table
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "tab:AUC-PAM"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- .
- Among the non-single-channel normalizations, dChip outperformed RMA, while
- GRSN reduced the AUC values for both dChip and RMA.
- Both single-channel methods, fRMA and SCAN, slightly outperformed RMA,
- with fRMA ahead of SCAN.
- However, the difference between RMA and fRMA is still quite small.
- Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:ROC-PAM-int"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- shows that the ROC curves for RMA, dChip, and fRMA look very similar and
- relatively smooth, while both GRSN curves and the curve for SCAN have a
- more jagged appearance.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/PAM/ROC-TXvsAR-external.pdf
- width 100col%
- groupId colwidth
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:ROC-PAM-ext"
- \end_inset
- ROC curve for PAM on external validation data using different normalization
- strategies
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- For external validation, as expected, all the AUC values are lower than
- the internal validations, ranging from 0.642 to 0.750 (Table
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "tab:AUC-PAM"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- With or without GRSN, RMA shows its dominance over dChip in this more challengi
- ng test.
- Unlike in the internal validation, GRSN actually improves the classifier
- performance for RMA, although it does not for dChip.
- Once again, both single-channel methods perform about on par with RMA,
- with fRMA performing slightly better and SCAN performing a bit worse.
- Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:ROC-PAM-ext"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- shows the ROC curves for the external validation test.
- As expected, none of them are as clean-looking as the internal validation
- ROC curves.
- The curves for RMA, RMA+GRSN, and fRMA all look similar, while the other
- curves look more divergent.
- \end_layout
- \begin_layout Subsection
- fRMA with custom-generated vectors enables normalization on hthgu133pluspm
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/batchsize_batches.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:batch-size-batches"
- \end_inset
- \series bold
- Effect of batch size selection on number of batches included in fRMA probe
- weight learning.
-
- \series default
- For batch sizes ranging from 3 to 15, the number of batches with at least
- that many samples was plotted for biopsy (BX) and blood (PAX) samples.
- The selected batch size, 5, is marked with a dotted vertical line.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/batchsize_samples.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:batch-size-samples"
- \end_inset
- \series bold
- Effect of batch size selection on number of samples included in fRMA probe
- weight learning.
-
- \series default
- For batch sizes ranging from 3 to 15, the number of samples included in
- probe weight training was plotted for biopsy (BX) and blood (PAX) samples.
- The selected batch size, 5, is marked with a dotted vertical line.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- In order to enable use of fRMA to normalize hthgu133pluspm, a custom set
- of fRMA vectors was created.
- First, an appropriate batch size was chosen by looking at the number of
- batches and number of samples included as a function of batch size (Figures
-
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:batch-size-batches"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- and
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:batch-size-samples"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- , respectively).
- For a given batch size, all batches with fewer samples that the chosen
- size must be ignored during training, while larger batches must be randomly
- downsampled to the chosen size.
- Hence, the number of samples included for a given batch size equals the
- batch size times the number of batches with at least that many samples.
- From Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:batch-size-samples"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- , it is apparent that that a batch size of 8 maximizes the number of samples
- included in training.
- Increasing the batch size beyond this causes too many smaller batches to
- be excluded, reducing the total number of samples for both tissue types.
- However, a batch size of 8 is not necessarily optimal.
- The article introducing frmaTools concluded that it was highly advantageous
- to use a smaller batch size in order to include more batches, even at the
- expense of including fewer total samples in training
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCall2011"
- literal "false"
- \end_inset
- .
- To strike an appropriate balance between more batches and more samples,
- a batch size of 5 was chosen.
- For both blood and biopsy samples, this increased the number of batches
- included by 10, with only a modest reduction in the number of samples compared
- to a batch size of 8.
- With a batch size of 5, 26 batches of biopsy samples and 46 batches of
- blood samples were available.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/M-BX-violin.pdf
- lyxscale 30
- groupId m-violin
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:m-bx-violin"
- \end_inset
- \series bold
- Violin plot of log ratios between normalizations for 20 biopsy samples.
-
- \series default
- Each of 20 randomly selected biopsy samples was normalized with RMA and
- with 5 different sets of fRMA vectors.
- This shows the distribution of log ratios between normalized expression
- values, aggregated across all 20 arrays.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Since fRMA training requires equal-size batches, larger batches are downsampled
- randomly.
- This introduces a nondeterministic step in the generation of normalization
- vectors.
- To show that this randomness does not substantially change the outcome,
- the random downsampling and subsequent vector learning was repeated 5 times,
- with a different random seed each time.
- 20 samples were selected at random as a test set and normalized with each
- of the 5 sets of fRMA normalization vectors as well as ordinary RMA, and
- the normalized expression values were compared across normalizations.
- Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:m-bx-violin"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- shows a summary of these comparisons for biopsy samples.
- Comparing RMA to each of the 5 fRMA normalizations, the distribution of
- log ratios is somewhat wide, indicating that the normalizations disagree
- on the expression values of a fair number of probe sets.
- In contrast, comparisons of fRMA against fRMA, the vast mojority of probe
- sets have very small log ratios, indicating a very high agreement between
- the normalized values generated by the two normalizations.
- This shows that the fRMA normalization's behavior is not very sensitive
- to the random downsampling of larger batches during training.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/MA-BX-RMA.fRMA.pdf
- lyxscale 50
- groupId ma-frma
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:ma-bx-rma-frma"
- \end_inset
- \series bold
- Representative MA plot comparing RMA against fRMA for 20 biopsy samples.
-
- \series default
- Averages and log ratios were computed for every probe in each of 20 biopsy
- samples between RMA normalization and fRMA.
- Density of points is represented by darkness of shading, and individual
- outlier points are plotted.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/MA-BX-fRMA.fRMA.pdf
- lyxscale 50
- groupId ma-frma
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:ma-bx-frma-frma"
- \end_inset
- \series bold
- Representative MA plot comparing different fRMA vectors for 20 biopsy samples.
-
- \series default
- Averages and log ratios were computed for every probe in each of 20 biopsy
- samples between fRMA normalizations using vectors from two different batch
- samplings.
- Density of points is represented by darkness of shading, and individual
- outlier points are plotted.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:ma-bx-rma-frma"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- shows an MA plot of the RMA-normalized values against the fRMA-normalized
- values for the same probe sets and arrays, corresponding to the first row
- of Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:m-bx-violin"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- .
- This MA plot shows that not only is there a wide distribution of M-values,
- but the trend of M-values is dependent on the average normalized intensity.
- This is expected, since the overall trend represents the differences in
- the quantile normalization step.
- When running RMA, only the quantiles for these specific 20 arrays are used,
- while for fRMA the quantile distribution is taking from all arrays used
- in training.
- Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:ma-bx-frma-frma"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- shows a similar MA plot comparing 2 different fRMA normalizations, correspondin
- g to the 6th row of Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:m-bx-violin"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- .
- The MA plot is very tightly centered around zero with no visible trend.
- Figures
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:m-pax-violin"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ,
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:MA-PAX-rma-frma"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- , and
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:ma-bx-frma-frma"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- show exactly the same information for the blood samples, once again comparing
- the normalized expression values between normalizations for all probe sets
- across 20 randomly selected test arrays.
- Once again, there is a wider distribution of log ratios between RMA-normalized
- values and fRMA-normalized, and a much tighter distribution when comparing
- different fRMA normalizations to each other, indicating that the fRMA training
- process is robust to random batch downsampling for the blood samples as
- well.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/M-PAX-violin.pdf
- lyxscale 30
- groupId m-violin
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:m-pax-violin"
- \end_inset
- \series bold
- Violin plot of log ratios between normalizations for 20 blood samples.
-
- \series default
- Each of 20 randomly selected blood samples was normalized with RMA and with
- 5 different sets of fRMA vectors.
- This shows the distribution of log ratios between normalized expression
- values, aggregated across all 20 arrays.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/MA-PAX-RMA.fRMA.pdf
- lyxscale 50
- groupId ma-frma
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:MA-PAX-rma-frma"
- \end_inset
- \series bold
- Representative MA plot comparing RMA against fRMA for 20 blood samples.
-
- \series default
- Averages and log ratios were computed for every probe in each of 20 blood
- samples between RMA normalization and fRMA.
- Density of points is represented by darkness of shading, and individual
- outlier points are plotted.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status collapsed
- \begin_layout Plain Layout
- \begin_inset Graphics
- filename graphics/frma-pax-bx/MA-PAX-fRMA.fRMA.pdf
- lyxscale 50
- groupId ma-frma
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:MA-PAX-frma-frma"
- \end_inset
- \series bold
- Representative MA plot comparing different fRMA vectors for 20 blood samples.
-
- \series default
- Averages and log ratios were computed for every probe in each of 20 blood
- samples between fRMA normalizations using vectors from two different batch
- samplings.
- Density of points is represented by darkness of shading, and individual
- outlier points are plotted.
- \end_layout
- \end_inset
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Subsection
- Adapting voom to methylation array data improves model fit
- \end_layout
- \begin_layout Itemize
- voom, precision weights, and sva improved model fit
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Also increased sensitivity for detecting differential methylation
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Figure showing (a) heteroskedasticy without voom, (b) voom-modeled mean-variance
- trend, and (c) homoskedastic mean-variance trend after running voom
- \end_layout
- \begin_layout Itemize
- Figure showing sample weights and their relations to
- \end_layout
- \begin_layout Itemize
- Figure showing MDS plot with and without SVA correction
- \end_layout
- \begin_layout Itemize
- Figure and/or table showing improved p-value historgrams/number of significant
- genes (might need to get this from Padma)
- \end_layout
- \begin_layout Section
- Discussion
- \end_layout
- \begin_layout Subsection
- fRMA achieves clinically applicable normalization without sacrificing classifica
- tion performance
- \end_layout
- \begin_layout Standard
- As shown in Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:Classifier-probabilities-RMA"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- , improper normalization, particularly separate normalization of training
- and test samples, leads to unwanted biases in classification.
- In a controlled experimental context, it is always possible to correct
- this issue by normalizing all experimental samples together.
- However, because it is not feasible to normalize all samples together in
- a clinical context, a single-channel normalization is required is required.
-
- \end_layout
- \begin_layout Standard
- The major concern in using a single-channel normalization is that non-single-cha
- nnel methods can share information between arrays to improve the normalization,
- and single-channel methods risk sacrificing the gains in normalization
- accuracy that come from this information sharing.
- In the case of RMA, this information sharing is accomplished through quantile
- normalization and median polish steps.
- The need for information sharing in quantile normalization can easily be
- removed by learning a fixed set of quantiles from external data and normalizing
- each array to these fixed quantiles, instead of the quantiles of the data
- itself.
- As long as the fixed quantiles are reasonable, the result will be similar
- to standard RMA.
- However, there is no analogous way to eliminate cross-array information
- sharing in the median polish step, so fRMA replaces this with a weighted
- average of probes on each array, with the weights learned from external
- data.
- This step of fRMA has the greatest potential to diverge from RMA un undesirable
- ways.
- \end_layout
- \begin_layout Standard
- However, when run on real data, fRMA performed at least as well as RMA in
- both the internal validation and external validation tests.
- This shows that fRMA can be used to normalize individual clinical samples
- in a class prediction context without sacrificing the classifier performance
- that would be obtained by using the more well-established RMA for normalization.
- The other single-channel normalization method considered, SCAN, showed
- some loss of AUC in the external validation test.
- Based on these results, fRMA is the preferred normalization for clinical
- samples in a class prediction context.
- \end_layout
- \begin_layout Subsection
- Robust fRMA vectors can be generated for new array platforms
- \end_layout
- \begin_layout Standard
- The published fRMA normalization vectors for the hgu133plus2 platform were
- generated from a set of about 850 samples
- \begin_inset Flex TODO Note (Margin)
- status collapsed
- \begin_layout Plain Layout
- Look up the exact numbers
- \end_layout
- \end_inset
- chosen from a wide range of tissues, which the authors determined was sufficien
- t to generate a robust set of normalization vectors that could be applied
- across all tissues
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCall2010"
- literal "false"
- \end_inset
- .
- Since we only had hthgu133pluspm for 2 tissues of interest, our needs were
- more modest.
- Even using only 130 samples in 26 batches of 5 samples each for kidney
- biopsies, we were able to train a robust set of fRMA normalization vectors
- that were not meaningfully affected by the random selection of 5 samples
- from each batch.
- As expected, the training process was just as robust for the blood samples
- with 230 samples in 46 batches of 5 samples each.
- Because these vectors were each generated using training samples from a
- single tissue, they are not suitable for general use, unlike the vectors
- provided with fRMA itself.
- They are purpose-build for normalizing a specific type of sample on a specific
- platform.
- \end_layout
- \begin_layout Subsection
- voom
- \end_layout
- \begin_layout Itemize
- Methods like voom designed for RNA-seq can also help with array analysis
- \end_layout
- \begin_layout Itemize
- Extracting and modeling confounders common to many features improves model
- correspondence to known biology
- \end_layout
- \begin_layout Chapter
- Globin-blocking for more effective blood RNA-seq analysis in primate animal
- model
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Choose between above and the paper title: Optimizing yield of deep RNA sequencin
- g for gene expression profiling by globin reduction of peripheral blood
- samples from cynomolgus monkeys (Macaca fascicularis).
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Chapter author list: https://tex.stackexchange.com/questions/156862/displaying-aut
- hor-for-each-chapter-in-book Every chapter gets an author list, which may
- or may not be part of a citation to a published/preprinted paper.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Preprint then cite the paper
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Section*
- Abstract
- \end_layout
- \begin_layout Paragraph
- Background
- \end_layout
- \begin_layout Standard
- Primate blood contains high concentrations of globin messenger RNA.
- Globin reduction is a standard technique used to improve the expression
- results obtained by DNA microarrays on RNA from blood samples.
- However, with whole transcriptome RNA-sequencing (RNA-seq) quickly replacing
- microarrays for many applications, the impact of globin reduction for RNA-seq
- has not been previously studied.
- Moreover, no off-the-shelf kits are available for globin reduction in nonhuman
- primates.
-
- \end_layout
- \begin_layout Paragraph
- Results
- \end_layout
- \begin_layout Standard
- Here we report a protocol for RNA-seq in primate blood samples that uses
- complimentary oligonucleotides to block reverse transcription of the alpha
- and beta globin genes.
- In test samples from cynomolgus monkeys (Macaca fascicularis), this globin
- blocking protocol approximately doubles the yield of informative (non-globin)
- reads by greatly reducing the fraction of globin reads, while also improving
- the consistency in sequencing depth between samples.
- The increased yield enables detection of about 2000 more genes, significantly
- increases the correlation in measured gene expression levels between samples,
- and increases the sensitivity of differential gene expression tests.
- \end_layout
- \begin_layout Paragraph
- Conclusions
- \end_layout
- \begin_layout Standard
- These results show that globin blocking significantly improves the cost-effectiv
- eness of mRNA sequencing in primate blood samples by doubling the yield
- of useful reads, allowing detection of more genes, and improving the precision
- of gene expression measurements.
- Based on these results, a globin reducing or blocking protocol is recommended
- for all RNA-seq studies of primate blood samples.
- \end_layout
- \begin_layout Section
- Approach
- \end_layout
- \begin_layout Standard
- \begin_inset Note Note
- status open
- \begin_layout Plain Layout
- Consider putting some of this in the Intro chapter
- \end_layout
- \begin_layout Itemize
- Cynomolgus monkeys as a model organism
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Highly related to humans
- \end_layout
- \begin_layout Itemize
- Small size and short life cycle - good research animal
- \end_layout
- \begin_layout Itemize
- Genomics resources still in development
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Inadequacy of existing blood RNA-seq protocols
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- Existing protocols use a separate globin pulldown step, slowing down processing
- \end_layout
- \end_deeper
- \end_inset
- \end_layout
- \begin_layout Standard
- Increasingly, researchers are turning to high-throughput mRNA sequencing
- technologies (RNA-seq) in preference to expression microarrays for analysis
- of gene expression
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Mutz2012"
- literal "false"
- \end_inset
- .
- The advantages are even greater for study of model organisms with no well-estab
- lished array platforms available, such as the cynomolgus monkey (Macaca
- fascicularis).
- High fractions of globin mRNA are naturally present in mammalian peripheral
- blood samples (up to 70% of total mRNA) and these are known to interfere
- with the results of array-based expression profiling
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Winn2010"
- literal "false"
- \end_inset
- .
- The importance of globin reduction for RNA-seq of blood has only been evaluated
- for a deepSAGE protocol on human samples
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Mastrokolias2012"
- literal "false"
- \end_inset
- .
- In the present report, we evaluated globin reduction using custom blocking
- oligonucleotides for deep RNA-seq of peripheral blood samples from a nonhuman
- primate, cynomolgus monkey, using the Illumina technology platform.
- We demonstrate that globin reduction significantly improves the cost-effectiven
- ess of RNA-seq in blood samples.
- Thus, our protocol offers a significant advantage to any investigator planning
- to use RNA-seq for gene expression profiling of nonhuman primate blood
- samples.
- Our method can be generally applied to any species by designing complementary
- oligonucleotide blocking probes to the globin gene sequences of that species.
- Indeed, any highly expressed but biologically uninformative transcripts
- can also be blocked to further increase sequencing efficiency and value
-
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Arnaud2016"
- literal "false"
- \end_inset
- .
- \end_layout
- \begin_layout Section
- Methods
- \end_layout
- \begin_layout Subsection*
- Sample collection
- \end_layout
- \begin_layout Standard
- All research reported here was done under IACUC-approved protocols at the
- University of Miami and complied with all applicable federal and state
- regulations and ethical principles for nonhuman primate research.
- Blood draws occurred between 16 April 2012 and 18 June 2015.
- The experimental system involved intrahepatic pancreatic islet transplantation
- into Cynomolgus monkeys with induced diabetes mellitus with or without
- concomitant infusion of mesenchymal stem cells.
- Blood was collected at serial time points before and after transplantation
- into PAXgene Blood RNA tubes (PreAnalytiX/Qiagen, Valencia, CA) at the
- precise volume:volume ratio of 2.5 ml whole blood into 6.9 ml of PAX gene
- additive.
- \end_layout
- \begin_layout Subsection*
- Globin Blocking
- \end_layout
- \begin_layout Standard
- Four oligonucleotides were designed to hybridize to the 3’ end of the transcript
- s for Cynomolgus HBA1, HBA2 and HBB, with two hybridization sites for HBB
- and 2 sites for HBA (the chosen sites were identical in both HBA genes).
- All oligos were purchased from Sigma and were entirely composed of 2’O-Me
- bases with a C3 spacer positioned at the 3’ ends to prevent any polymerase
- mediated primer extension.
- \end_layout
- \begin_layout Quote
- HBA1/2 site 1: GCCCACUCAGACUUUAUUCAAAG-C3spacer
- \end_layout
- \begin_layout Quote
- HBA1/2 site 2: GGUGCAAGGAGGGGAGGAG-C3spacer
- \end_layout
- \begin_layout Quote
- HBB site 1: AAUGAAAAUAAAUGUUUUUUAUUAG-C3spacer
- \end_layout
- \begin_layout Quote
- HBB site 2: CUCAAGGCCCUUCAUAAUAUCCC-C3spacer
- \end_layout
- \begin_layout Subsection*
- RNA-seq Library Preparation
- \end_layout
- \begin_layout Standard
- Sequencing libraries were prepared with 200ng total RNA from each sample.
- Polyadenylated mRNA was selected from 200 ng aliquots of cynomologus blood-deri
- ved total RNA using Ambion Dynabeads Oligo(dT)25 beads (Invitrogen) following
- manufacturer’s recommended protocol.
- PolyA selected RNA was then combined with 8 pmol of HBA1/2 (site 1), 8
- pmol of HBA1/2 (site 2), 12 pmol of HBB (site 1) and 12 pmol of HBB (site
- 2) oligonucleotides.
- In addition, 20 pmol of RT primer containing a portion of the Illumina
- adapter sequence (B-oligo-dTV: GAGTTCCTTGGCACCCGAGAATTCCATTTTTTTTTTTTTTTTTTTV)
- and 4 µL of 5X First Strand buffer (250 mM Tris-HCl pH 8.3, 375 mM KCl,
- 15mM MgCl2) were added in a total volume of 15 µL.
- The RNA was fragmented by heating this cocktail for 3 minutes at 95°C and
- then placed on ice.
- This was followed by the addition of 2 µL 0.1 M DTT, 1 µL RNaseOUT, 1 µL
- 10mM dNTPs 10% biotin-16 aminoallyl-2’- dUTP and 10% biotin-16 aminoallyl-2’-
- dCTP (TriLink Biotech, San Diego, CA), 1 µL Superscript II (200U/ µL, Thermo-Fi
- sher).
- A second “unblocked” library was prepared in the same way for each sample
- but replacing the blocking oligos with an equivalent volume of water.
- The reaction was carried out at 25°C for 15 minutes and 42°C for 40 minutes,
- followed by incubation at 75°C for 10 minutes to inactivate the reverse
- transcriptase.
- \end_layout
- \begin_layout Standard
- The cDNA/RNA hybrid molecules were purified using 1.8X Ampure XP beads (Agencourt
- ) following supplier’s recommended protocol.
- The cDNA/RNA hybrid was eluted in 25 µL of 10 mM Tris-HCl pH 8.0, and then
- bound to 25 µL of M280 Magnetic Streptavidin beads washed per recommended
- protocol (Thermo-Fisher).
- After 30 minutes of binding, beads were washed one time in 100 µL 0.1N NaOH
- to denature and remove the bound RNA, followed by two 100 µL washes with
- 1X TE buffer.
- \end_layout
- \begin_layout Standard
- Subsequent attachment of the 5-prime Illumina A adapter was performed by
- on-bead random primer extension of the following sequence (A-N8 primer:
- TTCAGAGTTCTACAGTCCGACGATCNNNNNNNN).
- Briefly, beads were resuspended in a 20 µL reaction containing 5 µM A-N8
- primer, 40mM Tris-HCl pH 7.5, 20mM MgCl2, 50mM NaCl, 0.325U/µL Sequenase
- 2.0 (Affymetrix, Santa Clara, CA), 0.0025U/µL inorganic pyrophosphatase (Affymetr
- ix) and 300 µM each dNTP.
- Reaction was incubated at 22°C for 30 minutes, then beads were washed 2
- times with 1X TE buffer (200µL).
- \end_layout
- \begin_layout Standard
- The magnetic streptavidin beads were resuspended in 34 µL nuclease-free
- water and added directly to a PCR tube.
- The two Illumina protocol-specified PCR primers were added at 0.53 µM (Illumina
- TruSeq Universal Primer 1 and Illumina TruSeq barcoded PCR primer 2), along
- with 40 µL 2X KAPA HiFi Hotstart ReadyMix (KAPA, Willmington MA) and thermocycl
- ed as follows: starting with 98°C (2 min-hold); 15 cycles of 98°C, 20sec;
- 60°C, 30sec; 72°C, 30sec; and finished with a 72°C (2 min-hold).
- \end_layout
- \begin_layout Standard
- PCR products were purified with 1X Ampure Beads following manufacturer’s
- recommended protocol.
- Libraries were then analyzed using the Agilent TapeStation and quantitation
- of desired size range was performed by “smear analysis”.
- Samples were pooled in equimolar batches of 16 samples.
- Pooled libraries were size selected on 2% agarose gels (E-Gel EX Agarose
- Gels; Thermo-Fisher).
- Products were cut between 250 and 350 bp (corresponding to insert sizes
- of 130 to 230 bps).
- Finished library pools were then sequenced on the Illumina NextSeq500 instrumen
- t with 75 base read lengths.
-
- \end_layout
- \begin_layout Subsection*
- Read alignment and counting
- \end_layout
- \begin_layout Standard
- Reads were aligned to the cynomolgus genome using STAR
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Dobin2013,Wilson2013"
- literal "false"
- \end_inset
- .
- Counts of uniquely mapped reads were obtained for every gene in each sample
- with the “featureCounts” function from the Rsubread package, using each
- of the three possibilities for the “strandSpecific” option: sense, antisense,
- and unstranded
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Liao2014"
- literal "false"
- \end_inset
- .
- A few artifacts in the cynomolgus genome annotation complicated read counting.
- First, no ortholog is annotated for alpha globin in the cynomolgus genome,
- presumably because the human genome has two alpha globin genes with nearly
- identical sequences, making the orthology relationship ambiguous.
- However, two loci in the cynomolgus genome are as “hemoglobin subunit alpha-lik
- e” (LOC102136192 and LOC102136846).
- LOC102136192 is annotated as a pseudogene while LOC102136846 is annotated
- as protein-coding.
- Our globin reduction protocol was designed to include blocking of these
- two genes.
- Indeed, these two genes have almost the same read counts in each library
- as the properly-annotated HBB gene and much larger counts than any other
- gene in the unblocked libraries, giving confidence that reads derived from
- the real alpha globin are mapping to both genes.
- Thus, reads from both of these loci were counted as alpha globin reads
- in all further analyses.
- The second artifact is a small, uncharacterized non-coding RNA gene (LOC1021365
- 91), which overlaps the HBA-like gene (LOC102136192) on the opposite strand.
- If counting is not performed in stranded mode (or if a non-strand-specific
- sequencing protocol is used), many reads mapping to the globin gene will
- be discarded as ambiguous due to their overlap with this ncRNA gene, resulting
- in significant undercounting of globin reads.
- Therefore, stranded sense counts were used for all further analysis in
- the present study to insure that we accurately accounted for globin transcript
- reduction.
- However, we note that stranded reads are not necessary for RNA-seq using
- our protocol in standard practice.
-
- \end_layout
- \begin_layout Subsection*
- Normalization and Exploratory Data Analysis
- \end_layout
- \begin_layout Standard
- Libraries were normalized by computing scaling factors using the edgeR package’s
- Trimmed Mean of M-values method
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Robinson2010"
- literal "false"
- \end_inset
- .
- Log2 counts per million values (logCPM) were calculated using the cpm function
- in edgeR for individual samples and aveLogCPM function for averages across
- groups of samples, using those functions’ default prior count values to
- avoid taking the logarithm of 0.
- Genes were considered “present” if their average normalized logCPM values
- across all libraries were at least -1.
- Normalizing for gene length was unnecessary because the sequencing protocol
- is 3’-biased and hence the expected read count for each gene is related
- to the transcript’s copy number but not its length.
- \end_layout
- \begin_layout Standard
- In order to assess the effect of blocking on reproducibility, Pearson and
- Spearman correlation coefficients were computed between the logCPM values
- for every pair of libraries within the globin-blocked (GB) and unblocked
- (non-GB) groups, and edgeR's “estimateDisp” function was used to compute
- negative binomial dispersions separately for the two groups
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Chen2014"
- literal "false"
- \end_inset
- .
- \end_layout
- \begin_layout Subsection*
- Differential Expression Analysis
- \end_layout
- \begin_layout Standard
- All tests for differential gene expression were performed using edgeR, by
- first fitting a negative binomial generalized linear model to the counts
- and normalization factors and then performing a quasi-likelihood F-test
- with robust estimation of outlier gene dispersions
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Lund2012,Phipson2016"
- literal "false"
- \end_inset
- .
- To investigate the effects of globin blocking on each gene, an additive
- model was fit to the full data with coefficients for globin blocking and
- SampleID.
- To test the effect of globin blocking on detection of differentially expressed
- genes, the GB samples and non-GB samples were each analyzed independently
- as follows: for each animal with both a pre-transplant and a post-transplant
- time point in the data set, the pre-transplant sample and the earliest
- post-transplant sample were selected, and all others were excluded, yielding
- a pre-/post-transplant pair of samples for each animal (N=7 animals with
- paired samples).
- These samples were analyzed for pre-transplant vs.
- post-transplant differential gene expression while controlling for inter-animal
- variation using an additive model with coefficients for transplant and
- animal ID.
- In all analyses, p-values were adjusted using the Benjamini-Hochberg procedure
- for FDR correction
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Benjamini1995"
- literal "false"
- \end_inset
- .
- \end_layout
- \begin_layout Standard
- \begin_inset Note Note
- status open
- \begin_layout Itemize
- New blood RNA-seq protocol to block reverse transcription of globin genes
- \end_layout
- \begin_layout Itemize
- Blood RNA-seq time course after transplants with/without MSC infusion
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Section
- Results
- \end_layout
- \begin_layout Subsection*
- Globin blocking yields a larger and more consistent fraction of useful reads
- \end_layout
- \begin_layout Standard
- The objective of the present study was to validate a new protocol for deep
- RNA-seq of whole blood drawn into PaxGene tubes from cynomolgus monkeys
- undergoing islet transplantation, with particular focus on minimizing the
- loss of useful sequencing space to uninformative globin reads.
- The details of the analysis with respect to transplant outcomes and the
- impact of mesenchymal stem cell treatment will be reported in a separate
- manuscript (in preparation).
- To focus on the efficacy of our globin blocking protocol, 37 blood samples,
- 16 from pre-transplant and 21 from post-transplant time points, were each
- prepped once with and once without globin blocking oligos, and were then
- sequenced on an Illumina NextSeq500 instrument.
- The number of reads aligning to each gene in the cynomolgus genome was
- counted.
- Table 1 summarizes the distribution of read fractions among the GB and
- non-GB libraries.
- In the libraries with no globin blocking, globin reads made up an average
- of 44.6% of total input reads, while reads assigned to all other genes made
- up an average of 26.3%.
- The remaining reads either aligned to intergenic regions (that include
- long non-coding RNAs) or did not align with any annotated transcripts in
- the current build of the cynomolgus genome.
- In the GB libraries, globin reads made up only 3.48% and reads assigned
- to all other genes increased to 50.4%.
- Thus, globin blocking resulted in a 92.2% reduction in globin reads and
- a 91.6% increase in yield of useful non-globin reads.
- \end_layout
- \begin_layout Standard
- This reduction is not quite as efficient as the previous analysis showed
- for human samples by DeepSAGE (<0.4% globin reads after globin reduction)
-
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Mastrokolias2012"
- literal "false"
- \end_inset
- .
- Nonetheless, this degree of globin reduction is sufficient to nearly double
- the yield of useful reads.
- Thus, globin blocking cuts the required sequencing effort (and costs) to
- achieve a target coverage depth by almost 50%.
- Consistent with this near doubling of yield, the average difference in
- un-normalized logCPM across all genes between the GB libraries and non-GB
- libraries is approximately 1 (mean = 1.01, median = 1.08), an overall 2-fold
- increase.
- Un-normalized values are used here because the TMM normalization correctly
- identifies this 2-fold difference as biologically irrelevant and removes
- it.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Graphics
- filename graphics/Globin Paper/figure1 - globin-fractions.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \series bold
- \begin_inset Argument 1
- status collapsed
- \begin_layout Plain Layout
- Fraction of genic reads in each sample aligned to non-globin genes, with
- and without globin blocking (GB).
-
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:Fraction-of-genic-reads"
- \end_inset
- Fraction of genic reads in each sample aligned to non-globin genes, with
- and without globin blocking (GB).
- \series default
- All reads in each sequencing library were aligned to the cyno genome, and
- the number of reads uniquely aligning to each gene was counted.
- For each sample, counts were summed separately for all globin genes and
- for the remainder of the genes (non-globin genes), and the fraction of
- genic reads aligned to non-globin genes was computed.
- Each point represents an individual sample.
- Gray + signs indicate the means for globin-blocked libraries and unblocked
- libraries.
- The overall distribution for each group is represented as a notched box
- plots.
- Points are randomly spread vertically to avoid excessive overlapping.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float table
- placement p
- wide false
- sideways true
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Tabular
- <lyxtabular version="3" rows="4" columns="7">
- <features tabularvalignment="middle">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="1" alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Percent of Total Reads
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="2" alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="2" alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="2" alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="1" alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Percent of Genic Reads
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="2" alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- GB
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Non-globin Reads
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Globin Reads
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- All Genic Reads
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- All Aligned Reads
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Non-globin Reads
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Globin Reads
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- Yes
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 50.4% ± 6.82
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 3.48% ± 2.94
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 53.9% ± 6.81
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 89.7% ± 2.40
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 93.5% ± 5.25
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 6.49% ± 5.25
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- No
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 26.3% ± 8.95
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 44.6% ± 16.6
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 70.1% ± 9.38
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 90.7% ± 5.16
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 38.8% ± 17.1
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
- \shape up
- \size normal
- \emph off
- \bar no
- \strikeout off
- \xout off
- \uuline off
- \uwave off
- \noun off
- \color none
- 61.2% ± 17.1
- \end_layout
- \end_inset
- </cell>
- </row>
- </lyxtabular>
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \series bold
- \begin_inset Argument 1
- status collapsed
- \begin_layout Plain Layout
- Fractions of reads mapping to genomic features in GB and non-GB samples.
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "tab:Fractions-of-reads"
- \end_inset
- Fractions of reads mapping to genomic features in GB and non-GB samples.
-
- \series default
- All values are given as mean ± standard deviation.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Another important aspect is that the standard deviations in Table
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "tab:Fractions-of-reads"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- are uniformly smaller in the GB samples than the non-GB ones, indicating
- much greater consistency of yield.
- This is best seen in the percentage of non-globin reads as a fraction of
- total reads aligned to annotated genes (genic reads).
- For the non-GB samples, this measure ranges from 10.9% to 80.9%, while for
- the GB samples it ranges from 81.9% to 99.9% (Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:Fraction-of-genic-reads"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- This means that for applications where it is critical that each sample
- achieve a specified minimum coverage in order to provide useful information,
- it would be necessary to budget up to 10 times the sequencing depth per
- sample without globin blocking, even though the average yield improvement
- for globin blocking is only 2-fold, because every sample has a chance of
- being 90% globin and 10% useful reads.
- Hence, the more consistent behavior of GB samples makes planning an experiment
- easier and more efficient because it eliminates the need to over-sequence
- every sample in order to guard against the worst case of a high-globin
- fraction.
- \end_layout
- \begin_layout Subsection*
- Globin blocking lowers the noise floor and allows detection of about 2000
- more genes
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Remove redundant titles from figures
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Graphics
- filename graphics/Globin Paper/figure2 - aveLogCPM-colored.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \series bold
- \begin_inset Argument 1
- status collapsed
- \begin_layout Plain Layout
- Distributions of average group gene abundances when normalized separately
- or together.
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:logcpm-dists"
- \end_inset
- Distributions of average group gene abundances when normalized separately
- or together.
- \series default
- All reads in each sequencing library were aligned to the cyno genome, and
- the number of reads uniquely aligning to each gene was counted.
- Genes with zero counts in all libraries were discarded.
- Libraries were normalized using the TMM method.
- Libraries were split into globin-blocked (GB) and non-GB groups and the
- average abundance for each gene in both groups, measured in log2 counts
- per million reads counted, was computed using the aveLogCPM function.
- The distribution of average gene logCPM values was plotted for both groups
- using a kernel density plot to approximate a continuous distribution.
- The logCPM GB distributions are marked in red, non-GB in blue.
- The black vertical line denotes the chosen detection threshold of -1.
- Top panel: Libraries were split into GB and non-GB groups first and normalized
- separately.
- Bottom panel: Libraries were all normalized together first and then split
- into groups.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Since globin blocking yields more usable sequencing depth, it should also
- allow detection of more genes at any given threshold.
- When we looked at the distribution of average normalized logCPM values
- across all libraries for genes with at least one read assigned to them,
- we observed the expected bimodal distribution, with a high-abundance "signal"
- peak representing detected genes and a low-abundance "noise" peak representing
- genes whose read count did not rise above the noise floor (Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:logcpm-dists"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- Consistent with the 2-fold increase in raw counts assigned to non-globin
- genes, the signal peak for GB samples is shifted to the right relative
- to the non-GB signal peak.
- When all the samples are normalized together, this difference is normalized
- out, lining up the signal peaks, and this reveals that, as expected, the
- noise floor for the GB samples is about 2-fold lower.
- This greater separation between signal and noise peaks in the GB samples
- means that low-expression genes should be more easily detected and more
- precisely quantified than in the non-GB samples.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Graphics
- filename graphics/Globin Paper/figure3 - detection.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \series bold
- \begin_inset Argument 1
- status collapsed
- \begin_layout Plain Layout
- Gene detections as a function of abundance thresholds in globin-blocked
- (GB) and non-GB samples.
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:Gene-detections"
- \end_inset
- Gene detections as a function of abundance thresholds in globin-blocked
- (GB) and non-GB samples.
- \series default
- Average abundance (logCPM,
- \begin_inset Formula $\log_{2}$
- \end_inset
- counts per million reads counted) was computed by separate group normalization
- as described in Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:logcpm-dists"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- for both the GB and non-GB groups, as well as for all samples considered
- as one large group.
- For each every integer threshold from -2 to 3, the number of genes detected
- at or above that logCPM threshold was plotted for each group.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- Based on these distributions, we selected a detection threshold of -1, which
- is approximately the leftmost edge of the trough between the signal and
- noise peaks.
- This represents the most liberal possible detection threshold that doesn't
- call substantial numbers of noise genes as detected.
- Among the full dataset, 13429 genes were detected at this threshold, and
- 22276 were not.
- When considering the GB libraries and non-GB libraries separately and re-comput
- ing normalization factors independently within each group, 14535 genes were
- detected in the GB libraries while only 12460 were detected in the non-GB
- libraries.
- Thus, GB allowed the detection of 2000 extra genes that were buried under
- the noise floor without GB.
- This pattern of at least 2000 additional genes detected with GB was also
- consistent across a wide range of possible detection thresholds, from -2
- to 3 (see Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:Gene-detections"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- \end_layout
- \begin_layout Subsection*
- Globin blocking does not add significant additional noise or decrease sample
- quality
- \end_layout
- \begin_layout Standard
- One potential worry is that the globin blocking protocol could perturb the
- levels of non-globin genes.
- There are two kinds of possible perturbations: systematic and random.
- The former is not a major concern for detection of differential expression,
- since a 2-fold change in every sample has no effect on the relative fold
- change between samples.
- In contrast, random perturbations would increase the noise and obscure
- the signal in the dataset, reducing the capacity to detect differential
- expression.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Graphics
- filename graphics/Globin Paper/figure4 - maplot-colored.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \begin_inset Argument 1
- status collapsed
- \begin_layout Plain Layout
- MA plot showing effects of globin blocking on each gene's abundance.
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:MA-plot"
- \end_inset
- \series bold
- MA plot showing effects of globin blocking on each gene's abundance.
-
- \series default
- All libraries were normalized together as described in Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:logcpm-dists"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- , and genes with an average logCPM below -1 were filtered out.
- Each remaining gene was tested for differential abundance with respect
- to globin blocking (GB) using edgeR’s quasi-likelihod F-test, fitting a
- negative binomial generalized linear model to table of read counts in each
- library.
- For each gene, edgeR reported average abundance (logCPM),
- \begin_inset Formula $\log_{2}$
- \end_inset
- fold change (logFC), p-value, and Benjamini-Hochberg adjusted false discovery
- rate (FDR).
- Each gene's logFC was plotted against its logCPM, colored by FDR.
- Red points are significant at ≤10% FDR, and blue are not significant at
- that threshold.
- The alpha and beta globin genes targeted for blocking are marked with large
- triangles, while all other genes are represented as small points.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Standardize on
- \begin_inset Quotes eld
- \end_inset
- log2
- \begin_inset Quotes erd
- \end_inset
- notation
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- The data do indeed show small systematic perturbations in gene levels (Figure
-
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:MA-plot"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- Other than the 3 designated alpha and beta globin genes, two other genes
- stand out as having especially large negative log fold changes: HBD and
- LOC1021365.
- HBD, delta globin, is most likely targeted by the blocking oligos due to
- high sequence homology with the other globin genes.
- LOC1021365 is the aforementioned ncRNA that is reverse-complementary to
- one of the alpha-like genes and that would be expected to be removed during
- the globin blocking step.
- All other genes appear in a cluster centered vertically at 0, and the vast
- majority of genes in this cluster show an absolute log2(FC) of 0.5 or less.
- Nevertheless, many of these small perturbations are still statistically
- significant, indicating that the globin blocking oligos likely cause very
- small but non-zero systematic perturbations in measured gene expression
- levels.
- \end_layout
- \begin_layout Standard
- \begin_inset Float figure
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Graphics
- filename graphics/Globin Paper/figure5 - corrplot.pdf
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \series bold
- \begin_inset Argument 1
- status collapsed
- \begin_layout Plain Layout
- Comparison of inter-sample gene abundance correlations with and without
- globin blocking.
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "fig:gene-abundance-correlations"
- \end_inset
- Comparison of inter-sample gene abundance correlations with and without
- globin blocking (GB).
- \series default
- All libraries were normalized together as described in Figure 2, and genes
- with an average abundance (logCPM, log2 counts per million reads counted)
- less than -1 were filtered out.
- Each gene’s logCPM was computed in each library using the edgeR cpm function.
- For each pair of biological samples, the Pearson correlation between those
- samples' GB libraries was plotted against the correlation between the same
- samples’ non-GB libraries.
- Each point represents an unique pair of samples.
- The solid gray line shows a quantile-quantile plot of distribution of GB
- correlations vs.
- that of non-GB correlations.
- The thin dashed line is the identity line, provided for reference.
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- To evaluate the possibility of globin blocking causing random perturbations
- and reducing sample quality, we computed the Pearson correlation between
- logCPM values for every pair of samples with and without GB and plotted
- them against each other (Figure
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "fig:gene-abundance-correlations"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- ).
- The plot indicated that the GB libraries have higher sample-to-sample correlati
- ons than the non-GB libraries.
- Parametric and nonparametric tests for differences between the correlations
- with and without GB both confirmed that this difference was highly significant
- (2-sided paired t-test: t = 37.2, df = 665, P ≪ 2.2e-16; 2-sided Wilcoxon
- sign-rank test: V = 2195, P ≪ 2.2e-16).
- Performing the same tests on the Spearman correlations gave the same conclusion
- (t-test: t = 26.8, df = 665, P ≪ 2.2e-16; sign-rank test: V = 8781, P ≪ 2.2e-16).
- The edgeR package was used to compute the overall biological coefficient
- of variation (BCV) for GB and non-GB libraries, and found that globin blocking
- resulted in a negligible increase in the BCV (0.417 with GB vs.
- 0.400 without).
- The near equality of the BCVs for both sets indicates that the higher correlati
- ons in the GB libraries are most likely a result of the increased yield
- of useful reads, which reduces the contribution of Poisson counting uncertainty
- to the overall variance of the logCPM values
- \begin_inset CommandInset citation
- LatexCommand cite
- key "McCarthy2012"
- literal "false"
- \end_inset
- .
- This improves the precision of expression measurements and more than offsets
- the negligible increase in BCV.
- \end_layout
- \begin_layout Subsection*
- More differentially expressed genes are detected with globin blocking
- \end_layout
- \begin_layout Standard
- \begin_inset Float table
- wide false
- sideways false
- status open
- \begin_layout Plain Layout
- \align center
- \begin_inset Tabular
- <lyxtabular version="3" rows="5" columns="5">
- <features tabularvalignment="middle">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <column alignment="center" valignment="top">
- <row>
- <cell alignment="center" valignment="top" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="1" alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- No Globin Blocking
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="2" alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell multicolumn="2" alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell alignment="center" valignment="top" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- Up
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- NS
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- Down
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell multirow="3" alignment="center" valignment="middle" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- Globin-Blocking
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- Up
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- 231
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
- \series medium
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- 515
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- 2
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell multirow="4" alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- NS
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 160
- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" usebox="none">
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- \begin_layout Plain Layout
- \family roman
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- 11235
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- 136
- \end_layout
- \end_inset
- </cell>
- </row>
- <row>
- <cell multirow="4" alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \series bold
- Down
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- 0
- \end_layout
- \end_inset
- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
- \family roman
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- 548
- \end_layout
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- </cell>
- <cell alignment="center" valignment="top" topline="true" bottomline="true" leftline="true" rightline="true" usebox="none">
- \begin_inset Text
- \begin_layout Plain Layout
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- \end_layout
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- </cell>
- </row>
- </lyxtabular>
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \begin_inset Caption Standard
- \begin_layout Plain Layout
- \series bold
- \begin_inset Argument 1
- status open
- \begin_layout Plain Layout
- Comparison of significantly differentially expressed genes with and without
- globin blocking.
- \end_layout
- \end_inset
- \begin_inset CommandInset label
- LatexCommand label
- name "tab:Comparison-of-significant"
- \end_inset
- Comparison of significantly differentially expressed genes with and without
- globin blocking.
- \series default
- Up, Down: Genes significantly up/down-regulated in post-transplant samples
- relative to pre-transplant samples, with a false discovery rate of 10%
- or less.
- NS: Non-significant genes (false discovery rate greater than 10%).
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Plain Layout
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- To compare performance on differential gene expression tests, we took subsets
- of both the GB and non-GB libraries with exactly one pre-transplant and
- one post-transplant sample for each animal that had paired samples available
- for analysis (N=7 animals, N=14 samples in each subset).
- The same test for pre- vs.
- post-transplant differential gene expression was performed on the same
- 7 pairs of samples from GB libraries and non-GB libraries, in each case
- using an FDR of 10% as the threshold of significance.
- Out of 12954 genes that passed the detection threshold in both subsets,
- 358 were called significantly differentially expressed in the same direction
- in both sets; 1063 were differentially expressed in the GB set only; 296
- were differentially expressed in the non-GB set only; 2 genes were called
- significantly up in the GB set but significantly down in the non-GB set;
- and the remaining 11235 were not called differentially expressed in either
- set.
- These data are summarized in Table
- \begin_inset CommandInset ref
- LatexCommand ref
- reference "tab:Comparison-of-significant"
- plural "false"
- caps "false"
- noprefix "false"
- \end_inset
- .
- The differences in BCV calculated by EdgeR for these subsets of samples
- were negligible (BCV = 0.302 for GB and 0.297 for non-GB).
- \end_layout
- \begin_layout Standard
- The key point is that the GB data results in substantially more differentially
- expressed calls than the non-GB data.
- Since there is no gold standard for this dataset, it is impossible to be
- certain whether this is due to under-calling of differential expression
- in the non-GB samples or over-calling in the GB samples.
- However, given that both datasets are derived from the same biological
- samples and have nearly equal BCVs, it is more likely that the larger number
- of DE calls in the GB samples are genuine detections that were enabled
- by the higher sequencing depth and measurement precision of the GB samples.
- Note that the same set of genes was considered in both subsets, so the
- larger number of differentially expressed gene calls in the GB data set
- reflects a greater sensitivity to detect significant differential gene
- expression and not simply the larger total number of detected genes in
- GB samples described earlier.
- \end_layout
- \begin_layout Section
- Discussion
- \end_layout
- \begin_layout Standard
- The original experience with whole blood gene expression profiling on DNA
- microarrays demonstrated that the high concentration of globin transcripts
- reduced the sensitivity to detect genes with relatively low expression
- levels, in effect, significantly reducing the sensitivity.
- To address this limitation, commercial protocols for globin reduction were
- developed based on strategies to block globin transcript amplification
- during labeling or physically removing globin transcripts by affinity bead
- methods
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Winn2010"
- literal "false"
- \end_inset
- .
- More recently, using the latest generation of labeling protocols and arrays,
- it was determined that globin reduction was no longer necessary to obtain
- sufficient sensitivity to detect differential transcript expression
- \begin_inset CommandInset citation
- LatexCommand cite
- key "NuGEN2010"
- literal "false"
- \end_inset
- .
- However, we are not aware of any publications using these currently available
- protocols the with latest generation of microarrays that actually compare
- the detection sensitivity with and without globin reduction.
- However, in practice this has now been adopted generally primarily driven
- by concerns for cost control.
- The main objective of our work was to directly test the impact of globin
- gene transcripts and a new globin blocking protocol for application to
- the newest generation of differential gene expression profiling determined
- using next generation sequencing.
-
- \end_layout
- \begin_layout Standard
- The challenge of doing global gene expression profiling in cynomolgus monkeys
- is that the current available arrays were never designed to comprehensively
- cover this genome and have not been updated since the first assemblies
- of the cynomolgus genome were published.
- Therefore, we determined that the best strategy for peripheral blood profiling
- was to do deep RNA-seq and inform the workflow using the latest available
- genome assembly and annotation
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Wilson2013"
- literal "false"
- \end_inset
- .
- However, it was not immediately clear whether globin reduction was necessary
- for RNA-seq or how much improvement in efficiency or sensitivity to detect
- differential gene expression would be achieved for the added cost and work.
-
- \end_layout
- \begin_layout Standard
- We only found one report that demonstrated that globin reduction significantly
- improved the effective read yields for sequencing of human peripheral blood
- cell RNA using a DeepSAGE protocol
- \begin_inset CommandInset citation
- LatexCommand cite
- key "Mastrokolias2012"
- literal "false"
- \end_inset
- .
- The approach to DeepSAGE involves two different restriction enzymes that
- purify and then tag small fragments of transcripts at specific locations
- and thus, significantly reduces the complexity of the transcriptome.
- Therefore, we could not determine how DeepSAGE results would translate
- to the common strategy in the field for assaying the entire transcript
- population by whole-transcriptome 3’-end RNA-seq.
- Furthermore, if globin reduction is necessary, we also needed a globin
- reduction method specific to cynomolgus globin sequences that would work
- an organism for which no kit is available off the shelf.
- \end_layout
- \begin_layout Standard
- As mentioned above, the addition of globin blocking oligos has a very small
- impact on measured expression levels of gene expression.
- However, this is a non-issue for the purposes of differential expression
- testing, since a systematic change in a gene in all samples does not affect
- relative expression levels between samples.
- However, we must acknowledge that simple comparisons of gene expression
- data obtained by GB and non-GB protocols are not possible without additional
- normalization.
-
- \end_layout
- \begin_layout Standard
- More importantly, globin blocking not only nearly doubles the yield of usable
- reads, it also increases inter-sample correlation and sensitivity to detect
- differential gene expression relative to the same set of samples profiled
- without blocking.
- In addition, globin blocking does not add a significant amount of random
- noise to the data.
- Globin blocking thus represents a cost-effective way to squeeze more data
- and statistical power out of the same blood samples and the same amount
- of sequencing.
- In conclusion, globin reduction greatly increases the yield of useful RNA-seq
- reads mapping to the rest of the genome, with minimal perturbations in
- the relative levels of non-globin genes.
- Based on these results, globin transcript reduction using sequence-specific,
- complementary blocking oligonucleotides is recommended for all deep RNA-seq
- of cynomolgus and other nonhuman primate blood samples.
- \end_layout
- \begin_layout Chapter
- Future Directions
- \end_layout
- \begin_layout Itemize
- Study other epigenetic marks in more contexts
- \end_layout
- \begin_deeper
- \begin_layout Itemize
- DNA methylation, histone marks, chromatin accessibility & conformation in
- CD4 T-cells
- \end_layout
- \begin_layout Itemize
- Also look at other types lymphocytes: CD8 T-cells, B-cells, NK cells
- \end_layout
- \end_deeper
- \begin_layout Itemize
- Use CV or bootstrap to better evaluate classifiers
- \end_layout
- \begin_layout Standard
- \begin_inset ERT
- status open
- \begin_layout Plain Layout
- % Use "References" instead of "Bibliography"
- \end_layout
- \begin_layout Plain Layout
- \backslash
- renewcommand{
- \backslash
- bibname}{References}
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset Flex TODO Note (inline)
- status open
- \begin_layout Plain Layout
- Check bib entry formatting & sort order
- \end_layout
- \end_inset
- \end_layout
- \begin_layout Standard
- \begin_inset CommandInset bibtex
- LatexCommand bibtex
- btprint "btPrintCited"
- bibfiles "refs"
- options "bibtotoc,unsrt"
- \end_inset
- \end_layout
- \end_body
- \end_document
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