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- ---
- title: Bioinformatic analysis of complex, high-throughput genomic and epigenomic data in the context of $\mathsf{CD4}^{+}$ T-cell differentiation and diagnosis and treatment of transplant rejection
- author: |
- Ryan C. Thompson \
- Su Lab \
- The Scripps Research Institute
- date: October 24, 2019
- theme: Boadilla
- aspectratio: 169
- fontsize: 14pt
- ---
- ## Organ transplants are a life-saving treatment
- ::: incremental
- * 36,528 transplants performed in the USA in 2018[^organdonor]
- * 100 transplants every day!
- * Over 113,000 people on the national transplant waiting list as of
- July 2019
- :::
- [^organdonor]: [organdonor.gov](https://www.organdonor.gov/statistics-stories/statistics.html)
- ## Organ donation statistics for the USA in 2018[^organdonor]
- \centering
- 
- ## Types of grafts
- A graft is categorized based on the relationship between donor and recipient:
- . . .
- ::: incremental
- * **Autograft:** Donor and recipient are the *same individual*
- * **Allograft:** Donor and recipient are *different individuals* of
- the *same species*
- * **Xenograft:** Donor and recipient are *different species*
- :::
- ## Recipient T-cells reject allogenic MHCs
- :::::::::: {.columns}
- ::: {.column width="55%"}
- :::: incremental
- * TCR binds to both antigen *and* MHC surface \vspace{10pt}
- * HLA genes encoding MHC proteins are highly polymorphic \vspace{10pt}
- * Variants in donor MHC can trigger the same T-cell response as a
- foreign antigen
- ::::
- :::
- ::: {.column width="40%"}
- <!-- { height=70% } -->
- { height=70% }
- :::
- ::::::::::
- \footnotetext[3]{\href{https://doi.org/10.1016/j.cell.2007.01.048}{Colf, Bankovich, et al. "How a Single T Cell Receptor Recognizes Both Self and Foreign MHC". In: Cell (2007)}}
- ## Allograft rejection is a major long-term problem
- ![Kidney allograft survival rates in children by transplant year[^kim-marks]](graphics/presentation/kidney-graft-survival.png){ height=65% }
- [^kim-marks]: [Kim & Marks (2014)](https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3884158/?report=classic)
- ## Rejection is treated with immune suppressive drugs
- <!-- TODO: Need a graphic, or maybe a table of common drugs +
- mechanisms, or a diagram for periodic checking. -->
- ::: incremental
- * Graft recipient must take immune suppressive drugs indefinitely
- * Graft is monitored for rejection and dosage adjusted over time
- * Immune suppression is a delicate balance: too much and too little
- are both problematic.
- :::
- ## Memory cells: faster, stronger, and more independent
- 
- ## Memory cells: faster, stronger, and more independent
- 
- ## Memory cells: faster, stronger, and more independent
- 
- ## Memory cells: faster, stronger, and more independent
- 
- ::: notes
- Compared to naïve cells, memory cells:
- * respond to a lower antigen concentration
- * respond more strongly at any given antigen concentration
- * require less co-stimulation
- * are somewhat independent of some types of co-stimulation required by
- naïve cells
- * evolve over time to respond even more strongly to their antigen
- Result:
- * Memory cells require progressively higher doses of immune suppresive
- drugs
- * Dosage cannot be increased indefinitely without compromising the
- immune system's ability to fight infection
- :::
- ## 3 problems relating to transplant rejection
- ### 1. How are memory cells different from naïve?
- \onslide<2->{Genome-wide epigenetic analysis of H3K4 and H3K27 methylation in naïve
- and memory $\mathsf{CD4}^{+}$ T-cell activation}
- ### 2. How can we diagnose rejection noninvasively?
- \onslide<3->{Improving array-based diagnostics for transplant rejection by
- optimizing data preprocessing}
- ### 3. How can we evaluate effects of a rejection treatment?
- \onslide<4->{Globin-blocking for more effective blood RNA-seq analysis in primate
- animal model for experimental graft rejection treatment}
- ## Today's focus
- ### \Large 1. How are memory cells different from naïve?
- \Large
- Genome-wide epigenetic analysis of H3K4 and H3K27 methylation in naïve
- and memory $\mathsf{CD4}^{+}$ T-cell activation
- ## We need a better understanding of immune memory
- * Cell surface markers fairly well-characterized
- * But internal mechanisms poorly understood
- . . .
- \vfill
- \large
- **Hypothesis:** Epigenetic regulation of gene expression through
- histone modification is involved in $\mathsf{CD4}^{+}$ T-cell
- activation and memory.
-
- ## Which histone marks are we looking at?
- . . .
- ::: incremental
- * **H3K4me3:** "activating" mark associated with active transcription
- * **H3K4me2:** Correlated with H3K4me3, hypothesized "poised" state
- * **H3K27me3:** "repressive" mark associated with inactive genes
- :::
- . . .
- \vfill
- All involved in T-cell differentiation, but activation dynamics
- unexplored
- ## ChIP-seq measures DNA bound to marked histones[^chipseq]
- \centering
- { height=70% }
- [^chipseq]: [Furey (2012)](http://www.nature.com/articles/nrg3306)
- ## Experimental design
- \centering
- { height=70% }
- \footnotesize
- Data generated by Sarah Lamere, published in GEO as
- [GSE73214](https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE73214)
- ## Time points capture phases of immune response
- \centering
- 
- ## A few intermediate analysis steps are required
- \centering
- 
- ## Questions to focus on
- ::: incremental
- 1. How do we define the "promoter region" for each gene? \vspace{10pt}
- 2. How do these histone marks behave in promoter regions? \vspace{10pt}
- 3. What can these histone marks tell us about T-cell activation and
- differentiation?
- :::
- ## First question
- \centering \LARGE
- How do we define the "promoter region" for each gene?
- ## Histone modifications occur on consecutive histones
- ![ChIP-seq coverage in IL2 gene[^lamerethesis]](graphics/presentation/LaMere-thesis-fig3.9-SVG-CROP.png){ height=65% }
- [^lamerethesis]: Sarah LaMere. Ph.D. thesis (2015).
- ## Histone modifications occur on consecutive histones
- \begin{figure}
- \centering
- \only<1>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/CCF-plots-A-SVG.png}}
- \only<2>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/CCF-plots-B-SVG.png}}
- \only<3>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/CCF-plots-C-SVG.png}}
- \caption{Strand cross-correlation plots show histone-sized wave pattern}
- \end{figure}
- ## SICER identifies enriched regions across the genome
- ![Finding "islands" of coverage with SICER[^sicer]](graphics/presentation/SICER-fig1-SVG.png)
- [^sicer]: [Zang et al. (2009)](https://doi.org/10.1093/bioinformatics/btp340)
- ## IDR identifies *reproducible* enriched regions
- ![Example irreproducible discovery rate[^idr] score consistency plot](graphics/presentation/IDR-example-CROP-RASTER.png){ height=65% }
- [^idr]: [Li et al. (2011)](https://doi.org/10.1214/11-AOAS466)
- ## Finding enriched regions across the genome
- 
- ## Each histone mark has an "effective promoter radius"
- 
- ## Peaks in promoters correlate with gene expression
- \begin{figure}
- \centering
- \only<1>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/FPKM-by-Peak-Violin-Plots-A-SVG.png}}
- \only<2>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/FPKM-by-Peak-Violin-Plots-B-SVG.png}}
- \only<3>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/FPKM-by-Peak-Violin-Plots-C-SVG.png}}
- \only<4>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/FPKM-by-Peak-Violin-Plots-D-SVG.png}}
- \only<5>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/FPKM-by-Peak-Violin-Plots-Z-SVG.png}}
- \caption{Expression distributions of genes with and without promoter peaks}
- \end{figure}
- ## First question
- \centering \LARGE
- How do we define the "promoter region" for each gene?
- ## Answer: Define the promoter region empirically!
- <!-- TODO: Left column: text; right column: flip through relevant image -->
- :::::::::: {.columns}
- ::: {.column width="50%"}
- * H3K4me2, H3K4me3, and H3K27me3 occur in broad regions across the
- genome
- * Enriched regions occur more commonly near promoters
- * Each histone mark has its own "effective promoter radius"
- * Presence or absence of a peak within this radius is correlated with
- gene expression
- :::
- ::: {.column width="50%"}
- \centering
- \only<1>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/CCF-plots-A-SVG.png}}
- \only<2>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/Promoter-Peak-Distance-Profile-SVG.pdf}}
- \only<3>{\includegraphics[width=\textwidth,height=0.7\textheight]{graphics/presentation/FPKM-by-Peak-Violin-Plots-A-SVG.png}}
- :::
- ::::::::::
- ## Next question
- \centering \LARGE
- How do these histone marks behave in promoter regions?
- ::: notes
- Does the position of a histone modification within a gene promoter
- matter to that gene's expression, or is it merely the presence or
- absence anywhere within the promoter?
- :::
- ## H3K4me2 promoter neighborhood K-means clusters
- { height=70% }
- ## H3K4me2 promoter neighborhood K-means clusters
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- <!-- This space intentionally left blank -->
- :::
- ::::::::::
- ## H3K4me2 cluster PCA shows a semicircular "fan"
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::::::::::
- ## H3K4me2 near TSS correlates with expression
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::::::::::
- ## H3K4me3 pattern is similar to H3K4me2
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::::::::::
- ## H3K4me3 pattern is similar to H3K4me2
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::::::::::
- ## H3K27me3 clusters organize into 3 opposed pairs
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::::::::::
- ## Specific H3K27me3 profiles show elevated expression
- :::::::::: {.columns}
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::: {.column width="50%"}
- { height=70% }
- :::
- ::::::::::
- ## Current question
- \centering \LARGE
- How do these histone marks behave in promoter regions?
- ## Answer: Presence and position both matter!
- ### H3K4me2 & H3K4me3
- * Peak closer to promoter $\Rightarrow$ higher gene expression
- * Slightly asymmetric in favor of peaks downstream of TSS
- . . .
- ### H3K27me3
- * Depletion of H3K27me3 at TSS $\Rightarrow$ elevated gene expression
- * Enrichment of H3K27me3 upstream of TSS $\Rightarrow$ *more* elevated
- expression
- * Other coverage profiles: no association
- ## Last question
- \centering \LARGE
- What can these histone marks tell us about T-cell activation and
- differentiation?
- ## Differential modification disappears by Day 14
- 
- ## Differential modification disappears by Day 14
- 
- ## Promoter H3K4me2 levels converge at Day 14
- \centering
- 
- ## Promoter H3K4me3 levels converge at Day 14
- \centering
- 
- ## Promoter H3K27me3 levels converge at Day 14?
- \centering
- 
- ## Expression converges at Day 14 (in PC 2 & 3)
- \centering
- 
- ## But the data isn't really that clean...
- :::::::::: {.columns}
- ::: {.column width="50%"}
- 
- :::
- ::: {.column width="50%"}
- 
- :::
- ::::::::::
- ## But the data isn't really that clean...
- :::::::::: {.columns}
- ::: {.column width="50%"}
- 
- :::
- ::: {.column width="50%"}
- 
- :::
- ::::::::::
- ## MOFA: cross-dataset factor analysis
- ![MOFA factor analysis schematic[^mofa]](graphics/presentation/MOFA-fig1A-SVG.png){ height=70% }
- [^mofa]: [Argelaguet, Velten, et. al. (2018)](https://onlinelibrary.wiley.com/doi/abs/10.15252/msb.20178124)
- ## Some factors are shared while others are not
- \centering
- { height=70% }
- ## 3 factors are shared across all 4 data sets
- \centering
- { height=70% }
- ## MOFA LF5 captures convergence pattern
- 
- <!-- { height=70% } -->
- ## Last question
- \centering \LARGE
- What can these histone marks tell us about T-cell activation and
- differentiation?
- ## Answer: Epigenetic convergence between naïve and memory!
- * Almost no differential histone modification observed between naïve and
- memory at Day 14, despite plenty of differential modification at
- earlier time points.
- * Expression and 3 histone marks all show "convergence" between naïve
- and memory by Day 14 in the first 2 or 3 principal coordinates.
- * MOFA captures this convergence pattern in a single latent factor,
- indicating that this is a shared pattern across all 4 data sets.
- <!-- ## Slide -->
- <!--  -->
- ## Questions to focus on
- ### How do we define the "promoter region" for each gene?
- Define empirically using peak-to-promoter distances; validate by
- correlation with expression.
- . . .
- ### How do these histone marks behave in promoter regions?
- Location matters! Specific coverage patterns correlated with elevated
- expression.
- . . .
- ### What can we learn about T-cell activation and differentiation?
- Epigenetic & expression state of naïve and memory converges late after
- activation, consistent with naïve differentiation into memory.
- ## Further conclusions & future directions
- * "Effective promoter region" is a valid concept but "radius"
- oversimplifies: seek a better definition
- * Coverage profiles were only examined in naïve day 0 samples: further
- analysis could incorporate time and cell type
- * Coverage profile normalization induces degeneracy: adapt a better
- normalization from peak callers like SICER
- * Unimodal distribution of promoter coverage profiles is unexpected
- ## Further conclusions & future directions
- * Experiment was not designed to directly test the epigenetic
- convergence hypothesis: future experiments could include cultured
- but un-activated controls
- * High correlation between H3K4me3 and H3K4me2 is curious given they
- are mutually exclusive: design experiments to determine the degree
- of actual co-occurrence
-
- ## Implications for transplant biology
- ::: incremental
- * Epigenetic regulation through histone methylation is surely involved
- in immune memory
- * Can we stop memory cells from forming by perturbing histone
- methylation?
- * Can we disrupt memory cell function during rejection by perturbing
- histone methylation?
- * Can we suggest druggable targets for better immune suppression by
- looking at epigenetically upregulated genes in memory cells?
- :::
- ## Acknowledgements
- * My mentors, past and present: Drs. Terry Gaasterland, Daniel
- Salomon, and Andrew Su
- * My committee: Drs. Nicholas Schork, Ali Torkamani, Michael
- Petrascheck, and Luc Teyton.
- * My many collaborators in the Salomon Lab
- * The Scripps Genomics Core
- * My parents, John & Chris Thompson
- ## {.plain}
- \centering
- \huge
- Questions?
|