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@@ -192,6 +192,20 @@ October 2019
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[Acknowledgements]
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[Acknowledgements]
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\end_layout
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\end_layout
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+\begin_layout Standard
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+\begin_inset Flex TODO Note (inline)
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+status open
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+
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+\begin_layout Plain Layout
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+I'm looking for feedback on: Section titles; figure formatting; figure legends;
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+ typographical errors; ...
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+\end_layout
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+
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+\end_inset
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+
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+\end_layout
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+
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\begin_layout Standard
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\begin_layout Standard
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\begin_inset CommandInset toc
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\begin_inset CommandInset toc
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LatexCommand tableofcontents
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LatexCommand tableofcontents
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@@ -7975,7 +7989,20 @@ Results
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status open
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status open
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\begin_layout Plain Layout
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\begin_layout Plain Layout
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-Improve subsection titles in this section
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+Improve subsection titles in this section.
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+\end_layout
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+
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+\end_inset
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+
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+\end_layout
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+
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+\begin_layout Standard
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+\begin_inset Flex TODO Note (inline)
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+status open
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+
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+\begin_layout Plain Layout
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+Reconsider subsection organization?
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\end_layout
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\end_inset
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@@ -11686,23 +11713,52 @@ noprefix "false"
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\end_layout
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\end_layout
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\begin_layout Subsection
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\begin_layout Subsection
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-methyl array stuff
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+Developing methylation arrays as a diagnostic tool for kidney transplant
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+ rejection
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\end_layout
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\end_layout
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\begin_layout Standard
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\begin_layout Standard
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The current study has showed that DNA methylation, as assayed by Illumina
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The current study has showed that DNA methylation, as assayed by Illumina
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450k methylation arrays, has some potential for diagnosing transplant dysfuncti
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450k methylation arrays, has some potential for diagnosing transplant dysfuncti
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ons, including rejection.
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ons, including rejection.
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-\end_layout
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-
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-\begin_layout Itemize
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-Eliminate the need for SVA, since it can't be applied in ML context.
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-
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-\end_layout
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-
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-\begin_layout Itemize
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-Alternatively, use SVA to identify and discard probes with strong SV association
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-s prior to training.
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+ However, very few probes could be confidently identified as differentially
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+ methylated between healthy and dysfunctional transplants.
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+ One likely explanation for this is the predominant influence of unobserved
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+ confounding factors.
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+ SVA can model and correct for such factors, but the correction can never
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+ be perfect, so some degree of unwanted systematic variation will always
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+ remain after SVA correction.
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+ If the effect size of the confounding factors was similar to that of the
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+ factor of interest (in this case, transplant status), this would be an
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+ acceptable limitation, since removing most of the confounding factors'
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+ effects would allow the main effect to stand out.
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+ However, in this data set, the confounding factors have a much larger effect
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+ size than transplant status, which means that the small degree of remaining
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+ variation not removed by SVA can still swamp the effect of interest, making
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+ it difficult to detect.
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+ This is, of course, a major issue when the end goal is to develop a classifier
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+ to diagnose transplant rejection from methylation data, since batch-correction
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+ methods like SVA that work in a linear modeling context cannot be applied
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+ in a machine learning context.
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+\end_layout
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+
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+\begin_layout Standard
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+Currently, the source of these unwanted systematic variations in the data
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+ is unknown.
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+ The best solution would be to determine the cause of the variation and
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+ eliminate it, thereby eliminating the need to model and remove that variation.
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+ However, if this proves impractical, another option is to use SVA to identify
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+ probes that are highly associated with the surrogate variables that describe
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+ the unwanted variation in the data.
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+ These probes could be discarded prior to classifier training, in order
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+ to maximize the chance that the training algorithm will be able to identify
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+ highly predictive probes from those remaining.
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+ Lastly, it is possible that some of this unwanted variation is a result
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+ of the assay being used.
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+ Assaying DNA methylation using bisulphite sequencing may sidestep the issue
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+ in this case, although this carries the risk that the sequencing assay
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+ will have its own set of biases that must be corrected for in a different
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+ way.
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\end_layout
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\end_layout
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\begin_layout Chapter
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\begin_layout Chapter
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