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  1. ---
  2. 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
  3. author: |
  4. Ryan C. Thompson \
  5. Su Lab \
  6. The Scripps Research Institute
  7. date: October 24, 2019
  8. theme: Boadilla
  9. aspectratio: 169
  10. fontsize: 14pt
  11. ---
  12. ## Organ transplants are a life-saving treatment
  13. ::: incremental
  14. * 36,528 transplants performed in the USA in 2018[^organdonor]
  15. * 100 transplants every day!
  16. * Over 113,000 people on the national transplant waiting list as of
  17. July 2019
  18. :::
  19. [^organdonor]: [organdonor.gov](https://www.organdonor.gov/statistics-stories/statistics.html)
  20. ## Organ donation statistics for the USA in 2018[^organdonor]
  21. \centering
  22. ![](graphics/presentation/transplants-organ-CROP.pdf)
  23. ## Types of grafts
  24. A graft is categorized based on the relationship between donor and recipient:
  25. . . .
  26. ::: incremental
  27. * **Autograft:** Donor and recipient are the *same individual*
  28. * **Allograft:** Donor and recipient are *different individuals* of
  29. the *same species*
  30. * **Xenograft:** Donor and recipient are *different species*
  31. :::
  32. ## Recipient T-cells reject allogenic MHCs
  33. :::::::::: {.columns}
  34. ::: {.column width="55%"}
  35. :::: incremental
  36. <!-- Vertical alignment hacks -->
  37. \rule{\linewidth}{0pt}
  38. \vspace*{12pt}
  39. * TCR binds to both antigen *and* MHC surface \vspace{10pt}
  40. * HLA genes encoding MHC proteins are highly polymorphic \vspace{10pt}
  41. * Variants in donor MHC can trigger the same T-cell response as a
  42. foreign antigen
  43. \vspace*{12pt}
  44. \rule{\linewidth}{0pt}
  45. ::::
  46. :::
  47. ::: {.column width="40%"}
  48. <!-- ![\footnotesize Janeway's Immunobio- logy (2012), Fig. 9.19](graphics/presentation/janeway-fig9.19-TCR.png){ height=70% } -->
  49. ![TCR binding to self (right) and allogenic (left) MHC\footnotemark](graphics/presentation/tcr_mhc.jpg){ height=70% }
  50. :::
  51. ::::::::::
  52. \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)}}
  53. ## Allograft rejection is a major long-term problem
  54. ![Kidney allograft survival rates in children by transplant year[^kim-marks]](graphics/presentation/kidney-graft-survival.png){ height=65% }
  55. [^kim-marks]: [Kim & Marks. "Long-term outcomes of children after solid organ transplantation". In: Clinics (2014)](https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3884158/?report=classic)
  56. ## Rejection is treated with immune suppressive drugs
  57. <!-- TODO: Need a graphic, or maybe a table of common drugs +
  58. mechanisms, or a diagram for periodic checking. -->
  59. ::: incremental
  60. * Graft recipient must take immune suppressive drugs indefinitely
  61. * Graft is monitored for rejection and dosage adjusted over time
  62. * Immune suppression is a delicate balance: too much and too little
  63. are both problematic.
  64. :::
  65. ## My thesis topics
  66. <!-- TODO: Needs revision -->
  67. ### Topic 1: Immune memory
  68. Genome-wide epigenetic analysis of H3K4 and H3K27 methylation in naïve
  69. and memory $\mathsf{CD4}^{+}$ T-cell activation
  70. ### Topic 2: Diagnostics for rejection
  71. Improving array-based diagnostics for transplant rejection by
  72. optimizing data preprocessing
  73. ### Topic 3: Blood profiling during treatment
  74. Globin-blocking for more effective blood RNA-seq analysis in primate
  75. animal model for experimental graft rejection treatment
  76. ## Today's focus
  77. ### \Large Topic 1: Immune memory
  78. \Large
  79. Genome-wide epigenetic analysis of H3K4 and H3K27 methylation in naïve
  80. and memory $\mathsf{CD4}^{+}$ T-cell activation
  81. ## Memory cells: faster, stronger, and more independent
  82. ![Naïve T-cell activated by APC](graphics/presentation/T-cells-A-SVG.png)
  83. ## Memory cells: faster, stronger, and more independent
  84. ![Naïve T-cell differentiates and proliferates into effector T-cells](graphics/presentation/T-cells-B-SVG.png)
  85. ## Memory cells: faster, stronger, and more independent
  86. ![Post-infection, some effectors cells remain as memory cells](graphics/presentation/T-cells-C-SVG.png)
  87. ## Memory cells: faster, stronger, and more independent
  88. ![Memory T-cells respond more strongly to activation](graphics/presentation/T-cells-D-SVG.png)
  89. ::: notes
  90. Compared to naïve cells, memory cells:
  91. * respond to a lower antigen concentration
  92. * respond more strongly at any given antigen concentration
  93. * require less co-stimulation
  94. * are somewhat independent of some types of co-stimulation required by
  95. naïve cells
  96. * evolve over time to respond even more strongly to their antigen
  97. :::
  98. ## Memory cells are a problem for immune suppression
  99. \large
  100. Result:
  101. \normalsize
  102. * Memory cells require progressively higher doses of immune suppresive
  103. drugs
  104. * Dosage cannot be increased indefinitely without compromising the
  105. immune system's ability to fight infection
  106. ## We need a better understanding of immune memory
  107. * Cell surface markers of naïve and memory $\mathsf{CD4}^{+}$ T-cells
  108. are fairly well-characterized
  109. * But internal mechanisms that allow memory cells to respond
  110. differently to the same stimulus (antigen presentation) are not
  111. well-understood
  112. . . .
  113. * A reasonable hypothesis is that some of these mechanisms are
  114. epigenetic: using histone marks or DNA methylation to regulate the
  115. expression of certain genes
  116. * We can test this hypothesis by measuring gene expression (using
  117. RNA-seq) and histone methylation (using ChIP-seq) in naïve and
  118. memory T-cells before and after activation
  119. ## Experimental design
  120. * Separately isolate naïve and memory $\mathsf{CD4}^{+}$ T-cells from
  121. 4 donors
  122. * Activate with CD3/CD28 beads
  123. * Take samples at 4 time points: Day 0 (pre-activation), Day 1 (early
  124. activation), Day 5 (peak activation), and Day 14 (post-activation)
  125. * Do RNA-seq + ChIP-seq for 3 histone marks (H3K4me2, H3K4me3, &
  126. H3K27me3) for each sample.
  127. Data generated by Sarah Lamere, published in GEO as
  128. [GSE73214](https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE73214)
  129. ## ChIP-seq sequences DNA bound to marked histones[^chipseq]
  130. \centering
  131. ![](graphics/presentation/NRG-chipseq.png){ height=70% }
  132. [^chipseq]: [Furey. "ChIP-seq and beyond: New and improved methodologies to detect and characterize protein-DNA interactions". In: Nature Reviews Genetics (2012)](http://www.nature.com/articles/nrg3306)
  133. ## H3K4me2, H3K4me3, H3K27me3
  134. Why? <!-- TODO -->
  135. ## A few intermediate analysis steps are required
  136. ![Flowchart of workflow for data analysis](graphics/CD4-csaw/rulegraphs/rulegraph-all-RASTER100.png)
  137. ## Histone modifications occur on consecutive histones
  138. ![ChIP-seq coverage in IL2 gene[^lamerethesis]](graphics/presentation/LaMere-thesis-fig3.9-SVG-CROP.png){ height=65% }
  139. [^lamerethesis]: Sarah LaMere. "Dynamic epigenetic regulation of CD4 T cell activation and memory formation". PhD thesis. TSRI, 2015.
  140. ## Histone modifications occur on consecutive histones
  141. ![Strand cross-correlation plots](graphics/presentation/CCF-plots-A-SVG.png)
  142. ## Histone modifications occur on consecutive histones
  143. ![Strand cross-correlation plots](graphics/presentation/CCF-plots-B-SVG.png)
  144. ## Histone modifications occur on consecutive histones
  145. ![Strand cross-correlation plots](graphics/presentation/CCF-plots-C-SVG.png)
  146. ## SICER identifies enriched regions across the genome
  147. ![Finding "islands" of coverage with SICER[^sicer]](graphics/presentation/SICER-fig1-SVG.png)
  148. [^sicer]: [Zang et al. “A clustering approach for identification of enriched domains from histone modification ChIP-Seq data”. In: Bioinformatics 25.15 (2009)](https://doi.org/10.1093/bioinformatics/btp340)
  149. ## IDR identifies *reproducible* enriched regions
  150. ![Example irreproducible discovery rate[^idr] score consistency plot](graphics/presentation/IDR-example-CROP-RASTER.png){ height=65% }
  151. [^idr]: [Li et al. “Measuring reproducibility of high-throughput experiments”. In: AOAS (2011)](https://doi.org/10.1214/11-AOAS466)
  152. ## Finding enriched regions across the genome
  153. ![Peak-calling summary statistics](graphics/presentation/RCT-thesis-table2.2-SVG-CROP.png)
  154. ## Each histone mark has an "effective promoter radius"
  155. ![Enrichment of peaks near promoters](graphics/CD4-csaw/Promoter-Peak-Distance-Profile-PAGE1-CROP.pdf)
  156. ## Peaks in promoters correlate with gene expression
  157. ![Expression distributions of genes with and without promoter peaks](graphics/presentation/FPKM-by-Peak-Violin-Plots-A-SVG.png)
  158. ## Peaks in promoters correlate with gene expression
  159. ![Expression distributions of genes with and without promoter peaks](graphics/presentation/FPKM-by-Peak-Violin-Plots-B-SVG.png)
  160. ## Peaks in promoters correlate with gene expression
  161. ![Expression distributions of genes with and without promoter peaks](graphics/presentation/FPKM-by-Peak-Violin-Plots-C-SVG.png)
  162. ## Peaks in promoters correlate with gene expression
  163. ![Expression distributions of genes with and without promoter peaks](graphics/presentation/FPKM-by-Peak-Violin-Plots-D-SVG.png)
  164. ## Peaks in promoters correlate with gene expression
  165. ![Expression distributions of genes with and without promoter peaks](graphics/presentation/FPKM-by-Peak-Violin-Plots-Z-SVG.png)
  166. ## The story so far
  167. <!-- TODO: Left column: text; right column: flip through relevant image -->
  168. * H3K4me2, H3K4me3, and H3K27me3 occur on many consecutive histones in
  169. broad regions across the genome
  170. * These enriched regions occur more commonly within a certain radius
  171. of gene promoters
  172. * This "effective promoter radius" is consistent across all samples
  173. for a given histone mark, but differs between histone marks
  174. * Presence or absence of a peak within this radius is correlated with
  175. gene expression
  176. . . .
  177. Next: Does the position of a histone modification within a gene
  178. promoter matter to that gene's expression, or is it merely the
  179. presence or absence anywhere within the promoter?
  180. ## H3K4me2 promoter neighborhood K-means clusters
  181. ![Cluster means for H3K4me2](graphics/CD4-csaw/ChIP-seq/H3K4me2-neighborhood-clusters-CROP.png)
  182. ## H3K4me2 promoter neighborhood cluster PCA
  183. :::::::::: {.columns}
  184. ::: {.column width="50%"}
  185. ![Cluster means for H3K4me2](graphics/CD4-csaw/ChIP-seq/H3K4me2-neighborhood-clusters-CROP.png)
  186. :::
  187. ::: {.column width="50%"}
  188. ![PCA plot of promoters](graphics/CD4-csaw/ChIP-seq/H3K4me2-neighborhood-PCA-CROP.png)
  189. :::
  190. ::::::::::
  191. ## H3K4me2 promoter neighborhood cluster expression
  192. :::::::::: {.columns}
  193. ::: {.column width="50%"}
  194. ![Cluster means for H3K4me2](graphics/CD4-csaw/ChIP-seq/H3K4me2-neighborhood-clusters-CROP.png)
  195. :::
  196. ::: {.column width="50%"}
  197. ![Cluster expression distributions](graphics/CD4-csaw/ChIP-seq/H3K4me2-neighborhood-expression-CROP-ROT90.png)
  198. :::
  199. ::::::::::
  200. ## H3K4me3 promoter neighborhood cluster PCA
  201. :::::::::: {.columns}
  202. ::: {.column width="50%"}
  203. ![Cluster means for H3K4me3](graphics/CD4-csaw/ChIP-seq/H3K4me3-neighborhood-clusters-CROP.png)
  204. :::
  205. ::: {.column width="50%"}
  206. ![PCA plot of promoters](graphics/CD4-csaw/ChIP-seq/H3K4me3-neighborhood-PCA-CROP.png)
  207. :::
  208. ::::::::::
  209. ## H3K4me3 promoter neighborhood cluster expression
  210. :::::::::: {.columns}
  211. ::: {.column width="50%"}
  212. ![Cluster means for H3K4me3](graphics/CD4-csaw/ChIP-seq/H3K4me3-neighborhood-clusters-CROP.png)
  213. :::
  214. ::: {.column width="50%"}
  215. ![Cluster expression distributions](graphics/CD4-csaw/ChIP-seq/H3K4me3-neighborhood-expression-CROP-ROT90.png)
  216. :::
  217. ::::::::::
  218. ## H3K27me3 promoter neighborhood cluster PCA
  219. :::::::::: {.columns}
  220. ::: {.column width="50%"}
  221. ![Cluster means for H3K27me3](graphics/CD4-csaw/ChIP-seq/H3K27me3-neighborhood-clusters-CROP.png)
  222. :::
  223. ::: {.column width="50%"}
  224. ![PCA plot of promoters](graphics/CD4-csaw/ChIP-seq/H3K27me3-neighborhood-PCA-CROP.png)
  225. :::
  226. ::::::::::
  227. ## H3K27me3 promoter neighborhood cluster expression
  228. :::::::::: {.columns}
  229. ::: {.column width="50%"}
  230. ![Cluster means for H3K27me3](graphics/CD4-csaw/ChIP-seq/H3K27me3-neighborhood-clusters-CROP.png)
  231. :::
  232. ::: {.column width="50%"}
  233. ![Cluster expression distributions](graphics/CD4-csaw/ChIP-seq/H3K27me3-neighborhood-expression-CROP-ROT90.png)
  234. :::
  235. ::::::::::
  236. ## What have we learned?
  237. ### H3K4me2 & H3K4me3
  238. * Peak closer to promoter $\Rightarrow$ more likely gene is highly
  239. expressed
  240. * Slightly asymmetric in favor of peaks downstream of TSS
  241. . . .
  242. ### H3K27me3
  243. * Depletion of H3K27me3 at TSS associated with elevated gene
  244. expression
  245. * Enrichment of H3K27me3 upstream of TSS even more strongly associated
  246. with elevated expression
  247. * Other coverage profiles not associated with elevated expression
  248. ## Differential modification disappears by Day 14
  249. ![Differential modification between naïve and memory samples at each time point](graphics/presentation/RCT-thesis-table2.4-A-SVG-CROP.png)
  250. ## Differential modification disappears by Day 14
  251. ![Differential modification between naïve and memory samples at each time point](graphics/presentation/RCT-thesis-table2.4-B-SVG-CROP.png)
  252. ## Convergence at Day 14 H3K4me2
  253. ![(Insert figure legend)](graphics/CD4-csaw/ChIP-seq/H3K4me2-promoter-PCA-group-CROP.png)
  254. ## Convergence at Day 14 H3K4me3
  255. ![(Insert figure legend)](graphics/CD4-csaw/ChIP-seq/H3K4me3-promoter-PCA-group-CROP.png)
  256. ## Convergence at Day 14 H3K27me3
  257. ![(Insert figure legend)](graphics/CD4-csaw/ChIP-seq/H3K27me3-promoter-PCA-group-CROP.png)
  258. ## Convergence at Day 14 RNA-seq (PC 2 & 3)
  259. ![(Insert figure legend)](graphics/CD4-csaw/RNA-seq/PCA-final-23-CROP.png)
  260. ## MOFA identifies shared variation across all 4 data sets
  261. ![(Insert figure legend)](graphics/presentation/MOFA-varExplained-matrix-A-CROP.png)
  262. ## MOFA identifies shared variation across all 4 data sets
  263. ![(Insert figure legend)](graphics/presentation/MOFA-varExplained-matrix-B-CROP.png)
  264. ## MOFA shared variation captures convergence pattern
  265. ![(Insert figure legend)](graphics/CD4-csaw/MOFA-LF-scatter-small.png)
  266. ## What have we learned?
  267. * Almost no differential modification observed between naïve and
  268. memory at Day 14, despite plenty of differential modification at
  269. earlier time points.
  270. * RNA-seq data and all 3 histone marks' ChIP-seq data all show
  271. "convergence" between naïve and memory by Day 14 in the first 2 or 3
  272. principal coordinates.
  273. * MOFA captures this convergence pattern in one of the latent factors,
  274. indicating that this is a shared pattern across all 4 data sets.
  275. <!-- ## Slide -->
  276. <!-- ![(Insert figure legend)](graphics/CD4-csaw/LaMere2016_fig8.pdf) -->
  277. ## Takeaway 1: Each histone mark has an "effective promoter radius"
  278. * H3K4me2, H3K4me3, and H3K27me3 ChIP-seq reads are enriched in broad
  279. regions across the genome, representing areas where the histone
  280. modification is present
  281. * These enriched regions occur more commonly within a certain radius
  282. of gene promoters
  283. * This "effective promoter radius" is specific to each histone mark
  284. * Presence or absence of a peak within this radius is correlated with
  285. gene expression
  286. ## Takeaway 2: Peak position within the promoter is important
  287. * H3K4me2 and H3K4me3 peaks are more strongly associated with elevated
  288. gene expression the closer they are to the TSS, with a slight bias
  289. toward downstream peaks.
  290. * H3K27me3 depletion at the TSS and enrichement upstream are both
  291. associated with elevated expression, while other patterns are not.
  292. * In all histone marks, position of modification within promoter
  293. appears to be an important factor in association with gene
  294. expression
  295. ## Takeaway 3: Expression & epigenetic state both converge at Day 14
  296. * At Day 14, almost no differential modification observed between
  297. naïve and memory cells
  298. * Naïve and memory converge visually in PCoA plots
  299. * Convergence is a shared pattern of variation across all 3 histone
  300. marks and gene expression
  301. * This is consistent with the hypothesis that the naïve cells have
  302. differentiated into a more memory-like phenotype by day 14.