Last updated: 2021-01-19

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Knit directory: scATACseq-topics/

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Rmd 0134bdf kevinlkx 2021-01-19 fix colors in scatter plots of create_motif_gene_scatterplot
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Rmd 5f18411 kevinlkx 2021-01-19 Plot motif enrichment and correlate with gene scores

Here we perform TF motif analysis for the Cusanovich et al (2018) scATAC-seq result inferred from the multinomial topic model with \(k = 13\).

Load packages and some functions used in this analysis

library(Matrix)
library(fastTopics)
library(dplyr)
library(tidyr)
library(ggplot2)
library(ggrepel)
library(cowplot)
library(plotly)
library(htmlwidgets)
library(DT)
library(reshape2)
source("code/plots.R")

Load data and topic model results

Load the data and the \(k = 13\) Poisson NMF fit results.

data.dir <- "/project2/mstephens/kevinluo/scATACseq-topics/data/Cusanovich_2018/processed_data/"
load(file.path(data.dir, "Cusanovich_2018.RData"))
rm(counts)
fit.dir <- "/project2/mstephens/kevinluo/scATACseq-topics/output/Cusanovich_2018"
fit <- readRDS(file.path(fit.dir, "/fit-Cusanovich2018-scd-ex-k=13.rds"))$fit
fit_multinom <- poisson2multinom(fit)

Visualize by Structure plot grouped by tissues

set.seed(10)
colors_topics <- c("#a6cee3","#1f78b4","#b2df8a","#33a02c","#fb9a99","#e31a1c",
                   "#fdbf6f","#ff7f00","#cab2d6","#6a3d9a","#ffff99","#b15928",
                   "gray")
rows <- sample(nrow(fit$L),4000)
samples$tissue <- as.factor(samples$tissue)

p.structure <- structure_plot(select(fit_multinom,loadings = rows),
                                grouping = samples[rows, "tissue"],n = Inf,gap = 40,
                                perplexity = 50,topics = 1:13,colors = colors_topics,
                                num_threads = 4,verbose = FALSE)

print(p.structure)

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Differential accessbility analysis of the ATAC-seq regions for the topics

Load results from differential accessbility analysis for the topics

out.dir <- "/project2/mstephens/kevinluo/scATACseq-topics/output/Cusanovich_2018"
cat(sprintf("Load results from %s \n", out.dir))
# Load results from /project2/mstephens/kevinluo/scATACseq-topics/output/Cusanovich_2018
diff_count_topics <- readRDS(file.path(out.dir, "/diffcount-Cusanovich2018-13topics.rds"))

Distribution of z-scores

zscore_topics <-  melt(diff_count_topics$Z)
colnames(zscore_topics) <- c("region", "topic", "zscore")
levels(zscore_topics$topic) <- colnames(diff_count_topics$Z)

z.quantile.99 <- apply(abs(diff_count_topics$Z), 2, quantile, 0.99)
cat("z-score 99% quantile: \n")
print(z.quantile.99)

p.hist.zscores <- ggplot(zscore_topics, aes(x=zscore)) + 
  geom_histogram(binwidth=1, color="black", fill="white") + 
  coord_cartesian(xlim = c(-10, 30)) + theme_cowplot(font_size = 10) +
  facet_wrap(~ topic, ncol=4)

print(p.hist.zscores)

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# z-score 99% quantile: 
#       k1       k2       k3       k4       k5       k6       k7       k8 
# 21.42992 31.48751 25.46082 25.97670 34.64418 37.09098 32.07250 39.65746 
#       k9      k10      k11      k12      k13 
# 25.93102 15.88394 34.29782 39.80147 20.71928

Volcano plot of the regions for topic 1

volcano_plot(diff_count_topics,k = 1,label_above_quantile = Inf, 
             subsample_below_quantile = 0.7, subsample_rate = 0.1)
# 161397 out of 436206 data points will be included in plot

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Motif enrichment analysis using HOMER

Compile Homer results across topics

homer.dir <- paste0(out.dir, "/motifanalysis-Cusanovich2018-k=13-quantile/HOMER")
cat(sprintf("Directory of motif analysis result: %s \n", homer.dir))
homer_res_topics <- readRDS(file.path(homer.dir, "/homer_knownResults.rds"))
selected_regions <- readRDS(file.path(homer.dir, "/selected_regions.rds"))

# Compile Homer results (pvalue and ranking) across topics
motif_res <- compile_homer_motif_res(homer_res_topics)
saveRDS(motif_res, paste0(homer.dir, "/homer_motif_enrichment_results.rds"))
cat("compiled homer motif results are saved in", paste0(homer.dir, "/homer_motif_enrichment_results.rds"))

motif_table <- data.frame(motif = gsub("/.*", "", rownames(motif_res$mlog10P)),
                          motif_res$mlog10P)
DT::datatable(motif_table, rownames = F, caption = "Motif enrichment (-log10P)")
# Directory of motif analysis result: /project2/mstephens/kevinluo/scATACseq-topics/output/Cusanovich_2018/motifanalysis-Cusanovich2018-k=13-quantile/HOMER 
# compiled homer motif results are saved in /project2/mstephens/kevinluo/scATACseq-topics/output/Cusanovich_2018/motifanalysis-Cusanovich2018-k=13-quantile/HOMER/homer_motif_enrichment_results.rds

Top 10 motifs in each topic

cat("Number of regions selected for each topic: \n")
print(mapply(nrow, selected_regions[1:(length(selected_regions)-1)]))

colnames_homer <- c("motif_name", "consensus", "P", "log10P", "Padj",  "num_target", "percent_target", "num_bg", "percent_bg")

top_motifs <- data.frame(matrix(nrow=10, ncol = length(homer_res_topics)))
colnames(top_motifs) <- names(homer_res_topics)
for (k in 1:length(homer_res_topics)){
  homer_res <- homer_res_topics[[k]]
  colnames(homer_res) <- colnames_homer
  homer_res <- homer_res %>% separate(motif_name, c("motif", "origin", "database"), "/")
  top_motifs[,k] <- head(homer_res$motif, 10)
}

DT::datatable(data.frame(rank = 1:10, top_motifs), rownames = F, caption = "Top 10 motifs enriched in each topic.")
# Number of regions selected for each topic: 
#   k1   k2   k3   k4   k5   k6   k7   k8   k9  k10  k11  k12  k13 
# 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363

Heatmap of motif enrichment across topics

Clustering motifs by hierarchical clustering (motifs with similar enrichment across topics are plotted together)

create_motif_enrichment_heatmap(motif_res, cluster_motifs = TRUE, cluster_topics = FALSE, filter_motifs = TRUE, min_enrichment = 50, 
                                max_enrichment = 100, method_cluster = "average", font.size.motifs = 4, font.size.topics = 9)

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# 180 out of 439 motifs included the heatmap

Cluster both motifs and topics by hierarchical clustering

create_motif_enrichment_heatmap(motif_res, cluster_motifs = TRUE, cluster_topics = TRUE, filter_motifs = TRUE, min_enrichment = 50, 
                                max_enrichment = 100, method_cluster = "average", font.size.motifs = 4, font.size.topics = 9)

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# 180 out of 439 motifs included the heatmap

Scatterplots of motif enrichment

#Plot enrichment (-log10 p-value) and ranking of the motifs

plots <- vector("list", ncol(motif_res$mlog10P))
names(plots) <- colnames(motif_res$mlog10P)

for( i in 1:length(plots)){
 plots[[i]] <- create_motif_enrichment_ranking_plot(motif_res, k = i, 
                                                    max.overlaps = 15, subsample = FALSE)
}

# do.call(plot_grid,plots)

Plot motif enrichment (-log10 p-value) and ranking in topic 1

print(plots[[1]])

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# Plot motif enrichment (-log10 p-value) in each topic vs other topics

plots <- vector("list", ncol(motif_res$mlog10P))
names(plots) <- colnames(motif_res$mlog10P)

for( i in 1:length(homer_res_topics)){
 plots[[i]] <- create_motif_enrichment_plot(motif_res, k = i, 
                                            max.overlaps = 15, subsample = TRUE)
}

# do.call(plot_grid,plots)

Plot motif enrichment (-log10 p-value) in topic 1 vs other topics

print(plots[[1]])

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Motif enrichment vs gene score

Load pre-computed gene scores

gene.dir <- paste0(out.dir, "/geneanalysis-Cusanovich2018-k=13-TSS-sum")
cat(sprintf("Directory of gene analysis result: %s \n", gene.dir))
genescore_res <- readRDS(file.path(gene.dir, "genescore_result_topics.rds"))

genes <- genescore_res$genes
gene_scores <- genescore_res$Z
rownames(gene_scores) <- genes$SYMBOL
gene_logFC <- genescore_res$beta
rownames(gene_logFC) <- genes$SYMBOL
# Directory of gene analysis result: /project2/mstephens/kevinluo/scATACseq-topics/output/Cusanovich_2018/geneanalysis-Cusanovich2018-k=13-TSS-sum

Get TF genes

motif_names <- gsub("\\s*\\(.*", "", motif_res$motifs$motif)
gene_names <- genes$SYMBOL

TF_genes <- intersect(toupper(motif_names), toupper(gene_names))
cat(sprintf("%s TF genes mapped between motif names and gene symbol. \n", length(TF_genes)))
# 250 TF genes mapped between motif names and gene symbol.

Compute correlation between motif enrichment and gene score:

Plot motif enrichment (-log10 p-value) and correlation to gene scores for topic 1

motif_gene_mapping <- create_motif_enrichment_cor_plot(motif_res$mlog10P, gene_scores, motif_names, gene_names, TF_genes, k = 1, 
                                                       cor.method = "pearson", max.overlaps = 15)

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motif_gene_mapping <- motif_gene_mapping[with(motif_gene_mapping, order(motif.mlog10P1*cor, decreasing = T)),]

cat("Top motifs by motif enrichment (-log10 p-value) and correlation to gene scores: \n")
rownames(motif_gene_mapping) <- 1:nrow(motif_gene_mapping)
print(head(motif_gene_mapping, 10))
# Top motifs by motif enrichment (-log10 p-value) and correlation to gene scores: 
#     gene       motif motif.mlog10P1 motif.mlog10P0        cor     cor.pval
# 1  Gata2   Gata2(Zf)        1060.00         108.20 0.62996339 2.101795e-02
# 2  Gata1   Gata1(Zf)        1031.00         110.50 0.56449139 4.445294e-02
# 3   Klf1    KLF1(Zf)         152.30         210.40 0.56294117 4.517048e-02
# 4   Klf5    KLF5(Zf)         145.50         283.20 0.38552159 1.932744e-01
# 5    Sp2     Sp2(Zf)         137.70         122.20 0.39882226 1.770453e-01
# 6  Gata4   Gata4(Zf)        1043.00         128.70 0.05110547 8.683118e-01
# 7  Bach1 Bach1(bZIP)          54.72          14.08 0.37361028 2.085752e-01
# 8  Klf14   KLF14(Zf)          72.62          66.01 0.25921375 3.924431e-01
# 9   Spib   SpiB(ETS)          17.16         870.20 0.99145723 4.403225e-11
# 10 Tcf21 Tcf21(bHLH)          18.96         271.30 0.89029474 4.525020e-05

Plot motif enrichment (-log10 p-value) and gene scores for GATA genes

colors_topics <- c("#a6cee3","#1f78b4","#b2df8a","#33a02c","#fb9a99","#e31a1c",
                   "#fdbf6f","#ff7f00","#cab2d6","#6a3d9a","#ffff99","#b15928",
                   "gray")

GATA_genes <- grep("GATA", TF_genes, ignore.case=T, value=T)

plots <- create_motif_gene_scatterplot(motif_matrix = motif_res$mlog10P,
                                       gene_matrix = gene_scores, 
                                       motif_names, gene_names, 
                                       selected_genes = GATA_genes,
                                       colors = colors_topics,
                                       max.overlaps = 10)

do.call(plot_grid,plots)

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sessionInfo()
# R version 3.6.1 (2019-07-05)
# Platform: x86_64-pc-linux-gnu (64-bit)
# Running under: Scientific Linux 7.4 (Nitrogen)
# 
# Matrix products: default
# BLAS/LAPACK: /software/openblas-0.2.19-el7-x86_64/lib/libopenblas_haswellp-r0.2.19.so
# 
# locale:
#  [1] LC_CTYPE=en_US.UTF-8       LC_NUMERIC=C              
#  [3] LC_TIME=en_US.UTF-8        LC_COLLATE=en_US.UTF-8    
#  [5] LC_MONETARY=en_US.UTF-8    LC_MESSAGES=en_US.UTF-8   
#  [7] LC_PAPER=en_US.UTF-8       LC_NAME=C                 
#  [9] LC_ADDRESS=C               LC_TELEPHONE=C            
# [11] LC_MEASUREMENT=en_US.UTF-8 LC_IDENTIFICATION=C       
# 
# attached base packages:
# [1] stats     graphics  grDevices utils     datasets  methods   base     
# 
# other attached packages:
#  [1] reshape2_1.4.3    DT_0.16           htmlwidgets_1.5.3 plotly_4.9.2.1   
#  [5] cowplot_1.1.0     ggrepel_0.9.0     ggplot2_3.3.2     tidyr_1.1.2      
#  [9] dplyr_1.0.2       fastTopics_0.4-6  Matrix_1.2-18     workflowr_1.6.2  
# 
# loaded via a namespace (and not attached):
#  [1] Rcpp_1.0.5         lattice_0.20-41    prettyunits_1.1.1  rprojroot_2.0.2   
#  [5] digest_0.6.27      plyr_1.8.6         R6_2.5.0           MatrixModels_0.4-1
#  [9] evaluate_0.14      coda_0.19-4        httr_1.4.2         pillar_1.4.7      
# [13] rlang_0.4.9        progress_1.2.2     lazyeval_0.2.2     data.table_1.13.4 
# [17] irlba_2.3.3        SparseM_1.78       whisker_0.4        rmarkdown_2.6     
# [21] labeling_0.4.2     Rtsne_0.15         stringr_1.4.0      munsell_0.5.0     
# [25] compiler_3.6.1     httpuv_1.5.4       xfun_0.19          pkgconfig_2.0.3   
# [29] mcmc_0.9-7         htmltools_0.5.0    tidyselect_1.1.0   tibble_3.0.4      
# [33] quadprog_1.5-8     matrixStats_0.57.0 viridisLite_0.3.0  withr_2.3.0       
# [37] crayon_1.3.4       conquer_1.0.2      later_1.1.0.1      MASS_7.3-53       
# [41] grid_3.6.1         jsonlite_1.7.2     gtable_0.3.0       lifecycle_0.2.0   
# [45] git2r_0.27.1       magrittr_2.0.1     scales_1.1.1       RcppParallel_5.0.2
# [49] stringi_1.5.3      farver_2.0.3       fs_1.3.1           promises_1.1.1    
# [53] ellipsis_0.3.1     generics_0.1.0     vctrs_0.3.6        tools_3.6.1       
# [57] glue_1.4.2         purrr_0.3.4        crosstalk_1.1.0.1  hms_0.5.3         
# [61] yaml_2.2.1         colorspace_2.0-0   knitr_1.30         quantreg_5.75     
# [65] MCMCpack_1.4-9