Last updated: 2021-02-05
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Knit directory: scATACseq-topics/
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Rmd | 8e3f641 | kevinlkx | 2021-02-05 | cleaned results |
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Rmd | 4458ed5 | kevinlkx | 2021-01-20 | added KLF/SP genes and added an option to compute correlation using -log10P |
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Rmd | c9d6742 | kevinlkx | 2021-01-20 | updated the correlations between motif enrichment (using z-score) and gene z-score |
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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 \(k = 13\).
library(Matrix)
library(fastTopics)
library(dplyr)
library(tidyr)
library(ggplot2)
library(ggrepel)
library(cowplot)
library(plotly)
library(htmlwidgets)
library(DT)
library(reshape2)
library(Logolas)
library(grid)
source("code/motif_analysis.R")
source("code/plots.R")
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"))$fit
fit_multinom <- poisson2multinom(fit)
set.seed(10)
colors_topics <- c("#a6cee3","#1f78b4","#b2df8a","#33a02c","#fb9a99","#e31a1c",
"#fdbf6f","#ff7f00","#cab2d6","#6a3d9a","#ffff99","#b15928",
"gray")
rows <- sample(nrow(fit$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)
Version | Author | Date |
---|---|---|
14eac34 | kevinlkx | 2021-01-19 |
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)
Version | Author | Date |
---|---|---|
14eac34 | kevinlkx | 2021-01-19 |
# 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
Motif enrichment result using regions with z-score above 99% quantile.
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$mlog10P)),
round(motif_res$mlog10P,2))
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
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$motif, 10)
}
DT::datatable(data.frame(rank = 1:10, top_motifs), rownames = F, caption = "Top 10 motifs enriched in each topic.")
# Number of regions selected for each topic:
# k1 k2 k3 k4 k5 k6 k7 k8 k9 k10 k11 k12 k13
# 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363 4363
Heatmap of motif enrichment -log10(p-value).
create_motif_enrichment_heatmap(motif_res, enrichment = "-log10(p-value)",
cluster_motifs = TRUE, cluster_topics = TRUE, motif_filter = 10, horizontal = FALSE,
enrichment_range = c(0,100), method_cluster = "average", font.size.motifs = 4, font.size.topics = 9)
# 243 out of 439 motifs included the heatmap
Plot motif enrichment (-log10 p-value) and the ranking
# Plot enrichment (-log10 p-value) and ranking of the motifs
plots <- vector("list", ncol(motif_res$mlog10P))
names(plots) <- colnames(motif_res$mlog10P)
for( i in 1:length(plots)){
plots[[i]] <- create_motif_enrichment_ranking_plot(motif_res, k = i,
max.overlaps = 20, subsample = FALSE)
}
do.call(plot_grid,plots)
Topic 1 example
print(plots[[1]])
Load pre-computed gene scores
gene.dir <- paste0(out.dir, "/geneanalysis-Cusanovich2018-k=13-TSS-l2")
cat(sprintf("Directory of gene analysis result: %s \n", gene.dir))
genescore_res <- readRDS(file.path(gene.dir, "genescore_result_topics.rds"))
genes <- genescore_res$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-l2
Get TF genes
motif_names <- motif_res$motifs$motif
gene_names <- genescore_res$genes$SYMBOL
common_genes <- intersect(toupper(motif_names), toupper(gene_names))
cat(sprintf("%s TF genes mapped between motif names and gene symbol. \n", length(common_genes)))
motif_gene_table <- data.frame(motif = motif_names[match(common_genes, toupper(motif_names))],
gene = gene_names[match(common_genes, toupper(gene_names))])
# 247 TF genes mapped between motif names and gene symbol.
Compute correlation between motif enrichment z-score and gene score:
Topic 1 example
motif_gene_mapping <- create_motif_gene_cor_scatterplot(motif_res, genescore_res, motif_gene_table,
k = 4, cor.motif = "z-score")
motif_gene_mapping <- motif_gene_mapping[with(motif_gene_mapping, order(motif_mlog10P*cor_zscore, decreasing = T)),]
rownames(motif_gene_mapping) <- 1:nrow(motif_gene_mapping)
cat("Top 10 motifs by motif enrichment (-log10 p-value) and correlation to gene scores: \n")
print(head(motif_gene_mapping[,c("motif","motif_mlog10P", "gene_score", "cor_zscore")], 10))
# Top 10 motifs by motif enrichment (-log10 p-value) and correlation to gene scores:
# motif motif_mlog10P gene_score cor_zscore
# 1 TEAD3(TEA) 89.89896 33.96213 0.8305369
# 2 TEAD1(TEAD) 97.19511 37.87814 0.6162972
# 3 TEAD4(TEA) 93.63389 43.41048 0.6033918
# 4 HNF1b(Homeobox) 53.67880 55.95734 0.9691212
# 5 Foxa2(Forkhead) 29.36699 46.10279 0.8435864
# 6 GRHL2(CP2) 26.10110 88.26210 0.9316662
# 7 FOXA1(Forkhead) 25.61469 67.55695 0.8544556
# 8 HOXB13(Homeobox) 24.12940 35.16238 0.8467272
# 9 Hoxd13(Homeobox) 28.61132 11.97401 0.6732085
# 10 Cdx2(Homeobox) 20.24247 22.57429 0.9163834
GATA family
motif_names <- motif_res$motifs$motif
gene_names <- genescore_res$genes$SYMBOL
TF_motifs <- sort(unique(grep("^GATA\\d*$", motif_names, ignore.case=T, value=T)))
TF_genes <- sort(unique(grep("^GATA\\d*$", gene_names, ignore.case=T, value=T)))
common_genes <- intersect(toupper(TF_motifs), toupper(TF_genes))
motif_gene_table <- data.frame(motif = TF_motifs[match(common_genes, toupper(TF_motifs))],
gene = TF_genes[match(common_genes, toupper(TF_genes))])
print(motif_gene_table)
# motif gene
# 1 Gata1 Gata1
# 2 Gata2 Gata2
# 3 GATA3 Gata3
# 4 Gata4 Gata4
# 5 Gata6 Gata6
Plot GATA motifs in topic 1
# Plot GATA motifs in topic 1
k = 1
motif_order <- order(motif_res$mlog10P[,k], decreasing = T)
motifs <- rownames(motif_res$motifs[motif_order,])
motif_names <- motif_res$motifs[motif_order, "motif"]
selected_motifs <- unique(motifs[match(toupper(motif_gene_table$motif), toupper(motif_names))])
motif.dir <- paste0(homer.dir, "/homer_result_topic_", k, "/knownResults/")
for (i in 1:length(selected_motifs)){
plot_motif_logo(homer_res_topics, selected_motifs[i], k, motif.dir, type = "both")
}
plots <- create_motif_gene_scatterplot(motif_res, genescore_res,
motif_gene_table,
k = 1,
y = "-log10(p-value)",
colors = colors_topics,
max.overlaps = 10)
do.call(plot_grid,plots)
plots <- create_motif_gene_scatterplot(motif_res, genescore_res,
motif_gene_table,
k = 1,
y = "z-score",
colors = colors_topics,
max.overlaps = 10)
do.call(plot_grid,plots)
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] grid stats graphics grDevices utils datasets methods
# [8] base
#
# other attached packages:
# [1] Logolas_1.3.1 reshape2_1.4.3 DT_0.16 htmlwidgets_1.5.3
# [5] plotly_4.9.3 cowplot_1.1.1 ggrepel_0.9.1 ggplot2_3.3.3
# [9] tidyr_1.1.2 dplyr_1.0.3 fastTopics_0.4-29 Matrix_1.2-18
# [13] workflowr_1.6.2
#
# loaded via a namespace (and not attached):
# [1] nlme_3.1-140 mcmc_0.9-7 matrixStats_0.58.0 fs_1.3.1
# [5] bit64_4.0.5 progress_1.2.2 httr_1.4.2 rprojroot_2.0.2
# [9] tools_3.6.1 R6_2.5.0 irlba_2.3.3 DBI_1.1.0
# [13] lazyeval_0.2.2 colorspace_2.0-0 ade4_1.7-16 withr_2.4.1
# [17] tidyselect_1.1.0 prettyunits_1.1.1 bit_4.0.4 compiler_3.6.1
# [21] git2r_0.27.1 quantreg_5.83 SparseM_1.78 labeling_0.4.2
# [25] scales_1.1.1 SQUAREM_2021.1 quadprog_1.5-8 mixsqp_0.3-43
# [29] stringr_1.4.0 digest_0.6.27 rmarkdown_2.6 MCMCpack_1.5-0
# [33] pkgconfig_2.0.3 htmltools_0.5.1.1 invgamma_1.1 rlang_0.4.10
# [37] farver_2.0.3 generics_0.1.0 jsonlite_1.7.2 crosstalk_1.1.1
# [41] magrittr_2.0.1 Rcpp_1.0.6 munsell_0.5.0 ape_5.4-1
# [45] lifecycle_0.2.0 CVXR_1.0-9 stringi_1.5.3 whisker_0.4
# [49] yaml_2.2.1 MASS_7.3-53 Rtsne_0.15 plyr_1.8.6
# [53] parallel_3.6.1 promises_1.1.1 crayon_1.4.0 lattice_0.20-41
# [57] hms_1.0.0 knitr_1.30 pillar_1.4.7 seqinr_4.2-5
# [61] glue_1.4.2 evaluate_0.14 data.table_1.13.6 RcppParallel_5.0.2
# [65] vctrs_0.3.6 httpuv_1.5.4 MatrixModels_0.4-1 gtable_0.3.0
# [69] purrr_0.3.4 ashr_2.2-47 xfun_0.19 gridBase_0.4-7
# [73] Rmpfr_0.8-2 coda_0.19-4 later_1.1.0.1 viridisLite_0.3.0
# [77] truncnorm_1.0-8 tibble_3.0.6 conquer_1.0.2 gmp_0.6-2
# [81] ellipsis_0.3.1