Last updated: 2019-01-03
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| File | Version | Author | Date | Message | 
|---|---|---|---|---|
| Rmd | c3b3bbb | Briana Mittleman | 2019-01-03 | start covariate correlation with pc analysis | 
In this analysis I will look at which collected covariates help explain the variation in the peak data. I am using code from Ben Strobers github, available at https://github.com/BennyStrobes/ipsc_preprocess_pipeline. Specifcially I am looking at the covariate_pc_pve_heatmap function.
library(tidyverse)── Attaching packages ────────────────────────────────────────────────────────── tidyverse 1.2.1 ──✔ ggplot2 3.0.0     ✔ purrr   0.2.5
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Run ?workflowr for help getting startedlibrary(cowplot)
Attaching package: 'cowplot'The following object is masked from 'package:ggplot2':
    ggsavelibrary(reshape2)
Attaching package: 'reshape2'The following object is masked from 'package:tidyr':
    smithsLoad in coverage files:
total_Cov=read.table("../data/PeakCounts/filtered_APApeaks_merged_allchrom_refseqGenes.Transcript_sm_quant.Total_fixed.fc", header=T, stringsAsFactors = F)[,7:45]
nuclear_Cov=read.table("../data/PeakCounts/filtered_APApeaks_merged_allchrom_refseqGenes.Transcript_sm_quant.Nuclear_fixed.fc", header=T, stringsAsFactors = F)[,7:45]Perform PCA:
Total
pca_tot_peak=prcomp(total_Cov, center=T,scale=T)
pca_tot_df=as.data.frame(pca_tot_peak$rotation) %>% rownames_to_column(var="lib") %>% select(1:11) %>% mutate(line=substr(lib,2,6))
pca_tot_df_fix=bind_cols(line=pca_tot_df[,dim(pca_tot_df)[[2]]],pca_tot_df[,3:dim(pca_tot_df)[[2]]-1])Nuclear
pca_nuc_peak=prcomp(nuclear_Cov, center=T,scale=T)
pca_nuc_df=as.data.frame(pca_nuc_peak$rotation) %>% rownames_to_column(var="lib") %>% select(1:11) %>% mutate(line=substr(lib,2,6))
pca_nuc_df_fix=bind_cols(line=pca_nuc_df[,dim(pca_nuc_df)[[2]]],pca_nuc_df[,3:dim(pca_nuc_df)[[2]]-1])Get the line order as a vector
line_order=pca_nuc_df_fix[["line"]]Load covariate File- filter out lines not yet sequenced and reorder.
covar=read.csv("../data/threePrimeSeqMetaData.csv")[1:78,]Subset by fraction:
tot_covar=covar %>% filter(fraction=="total") %>% slice(match(line_order, line))
nuc_covar=covar %>% filter(fraction=="nuclear")%>% slice(match(line_order, line))Subset only a few covariates to try first:
tot_covar_filt=tot_covar %>% select(batch,comb_mapped,Sex, alive_avg, undiluted_avg, cycles)
nuc_covar_filt=nuc_covar %>% select(batch,Sex, alive_avg, undiluted_avg, cycles)Update Ben’s Function for my data:
covariate_pc_pve_heatmap <- function(pc_df, covariate_df, output_file, title) {
  # Load in data
  pcs <- pc_df
  covs <- covariate_df
# Remove unimportant columns
  pcs <- as.matrix(pcs[,2:dim(pcs)[[2]]])
  covs <- data.frame(as.matrix(covs[,1:dim(covs)[[2]]]))
  # Initialize PVE heatmap
  pve_map <- matrix(0, dim(covs)[2], dim(pcs)[2])
  colnames(pve_map) <- colnames(pcs)
  rownames(pve_map) <- colnames(covs)
  # Loop through each PC, COV Pair and take correlation
  num_pcs <- dim(pcs)[2]
  num_covs <- dim(covs)[2]
  for (num_pc in 1:num_pcs) {
    for (num_cov in 1:num_covs) {
      pc_vec <- pcs[,num_pc]
      cov_vec <- covs[,num_cov]
      lin_model <- lm(pc_vec ~ cov_vec)
      pve_map[num_cov, num_pc] <- summary(lin_model)$adj.r.squared
    }
  }
  pve_map
  ord <- hclust( dist(scale(pve_map), method = "euclidean"), method = "ward.D" )$order
  melted_mat <- melt(pve_map)
  colnames(melted_mat) <- c("Covariate", "PC","PVE")
  #  Use factors to represent covariate and pc name
  melted_mat$Covariate <- factor(melted_mat$Covariate, levels = rownames(pve_map)[ord])
  melted_mat$PC <- factor(melted_mat$PC)
  if (dim(pcs)[2] == 10) {
    levels(melted_mat$PC) <- c(levels(melted_mat$PC)[1],levels(melted_mat$PC)[3:10],levels(melted_mat$PC)[2])
  }
  if (dim(pcs)[2] == 21) {
    levels(melted_mat$PC) <- c(levels(melted_mat$PC)[1],levels(melted_mat$PC)[12],levels(melted_mat$PC)[15:21],levels(melted_mat$PC)[2:11], levels(melted_mat$PC)[13:14])
  }
  #  PLOT!
  heatmap <- ggplot(data=melted_mat, aes(x=Covariate, y=PC)) + geom_tile(aes(fill=PVE)) + scale_fill_gradient2(midpoint=-.05, guide="colorbar")
  heatmap <- heatmap + theme(text = element_text(size=14), panel.background = element_blank(), axis.text.x = element_text(angle = 90, vjust=.5))
  heatmap <- heatmap + labs(y="latent factor", title=title)
  # Save File
  ggsave(heatmap, file=output_file,width = 19,height=13.5,units="cm")
}Try it:
Total
covariate_pc_pve_heatmap(pca_tot_df_fix, tot_covar_filt, "../output/plots/TotalCovariatesagainstPCs.39ind.png", "Total Covariates")Try it: Nuclear
covariate_pc_pve_heatmap(pca_nuc_df_fix, nuc_covar_filt, "../output/plots/NuclearCovariatesagainstPCs.39ind.png", "Nuclear Covariates")sessionInfo()R version 3.5.1 (2018-07-02)
Platform: x86_64-apple-darwin15.6.0 (64-bit)
Running under: macOS  10.14.1
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BLAS: /Library/Frameworks/R.framework/Versions/3.5/Resources/lib/libRblas.0.dylib
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