#!/usr/bin/env Rscript # # This script makes a pca of all samples and a heatmap of sample distances. # # The inputs to the script are counts file, design file and the number of samples. # # How to run? # Rscript summary_plots.r # Example: Rscript summary_plots.r counts.txt design.txt 6 # Design file example: # Sample Condition # MCVS450 MCVS # MCVS515 MCVS # MCVS520 MCVS # MNS456 MNS # MNS486 MNS # MNS580 MNS read <- function(counts_file, design_file,number_of_samples){ counts = read.table(counts_file, header=TRUE, sep="\t", row.names=1 ) idx = ncol(counts) - number_of_samples # Cut out the valid columns. if (idx > 0) counts = counts[-c(1:idx)] else counts=counts numeric_idx = sapply(counts, mode) == 'numeric' counts[numeric_idx] = round(counts[numeric_idx], 0) colData = read.table(design_file, header=TRUE, sep="\t", row.names=1 ) # Create DESEq2 dataset. dds = DESeqDataSetFromMatrix(countData=counts, colData=colData, design = ~1) # Variance Stabilizing Transformation. vsd = vst(dds) names = colnames(counts) groups = colnames(colData) rlist <- list("vsd" = vsd, "names"=names, "groups" =groups) return(rlist) } # Command line argument. args = commandArgs(trailingOnly=TRUE) if (length(args)!=3) { stop("Counts file, Design file and the number of samples must be specified at the commandline", call.=FALSE) } # Load the library while suppressing verbose messages. suppressPackageStartupMessages(library(DESeq2)) suppressPackageStartupMessages(library(ggplot2)) # Set the plot dimensions. WIDTH = 12 HEIGHT = 8 # The first argument to the script -counts file infile = args[1] # The second argument to the script - design file coldata_file = args[2] # The third argument to the script - total number of samples. sno = args[3] sno= as.numeric(sno) res = read(infile, coldata_file, sno) vsd= res$vsd names = res$names groups = res$groups # Open the drawing device. pdf('pca.pdf', width = WIDTH, height = HEIGHT) par(mfrow = c(2,1)) nudge <- position_nudge(y = 0.5) z=plotPCA(vsd, intgroup=c(groups)) z+ geom_text(aes(label = names), position=nudge, size = 2.5) +ggtitle(aes("PCA")) dev.off() # # Plot heatmap of sample distances # library(pheatmap) library("RColorBrewer") sampleDists = dist(t(assay(vsd))) sampleDistMatrix = as.matrix(sampleDists) colnames(sampleDistMatrix) = NULL colors = colorRampPalette( rev(brewer.pal(9, "Blues")) )(255) # Open the drawing device. pdf('heatmap.pdf', width = 8, height = HEIGHT) pheatmap(sampleDistMatrix, clustering_distance_rows=sampleDists, clustering_distance_cols=sampleDists, col=colors) + geom_label(aes(label = names)) dev.off()