SEQanswers

Go Back   SEQanswers > Bioinformatics > Bioinformatics



Similar Threads
Thread Thread Starter Forum Replies Last Post
Multiple comparisons using DESeq2 johnU Bioinformatics 0 08-09-2017 01:16 PM
comparison of DESeq, DESeq2 and edgeR jay2008 Bioinformatics 3 02-15-2016 12:38 AM
[DESeq2] Multiple replicates, multiple treatments KYR Bioinformatics 4 08-02-2014 07:01 AM
DESeq2 error in data.frame (multiple treatments and multiple replicates) KYR Bioinformatics 1 07-16-2014 07:35 AM
DESeq2 multiple levels id0 Bioinformatics 3 05-30-2014 12:31 PM

Reply
 
Thread Tools
Old 01-09-2019, 07:39 AM   #1
dazhudou1122
Junior Member
 
Location: UTSW

Join Date: Aug 2016
Posts: 2
Default DESeq2 multiple comparison

Dear Seqanswers community:

I ran into a question when I was doing RNA-seq analysis using DeSEQ2. I have 4 groups, 3 samples per group, and set my groups using the following code:

(condition <- factor(c(rep("ctl", 3), rep("A", 3), rep("B", 3), rep("C", 3))))

Can anyone tell me how the comparison in DeSEQ2 is done? I am not sure what the p value and log2FC mean in the default output. Supposedly it should be outputting ctl vs A in the default output. But the data is different when I have only ctl and A as input (2 groups). Also, is there a way to specify how the program performs the comparison? I read some previous threads but the answers were not very clear. Any help will be highly appreciated!

Best,

Wenhan

Below is the code I used:

countdata <- read.table("B6_B6MHV_B6MHVWY.txt", header=TRUE, row.names=1)
countdata <- countdata[ ,6:ncol(countdata)]
colnames(countdata) <- gsub("\\.[sb]am$", "", colnames(countdata))
countdata <- as.matrix(countdata)
head(countdata)
(condition <- factor(c(rep("ctl", 3), rep("A", 3), rep("B", 3), rep("C", 3))))
library(DESeq2)
(coldata <- data.frame(row.names=colnames(countdata), condition))
dds <- DESeqDataSetFromMatrix(countData=countdata, colData=coldata, design=~condition)
dds
dds <- DESeq(dds)
# Plot
dispersions
png("qc-dispersions.png", 2000, 2000, pointsize=20)
plotDispEsts(dds, main="Dispersion plot")
dev.off()

# Regularized log transformation for clustering/heatmaps, etc
rld <- rlogTransformation(dds)
head(assay(rld))
hist(assay(rld))

# Colors for plots below
## Ugly:
## (mycols <- 1:length(unique(condition)))
## Use RColorBrewer, better
library(RColorBrewer)
(mycols <- brewer.pal(8, "Dark2")[1:length(unique(condition))])

# Sample distance heatmap
sampleDists <- as.matrix(dist(t(assay(rld))))
library(gplots)
png("qc-heatmap-samples.png", w=1500, h=2500, pointsize=1500)
heatmap.2(as.matrix(sampleDists), key=F, trace="none",
col=colorpanel(100, "black", "white"),
ColSideColors=mycols[condition], RowSideColors=mycols[condition],
margin=c(10, 10), main="Sample Distance Matrix")
dev.off()

# Principal components analysis
## Could do with built-in DESeq2 function:
## DESeq2:lotPCA(rld, intgroup="condition")
## I like mine better:
rld_pca <- function (rld, intgroup = "condition", ntop = 500, colors=NULL, legendpos="bottomleft", main="PCA Biplot", textcx=1, ...) {
require(genefilter)
require(calibrate)
require(RColorBrewer)
rv = rowVars(assay(rld))
select = order(rv, decreasing = TRUE)[seq_len(min(ntop, length(rv)))]
pca = prcomp(t(assay(rld)[select, ]))
fac = factor(apply(as.data.frame(colData(rld)[, intgroup, drop = FALSE]), 1, paste, collapse = " : "))
if (is.null(colors)) {
if (nlevels(fac) >= 3) {
colors = brewer.pal(nlevels(fac), "Paired")
} else {
colors = c("black", "red")
}
}
pc1var <- round(summary(pca)$importance[2,1]*100, digits=1)
pc2var <- round(summary(pca)$importance[2,2]*100, digits=1)
pc1lab <- paste0("PC1 (",as.character(pc1var),"%)")
pc2lab <- paste0("PC1 (",as.character(pc2var),"%)")
plot(PC2~PC1, data=as.data.frame(pca$x), bg=colors[fac], pch=21, xlab=pc1lab, ylab=pc2lab, main=main, ...)
with(as.data.frame(pca$x), textxy(PC1, PC2, labs=rownames(as.data.frame(pca$x)), cex=textcx))
legend(legendpos, legend=levels(fac), col=colors, pch=20)
# rldyplot(PC2 ~ PC1, groups = fac, data = as.data.frame(pca$rld),
# pch = 16, cerld = 2, aspect = "iso", col = colours, main = draw.key(key = list(rect = list(col = colours),
# terldt = list(levels(fac)), rep = FALSE)))
}
png("qc-pca.png", 1500, 1500, pointsize=25)
rld_pca(rld, colors=mycols, intgroup="condition", xlim=c(-75, 35))
dev.off()


# Get differential expression results
res <- results(dds)
table(res$padj<0.05)
## Order by adjusted p-value
res <- res[order(res$padj), ]
## Merge with normalized count data
resdata <- merge(as.data.frame(res), as.data.frame(counts(dds, normalized=TRUE)), by="row.names", sort=FALSE)
names(resdata)[1] <- "Gene"
head(resdata)
## Write results
write.csv(resdata, file="diffexpr-results.csv")
dazhudou1122 is offline   Reply With Quote
Reply

Tags
deseq2, rna seq

Thread Tools

Posting Rules
You may not post new threads
You may not post replies
You may not post attachments
You may not edit your posts

BB code is On
Smilies are On
[IMG] code is On
HTML code is Off




All times are GMT -8. The time now is 02:14 PM.


Powered by vBulletin® Version 3.8.9
Copyright ©2000 - 2019, vBulletin Solutions, Inc.
Single Sign On provided by vBSSO