plotMDS.DGEList {edgeR}R Documentation

Multidimensional scaling plot of digital gene expression profiles

Description

Calculate distances between RNA-seq or DGE libraries, then produce a multidimensional scaling plot. Distances on the plot represent coefficient of variation of expression between samples for the top genes that best distinguish the samples.

Usage

## S3 method for class 'DGEList'
plotMDS(x, top=500, labels=colnames(x), col=NULL, cex=1, dim.plot=c(1, 2), ndim=max(dim.plot), xlab=paste("Dimension",dim.plot[1]), ylab=paste("Dimension",dim.plot[2]), ...)

Arguments

x

any matrix or DGEList object.

top

number of top genes used to calculate pairwise distances.

labels

character vector of sample names or labels. If x has no column names, then defaults the index of the samples.

col

numeric or character vector of colors for the plotting characters. See text for possible values.

cex

numeric vector of plot symbol expansions. See text for possible values.

dim.plot

which two dimensions should be plotted, numeric vector of length two.

ndim

number of dimensions in which data is to be represented

xlab

title for the x-axis

ylab

title for the y-axis

...

any other arguments are passed to plot.

Details

This function is a variation on the usual multdimensional scaling (or principle coordinate) plot, in that a distance measure particularly appropriate for the digital gene expression (DGE) context is used. A set of top genes are chosen that have largest biological variation between the libraries (those with largest tagwise dispersion treating all libraries as one group). Then the distance between each pair of libraries (columns) is the biological coefficient of variation (square root of the common dispersion) between those two libraries alone, using the top genes.

The number top of top genes chosen for this exercise should roughly correspond to the number of differentially expressed genes with materially large fold-changes. The default setting of 500 genes is widely effective and suitable for routine use, but a smaller value might be chosen for when the samples are distinguished by a specific focused molecular pathway. Very large values (greater than 1000) are not usually so effective.

This function can be slow when there are many libraries.

Value

A plot is created on the current graphics device.

An object of class "MDS" is invisibly returned. This is a list containing the following components:

distance.matrix

numeric matrix of pairwise distances between columns of x

cmdscale.out

output from the function cmdscale given the distance matrix

dim.plot

dimensions plotted

x

x-xordinates of plotted points

y

y-cordinates of plotted points

Author(s)

Yunshun Chen and Gordon Smyth

See Also

cmdscale, as.dist, plotMDS

Examples

# Simulate DGE data for 1000 genes(tags) and 6 samples.
# Samples are in two groups
# First 300 genes are differentially expressed in second group

y <- matrix(rnbinom(6000, size = 1/2, mu = 10),1000,6)
rownames(y) <- paste("Gene",1:1000)
y[1:300,4:6] <- y[1:300,4:6] + 10
# without labels, indexes of samples are plotted.
mds <- plotMDS(y,  col=c(rep("black",3), rep("red",3)) )
# or labels can be provided, here group indicators:
plotMDS(mds,  col=c(rep("black",3), rep("red",3)), labels= c(rep("Grp1",3), rep("Grp2",3)))

[Package edgeR version 2.4.3 Index]