biasPlot
produces a plot of the lowess
regression of the counts on a covariate of interest, tipically the GC-content or the length of the genes.
signature(x = "matrix", y = "numeric")
It plots a line representing the regression of every column of the matrix x
on the numeric covariate y
. One can pass the usual graphical parameters as additional arguments (see par
).
signature(x = "SeqExpressionSet", y = "character")
It plots a line representing the regression of every lane in x
on the covariate specified by y
. y
must be one of the column of the featureData
slot of the x
object. One can pass the usual graphical parameters as additional arguments (see par
). The parameter color_code
(optional) must be a number specifying the column of phenoData
to be used for color-coding. By default it is color-coded according to the first column of phenoData
. If legend=TRUE
and col
is not specified a legend with the information stored in phenoData
is added.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 | library(yeastRNASeq)
data(geneLevelData)
data(yeastGC)
sub <- intersect(rownames(geneLevelData), names(yeastGC))
mat <- as.matrix(geneLevelData[sub,])
data <- newSeqExpressionSet(mat,
phenoData=AnnotatedDataFrame(
data.frame(conditions=factor(c("mut", "mut", "wt", "wt")),
row.names=colnames(geneLevelData))),
featureData=AnnotatedDataFrame(data.frame(gc=yeastGC[sub])))
biasPlot(data,"gc",ylim=c(0,5),log=TRUE)
|
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.