| meanSdPlot {vsn} | R Documentation |
Methods for objects of classes
matrix,
ExpressionSet,
vsn and
MAList
to plot row standard deviations versus row means.
meanSdPlot(x,
ranks = TRUE,
xlab = ifelse(ranks, "rank(mean)", "mean"),
ylab = "sd",
pch,
plot = TRUE,
bins = 50,
...)
x |
An object of class
|
ranks |
Logical, indicating whether the x-axis (means) should be plotted
on the original scale ( |
xlab |
Character, label for the x-axis. |
ylab |
Character, label for the y-axis. |
pch |
Ignored - exists for backward compatibility. |
plot |
Logical. If |
bins |
Gets passed on to |
... |
Further arguments that get passed on to |
Standard deviation and mean are calculated row-wise from the
expression matrix (in) x. The scatterplot of these versus each other
allows you to visually verify whether there is a dependence of the standard
deviation (or variance) on the mean.
The red line depicts the running median estimator (window-width 10%).
If there is no variance-mean dependence, then the line should be approximately horizontal.
A named list with five components: its elements px and
py are the x- and y-coordinates of the individual data points
in the plot; its first and second element are the x-coordinates and values of
the running median estimator (the red line in the plot).
Its element gg is the plot object (see examples).
Depending on the value of plot, the method can (and by default does) have a side effect,
which is to print gg on the active graphics device.
Wolfgang Huber
data("kidney")
log.na <- function(x) log(ifelse(x>0, x, NA))
exprs(kidney) <- log.na(exprs(kidney))
msd <- meanSdPlot(kidney)
## The `ggplot` object is returned in list element `gg`, here is an example of how to modify the plot
library("ggplot2")
msd$gg + ggtitle("Hello world") + scale_fill_gradient(low = "yellow", high = "darkred") + scale_y_continuous(limits = c(0, 7))
## Try this out with not log-transformed data, vsn2-transformed data, the lymphoma data, your data ...