normalize.ExpressionSet.quantiles(eset, transfn=c("none","log","antilog")) normalize.ExpressionSet.loess(eset, transfn=c("none","log","antilog"),...) normalize.ExpressionSet.contrasts(eset, span = 2/3, choose.subset=TRUE, subset.size=5000, verbose=TRUE, family="symmetric", transfn=c("none","log","antilog")) normalize.ExpressionSet.qspline(eset, transfn=c("none","log","antilog"),...) normalize.ExpressionSet.invariantset(eset,prd.td=c(0.003, 0.007), verbose=FALSE, transfn=c("none","log","antilog"), baseline.type=c("mean","median","pseudo-mean","pseudo-median")) normalize.ExpressionSet.scaling(eset, trim=0.02, baseline=-1, transfn=c("none","log","antilog"))loess.loess.ExpressionSet.
Typing normalize.ExpressionSet.methods should give you a list of
methods that you may use. note that you can also use the
normalize function on ExpressionSets. Use method to select the
normalization method.
if (require(affydata)) {
data(Dilution)
eset <- rma(Dilution, normalize=FALSE, background=FALSE)
normalize(eset)
}
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