correlatePCs: Principal components (cor)relation with experimental covariates
Description
Computes the significance of (cor)relations between PCA scores and the sample
experimental covariates, using Kruskal-Wallis test for categorial variables
and the cor.test based on Spearman's correlation for continuous
variables
Usage
correlatePCs(pcaobj, coldata, pcs = 1:4)
Arguments
pcaobj
A prcomp object
coldata
A data.frame object containing the experimental
covariates
pcs
A numeric vector, containing the corresponding PC number
Value
A data.frame object with computed p values for each covariate
and for each principal component