RUVnormalize
https://bioconductor.org/packages/RUVnormalizeRUVnormalize is meant to remove unwanted variation from gene expression data when the factor of interest is not defined, e.g., to clean up a dataset for general use or to do any kind of unsupervised analysis.
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