piano

Microarray
R
GPL (>=2)

Piano performs gene set analysis using various statistical methods, from different gene level statistics and a wide range of gene-set collections. Furthermore, the Piano package contains functions for combining the results of multiple runs of gene set analyses.

Source attribution

  • Bioconductorpiano

Related resources

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