funOmics

github.com/elisagdelope/funomics
Stale6updated 2 years ago
R
MIT

The 'funOmics' package ggregates or summarizes omics data into higher level functional representations such as GO terms gene sets or KEGG metabolic pathways. The aggregated data matrix represents functional activity scores that facilitate the analysis of functional molecular sets while allowing to reduce dimensionality and provide easier and faster biological interpretations. Coordinated functional activity scores can be as informative as single molecules!

Sourced from

  • GitHubgithub.com/elisagdelope/funomics
  • BioconductorfunOmics

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