markeR

github.com/diseasetranscriptomicslab/marker
Active10updated 1 week ago
R
Artistic-2.0

markeR is an R package that provides a modular and extensible framework for the systematic evaluation of gene sets as phenotypic markers using transcriptomic data. The package is designed to support both quantitative analyses and visual exploration of gene set behaviour across experimental and clinical phenotypes. It implements multiple methods, including score-based and enrichment approaches, and also allows the exploration of expression behaviour of individual genes. In addition, users can assess the similarity of their own gene sets against established collections (e.g., those from MSigDB), facilitating biological interpretation.

Sourced from

  • BioconductormarkeR
  • GitHubgithub.com/diseasetranscriptomicslab/marker

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