mgsa

github.com/sba1/mgsa-bioc
Stale5updated 5 years ago
R
Artistic-2.0

Model-based Gene Set Analysis (MGSA) is a Bayesian modeling approach for gene set enrichment. The package mgsa implements MGSA and tools to use MGSA together with the Gene Ontology.

Sourced from

  • Bioconductormgsa
  • GitHubgithub.com/sba1/mgsa-bioc

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