vidger

github.com/btmonier/vidger
Idle20updated 9 months ago
R
GPL-3.0

The aim of vidger is to rapidly generate information-rich visualizations for the interpretation of differential gene expression results from three widely-used tools: Cuffdiff, DESeq2, and edgeR.

Sourced from

  • Bioconductorvidger
  • GitHubgithub.com/btmonier/vidger

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