pcaExplorer

github.com/federicomarini/pcaexplorer
Idle56updated 7 months ago
R
MIT

This package provides functionality for interactive visualization of RNA-seq datasets based on Principal Components Analysis. The methods provided allow for quick information extraction and effective data exploration. A Shiny application encapsulates the whole analysis.

Sourced from

  • GitHubgithub.com/federicomarini/pcaexplorer
  • BioconductorpcaExplorer

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