biobroom

github.com/storeylab/biobroom
Stale50updated 7 years ago
R
LGPL

This package contains methods for converting standard objects constructed by bioinformatics packages, especially those in Bioconductor, and converting them to tidy data. It thus serves as a complement to the broom package, and follows the same the tidy, augment, glance division of tidying methods. Tidying data makes it easy to recombine, reshape and visualize bioinformatics analyses.

Sourced from

  • Bioconductorbiobroom
  • GitHubgithub.com/storeylab/biobroom

Related resources

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R
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