bugsigdbr
github.com/waldronlab/bugsigdbrThe bugsigdbr package implements convenient access to bugsigdb.org from within R/Bioconductor. The goal of the package is to facilitate import of BugSigDB data into R/Bioconductor, provide utilities for extracting microbe signatures, and enable export of the extracted signatures to plain text files in standard file formats such as GMT.
Sourced from
- GitHub — github.com/waldronlab/bugsigdbr
- Bioconductor — bugsigdbr
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