pgxRpi
The package is an R wrapper for Progenetix REST API built upon the Beacon v2 protocol. Its purpose is to provide a seamless way for retrieving genomic data from Progenetix database—an open resource dedicated to curated oncogenomic profiles. Empowered by this package, users can effortlessly access and visualize data from Progenetix.
- Repository
- github.com/progenetix/pgxrpi
Source attribution
- Bioconductor — pgxRpi
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