Bioc.gff
github.com/bioconductor/bioc.gffParse GFF and GTF files using C++ classes. The package also provides utilities to read and write GFF3 files. The GFF (General Feature Format) format is a tab-delimited file format for describing genes and other features of DNA, RNA, and protein sequences. GFF files are often used to describe the features of genomes.
Sourced from
- Bioconductor — Bioc.gff
- GitHub — github.com/bioconductor/bioc.gff
Related resources
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