screenCounter
github.com/crisprverse/screencounterProvides functions for counting reads from high-throughput sequencing screen data (e.g., CRISPR, shRNA) to quantify barcode abundance. Currently supports single barcodes in single- or paired-end data, and combinatorial barcodes in paired-end data.
Sourced from
- Bioconductor — screenCounter
- GitHub — github.com/crisprverse/screencounter
Related resources
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