transmogR
github.com/smped/transmogrtransmogR provides the tools needed to crate a new reference genome or reference transcriptome, using a set of variants. Variants can be any combination of SNPs, Insertions and Deletions. The intended use-case is to enable creation of variant-modified reference transcriptomes for incorporation into transcriptomic pseudo-alignment workflows, such as salmon.
Sourced from
- Bioconductor — transmogR
- GitHub — github.com/smped/transmogr
Related resources
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