CircSeqAlignTk
CircSeqAlignTk is a toolkit for the analysis of RNA-Seq data derived from circular genome sequences, with a primary focus on viroids, circular RNAs typically consisting of a few hundred nucleotides. The toolkit supports an end-to-end analysis pipeline, from alignment to visualization.
- Repository
- github.com/bitdessin/circseqaligntk
Source attribution
- Bioconductor — CircSeqAlignTk
Related resources
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