bambu
github.com/goekelab/bambubambu is a R package for multi-sample transcript discovery and quantification using long read RNA-Seq data. You can use bambu after read alignment to obtain expression estimates for known and novel transcripts and genes. The output from bambu can directly be used for visualisation and downstream analysis such as differential gene expression or transcript usage.
Sourced from
- GitHub — github.com/goekelab/bambu
- Bioconductor — bambu
Related resources
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