ERSSA
github.com/zshao1/erssaThe ERSSA package takes user supplied RNA-seq differential expression dataset and calculates the number of differentially expressed genes at varying biological replicate levels. This allows the user to determine, without relying on any a priori assumptions, whether sufficient differential detection has been acheived with their RNA-seq dataset.
Sourced from
- Bioconductor — ERSSA
- GitHub — github.com/zshao1/erssa
Related resources
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