Glimma
This package produces interactive visualizations for RNA-seq data analysis, utilizing output from limma, edgeR, or DESeq2. It produces interactive htmlwidgets versions of popular RNA-seq analysis plots to enhance the exploration of analysis results by overlaying interactive features. The plots can be viewed in a web browser or embedded in notebook documents.
- Repository
- github.com/hasaru-k/glimmav2
Source attribution
- Bioconductor — Glimma
Related resources
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