GSABenchmark
GSABenchmark is a package designed for benchmarking scRNA-seq gene set analysis (scGSA) methods. It provides both traditional and novel benchmark metrics, as well as visualization tools. Currently, GSABenchmark supports 17 scGSA methods.
- Repository
- github.com/andrei-stoica26/gsabenchmark
Source attribution
- Bioconductor — GSABenchmark
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