MOSClip
github.com/caluralab/mosclipTopological pathway analysis tool able to integrate multi-omics data. It finds survival-associated modules or significant modules for two-class analysis. This tool have two main methods: pathway tests and module tests. The latter method allows the user to dig inside the pathways itself.
Sourced from
- Bioconductor — MOSClip
- GitHub — github.com/caluralab/mosclip
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