survClust

github.com/arorarshi/survclust
Stale16updated 2 years ago
R
MIT

survClust is an outcome weighted integrative clustering algorithm used to classify multi-omic samples on their available time to event information. The resulting clusters are cross-validated to avoid over overfitting and output classification of samples that are molecularly distinct and clinically meaningful. It takes in binary (mutation) as well as continuous data (other omic types).

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  • BioconductorsurvClust
  • GitHubgithub.com/arorarshi/survclust

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