survClust - Identification Of Clinically Relevant Genomic Subtypes Using Outcome Weighted Learning
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).
Last updated 27 days ago
softwareclusteringsurvivalclassification
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