Identification Of Clinically Relevant Genomic Subtypes Using Outcome Weighted Learning


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Documentation for package ‘survClust’ version 1.3.0

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survClust-package perform supervised clustering for a particular 'k'
combineDist Integrates weighted distance matrices
cv_survclust performs cross validation on supervised clustering, 'survClust' for a particular 'k'. 'cv_survclust' runs
cv_voting For a 'survClust' fit, return consolidated labels across rounds of cross validation for a specific 'k'. Note that cv.fit already has consolidated class labels across folds
getDist Calculates weighted distance matrix of multiple genomic data types
getStats Compute fit statistics after cross validation via 'cv_survclust'
plotStats Plot the output from 'getStats'
simdat Simulated dataset with 3-class solution
simsurvdat Simulated survival dataset with accompanying 'simdat'
survClust perform supervised clustering for a particular 'k'
uvm_dat TCGA UVM Mutation and Copy Number datasets
uvm_survClust_cv.fit survClust cv.survclust output of integrated TCGA UVM Mutation and Copy Number datasets.
uvm_survdat TCGA UVM Clinical file