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Title:¡¡Deep learning applications with pathway knowledge
Abstract
This presentation introduce recent approaches using pathway knowledge in deep learning structure.¡¡ Several Ideas including DeepCC, PathDNN, Gene Pathway Disease, PASNet, Transfer Learning with CNN for cancer survival prediction using gene-expression data will be reviewed. Additional idea PathDeep which has been evaluated in Pan-cancer gene expression data will also be introduced expecting to provide better performance with increased interpretability.