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DeepProg: an ensemble of deep-learning and machine-learning models for prognosis prediction using multi-omics data

Olivier Poirion, Zheng Jing, Kumardeep Chaudhary, Sijia Huang, Lana X. Garmire

2021Genome Medicine283 citationsDOIOpen Access PDF

Abstract

Multi-omics data are good resources for prognosis and survival prediction; however, these are difficult to integrate computationally. We introduce DeepProg, a novel ensemble framework of deep-learning and machine-learning approaches that robustly predicts patient survival subtypes using multi-omics data. It identifies two optimal survival subtypes in most cancers and yields significantly better risk-stratification than other multi-omics integration methods. DeepProg is highly predictive, exemplified by two liver cancer (C-index 0.73-0.80) and five breast cancer datasets (C-index 0.68-0.73). Pan-cancer analysis associates common genomic signatures in poor survival subtypes with extracellular matrix modeling, immune deregulation, and mitosis processes. DeepProg is freely available at https://github.com/lanagarmire/DeepProg.

Topics & Concepts

OmicsArtificial intelligenceMachine learningSystems biologyComputer scienceEnsemble learningDeep learningCancerBioinformaticsMedicineComputational biologyBiologyInternal medicineBioinformatics and Genomic NetworksFerroptosis and cancer prognosisGene expression and cancer classification
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