Litcius/Paper detail

DeepOmix: A scalable and interpretable multi-omics deep learning framework and application in cancer survival analysis

Lianhe Zhao, Qiongye Dong, Chunlong Luo, Yang Wu, Dechao Bu, Xiaoning Qi, Yufan Luo, Yi Zhao

2021Computational and Structural Biotechnology Journal131 citationsDOIOpen Access PDF

Abstract

Integrative analysis of multi-omics data can elucidate valuable insights into complex molecular mechanisms for various diseases. However, due to their different modalities and high dimension, utilizing and integrating different types of omics data suffers from great challenges. There is an urgent need to develop a powerful method to improve survival prediction and detect functional gene modules from multi-omics data. To deal with these problems, we present DeepOmix (a scalable and interpretable multi-Omics Deep learning framework and application in cancer survival analysis), a flexible, scalable, and interpretable method for extracting relationships between the clinical survival time and multi-omics data based on a deep learning framework. DeepOmix enables the non-linear combination of variables from different omics datasets and incorporates prior biological information defined by users (such as signaling pathways and tissue networks). Benchmark experiments demonstrate that DeepOmix outperforms the other five cutting-edge prediction methods. Besides, Lower Grade Glioma (LGG) is taken as the case study to perform the prognosis prediction and illustrate the functional module nodes which are associated with the prognostic result in the prediction model.

Topics & Concepts

OmicsScalabilityBenchmark (surveying)Computer scienceMachine learningArtificial intelligenceDeep learningData miningComputational biologyBioinformaticsBiologyDatabaseGeographyGeodesyBioinformatics and Genomic NetworksGene expression and cancer classificationFerroptosis and cancer prognosis