| Literature DB >> 34791014 |
Mingon Kang1, Euiseong Ko1, Tesfaye B Mersha2.
Abstract
High-throughput next-generation sequencing now makes it possible to generate a vast amount of multi-omics data for various applications. These data have revolutionized biomedical research by providing a more comprehensive understanding of the biological systems and molecular mechanisms of disease development. Recently, deep learning (DL) algorithms have become one of the most promising methods in multi-omics data analysis, due to their predictive performance and capability of capturing nonlinear and hierarchical features. While integrating and translating multi-omics data into useful functional insights remain the biggest bottleneck, there is a clear trend towards incorporating multi-omics analysis in biomedical research to help explain the complex relationships between molecular layers. Multi-omics data have a role to improve prevention, early detection and prediction; monitor progression; interpret patterns and endotyping; and design personalized treatments. In this review, we outline a roadmap of multi-omics integration using DL and offer a practical perspective into the advantages, challenges and barriers to the implementation of DL in multi-omics data.Entities:
Keywords: data integration; deep learning; harmonization; imputation; missing value; multi-omics; precision medicine; risk prediction
Mesh:
Year: 2022 PMID: 34791014 PMCID: PMC8769688 DOI: 10.1093/bib/bbab454
Source DB: PubMed Journal: Brief Bioinform ISSN: 1467-5463 Impact factor: 11.622