Harnessing Deep Learning for Omics in an Era of COVID-19

Omics data are multidimensional, heterogeneous, and high throughput. Robust computational methods and machine learning (ML)-based models offer new prospects to accelerate the data-to-knowledge trajectory. Deep learning (DL) is a powerful subset of ML inspired by brain structure and has created unpre...

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Veröffentlicht in:Omics (Larchmont, N.Y.) N.Y.), 2023-04, Vol.27 (4), p.141-152
Hauptverfasser: Jahanyar, Bahareh, Tabatabaee, Hamid, Rowhanimanesh, Alireza
Format: Artikel
Sprache:eng
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Zusammenfassung:Omics data are multidimensional, heterogeneous, and high throughput. Robust computational methods and machine learning (ML)-based models offer new prospects to accelerate the data-to-knowledge trajectory. Deep learning (DL) is a powerful subset of ML inspired by brain structure and has created unprecedented momentum in bioinformatics and computational biology research. This article provides an overview of the current DL models applied to multi-omics data for both the beginner and the expert user. Additionally, COVID-19 will continue to impact planetary health as a pandemic and an endemic disease, with genomic and multi-omic pathophysiology. DL offers, therefore, new ways of harnessing systems biology research on COVID-19 diagnostics and therapeutics. Herein, we discuss, first, the statistical ML algorithms and essential deep architectures. Then, we review DL applications in multi-omics data analysis and their intersection with COVID-19. Finally, challenges and several promising directions are highlighted going forward in the current era of COVID-19.
ISSN:1557-8100
1557-8100
DOI:10.1089/omi.2022.0155