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Discovery of drug–omics associations in type 2 diabetes with generative deep-learning models.

Authors :
Allesøe, Rosa Lundbye
Lundgaard, Agnete Troen
Hernández Medina, Ricardo
Aguayo-Orozco, Alejandro
Johansen, Joachim
Nissen, Jakob Nybo
Brorsson, Caroline
Mazzoni, Gianluca
Niu, Lili
Biel, Jorge Hernansanz
Brasas, Valentas
Webel, Henry
Benros, Michael Eriksen
Pedersen, Anders Gorm
Chmura, Piotr Jaroslaw
Jacobsen, Ulrik Plesner
Mari, Andrea
Koivula, Robert
Mahajan, Anubha
Vinuela, Ana
Source :
Nature Biotechnology; Mar2023, Vol. 41 Issue 3, p399-408, 10p
Publication Year :
2023

Abstract

The application of multiple omics technologies in biomedical cohorts has the potential to reveal patient-level disease characteristics and individualized response to treatment. However, the scale and heterogeneous nature of multi-modal data makes integration and inference a non-trivial task. We developed a deep-learning-based framework, multi-omics variational autoencoders (MOVE), to integrate such data and applied it to a cohort of 789 people with newly diagnosed type 2 diabetes with deep multi-omics phenotyping from the DIRECT consortium. Using in silico perturbations, we identified drug–omics associations across the multi-modal datasets for the 20 most prevalent drugs given to people with type 2 diabetes with substantially higher sensitivity than univariate statistical tests. From these, we among others, identified novel associations between metformin and the gut microbiota as well as opposite molecular responses for the two statins, simvastatin and atorvastatin. We used the associations to quantify drug–drug similarities, assess the degree of polypharmacy and conclude that drug effects are distributed across the multi-omics modalities. Clinical multi-omics data are integrated and analyzed using a generative deep-learning model. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10870156
Volume :
41
Issue :
3
Database :
Complementary Index
Journal :
Nature Biotechnology
Publication Type :
Academic Journal
Accession number :
162469321
Full Text :
https://doi.org/10.1038/s41587-022-01520-x