TY - JOUR
T1 - Discovery of drug-omics associations in type 2 diabetes with generative deep-learning models
T2 - [with Author Correction]
AU - Allesøe, Rosa Lundbye
AU - Lundgaard, Agnete Troen
AU - Hernández Medina, Ricardo
AU - Aguayo-Orozco, Alejandro
AU - Johansen, Joachim
AU - Nissen, Jakob Nybo
AU - Brorsson, Caroline
AU - Mazzoni, Gianluca
AU - Niu, Lili
AU - Biel, Jorge Hernansanz
AU - Brasas, Valentas
AU - Webel, Henry
AU - Benros, Michael Eriksen
AU - Pedersen, Anders Gorm
AU - Chmura, Piotr Jaroslaw
AU - Jacobsen, Ulrik Plesner
AU - Mari, Andrea
AU - Koivula, Robert
AU - Mahajan, Anubha
AU - Vinuela, Ana
AU - Tajes, Juan Fernandez
AU - Sharma, Sapna
AU - Haid, Mark
AU - Hong, Mun-Gwan
AU - Musholt, Petra B
AU - De Masi, Federico
AU - Vogt, Josef
AU - Pedersen, Helle Krogh
AU - Gudmundsdottir, Valborg
AU - Jones, Angus
AU - Kennedy, Gwen
AU - Bell, Jimmy
AU - Thomas, E Louise
AU - Frost, Gary
AU - Thomsen, Henrik
AU - Hansen, Elizaveta
AU - Hansen, Tue Haldor
AU - Vestergaard, Henrik
AU - Muilwijk, Mirthe
AU - Blom, Marieke T
AU - 't Hart, Leen M
AU - Pattou, Francois
AU - Raverdy, Violeta
AU - Brage, Soren
AU - Ridderstråle, Martin
AU - Pedersen, Oluf
AU - Hansen, Torben
AU - Banasik, Karina
AU - Rasmussen, Simon
AU - Brunak, Søren
AU - IMI-DIRECT consortium
N1 - © 2023. The Author(s).
Author Correction: In the version of this article initially published, Cristina Leal Rodríguez (Novo Nordisk Foundation Center for Protein Research, Faculty of Health and Medical Sciences, University of Copenhagen, Copenhagen, Denmark) was omitted from the author list. The error has been corrected in the HTML and PDF versions of the article.
https://www.nature.com/articles/s41587-023-01805-9
PY - 2023
Y1 - 2023
N2 - 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.
AB - 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.
U2 - 10.1038/s41587-022-01520-x
DO - 10.1038/s41587-022-01520-x
M3 - Journal article
C2 - 36593394
VL - 41
SP - 399
EP - 408
JO - Nature Biotechnology
JF - Nature Biotechnology
SN - 1087-0156
IS - 3
ER -