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A deep learning platform to assess drug proarrhythmia risk

Authors :
Ricardo Serrano
Dries A.M. Feyen
Arne A.N. Bruyneel
Anna P. Hnatiuk
Michelle M. Vu
Prashila L. Amatya
Isaac Perea-Gil
Maricela Prado
Timon Seeger
Joseph C. Wu
Ioannis Karakikes
Mark Mercola
Source :
Cell stem cell.
Publication Year :
2022

Abstract

Drug safety initiatives have endorsed human iPSC-derived cardiomyocytes (hiPSC-CMs) as an in vitro model for predicting drug-induced cardiac arrhythmia. However, the extent to which human-defined features of in vitro arrhythmia predict actual clinical risk has been much debated. Here, we trained a convolutional neural network classifier (CNN) to learn features of in vitro action potential recordings of hiPSC-CMs that are associated with lethal Torsade de Pointes arrhythmia. The CNN classifier accurately predicted the risk of drug-induced arrhythmia in people. The risk profile of the test drugs was similar across hiPSC-CMs derived from different healthy donors. In contrast, pathogenic mutations that cause arrhythmogenic cardiomyopathies in patients significantly increased the proarrhythmic propensity to certain intermediate and high-risk drugs in the hiPSC-CMs. Thus, deep learning can identify in vitro arrhythmic features that correlate with clinical arrhythmia and discern the influence of patient genetics on the risk of drug-induced arrhythmia.

Details

ISSN :
18759777
Database :
OpenAIRE
Journal :
Cell stem cell
Accession number :
edsair.doi.dedup.....7ae84d73d4afd7d7ea9cd77d90b5c126