ADMET-AI Enables Interpretable Predictions of Drug-Induced Cardiotoxicity

Mukherjee S, Swanson K, Walther P, Shivnaraine RV, Leitz J, Pang PD, Zou J, Wu JC.  ADMET-AI enables interpretable predictions of drug-induced cardiotoxicityCirculation 2025;151(3):285-287. PMID: 39836754.

Abstract:

Drug-induced cardiotoxicity (DICT) is a severe adverse drug reaction that affects the cardiovascular system and is a leading cause of drug withdrawals and clinical trial failures. DICT prediction is challenging because of the complex nature of cardiotoxicity, which could arise from a myriad of molecular pathways that lead to arrhythmias and cardiomyopathies, subsequently resulting in heart failure and sudden cardiac death. Experimental approaches using cardiac cells and animal models can be slow and expensive, and their results do not always correlate with DICT in humans. However, machine learning methods can be trained on real-world clinical DICT data to predict the cardiotoxic properties of drugs rapidly and accurately, thereby saving time and money by avoiding late-stage drug failure.

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