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首页> 外文期刊>Clinical Pharmacology and Therapeutics >Improved Prediction of Drug-Induced Torsades de Pointes Through Simulations of Dynamics and Machine Learning Algorithms
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Improved Prediction of Drug-Induced Torsades de Pointes Through Simulations of Dynamics and Machine Learning Algorithms

机译:通过动力学和机器学习算法的仿真来改进对毒品诱发的尖刺的预测

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摘要

The ventricular arrhythmia Torsades de Pointes (TdP) is a common form of drug-induced cardiotoxicity, but prediction of this arrhythmia remains an unresolved issue in drug development. Current assays to evaluate arrhythmia risk are limited by poor specificity and a lack of mechanistic insight. We addressed this important unresolved issue through a novel computational approach that combined simulations of drug effects on dynamics with statistical analysis and machine-learning. Drugs that blocked multiple ion channels were simulated in ventricular myocyte models, and metrics computed from the action potential and intracellular (Ca2+) waveform were used to construct classifiers that distinguished between arrhythmogenic and nonarrhythmogenic drugs. We found that: (1) these classifiers provide superior risk prediction; (2) drug-induced changes to both the action potential and intracellular (Ca2+) influence risk; and (3) cardiac ion channels not typically assessed may significantly affect risk. Our algorithm demonstrates the value of systematic simulations in predicting pharmacological toxicity.
机译:室性心律失常Torsades de Pointes(TdP)是药物引起的心脏毒性的一种常见形式,但是对这种心律不齐的预测仍然是药物开发中尚未解决的问题。目前用于评估心律不齐风险的方法受限于特异性差和缺乏机械原理。我们通过一种新颖的计算方法解决了这个重要的未解决问题,该方法将药物对动力学的影响的模拟与统计分析和机器学习相结合。在心室肌细胞模型中模拟了阻断多个离子通道的药物,并根据动作电位和细胞内(Ca2 +)波形计算出的指标用于构建区分心律失常和非心律失常药物的分类器。我们发现:(1)这些分类器提供了出色的风险预测; (2)药物诱导的动作电位和细胞内(Ca2 +)的变化会影响风险; (3)通常未评估的心脏离子通道可能会严重影响风险。我们的算法证明了系统模拟在预测药理毒性方面的价值。

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