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Global Optimization of Ventricular Myocyte Model to Multi-Variable Objective Improves Predictions of Drug-Induced Torsades de Pointes

机译:对多变量目标的心室肌细胞模型的全局优化可改善药物诱发的扭转性尖锐湿疣的预测

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摘要

In silico cardiac myocyte models present powerful tools for drug safety testing and for predicting phenotypical consequences of ion channel mutations, but their accuracy is sometimes limited. For example, several models describing human ventricular electrophysiology perform poorly when simulating effects of long QT mutations. Model optimization represents one way of obtaining models with stronger predictive power. Using a recent human ventricular myocyte model, we demonstrate that model optimization to clinical long QT data, in conjunction with physiologically-based bounds on intracellular calcium and sodium concentrations, better constrains model parameters. To determine if the model optimized to congenital long QT data better predicts risk of drug-induced long QT arrhythmogenesis, in particular Torsades de Pointes risk, we tested the optimized model against a database of known arrhythmogenic and non-arrhythmogenic ion channel blockers. When doing so, the optimized model provided an improved risk assessment. In particular, we demonstrate an elimination of false-positive outcomes generated by the baseline model, in which simulations of non-torsadogenic drugs, in particular verapamil, predict action potential prolongation. Our results underscore the importance of currents beyond those directly impacted by a drug block in determining torsadogenic risk. Our study also highlights the need for rich data in cardiac myocyte model optimization and substantiates such optimization as a method to generate models with higher accuracy of predictions of drug-induced cardiotoxicity.
机译:在计算机上,心肌细胞模型为药物安全性测试和预测离子通道突变的表型后果提供了强大的工具,但其准确性有时受到限制。例如,当模拟长QT突变的影响时,描述人心室电生理的几种模型的性能较差。模型优化是获得具有更强预测能力的模型的一种方法。使用最新的人类心室肌细胞模型,我们证明了针对临床长QT数据的模型优化,以及基于细胞内钙和钠浓度的基于生理的界限,可以更好地约束模型参数。为了确定针对先天性长QT数据优化的模型是否可以更好地预测药物引起的长QT心律失常发生的风险,尤其是Torsades de Pointes风险,我们针对已知的心律失常和非心律失常离子通道阻滞剂的数据库测试了优化的模型。这样做时,优化的模型提供了改进的风险评估。尤其是,我们证明了消除了基线模型所产生的假阳性结果,在该模型中,非躯体致源性药物(尤其是维拉帕米)的模拟可预测动作电位的延长。我们的结果强调了在确定致人源性致病风险中,除了受药物阻滞直接影响的电流以外,其他电流的重要性。我们的研究还强调了在心肌细胞模型优化中需要大量数据的必要性,并证实了这种优化是一种生成模型的方法,该模型可以更准确地预测药物诱发的心脏毒性。

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