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首页> 外文期刊>Computer Methods in Applied Mechanics and Engineering >Machine learning in drug development: Characterizing the effect of 30 drugs on the QT interval using Gaussian process regression, sensitivity analysis, and uncertainty quantification
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Machine learning in drug development: Characterizing the effect of 30 drugs on the QT interval using Gaussian process regression, sensitivity analysis, and uncertainty quantification

机译:药物开发中的机器学习:使用高斯过程回归,敏感性分析和不确定性量化来表征30种药物对QT间隔的影响

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Prolonged QT intervals are a major risk factor for ventricular arrhythmias and a leading cause of sudden cardiac death. Various drugs are known to trigger QT interval prolongation and increase the proarrhythmic potential. Yet, how precisely the action of drugs on the cellular level translates into QT interval prolongation on the whole organ level remains insufficiently understood. Here we use machine learning techniques to systematically characterize the effect of 30 common drugs on the QT interval. We combine information from high fidelity three-dimensional human heart simulations with low fidelity one-dimensional cable simulations to build a surrogate model for the QT interval using multi-fidelity Gaussian process regression. Once trained and cross-validated, we apply our surrogate model to perform sensitivity analysis and uncertainty quantification. Our sensitivity analysis suggests that compounds that block the rapid delayed rectifier potassium current I-Kr have the greatest prolonging effect of the QT interval, and that blocking the L-type calcium current I-CaL and late sodium current I-NaL shortens the QT interval. Our uncertainty quantification allows us to propagate the experimental variability from individual block-concentration measurements into the QT interval and reveals that QT interval uncertainty is mainly driven by the variability in I-Kr block. In a final validation study, we demonstrate an excellent agreement between our predicted QT interval changes and the changes observed in a randomized clinical trial for the drugs dofetilide, quinidine, ranolazine, and verapamil. We anticipate that both the machine learning methods and the results of this study will have great potential in the efficient development of safer drugs. (C) 2019 The Authors. Published by Elsevier B.V.
机译:延长QT间隔是导致室性心律失常的主要危险因素,也是心脏猝死的主要原因。已知各种药物会触发QT间隔延长并增加心律失常的可能性。然而,药物在细胞水平上的作用如何精确地转化为整个器官水平上的QT间隔延长仍然尚不清楚。在这里,我们使用机器学习技术来系统地表征30种常见药物对QT间隔的影响。我们将来自高保真度三维人体心脏模拟的信息与低保真度一维电缆模拟相结合,以使用多保真度高斯过程回归为QT间隔构建替代模型。经过培训和交叉验证后,我们将使用替代模型进行敏感性分析和不确定性量化。我们的敏感性分析表明,阻断快速延迟整流钾电流I-Kr的化合物对QT间隔的延长作用最大,而阻断L型钙电流I-CaL和晚期钠电流I-NaL的化合物缩短了QT间隔。我们的不确定性量化使我们能够将来自各个块浓度测量值的实验变异性传播到QT区间,并揭示QT区间不确定性主要由I-Kr区块的变异性驱动。在最终的验证研究中,我们证明了预测的QT间隔变化与多芬利特,奎尼丁,雷诺嗪和维拉帕米的随机临床试验中观察到的变化之间具有极好的一致性。我们预计,机器学习方法和这项研究的结果都将在开发更安全的药物方面具有巨大的潜力。 (C)2019作者。由Elsevier B.V.发布

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