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用于预测药物致心脏毒性的多尺度模拟系统。

A multiscale simulation system for the prediction of drug-induced cardiotoxicity.

机构信息

Research Programme on Biomedical Informatics (GRIB), IMIM, Universitat Pompeu Fabra, PRBB, Barcelona, Spain.

出版信息

J Chem Inf Model. 2011 Feb 28;51(2):483-92. doi: 10.1021/ci100423z. Epub 2011 Jan 20.

DOI:10.1021/ci100423z
PMID:21250697
Abstract

The preclinical assessment of drug-induced ventricular arrhythmia, a major concern for regulators, is typically based on experimental or computational models focused on the potassium channel hERG (human ether-a-go-go-related gene, K(v)11.1). Even if the role of this ion channel in the ventricular repolarization is of critical importance, the complexity of the events involved make the cardiac safety assessment based only on hERG has a high risk of producing either false positive or negative results. We introduce a multiscale simulation system aiming to produce a better cardiotoxicity assessment. At the molecular scale, the proposed system uses a combination of docking simulations on two potassium channels, hERG and KCNQ1, plus three-dimensional quantitative structure-activity relationship modeling for predicting how the tested compound will block the potassium currents IK(r) and IK(s). The obtained results have been introduced in electrophysiological models of the cardiomyocytes and the ventricular tissue, allowing the direct prediction of the drug effects on electrocardiogram simulations. The usefulness of the whole method is illustrated by predicting the cardiotoxic effect of several compounds, including some examples in which classic hERG-based models produce false positive or negative results, yielding correct predictions for all of them. These results can be considered a proof of concept, suggesting that multiscale prediction systems can be suitable for being used for preliminary screening in lead discovery, before the compound is physically available, or in early preclinical development when they can be fed with experimentally obtained data.

摘要

药物诱导的室性心律失常的临床前评估是监管机构的主要关注点,通常基于针对钾通道 hERG(人 ether-a-go-go 相关基因,K(v)11.1)的实验或计算模型。即使这种离子通道在心室复极化中的作用至关重要,但所涉及事件的复杂性使得仅基于 hERG 的心脏安全性评估存在产生假阳性或假阴性结果的高风险。我们引入了一种多尺度模拟系统,旨在进行更好的心脏毒性评估。在分子尺度上,所提出的系统使用两种钾通道 hERG 和 KCNQ1 的对接模拟的组合,加上三维定量构效关系建模,以预测测试化合物将如何阻断钾电流 IK(r)和 IK(s)。所得结果已被引入心肌细胞和心室组织的电生理学模型中,允许直接预测药物对心电图模拟的影响。通过预测几种化合物的心脏毒性作用,包括一些在经典 hERG 为基础的模型中产生假阳性或假阴性结果的例子,对所有这些化合物都产生了正确的预测,从而说明了整个方法的有用性。这些结果可以被认为是一个概念验证,表明多尺度预测系统可以适用于在化合物物理上可用之前的先导发现的初步筛选,或者在早期临床前开发阶段,当可以用实验获得的数据进行输入时。

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