Inanobe Atsushi, Kamiya Narutoshi, Murakami Shingo, Fukunishi Yoshifumi, Nakamura Haruki, Kurachi Yoshihisa
Division of Molecular and Cellular Pharmacology, Department of Pharmacology, Graduate School of Medicine, and the Center for Advanced Medical Engineering and Informatics, Osaka University, Osaka, Japan.
J Physiol Sci. 2008 Dec;58(7):459-70. doi: 10.2170/physiolsci.RV-0114-08-07-R1. Epub 2008 Nov 27.
A variety of compounds with different chemical properties directly interact with the cardiac repolarizing K(+) channel encoded by the human ether-a-go-go-related gene (hERG). This causes acquired forms of QT prolongation, which can result in lethal cardiac arrhythmias including torsades de pointes one of the most serious adverse effects of various therapeutic agents. Prediction of this phenomenon will improve the safety of pharmacological therapy and also facilitate the process of drug development. Here we propose a strategy for the development of an in silico system to predict the potency of chemical compounds to block hERG. The system consists of two sequential processes. The first process is a ligand-based prediction to estimate half-maximal concentrations for the block of compounds inhibiting hERG current using the relationship between chemical features and activities of compounds. The second process is a protein-based prediction that comprises homology modeling of hERG, docking simulation of chemical-channel interaction, analysis of the shape of the channel pore cavity, and Brownian dynamics simulation to estimate hERG currents in the presence and absence of chemical blockers. Since each process is a combination of various calculations, the criterion for assessment at each calculation and the strategy to integrate these steps are significant for the construction of the system to predict a chemical's block of hERG current and also to predict the risk of inducing cardiac arrhythmias from the chemical information. The principles and criteria of elemental computations along this strategy are described.
多种具有不同化学性质的化合物可直接与人类醚 - 去极化相关基因(hERG)编码的心脏复极化钾通道相互作用。这会导致获得性QT间期延长,进而可能引发致命性心律失常,包括尖端扭转型室速,这是各种治疗药物最严重的不良反应之一。对这种现象进行预测将提高药物治疗的安全性,并促进药物开发进程。在此,我们提出一种开发计算机模拟系统的策略,以预测化合物阻断hERG的效力。该系统由两个连续过程组成。第一个过程是基于配体的预测,利用化合物化学特征与活性之间的关系,估计抑制hERG电流的化合物的半数最大阻断浓度。第二个过程是基于蛋白质的预测,包括hERG的同源建模、化学 - 通道相互作用的对接模拟、通道孔腔形状分析以及布朗动力学模拟,以估计存在和不存在化学阻滞剂时的hERG电流。由于每个过程都是各种计算的组合,因此每次计算的评估标准以及整合这些步骤的策略对于构建预测化合物对hERG电流阻断作用的系统以及从化学信息预测诱发心律失常风险的系统都非常重要。本文描述了沿此策略的基本计算原理和标准。