Department of Biological Sciences, University of Calgary, Calgary, Alberta, Canada.
J Chem Inf Model. 2011 Feb 28;51(2):463-74. doi: 10.1021/ci100409y. Epub 2011 Jan 11.
Long QT syndrome, LQTS, results in serious cardiovascular disorders, such as tachyarrhythmia and sudden cardiac death. A promiscuous binding of different drugs to the intracavitary binding site in the pore domain (PD) of human ether-a-go-go related gene (hERG) channels leads to a similar dysfunction, known as a drug-induced LQTS. Therefore, an assessment of the blocking ability for potent drugs is of great pragmatic value for molecular pharmacology and medicinal chemistry of hERGs. Thus, we attempted to create an in silico model aimed at blinded drug screening for their blocking ability to the hERG1 PD. Two distinct approaches to the drug blockage, ligand-based QSAR and receptor-based molecular docking methods, are combined for development of a universal pharmacophore model, which provides rapid assessment of drug blocking ability to the hERG1 channel. The best 3D-QSAR model (AAADR.7) from PHASE modeling was selected from a pool consisting of 44 initial candidates. The constructed model using 31 hERG blockers was validated with 9 test set compounds. The resulting model correctly predicted the pIC(50) values of test set compounds as true unknowns. To further evaluate the pharmacophore model, 14 hERG blockers with diverse hERG blocking potencies were selected from literature and they were used as additional external blind test sets. The resulting average deviation between in vitro and predicted pIC(50) values of external test set blockers is found as 0.29 suggesting that the model is able to accuretely predict the pIC(50) values as true unknowns. These pharmacophore models were merged with a previously developed atomistic receptor model for the hERG1 PD and exhibited a high consistency between ligand-based and receptor-based models. Therefore, the developed 3D-QSAR model provides a predictive tool for profiling candidate compounds before their synthesis. This model also indicated the key functional groups determining a high-affinity blockade of the hERG1 channel. To cross-validate consistency between the constructed hERG1 pore domain and the pharmacophore models, we performed docking studies using the homology model of hERG1. To understand how polar or nonpolar moieties of inhibitors stimulate channel inhibition, critical amino acid replacement (i.e., T623, S624, S649, Y652 and F656) at the hERG cavity was examined by in silico mutagenesis. The average docking score differences between wild type and mutated hERG channels was found to have the following order: F656A > Y652A > S624A > T623A > S649A. These results are in agreement with experimental data.
长 QT 综合征(LQTS)可导致严重的心血管疾病,如心动过速和心源性猝死。不同药物与人类 ether-a-go-go 相关基因(hERG)通道腔内结合位点的随意结合导致类似的功能障碍,称为药物诱导的 LQTS。因此,评估强效药物的阻断能力对于 hERG 的分子药理学和药物化学具有重要的实际价值。因此,我们试图创建一个计算模型,旨在对 hERG1PD 的药物阻断能力进行盲法药物筛选。基于配体的 QSAR 和基于受体的分子对接方法的两种不同方法相结合,用于开发通用药效模型,该模型可快速评估药物对 hERG1 通道的阻断能力。从 PHASE 建模的 44 个初始候选者中选择了最佳的 3D-QSAR 模型(AAADR.7)。使用 31 种 hERG 阻滞剂构建的模型使用 9 种测试集化合物进行了验证。所得模型正确预测了测试集化合物的 pIC(50)值作为真实的未知值。为了进一步评估药效模型,从文献中选择了 14 种具有不同 hERG 阻断效力的 hERG 阻滞剂,并将其用作附加的外部盲测试集。发现外部测试集阻滞剂的体外和预测 pIC(50)值之间的平均偏差为 0.29,表明该模型能够准确地预测作为真实未知值的 pIC(50)值。这些药效模型与先前开发的 hERG1PD 原子受体模型合并,并表现出配体和受体模型之间的高度一致性。因此,该开发的 3D-QSAR 模型为候选化合物在合成之前提供了一种预测工具。该模型还表明了决定 hERG1 通道高亲和力阻断的关键功能基团。为了交叉验证构建的 hERG1 孔域和药效模型之间的一致性,我们使用 hERG1 的同源模型进行了对接研究。为了了解抑制剂的极性或非极性部分如何刺激通道抑制,通过计算机诱变检查了 hERG 腔中的关键氨基酸替换(即 T623、S624、S649、Y652 和 F656)。野生型和突变型 hERG 通道之间的平均对接得分差异发现具有以下顺序:F656A>Y652A>S624A>T623A>S649A。这些结果与实验数据一致。