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基于配体竞争饱和模拟的贝叶斯机器学习优化靶点识别评估 hERG1 阻断作用。

Assessing hERG1 Blockade from Bayesian Machine-Learning-Optimized Site Identification by Ligand Competitive Saturation Simulations.

机构信息

Centre for Molecular Simulation, Department of Biological Sciences, University of Calgary, Calgary, Alberta T2N 1N4, Canada.

Computer-Aided Drug Design Center, Department of Pharmaceutical Science, School of Pharmacy, University of Maryland, Baltimore, Maryland 21201, United States.

出版信息

J Chem Inf Model. 2020 Dec 28;60(12):6489-6501. doi: 10.1021/acs.jcim.0c01065. Epub 2020 Nov 16.

Abstract

Drug-induced cardiotoxicity is a potentially lethal and yet one of the most common side effects with the drugs in clinical use. Most of the drug-induced cardiotoxicity is associated with an off-target pharmacological blockade of K currents carried out by the cardiac Human--Related (hERG1) potassium channel. There is a compulsory preclinical stage safety assessment for the hERG1 blockade for all classes of drugs, which adds substantially to the cost of drug development. The availability of a high-resolution cryogenic electron microscopy (cryo-EM) structure for the channel in its open/depolarized state solved in 2017 enabled the application of molecular modeling for rapid assessment of drug blockade by molecular docking and simulation techniques. More importantly, if successful, in silico methods may allow a path to lead-compound salvaging by mapping out key block determinants. Here, we report the blind application of the site identification by the ligand competitive saturation (SILCS) protocol to map out druggable/regulatory hotspots in the hERG1 channel available for blockers and activators. The SILCS simulations use small solutes representative of common functional groups to sample the chemical space for the entire protein and its environment using all-atom simulations. The resulting chemical maps, FragMaps, explicitly account for receptor flexibility, protein-fragment interactions, and fragment desolvation penalty allowing for rapid ranking of potential ligands as blockers or nonblockers of hERG1. To illustrate the power of the approach, SILCS was applied to a test set of 55 blockers with diverse chemical scaffolds and pIC50 values measured under uniform conditions. The original SILCS model was based on the all-atom modeling of the hERG1 channel in an explicit lipid bilayer and was further augmented with a Bayesian-optimization/machine-learning (BML) stage employing an independent literature-derived training set of 163 molecules. BML approach was used to determine weighting factors for the FragMaps contributions to the scoring function. pIC50 predictions from the combined SILCS/BML approach to the 55 blockers showed a Pearson correlation (PC) coefficient of >0.535 relative to the experimental data. SILCS/BML model was shown to yield substantially improved performance as compared to commonly used rigid and flexible molecular docking methods for a well-established cohort of hERG1 blockers, where no correlation with experimental data was recorded. SILCS/BML results also suggest that a proper weighting of protonation states of common blockers present at physiological pH is essential for accurate predictions of blocker potency. The precalculated and optimized SILCS FragMaps can now be used for the rapid screening of small molecules for their cardiotoxic potential as well as for exploring alternative binding pockets in the hERG1 channel with applications to the rational design of activators.

摘要

药物诱导的心脏毒性是一种潜在的致命性的、最常见的临床用药副作用之一。大多数药物诱导的心脏毒性与心脏相关的(hERG1)钾通道的非靶向药理学阻滞有关。所有类别的药物都需要进行强制性的临床前阶段 hERG1 阻滞安全性评估,这大大增加了药物开发的成本。2017 年,该通道在开放/去极化状态下的高分辨率低温电子显微镜(cryo-EM)结构的可用性使得可以应用分子对接和模拟技术进行药物阻滞的快速分子建模评估。更重要的是,如果成功,计算方法可能会通过绘制关键阻滞决定因素来为先导化合物的回收开辟道路。在这里,我们报告了通过配体竞争饱和(SILCS)方案进行盲法靶点鉴定,以确定 hERG1 通道中可用于阻滞剂和激活剂的可成药/调节热点。SILCS 模拟使用代表常见官能团的小分子来使用全原子模拟对整个蛋白质及其环境进行化学空间采样。所得的化学图谱 FragMaps 明确考虑了受体灵活性、蛋白质片段相互作用和片段去溶剂化罚分,从而可以快速对潜在配体进行分类,作为 hERG1 的阻滞剂或非阻滞剂。为了说明该方法的强大功能,我们将 SILCS 应用于一组由具有不同化学结构骨架和在统一条件下测量的 pIC50 值的 55 个阻滞剂的测试集。原始的 SILCS 模型基于 hERG1 通道在明确定义的脂质双层中的全原子建模,并进一步通过贝叶斯优化/机器学习(BML)阶段进行了扩充,该阶段采用了来自独立文献的 163 个分子的训练集。BML 方法用于确定 FragMaps 对评分函数的贡献的权重因子。来自组合 SILCS/BML 方法的对 55 个阻滞剂的 pIC50 预测与实验数据的 Pearson 相关系数(PC)大于 0.535。与常用的刚性和柔性分子对接方法相比,SILCS/BML 模型在针对 hERG1 阻滞剂的经过充分验证的队列中表现出了显著提高的性能,而在该队列中,没有记录到与实验数据的相关性。SILCS/BML 结果还表明,在生理 pH 下存在的常见阻滞剂的质子化状态的适当加权对于准确预测阻滞剂的效力是必不可少的。现在可以使用预先计算和优化的 SILCS FragMaps 来快速筛选小分子的心脏毒性潜力,以及探索 hERG1 通道中的替代结合口袋,应用于激活剂的合理设计。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/936a/7839320/bdc9a8ac1c30/nihms-1659711-f0002.jpg

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