论文标题
电场计算中的药物设计原理:了解SARS-COV-2与X77非共价抑制剂的主要蛋白酶相互作用
Drug design principles from electric field calculations: understanding SARS-CoV-2 main protease interaction with X77 non-covalent inhibitor
论文作者
论文摘要
快速有效的药物发现过程依赖于理性的药物设计来规避乏味且昂贵的试验和错误方法。但是,对通常是酶抑制剂的新疗法的准确预测需要清楚地了解主要参与者的性质和功能,这些主要参与者统治了候选药物候选者与其靶标之间的相互作用。在这里,我们建议计算电场以明确将结构与分子动力学模拟中的功能联系起来,该方法可以很容易地集成在有理药物发现工作流程中。通过将电场投影到特定键上,我们可以识别活性位点中稳定分子间相互作用(共价和非共价)的起源的系统组件。在预测新抑制剂时,这有助于显着缩小探索空间。为了说明这种方法,我们表征了非共价抑制剂X77与SARS-COV-2的主要蛋白酶的结合,SARS-COV-2是一个特别时间敏感的药物发现问题。通过电场计算,我们能够识别3个关键残基(ASN-142,MET-165和GLU-166),它们对X77具有功能后果。这与先前研究中报道的近20个残基与蛋白酶活跃部位的抑制剂密切接触形成对比。结果,现在可以通过旨在优化候选分子与这些残基之间相互作用的技术来加速寻找新的非共价抑制剂。
Fast and effective drug discovery processes rely on rational drug design to circumvent the tedious and expensive trial and error approach. However, accurate predictions of new remedies, which are often enzyme inhibitors, require a clear understanding of the nature and function of the key players governing the interaction between the drug candidate and its target. Here, we propose to calculate electric fields to explicitly link structure to function in molecular dynamics simulations, a method that can easily be integrated within the rational drug discovery workflow. By projecting the electric fields onto specific bonds, we can identify the system components that are at the origin of stabilizing intermolecular interactions (covalent and non-covalent) in the active site. This helps to significantly narrow the exploration space when predicting new inhibitors. To illustrate this method, we characterize the binding of the non-covalent inhibitor X77 to the main protease of SARS-CoV-2, a particularly time-sensitive drug discovery problem. With electric field calculations, we were able to identify 3 key residues (Asn-142, Met-165 and Glu-166), that have functional consequences on X77. This contrasts with the nearly 20 residues reported in previous studies as being in close contact with inhibitors in the active site of the protease. As a result, the search for new non-covalent inhibitors can now be accelerated by techniques that look to optimize the interaction between candidate molecules and these residues.