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开发一个简单、可解释和易于转移的定量构效关系(QSAR)模型,用于快速筛选抗病毒数据库,以寻找针对 SARS-CoV 疾病的新型 3C 样蛋白酶(3CLpro)酶抑制剂。

Development of a simple, interpretable and easily transferable QSAR model for quick screening antiviral databases in search of novel 3C-like protease (3CLpro) enzyme inhibitors against SARS-CoV diseases.

机构信息

Drug Theoretics and Cheminformatics Laboratory, Department of Pharmaceutical Technology, Jadavpur University , Kolkata, India.

出版信息

SAR QSAR Environ Res. 2020 Jul;31(7):511-526. doi: 10.1080/1062936X.2020.1776388. Epub 2020 Jun 16.

Abstract

In the context of recently emerged pandemic of COVID-19, we have performed two-dimensional quantitative structure-activity relationship (2D-QSAR) modelling using SARS-CoV-3CLpro enzyme inhibitors for the development of a multiple linear regression (MLR) based model. We have used 2D descriptors with an aim to develop an easily interpretable, transferable and reproducible model which may be used for quick prediction of SAR-CoV-3CLpro inhibitory activity for query compounds in the screening process. Based on the insights obtained from the developed 2D-QSAR model, we have identified the structural features responsible for the enhancement of the inhibitory activity against 3CLpro enzyme. Moreover, we have performed the molecular docking analysis using the most and least active molecules from the dataset to understand the molecular interactions involved in binding, and the results were then correlated with the essential structural features obtained from the 2D-QSAR model. Additionally, we have performed in silico predictions of SARS-CoV 3CLpro enzyme inhibitory activity of a total of 50,437 compounds obtained from two anti-viral drug databases (CAS COVID-19 antiviral candidate compound database and another recently reported list of prioritized compounds from the ZINC15 database) using the developed model and provided prioritized compounds for experimental detection of their performance for SARS-CoV 3CLpro enzyme inhibition.

摘要

在最近爆发的 COVID-19 大流行背景下,我们使用 SARS-CoV-3CLpro 酶抑制剂进行了二维定量构效关系 (2D-QSAR) 建模,以开发基于多元线性回归 (MLR) 的模型。我们使用了二维描述符,旨在开发一个易于解释、可转移和可重复的模型,可用于在筛选过程中快速预测 SAR-CoV-3CLpro 抑制活性的查询化合物。基于从开发的 2D-QSAR 模型中获得的见解,我们确定了负责增强对 3CLpro 酶抑制活性的结构特征。此外,我们使用数据集的最活跃和最不活跃分子进行了分子对接分析,以了解参与结合的分子相互作用,然后将结果与从 2D-QSAR 模型获得的基本结构特征相关联。此外,我们使用开发的模型对来自两个抗病毒药物数据库(CAS COVID-19 抗病毒候选化合物数据库和最近从 ZINC15 数据库报告的优先化合物列表)的总共 50437 种化合物的 SARS-CoV 3CLpro 酶抑制活性进行了计算机预测,并提供了优先化合物,供实验检测它们对 SARS-CoV 3CLpro 酶抑制的性能。

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