Office of Data Science, National Toxicology Program, NIEHS, Morrisville, NC, 27560, USA.
Laboratory for Molecular Modeling, Division of Chemical Biology and Medicinal Chemistry, Beard Hall, UNC Eshelman School of Pharmacy, University of North Carolina, Chapel Hill, NC, 27599, USA.
Mol Inform. 2021 Jan;40(1):e2000113. doi: 10.1002/minf.202000113. Epub 2020 Aug 24.
The main protease (M) of the SARS-CoV-2 has been proposed as one of the major drug targets for COVID-19. We have identified the experimental data on the inhibitory activity of compounds tested against the closely related (96 % sequence identity, 100 % active site conservation) M of SARS-CoV. We developed QSAR models of these inhibitors and employed these models for virtual screening of all drugs in the DrugBank database. Similarity searching and molecular docking were explored in parallel, but docking failed to correctly discriminate between experimentally active and inactive compounds, so it was not relied upon for prospective virtual screening. Forty-two compounds were identified by our models as consensus computational hits. Subsequent to our computational studies, NCATS reported the results of experimental screening of their drug collection in SARS-CoV-2 cytopathic effect assay (https://opendata.ncats.nih.gov/covid19/). Coincidentally, NCATS tested 11 of our 42 hits, and three of them, cenicriviroc (AC of 8.9 μM), proglumetacin (tested twice independently, with AC of 8.9 μM and 12.5 μM), and sufugolix (AC 12.6 μM), were shown to be active. These observations support the value of our modeling approaches and models for guiding the experimental investigations of putative anti-COVID-19 drug candidates. All data and models used in this study are publicly available via Supplementary Materials, GitHub (https://github.com/alvesvm/sars-cov-mpro), and Chembench web portal (https://chembench.mml.unc.edu/).
SARS-CoV-2 的主要蛋白酶(M)被提议作为 COVID-19 的主要药物靶点之一。我们已经确定了针对 SARS-CoV 密切相关的 M(96%序列同一性,100%活性位点保守性)进行测试的化合物的抑制活性的实验数据。我们开发了这些抑制剂的 QSAR 模型,并将这些模型用于 DrugBank 数据库中所有药物的虚拟筛选。相似性搜索和分子对接同时进行探索,但对接未能正确区分实验活性和非活性化合物,因此不依赖于前瞻性虚拟筛选。我们的模型确定了 42 种化合物为共识计算命中物。在我们的计算研究之后,NCATS 报告了他们在 SARS-CoV-2 细胞病变效应测定(https://opendata.ncats.nih.gov/covid19/)中对其药物库进行实验筛选的结果。巧合的是,NCATS 测试了我们的 42 个命中物中的 11 个,其中 3 个,西尼立诺(AC 为 8.9μM)、普罗格列酮(独立测试两次,AC 分别为 8.9μM 和 12.5μM)和苏呋戈利(AC 为 12.6μM),被证明是有效的。这些观察结果支持我们的建模方法和模型在指导潜在抗 COVID-19 候选药物的实验研究中的价值。本研究中使用的所有数据和模型均可通过补充材料、GitHub(https://github.com/alvesvm/sars-cov-mpro)和 Chembench 门户网站(https://chembench.mml.unc.edu/)公开获得。