Molecular Informatics | 2021

QSAR Modeling of SARS‐CoV Mpro Inhibitors Identifies Sufugolix, Cenicriviroc, Proglumetacin, and other Drugs as Candidates for Repurposing against SARS‐CoV‐2

 
 
 
 
 
 
 
 

Abstract


The main protease (Mpro) 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\u2009% sequence identity, 100\u2009% active site conservation) Mpro 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\u2005hits, and three of them, cenicriviroc (AC50 of 8.9\u2005μM), proglumetacin (tested twice independently, with AC50 of 8.9\u2005μM and 12.5\u2005μM), and sufugolix (AC50 12.6\u2005μM), 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/).

Volume 40
Pages None
DOI 10.1002/minf.202000113
Language English
Journal Molecular Informatics

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