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Computational Approaches to Discover Novel Natural Compounds for SARS-CoV-2 Therapeutics
Authors:Dr. Shailima Rampogu  Gihwan Lee  Apoorva M. Kulkarni  Donghwan Kim  Sanghwa Yoon  Prof. Myeong Ok Kim  Prof. Keun Woo Lee
Affiliation:1. Division of Life Sciences, Research Institute of Natural Science, Gyeongsang National University, 501 Jinju-daero, Jinju, 52828 South Korea

These authors contributed equally to this work.;2. Division of Life Sciences, Research Institute of Natural Science, Gyeongsang National University, 501 Jinju-daero, Jinju, 52828 South Korea;3. Division of Life Science and Applied Life Science, College of Natural Sciences, Gyeongsang National University, Jinju, South Korea

Abstract:Scientists all over the world are facing a challenging task of finding effective therapeutics for the coronavirus disease (COVID-19). One of the fastest ways of finding putative drug candidates is the use of computational drug discovery approaches. The purpose of the current study is to retrieve natural compounds that have obeyed to drug-like properties as potential inhibitors. Computational molecular modelling techniques were employed to discover compounds with potential SARS-CoV-2 inhibition properties. Accordingly, the InterBioScreen (IBS) database was obtained and was prepared by minimizing the compounds. To the resultant compounds, the absorption, distribution, metabolism, excretion and toxicity (ADMET) and Lipinski's Rule of Five was applied to yield drug-like compounds. The obtained compounds were subjected to molecular dynamics simulation studies to evaluate their stabilities. In the current article, we have employed the docking based virtual screening method using InterBioScreen (IBS) natural compound database yielding two compounds has potential hits. These compounds have demonstrated higher binding affinity scores than the reference compound together with good pharmacokinetic properties. Additionally, the identified hits have displayed stable interaction results inferred by molecular dynamics simulation results. Taken together, we advocate the use of two natural compounds, STOCK1N-71493 and STOCK1N-45683 as SARS-CoV-2 treatment regime.
Keywords:SARS-CoV-2  natural compounds  COVID-19  molecular docking  virtual screening  computational studies
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