The main (Mpro) and papain-like (PLpro) proteases are highly conserved viral proteins essential for replication of the COVID-19 virus, SARS-COV-2. Therefore, a logical plan for producing new drugs against this pathogen is to discover inhibitors of these enzymes. Accordingly, the goal of the present work was to devise a computational approach to design, characterize, and select compounds predicted to be potent dual inhibitors - effective against both Mpro and PLpro. The first step employed LigDream, an artificial neural network, to create a virtual ligand library. Ligands with computed ADMET profiles indicating drug-like properties and low mammalian toxicity were selected for further study. Initial docking of these ligands into the active sites of Mpro and PLpro was done with GOLD, and the highest-scoring ligands were redocked with AutoDock Vina to determine binding free energies (ÎG). Compounds 89-00, 89-07, 89-32, and 89-38 exhibited favorable ÎG values for Mpro (-7.6 to -8.7Â kcal/mol) and PLpro (-9.1 to -9.7Â kcal/mol). Global docking of selected compounds with the Mpro dimer identified prospective allosteric inhibitors 89-00, 89-27, and 89-40 (ÎG -8.2 to -8.9Â kcal/mol). Molecular dynamics simulations performed on Mpro and PLpro active site complexes with the four top-scoring ligands from Vina demonstrated that the most stable complexes were formed with compounds 89-32 and 89-38. Overall, the present computational strategy generated new compounds with predicted drug-like characteristics, low mammalian toxicity, and high inhibitory potencies against both target proteases to form stable complexes. Further preclinical studies will be required to validate the in silico findings before the lead compounds could be considered for clinical trials.
SARS-CoV-2 proteases Mpro and PLpro: Design of inhibitors with predicted high potency and low mammalian toxicity using artificial neural networks, ligand-protein docking, molecular dynamics simulations, and ADMET calculations.
SARS-CoV-2 蛋白酶 Mpro 和 PLpro:利用人工神经网络、配体-蛋白质对接、分子动力学模拟和 ADMET 计算设计具有预测的高效性和低哺乳动物毒性的抑制剂
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作者:Tumskiy Roman S, Tumskaia Anastasiia V, Klochkova Iraida N, Richardson Rudy J
| 期刊: | Computers in Biology and Medicine | 影响因子: | 6.300 |
| 时间: | 2023 | 起止号: | 2023 Feb;153:106449 |
| doi: | 10.1016/j.compbiomed.2022.106449 | 研究方向: | 神经科学 |
| 疾病类型: | 新冠 | ||
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