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Structural insights into inhibition of PRRSV Nsp4 revealed by structure-based virtual screening, molecular dynamics, and MM-PBSA studiesopen access

Authors
Pathak, Rajesh KumarSeo, Young-JunKim, Jun-Mo
Issue Date
Feb-2022
Publisher
BMC
Keywords
PRRSV; Swine; Nsp4; Molecular dynamics; Protein-ligand interaction
Citation
JOURNAL OF BIOLOGICAL ENGINEERING, v.16, no.1
Journal Title
JOURNAL OF BIOLOGICAL ENGINEERING
Volume
16
Number
1
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/55944
DOI
10.1186/s13036-022-00284-x
ISSN
1754-1611
Abstract
Background Porcine reproductive and respiratory syndrome respiratory sickness in weaned and growing pigs, as well as sow reproductive failure, and its infection is regarded as one of the most serious swine illnesses worldwide. Given the current lack of an effective treatment, in this study, we identified natural compounds capable of inhibiting non-structural protein 4 (Nsp4) of the virus, which is involved in their replication and pathogenesis. Results We screened natural compounds (n = 97,999) obtained from the ZINC database against Nsp4 and selected the top 10 compounds for analysing protein-ligand interactions and physicochemical properties. The five compounds demonstrating strong binding affinity were then subjected to molecular dynamics simulations (100 ns) and binding free energy calculations. Based on analysis, we identified four possible lead compounds that represent potentially effective drug-like inhibitors. Conclusions These methods identified that these natural compounds are capable of inhibiting Nsp4 and possibly effective as antiviral therapeutics against PRRSV.
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