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Rational Drug Discovery of HCV Helicase Inhibitor: Improved Docking Accuracy with Multiple Seeding in AutoDock Vina and In Situ Minimization.

Authors :
Lim SK
Othman R
Yusof R
Heh CH
Source :
Current computer-aided drug design [Curr Comput Aided Drug Des] 2017; Vol. 13 (2), pp. 160-169.
Publication Year :
2017

Abstract

Background: Hepatitis C is a significant cause for end-stage liver diseases and liver transplantation which affects approximately 3% of the global populations. Despite the current several direct antiviral agents in the treatment of Hepatitis C, the standard treatment for HCV infection is accompanied by several drawbacks, such as adverse side effects, high pricing of medications and the rapid emerging rate of resistant HCV variants.<br />Objectives: To discover potential inhibitors for HCV helicase through an optimized in silico approach.<br />Methods: In this study, a homology model (HCV Genotype 3 helicase) was used as the target and screened through a benzopyran-based virtual library. Multiple-seedings of AutoDock Vina and in situ minimization were to account for the non-deterministic nature of AutoDock Vina search algorithm and binding site flexibility, respectively. ADME/T and interaction analyses were also done on the top hits via FAFDRUG3 web server and Discovery Studio 4.5.<br />Results: This study involved the development of an improved flow for virtual screening via implemention of multiple-seeding screening approach and in situ minimization. With the new docking protocol, the redocked standards have shown better RMSD value in reference to their native conformations. Ten benzopyran-like compounds with satisfactory physicochemical properties were discovered to be potential inhibitors of HCV helicase. ZINC38649350 was identified as the most potential inhibitor.<br />Conclusion: Ten potential HCV helicase inhibitors were discovered via a new docking optimization protocol with better docking accuracy. These findings could contribute to the discovery of novel HCV antivirals and serve as an alternative approach of in silico rational drug discovery.<br /> (Copyright© Bentham Science Publishers; For any queries, please email at epub@benthamscience.org.)

Details

Language :
English
ISSN :
1875-6697
Volume :
13
Issue :
2
Database :
MEDLINE
Journal :
Current computer-aided drug design
Publication Type :
Academic Journal
Accession number :
27903217
Full Text :
https://doi.org/10.2174/1573409912666161130122622