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Current Drug Metabolism

Editor-in-Chief

ISSN (Print): 1389-2002
ISSN (Online): 1875-5453

Research Article

In-silico Design and ADMET Studies of Natural Compounds as Inhibitors of Xanthine Oxidase (XO) Enzyme

Author(s): Neelam Malik, Priyanka Dhiman and Anurag Khatkar*

Volume 18, Issue 6, 2017

Page: [577 - 593] Pages: 17

DOI: 10.2174/1389200218666170316092531

Price: $65

Abstract

Background: Xanthine oxidase a ubiquitous enzyme has been found to be involved in various pathological disorders including gout, hyperuricemia, inflammation, oxidative stress and cardiovascular diseases. Inhibitors of xanthine oxidase thus find a crucial role in the therapeutic treatment of these deadly diseases.

Objective: Considering the side effects of today’s treatment regimen here we choose nature based compounds to act as xanthine oxidase inhibitors. In the present work, we performed in-silico docking of natural compounds to reveal the underlying mechanism of inhibition of xanthine oxidase. Further filtration of screened compounds with ADMET studies has been performed.

Method: An in-house library of natural compounds screened through ADMET profile for the drug likeliness property was approached for docking studies using Schrödinger suite. Calculation of docking score was done by glide module and free binding energy calculations were performed through MM/GBSA software.

Results: Natural leads having better pharmacokinetic profile and mechanism of inhibition were obtained. Docking score, binding energy and different forces involved in interaction were calculated for the top-ranked molecules and good comparison with the standard drugs was achieved

Conclusion: Compounds having potential therapeutic activity with low systematic toxicity has been identified against xanthine oxidase which could serve as pharmacophore for the design and synthesis of new drug-like molecules

Keywords: Natural products, xanthine oxidase, virtual screening, MM-GB/SA, ADMET.

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