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Current Drug Discovery Technologies

Editor-in-Chief

ISSN (Print): 1570-1638
ISSN (Online): 1875-6220

A New Scoring Function for Molecular Docking Based on AutoDock and AutoDock Vina

Author(s): Vsevolod Yu. Tanchuk, Volodymyr O. Tanin, Andriy I. Vovk and Gennady Poda

Volume 12, Issue 3, 2015

Page: [170 - 178] Pages: 9

DOI: 10.2174/1570163812666150825110208

Price: $65

Abstract

Molecular docking of small molecules in the protein binding sites is the most widely used computational technique in modern structure-based drug discovery. Although accurate prediction of binding modes of small molecules can be achieved in most cases, estimation of their binding affinities remains mediocre at best. As an attempt to improve the correlation between the inhibitory constants, pKi, and scoring, we created a new, hybrid scoring function. The new function is a linear combination of the terms of the scoring functions of AutoDock and AutoDock Vina. It was trained on 2,412 protein-ligand complexes from the PDBbind database (www.pdbbind.org.cn, version 2012) and validated on a set of 313 complexes released in the 2013 version as a test set. The new function was included in a modified version of AutoDock. The hybrid scoring function showed a statistically significant improvement in both training and test sets in terms of correlation with and root mean square and mean absolute errors in prediction of pKi values. It was also tested on the CSAR 2014 Benchmark Exercise dataset (team T) and produced reasonably good results.

Keywords: AutoDock, AutoDock Vina, hybrid scoring function, molecular docking, scoring, virtual screening.

Graphical Abstract
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