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Gaussian mapping of chemical fragments in ligand binding sites.

作者信息

Wang Kun, Murcia Marta, Constans Pere, Pérez Carlos, Ortiz Angel R

机构信息

Department of Physiology & Biophysics, Mount Sinai School of Medicine, One Gustave Levy Pl., Box 1218, New York, NY 10029, USA.

出版信息

J Comput Aided Mol Des. 2004 Feb;18(2):101-18. doi: 10.1023/b:jcam.0000030033.26053.40.

Abstract

We present a new approach to automatically define a quasi-optimal minimal set of pharmacophoric points mapping the interaction properties of a user-defined ligand binding site. The method is based on a fitting algorithm where a grid of sampled interaction energies of the target protein with small chemical fragments in the binding site is approximated by a linear expansion of Gaussian functions. A heuristic approximation selects from this expansion the smallest possible set of Gaussians required to describe the interaction properties of the binding site within a prespecified accuracy. We have evaluated the performance of the approach by comparing the computed Gaussians with the positions of aromatic sites found in experimental protein-ligand complexes. For a set of 53 complexes, good correspondence is found in general. At a 95% significance level, approximately 65% of the predicted interaction points have an aromatic binding site within 1.5 A. We then studied the utility of these points in docking using the program DOCK. Short docking times, with an average of approximately 0.18 s per conformer, are obtained, while retaining, both for rigid and flexible docking, the ability to sample native-like binding modes for the ligand. An average 4-5-fold speed-up in docking times and a similar success rate is estimated with respect to the standard DOCK protocol.

摘要

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