Campus Units

Genetics, Development and Cell Biology, Bioinformatics and Computational Biology, Computer Science

Document Type

Article

Publication Version

Accepted Manuscript

Publication Date

2-2014

Journal or Book Title

Proteins

Volume

82

Issue

2

First Page

250

Last Page

267

DOI

10.1002/prot.24370

Abstract

Selecting near-native conformations from the immense number of conformations generated by docking programs remains a major challenge in molecular docking. We introduce DockRank, a novel approach to scoring docked conformations based on the degree to which the interface residues of the docked conformation match a set of predicted interface residues. Dock-Rank uses interface residues predicted by partner-specific sequence homology-based protein–protein interface predictor (PS-HomPPI), which predicts the interface residues of a query protein with a specific interaction partner. We compared the performance of DockRank with several state-of-the-art docking scoring functions using Success Rate (the percentage of cases that have at least one near-native conformation among the top m conformations) and Hit Rate (the percentage of near-native conformations that are included among the top m conformations). In cases where it is possible to obtain partner-specific (PS) interface predictions from PS-HomPPI, DockRank consistently outperforms both (i) ZRank and IRAD, two state-of-the-art energy-based scoring functions (improving Success Rate by up to 4-fold); and (ii) Variants of DockRank that use predicted interface residues obtained from several protein interface predictors that do not take into account the binding partner in making interface predictions (improving success rate by up to 39-fold). The latter result underscores the importance of using partner-specific interface residues in scoring docked conformations. We show that DockRank, when used to re-rank the conformations returned by ClusPro, improves upon the original ClusPro rankings in terms of both Success Rate and Hit Rate. DockRank is available as a server at http://einstein.cs.iastate.edu/DockRank/. ©

Comments

This is the peer reviewed version of the following article: Xue, L. C., Jordan, R. A., Yasser, E.-M., Dobbs, D. and Honavar, V. (2014), DockRank: Ranking docked conformations using partner-specific sequence homology-based protein interface prediction. Proteins, 82: 250–267, which has been published in final form at doi:10.1002/prot.24370 . This article may be used for non-commercial purposes in accordance With Wiley Terms and Conditions for self-archiving

Copyright Owner

Wiley Periodicals, Inc.

Language

en

File Format

application/pdf

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