Literature DB >> 19358517

Comparative assessment of scoring functions on a diverse test set.

Tiejun Cheng1, Xun Li, Yan Li, Zhihai Liu, Renxiao Wang.   

Abstract

Scoring functions are widely applied to the evaluation of protein-ligand binding in structure-based drug design. We have conducted a comparative assessment of 16 popular scoring functions implemented in main-stream commercial software or released by academic research groups. A set of 195 diverse protein-ligand complexes with high-resolution crystal structures and reliable binding constants were selected through a systematic nonredundant sampling of the PDBbind database and used as the primary test set in our study. All scoring functions were evaluated in three aspects, that is, "docking power", "ranking power", and "scoring power", and all evaluations were independent from the context of molecular docking or virtual screening. As for "docking power", six scoring functions, including GOLD::ASP, DS::PLP1, DrugScore(PDB), GlideScore-SP, DS::LigScore, and GOLD::ChemScore, achieved success rates over 70% when the acceptance cutoff was root-mean-square deviation < 2.0 A. Combining these scoring functions into consensus scoring schemes improved the success rates to 80% or even higher. As for "ranking power" and "scoring power", the top four scoring functions on the primary test set were X-Score, DrugScore(CSD), DS::PLP, and SYBYL::ChemScore. They were able to correctly rank the protein-ligand complexes containing the same type of protein with success rates around 50%. Correlation coefficients between the experimental binding constants and the binding scores computed by these scoring functions ranged from 0.545 to 0.644. Besides the primary test set, each scoring function was also tested on four additional test sets, each consisting of a certain number of protein-ligand complexes containing one particular type of protein. Our study serves as an updated benchmark for evaluating the general performance of today's scoring functions. Our results indicate that no single scoring function consistently outperforms others in all three aspects. Thus, it is important in practice to choose the appropriate scoring functions for different purposes.

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Year:  2009        PMID: 19358517     DOI: 10.1021/ci9000053

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  141 in total

1.  Robust scoring functions for protein-ligand interactions with quantum chemical charge models.

Authors:  Jui-Chih Wang; Jung-Hsin Lin; Chung-Ming Chen; Alex L Perryman; Arthur J Olson
Journal:  J Chem Inf Model       Date:  2011-10-07       Impact factor: 4.956

2.  Are predefined decoy sets of ligand poses able to quantify scoring function accuracy?

Authors:  Oliver Korb; Tim Ten Brink; Fredrick Robin Devadoss Victor Paul Raj; Matthias Keil; Thomas E Exner
Journal:  J Comput Aided Mol Des       Date:  2012-01-10       Impact factor: 3.686

3.  Improved ligand-protein binding affinity predictions using multiple binding modes.

Authors:  Eva Stjernschantz; Chris Oostenbrink
Journal:  Biophys J       Date:  2010-06-02       Impact factor: 4.033

Review 4.  Focusing on shared subpockets - new developments in fragment-based drug discovery.

Authors:  Eman M M Abdelraheem; Carlos J Camacho; Alexander Dömling
Journal:  Expert Opin Drug Discov       Date:  2015-08-21       Impact factor: 6.098

5.  A quantum mechanics-based halogen bonding scoring function for protein-ligand interactions.

Authors:  Zhuo Yang; Yingtao Liu; Zhaoqiang Chen; Zhijian Xu; Jiye Shi; Kaixian Chen; Weiliang Zhu
Journal:  J Mol Model       Date:  2015-05-10       Impact factor: 1.810

Review 6.  From laptop to benchtop to bedside: structure-based drug design on protein targets.

Authors:  Lu Chen; John K Morrow; Hoang T Tran; Sharangdhar S Phatak; Lei Du-Cuny; Shuxing Zhang
Journal:  Curr Pharm Des       Date:  2012       Impact factor: 3.116

7.  Iterative Knowledge-Based Scoring Functions Derived from Rigid and Flexible Decoy Structures: Evaluation with the 2013 and 2014 CSAR Benchmarks.

Authors:  Chengfei Yan; Sam Z Grinter; Benjamin Ryan Merideth; Zhiwei Ma; Xiaoqin Zou
Journal:  J Chem Inf Model       Date:  2015-10-01       Impact factor: 4.956

Review 8.  A review of mathematical representations of biomolecular data.

Authors:  Duc Duy Nguyen; Zixuan Cang; Guo-Wei Wei
Journal:  Phys Chem Chem Phys       Date:  2020-02-26       Impact factor: 3.676

9.  Benchmarking methods and data sets for ligand enrichment assessment in virtual screening.

Authors:  Jie Xia; Ermias Lemma Tilahun; Terry-Elinor Reid; Liangren Zhang; Xiang Simon Wang
Journal:  Methods       Date:  2014-12-03       Impact factor: 3.608

10.  Characterization of small molecule binding. I. Accurate identification of strong inhibitors in virtual screening.

Authors:  Bo Ding; Jian Wang; Nan Li; Wei Wang
Journal:  J Chem Inf Model       Date:  2013-01-09       Impact factor: 4.956

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