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ID-Score:一种新的基于与蛋白质-配体相互作用相关的综合描述符集的经验评分函数。

ID-Score: a new empirical scoring function based on a comprehensive set of descriptors related to protein-ligand interactions.

机构信息

State Key Laboratory of Biotherapy and Cancer Center, West China Hospital, West China Medical School, Sichuan University, Sichuan 610041, China.

出版信息

J Chem Inf Model. 2013 Mar 25;53(3):592-600. doi: 10.1021/ci300493w. Epub 2013 Feb 26.

DOI:10.1021/ci300493w
PMID:23394072
Abstract

Scoring functions have been widely used to assess protein-ligand binding affinity in structure-based drug discovery. However, currently commonly used scoring functions face some challenges including poor correlation between calculated scores and experimental binding affinities, target-dependent performance, and low sensitivity to analogues. In this account, we propose a new empirical scoring function termed ID-Score. ID-Score was established based on a comprehensive set of descriptors related to protein-ligand interactions; these descriptors cover nine categories: van der Waals interaction, hydrogen-bonding interaction, electrostatic interaction, π-system interaction, metal-ligand bonding interaction, desolvation effect, entropic loss effect, shape matching, and surface property matching. A total of 2278 complexes were used as the training set, and a modified support vector regression (SVR) algorithm was used to fit the experimental binding affinities. Evaluation results showed that ID-Score outperformed other selected commonly used scoring functions on a benchmark test set and showed considerable performance on a large independent test set. ID-Score also showed a consistent higher performance across different biological targets. Besides, it could correctly differentiate structurally similar ligands, indicating higher sensitivity to analogues. Collectively, the better performance of ID-Score enables it as a useful tool in assessing protein-ligand binding affinity in structure-based drug discovery as well as in lead optimization.

摘要

打分函数在基于结构的药物发现中被广泛用于评估蛋白质-配体结合亲和力。然而,目前常用的打分函数面临一些挑战,包括计算得分与实验结合亲和力之间的相关性差、目标依赖性和对类似物的低灵敏度。在本报告中,我们提出了一种新的经验打分函数,称为 ID-Score。ID-Score 是基于一套与蛋白质-配体相互作用相关的综合描述符建立的;这些描述符涵盖九个类别:范德华相互作用、氢键相互作用、静电相互作用、π 系统相互作用、金属-配体键合相互作用、去溶剂化效应、熵损失效应、形状匹配和表面性质匹配。总共 2278 个复合物被用作训练集,并用改进的支持向量回归(SVR)算法拟合实验结合亲和力。评估结果表明,ID-Score 在基准测试集上优于其他选定的常用打分函数,在大型独立测试集上也表现出相当的性能。ID-Score 还在不同的生物靶标上表现出一致的更高性能。此外,它可以正确地区分结构相似的配体,表明对类似物的灵敏度更高。总之,ID-Score 的更好性能使其成为基于结构的药物发现以及先导化合物优化中评估蛋白质-配体结合亲和力的有用工具。

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