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一种用于预测蛋白质-配体相互作用的基于知识的迭代评分函数:II. 评分函数的验证

An iterative knowledge-based scoring function to predict protein-ligand interactions: II. Validation of the scoring function.

作者信息

Huang Sheng-You, Zou Xiaoqin

机构信息

Department of Biochemistry, Dalton Cardiovascular Research Center, University of Missouri, Columbia, Missouri 65211, USA.

出版信息

J Comput Chem. 2006 Nov 30;27(15):1876-82. doi: 10.1002/jcc.20505.

Abstract

We have developed an iterative knowledge-based scoring function (ITScore) to describe protein-ligand interactions. Here, we assess ITScore through extensive tests on native structure identification, binding affinity prediction, and virtual database screening. Specifically, ITScore was first applied to a test set of 100 protein-ligand complexes constructed by Wang et al. (J Med Chem 2003, 46, 2287), and compared with 14 other scoring functions. The results show that ITScore yielded a high success rate of 82% on identifying native-like binding modes under the criterion of rmsd < or = 2 A for each top-ranked ligand conformation. The success rate increased to 98% if the top five conformations were considered for each ligand. In the case of binding affinity prediction, ITScore also obtained a good correlation for this test set (R = 0.65). Next, ITScore was used to predict binding affinities of a second diverse test set of 77 protein-ligand complexes prepared by Muegge and Martin (J Med Chem 1999, 42, 791), and compared with four other widely used knowledge-based scoring functions. ITScore yielded a high correlation of R2 = 0.65 (or R = 0.81) in the affinity prediction. Finally, enrichment tests were performed with ITScore against four target proteins using the compound databases constructed by Jacobsson et al. (J Med Chem 2003, 46, 5781). The results were compared with those of eight other scoring functions. ITScore yielded high enrichments in all four database screening tests. ITScore can be easily combined with the existing docking programs for the use of structure-based drug design.

摘要

我们开发了一种基于知识的迭代评分函数(ITScore)来描述蛋白质-配体相互作用。在此,我们通过对天然结构识别、结合亲和力预测和虚拟数据库筛选进行广泛测试来评估ITScore。具体而言,ITScore首先应用于Wang等人构建的100个蛋白质-配体复合物测试集(《药物化学杂志》2003年,46卷,2287页),并与其他14种评分函数进行比较。结果表明,在每个排名靠前的配体构象的均方根偏差(rmsd)≤2 Å的标准下,ITScore在识别类天然结合模式方面的成功率高达82%。如果考虑每个配体的前五个构象,成功率则提高到98%。在结合亲和力预测方面,ITScore对该测试集也获得了良好的相关性(R = 0.65)。接下来,ITScore用于预测由Muegge和Martin制备的77个蛋白质-配体复合物的第二个多样化测试集的结合亲和力(《药物化学杂志》1999年,42卷,791页),并与其他四种广泛使用的基于知识的评分函数进行比较。在亲和力预测中,ITScore产生了R2 = 0.65(或R = 0.81)的高相关性。最后,使用Jacobsson等人构建的化合物数据库(《药物化学杂志》2003年,46卷,5781页),对ITScore针对四种靶蛋白进行富集测试。将结果与其他八种评分函数的结果进行比较。在所有四个数据库筛选测试中,ITScore都产生了高富集率。ITScore可以很容易地与现有的对接程序相结合,用于基于结构的药物设计。

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