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Catalytic residues in hydrolases: analysis of methods designed for ligand-binding site prediction

机译:水解酶中的催化残留物:用于配体结合位点预测的方法分析

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摘要

The comparison of eight tools applicable to ligand-binding site prediction is presented. The methods examined cover three types of approaches: the geometrical (CASTp, PASS, Pocket-Finder), the physicochemical (Q-SiteFinder, FOD) and the knowledge-based (ConSurf, SuMo, WebFEATURE). The accuracy of predictions was measured in reference to the catalytic residues documented in the Catalytic Site Atlas. The test was performed on a set comprising selected chains of hydrolases. The results were analysed with regard to size, polarity, secondary structure, accessible solvent area of predicted sites as well as parameters commonly used in machine learning (F-measure, MCC). The relative accuracies of predictions are presented in the ROC space, allowing determination of the optimal methods by means of the ROC convex hull. Additionally the minimum expected cost analysis was performed. Both advantages and disadvantages of the eight methods are presented. Characterization of protein chains in respect to the level of difficulty in the active site prediction is introduced. The main reasons for failures are discussed. Overall, the best performance offers SuMo followed by FOD, while Pocket-Finder is the best method among the geometrical approaches.
机译:介绍了适用于配体结合位点预测的八种工具的比较。检查的方法涵盖三种类型的方法:几何方法(CASTp,PASS,Pocket-Finder),物理化学方法(Q-SiteFinder,FOD)和基于知识的方法(ConSurf,SuMo,WebFEATURE)。预测的准确性是参考Catalytic Site Atlas中记录的催化残基进行测量的。该测试是在包含所选水解酶链的一组样品上进行的。分析了有关大小,极性,二级结构,预测位点的可及溶剂面积以及机器学习中常用的参数(F-measure,MCC)的结果。预测的相对精度显示在ROC空间中,从而可以借助ROC凸包确定最佳方法。另外,执行了最低预期成本分析。同时介绍了这八种方法的优缺点。介绍了蛋白质链相对于活性位点预测难度的表征。讨论了失败的主要原因。总的来说,最好的性能是SuMo,其次是FOD,而Pocket-Finder是几何方法中最好的方法。

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