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Predicting Ligand Binding Sites on Protein Surfaces by 3-Dimensional Probability Density Distributions of Interacting Atoms

机译:通过相互作用原子的3维概率密度分布预测蛋白质表面上的配体结合位点

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摘要

Predicting ligand binding sites (LBSs) on protein structures, which are obtained either from experimental or computational methods, is a useful first step in functional annotation or structure-based drug design for the protein structures. In this work, the structure-based machine learning algorithm ISMBLab-LIG was developed to predict LBSs on protein surfaces with input attributes derived from the three-dimensional probability density maps of interacting atoms, which were reconstructed on the query protein surfaces and were relatively insensitive to local conformational variations of the tentative ligand binding sites. The prediction accuracy of the ISMBLab-LIG predictors is comparable to that of the best LBS predictors benchmarked on several well-established testing datasets. More importantly, the ISMBLab-LIG algorithm has substantial tolerance to the prediction uncertainties of computationally derived protein structure models. As such, the method is particularly useful for predicting LBSs not only on experimental protein structures without known LBS templates in the database but also on computationally predicted model protein structures with structural uncertainties in the tentative ligand binding sites.
机译:预测通过实验或计算方法获得的蛋白质结构上的配体结合位点(LBS),是蛋白质结构功能注释或基于结构的药物设计中有用的第一步。在这项工作中,开发了基于结构的机器学习算法ISMBLab-LIG来预测蛋白质表面上的LBS,其输入属性源自相互作用原子的三维概率密度图,该属性图在查询蛋白质表面上重构且相对不敏感试探性配体结合位点的局部构象变化。 ISMBLab-LIG预测变量的预测准确性与在几个公认的测试数据集上基准化的最佳LBS预测变量的准确性相当。更重要的是,ISMBLab-LIG算法对计算得出的蛋白质结构模型的预测不确定性具有相当大的容忍度。这样,该方法不仅对于在数据库中没有已知LBS模板的实验蛋白质结构上预测LBS特别有用,而且对于在暂定配体结合位点具有结构不确定性的计算预测模型蛋白质结构上也特别有用。

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