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Identification of cavities on protein surface using multiple computational approaches for drug binding site prediction

机译:使用多种计算方法进行蛋白质结合位点预测,从而鉴定蛋白质表面的空洞

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Motivation: Protein-ligand binding sites are the active sites on protein surface that perform protein functions. Thus, the identification of those binding sites is often the first step to study protein functions and structure-based drug design. There are many computational algorithms and tools developed in recent decades, such as LIGSITE(cs/c), PASS, Q-SiteFinder, SURFNET, and so on. In our previous work, MetaPocket, we have proved that it is possible to combine the results of many methods together to improve the prediction result.Results: Here, we continue our previous work by adding four more methods Fpocket, GHECOM, ConCavity and POCASA to further improve the prediction success rate. The new method MetaPocket 2.0 and the individual approaches are all tested on two datasets of 48 unbound/bound and 210 bound structures as used before. The results show that the average success rate has been raised 5% at the top 1 prediction compared with previous work. Moreover, we construct a non-redundant dataset of drug-target complexes with known structure from DrugBank, DrugPort and PDB database and apply MetaPocket 2.0 to this dataset to predict drug binding sites. As a result, > 74% drug binding sites on protein target are correctly identified at the top 3 prediction, and it is 12% better than the best individual approach.
机译:动机:蛋白质-配体结合位点是蛋白质表面上执行蛋白质功能的活性位点。因此,识别这些结合位点通常是研究蛋白质功能和基于结构的药物设计的第一步。近几十年来开发了许多计算算法和工具,例如LIGSITE(cs / c),PASS,Q-SiteFinder,SURFNET等。在我们之前的工作MetaPocket中,我们已经证明可以将多种方法的结果结合起来以改善预测结果。结果:在这里,我们通过在Fpocket,GHECOM,ConCavity和POCASA中添加四种方法来继续我们的先前工作。进一步提高了预测成功率。如前所述,新方法MetaPocket 2.0和各个方法均在48个未绑定/绑定和210个绑定结构的两个数据集上进行了测试。结果表明,与之前的工作相比,排名前1位的预测的平均成功率提高了5%。此外,我们从DrugBank,DrugPort和PDB数据库构建了具有已知结构的药物靶标复合物的非冗余数据集,并将MetaPocket 2.0应用于该数据集以预测药物结合位点。结果,在前3个预测中正确识别了蛋白质靶标上> 74%的药物结合位点,比最佳的单个方法好12%。

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