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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Improving binding mode and binding affinity predictions of docking by ligand-based search of protein conformations: evaluation in D3R grand challenge 2015
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Improving binding mode and binding affinity predictions of docking by ligand-based search of protein conformations: evaluation in D3R grand challenge 2015

机译:通过基于配体的蛋白质构象搜索改进结合模式和对接的结合亲和力预测:D3R大挑战2015年评估

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The growing number of protein-ligand complex structures, particularly the structures of proteins co-bound with different ligands, in the Protein Data Bank helps us tackle two major challenges in molecular docking studies: the protein flexibility and the scoring function. Here, we introduced a systematic strategy by using the information embedded in the known protein-ligand complex structures to improve both binding mode and binding affinity predictions. Specifically, a ligand similarity calculation method was employed to search a receptor structure with a bound ligand sharing high similarity with the query ligand for the docking use. The strategy was applied to the two datasets (HSP90 and MAP4K4) in recent D3R Grand Challenge 2015. In addition, for the HSP90 dataset, a system-specific scoring function (ITScore2_hsp90) was generated by recalibrating our statistical potential-based scoring function (ITScore2) using the known protein-ligand complex structures and the statistical mechanics-based iterative method. For the HSP90 dataset, better performances were achieved for both binding mode and binding affinity predictions comparing with the original ITScore2 and with ensemble docking. For the MAP4K4 dataset, although there were only eight known protein-ligand complex structures, our docking strategy achieved a comparable performance with ensemble docking. Our method for receptor conformational selection and iterative method for the development of system-specific statistical potential-based scoring functions can be easily applied to other protein targets that have a number of protein-ligand complex structures available to improve predictions on binding.
机译:蛋白质数据库中越来越多的蛋白质 - 配体复合结构,特别是蛋白质与不同配体共结合的蛋白质的结构有助于我们在分子对接研究中解决两个主要挑战:蛋白质柔韧性和得分功能。这里,我们通过使用已知的蛋白质 - 配体复合结构中的信息来介绍系统策略,以改善结合模式和结合亲和力预测。具体地,采用配体相似度计算方法来搜索具有与查询配体共享高相似性的受体结构,用于对接使用。该策略应用于近期D3R大挑战2015年的两个数据集(HSP90和MAP4K4)。此外,对于HSP90数据集,通过重新校准基于统计的潜在的评分功能(ITSCore2 )使用已知的蛋白质 - 配体复合结构和基于统计力学的迭代方法。对于HSP90数据集,对于与原始ITSCore2和集合对接进行比较的绑定模式和绑定亲和力预测,实现了更好的性能。对于MAP4K4数据集,尽管只有八个已知的蛋白质配体复杂结构,但我们的对接策略与集合对接实现了相当的性能。我们对基于系统特异性统计潜在的评分作用的基于系统特定统计潜在的评分功能的方法和迭代方法可以容易地应用于具有多种蛋白质 - 配体复合结构的其他蛋白质靶标可用于改善结合的预测。

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