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Nonlinear scoring functions for similarity-based ligand docking and binding affinity prediction

机译:基于相似性的配体对接和结合亲和力预测的非线性评分功能

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摘要

A common strategy for virtual screening considers a systematic docking of a large library of organic compounds into the target sites in protein receptors with promising leads selected based on favorable intermolecular interactions. Despite a continuous progress in the modeling of protein-ligand interactions for pharmaceutical design, important challenges still remain, thus the development of novel techniques is required. In this communication, we describe eSimDock, a new approach to ligand docking and binding affinity prediction. eSimDock employs nonlinear machine learning-based scoring functions to improve the accuracy of ligand ranking and similarity-based binding pose prediction, and to increase the tolerance to structural imperfections in the target structures. In large-scale benchmarking using the Astex/CCDC data set, we show that 53.9% (67.9%) of the predicted ligand poses have RMSD of <2 ? (<3 ?). Moreover, using binding sites predicted by recently developed eFindSite, eSimDock models ligand binding poses with an RMSD of 4 ? for 50.0-39.7% of the complexes at the protein homology level limited to 80-40%. Simulations against non-native receptor structures, whose mean backbone rearrangements vary from 0.5 to 5.0 ? Cα-RMSD, show that the ratio of docking accuracy and the estimated upper bound is at a constant level of ~0.65. Pearson correlation coefficient between experimental and predicted by eSimDock K_i values for a large data set of the crystal structures of protein-ligand complexes from BindingDB is 0.58, which decreases only to 0.46 when target structures distorted to 3.0 ? Cα-RMSD are used. Finally, two case studies demonstrate that eSimDock can be customized to specific applications as well. These encouraging results show that the performance of eSimDock is largely unaffected by the deformations of ligand binding regions, thus it represents a practical strategy for across-proteome virtual screening using protein models. eSimDock is freely available to the academic community as a Web server at http://www.brylinski.org/esimdock.
机译:虚拟筛选的常用策略是考虑将有机化合物的大型文库系统地对接至蛋白质受体的目标位点,并基于良好的分子间相互作用选择有希望的先导。尽管在用于药物设计的蛋白质-配体相互作用的建模中不断取得进展,但是仍然存在重要的挑战,因此需要开发新技术。在本次交流中,我们描述了eSimDock,一种用于配体对接和结合亲和力预测的新方法。 eSimDock利用基于非线性机器学习的评分功能来提高配体排名和基于相似性的结合姿势预测的准确性,并提高对目标结构中结构缺陷的耐受性。在使用Astex / CCDC数据集进行的大规模基准测试中,我们显示了53.9%(67.9%)的预测配体位姿的RMSD <2? (<3?)。此外,使用最近开发的eFindSite预测的结合位点,eSimDock建模的配体结合姿势的RMSD为4? 50.0-39.7%的复合物在蛋白质同源性水平上限制为80-40%。针对非天然受体结构的仿真,其平均骨架重排范围从0.5到5.0? Cα-RMSD表示对接精度与估计上限的比值始终处于〜0.65的恒定水平。对于来自BindingDB的蛋白质-配体复合物晶体结构的大型数据集,通过eSimDock K_i值得到的实验值和预测值之间的Pearson相关系数为0.58,当目标结构变形为3.0时,该值仅降低至0.46。使用Cα-RMSD。最后,两个案例研究表明eSimDock也可以针对特定应用进行定制。这些令人鼓舞的结果表明,eSimDock的性能在很大程度上不受配体结合区变形的影响,因此,它代表了使用蛋白质模型进行跨蛋白质组虚拟筛选的实用策略。 eSimDock可作为Web服务器在http://www.brylinski.org/esimdock上免费提供给学术界。

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