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首页> 外文期刊>Journal of chemical information and modeling >Knowledge-based scoring functions in drug design: 2. can the knowledge base be enriched?
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Knowledge-based scoring functions in drug design: 2. can the knowledge base be enriched?

机译:药物设计中基于知识的评分功能:2.可以丰富知识基础吗?

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Fast and accurate predicting of the binding affinities of large sets of diverse protein-ligand complexes is an important, yet extremely challenging, task in drug discovery. The development of knowledge-based scoring functions exploiting structural information of known protein-ligand complexes represents a valuable contribution to such a computational prediction. In this study, we report a scoring function named IPMF that integrates additional experimental binding affinity information into the extracted potentials, on the assumption that a scoring function with the "enriched"knowledge base may achieve increased accuracy in binding affinity prediction. In our approach, the functions and atom types of PMF04 were inherited to implicitly capture binding effects that are hard to model explicitly, and a novel iteration device was designed to gradually tailor the initial potentials. We evaluated the performance of the resultant IPMF with a diverse set of 219 protein-ligand complexes and compared it with seven scoring functions commonly used in computer-aided drug design, including GLIDE, AutoDock4, VINA, PLP, LUDI, PMF, and PMF04. While the IPMF is only moderately successful in ranking native or near native conformations, it yields the lowest mean error of 1.41 log K _i/K_d units from measured inhibition affinities and the highest Pearsons correlation coefficient of Rp~2 0.40 for the test set. These results corroborate our initial supposition about the role of "enriched"knowledge base. With the rapid growing volume of high-quality structural and interaction data in the public domain, this work marks a positive step toward improving the accuracy of knowledge-based scoring functions in binding affinity prediction.
机译:快速准确地预测各种蛋白质-配体复合物的大量结合亲和力是药物开发中一项重要但极富挑战性的任务。利用已知蛋白质-配体复合物的结构信息开发的基于知识的评分功能代表了对这种计算预测的宝贵贡献。在这项研究中,我们报告了一个名为IPMF的评分功能,该功能将其他实验性结合亲和力信息整合到提取的电位中,假设具有“丰富”知识基础的评分功能可能会提高结合亲和力预测的准确性。在我们的方法中,继承了PMF04的功能和原子类型以隐式捕获难以显式建模的绑定效应,并设计了一种新颖的迭代设备来逐步调整初始电势。我们用219种蛋白质-配体复合物评估了所得IPMF的性能,并将其与计算机辅助药物设计中常用的七个评分功能进行了比较,包括GLIDE,AutoDock4,VINA,PLP,LUDI,PMF和PMF04。虽然IPMF在对天然或接近天然构象进行排序方面仅取得了一定的成功,但根据测得的抑制亲和力得出的最低平均误差为1.41 log K _i / K_d单位,测试集的最高Pearsons相关系数为Rp〜2 0.40。这些结果证实了我们对“丰富的”知识基础的作用的最初假设。随着公共领域中高质量结构和交互数据的快速增长,这项工作标志着朝着提高结合亲和力预测中基于知识的评分功能的准确性迈出了积极的一步。

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