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Knowledge-guided docking: accurate prospective prediction of bound configurations of novel ligands using Surflex-Dock

机译:知识指导的对接:使用Surflex-Dock对新配体的结合构型进行准确的前瞻性预测

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摘要

Prediction of the bound configuration of small-molecule ligands that differ substantially from the cognate ligand of a protein co-crystal structure is much more challenging than re-docking the cognate ligand. Success rates for cross-docking in the range of 20–30 % are common. We present an approach that uses structural information known prior to a particular cutoff-date to make predictions on ligands whose bounds structures were determined later. The knowledge-guided docking protocol was tested on a set of ten protein targets using a total of 949 ligands. The benchmark data set, called PINC (“PINC Is Not Cognate”), is publicly available. Protein pocket similarity was used to choose representative structures for ensemble-docking. The docking protocol made use of known ligand poses prior to the cutoff-date, both to help guide the configurational search and to adjust the rank of predicted poses. Overall, the top-scoring pose family was correct over 60 % of the time, with the top-two pose families approaching a 75 % success rate. Correct poses among all those predicted were identified nearly 90 % of the time. The largest improvements came from the use of molecular similarity to improve ligand pose rankings and the strategy for identifying representative protein structures. With the exception of a single outlier target, the knowledge-guided docking protocol produced results matching the quality of cognate-ligand re-docking, but it did so on a very challenging temporally-segregated cross-docking benchmark.
机译:与重新配接同源配体相比,预测与蛋白质共晶体结构的同源配体基本不同的小分子配体的结合构型要困难得多。跨入坞的成功率通常在20%到30%之间。我们提出一种方法,该方法使用特定截止日期之前已知的结构信息来对配体进行预测,这些配体的结合结构将在以后确定。使用总共949个配体,在一组10个蛋白质靶标上测试了知识指导的对接方案。基准数据集称为PINC(“ PINC不是同源”)是公开可用的。蛋白质袋的相似性用于选择代表性的结构用于整体对接。对接方案在截止日期之前利用已知的配体姿势,以帮助指导构型搜索并调整预测姿势的等级。总体而言,得分最高的姿势家族在60%的时间内是正确的,前两个姿势家族的成功率接近75%。在将近90%的时间中,所有预测出的正确姿势都被识别出来。最大的改进来自分子相似性的使用,以提高配体位姿排名和识别代表性蛋白质结构的策略。除了单个异常目标之外,知识指导的对接协议所产生的结果与同源配体重新对接的质量相匹配,但是它在一个非常有挑战性的时间分隔交叉对接基准上做到了。

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