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PepCrawler: a fast RRT-based algorithm for high-resolution refinement and binding affinity estimation of peptide inhibitors

机译:PepCrawler:一种基于RRT的快速算法,用于肽抑制剂的高分辨率提纯和结合亲和力估算

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摘要

Motivation: Design of protein-protein interaction (PPI) inhibitors is a key challenge in structural bioinformatics and computer-aided drug design. Peptides, which partially mimic the interface area of one of the interacting proteins, are natural candidates to form protein-peptide complexes competing with the original PPI. The prediction of such complexes is especially challenging due to the high flexibility of peptide conformations.Results: In this article, we present PepCrawler, a new tool for deriving inding peptides from protein-protein complexes and prediction of peptide-protein complexes, by performing high-resolution docking refinement and estimation of binding affinity. By using a fast path planning approach, PepCrawler rapidly generates large amounts of flexible peptide conformations, allowing backbone and side chain flexibility. A newly introduced binding energy funnel 'steepness score' was applied for the evaluation of the protein-peptide complexes binding affinity. PepCrawler simulations predicted high binding affinity for native protein-peptide complexes benchmark and low affinity for low-energy decoy complexes. In three cases, where wet lab data are available, the PepCrawler predictions were consistent with the data. Comparing to other state of the art flexible peptide-protein structure prediction algorithms, our algorithm is very fast, and takes only minutes to run on a single PC.
机译:动机:蛋白质-蛋白质相互作用(PPI)抑制剂的设计是结构生物信息学和计算机辅助药物设计中的关键挑战。肽部分模拟相互作用蛋白之一的界面区域,是形成与原始PPI竞争的蛋白-肽复合物的天然候选物。结果:在本文中,我们介绍了PepCrawler,这是一种从蛋白质-蛋白质复合物中衍生肽并通过预测蛋白质-蛋白质复合物来预测肽-蛋白质复合物的新工具,因此对这类复合物的预测尤其具有挑战性。分辨率对接优化和结合亲和力估计。通过使用快速路径规划方法,PepCrawler可以快速生成大量灵活的肽构象,从而使主链和侧链具有灵活性。新引入的结合能漏斗“硬度分数”用于评估蛋白质-肽复合物的结合亲和力。 PepCrawler模拟预测对天然蛋白质-肽复合物基准的结合力高,而对低能诱饵复合物的结合力低。在有湿实验室数据可用的三种情况下,PepCrawler的预测与数据一致。与其他先进的灵活肽-蛋白质结构预测算法相比,我们的算法非常快,并且只需几分钟即可在单个PC上运行。

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