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PCRPi: Presaging Critical Residues in Protein interfaces a new computational tool to chart hot spots in protein interfaces

机译:PCRPi:预测蛋白质界面中的关键残基一种新的计算工具可绘制蛋白质界面中热点的图表

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摘要

Protein–protein interactions (PPIs) are ubiquitous in Biology, and thus offer an enormous potential for the discovery of novel therapeutics. Although protein interfaces are large and lack defining physiochemical traits, is well established that only a small portion of interface residues, the so-called hot spot residues, contribute the most to the binding energy of the protein complex. Moreover, recent successes in development of novel drugs aimed at disrupting PPIs rely on targeting such residues. Experimental methods for describing critical residues are lengthy and costly; therefore, there is a need for computational tools that can complement experimental efforts. Here, we describe a new computational approach to predict hot spot residues in protein interfaces. The method, called Presaging Critical Residues in Protein interfaces (PCRPi), depends on the integration of diverse metrics into a unique probabilistic measure by using Bayesian Networks. We have benchmarked our method using a large set of experimentally verified hot spot residues and on a blind prediction on the protein complex formed by HRAS protein and a single domain antibody. Under both scenarios, PCRPi delivered consistent and accurate predictions. Finally, PCRPi is able to handle cases where some of the input data is either missing or not reliable (e.g. evolutionary information).
机译:蛋白质间相互作用(PPI)在生物学中无处不在,因此为发现新的疗法提供了巨大的潜力。尽管蛋白质界面很大且缺乏明确的理化特性,但众所周知,只有一小部分界面残基(所谓的热点残基)对蛋白质复合物的结合能贡献最大。此外,针对破坏PPI的新药开发的最新成功依赖于靶向这些残基。描述关键残留物的实验方法既冗长又昂贵。因此,需要可以补充实验工作的计算工具。在这里,我们描述了一种新的计算方法来预测蛋白质界面中的热点残基。称为蛋白质界面中关键残基的预见方法(PCRPi),取决于使用贝叶斯网络将各种指标集成到唯一的概率指标中。我们使用大量经过实验验证的热点残基对HRAS蛋白和单结构域抗体形成的蛋白复合物进行了盲目预测,从而对我们的方法进行了基准测试。在这两种情况下,PCRPi都能提供一致且准确的预测。最后,PCRPi能够处理某些输入数据丢失或不可靠的情况(例如,进化信息)。

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