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NPPD: A Protein-Protein Docking Scoring Function Based on Dyadic Differences in Networks of Hydrophobic and Hydrophilic Amino Acid Residues

机译:NPPD:基于疏水性和亲水性氨基酸残基网络中二元差异的蛋白质-蛋白质对接评分功能

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Protein-protein docking (PPD) predictions usually rely on the use of a scoring function to rank docking models generated by exhaustive sampling. To rank good models higher than bad ones, a large number of scoring functions have been developed and evaluated, but the methods used for the computation of PPD predictions remain largely unsatisfactory. Here, we report a network-based PPD scoring function, the NPPD, in which the network consists of two types of network nodes, one for hydrophobic and the other for hydrophilic amino acid residues, and the nodes are connected when the residues they represent are within a certain contact distance. We showed that network parameters that compute dyadic interactions and those that compute heterophilic interactions of the amino acid networks thus constructed allowed NPPD to perform well in a benchmark evaluation of 115 PPD scoring functions, most of which, unlike NPPD, are based on some sort of protein-protein interaction energy. We also showed that NPPD was highly complementary to these energy-based scoring functions, suggesting that the combined use of conventional scoring functions and NPPD might significantly improve the accuracy of current PPD predictions.
机译:蛋白质-蛋白质对接(PPD)预测通常依赖于使用评分功能对穷举抽样生成的对接模型进行排名。为了对好模型进行高于坏模型的排序,已经开发并评估了许多评分函数,但是用于计算PPD预测的方法仍然远远不能令人满意。在这里,我们报告基于网络的PPD评分功能,即NPPD,其中该网络由两种类型的网络节点组成,一种用于疏水性,另一种用于亲水性氨基酸残基,并且当它们代表的残基为在一定的接触距离内。我们发现,计算出的二元相互作用的网络参数和由此构建的氨基酸网络的异种相互作用的网络参数使NPPD在115种PPD评分功能的基准评估中表现良好,其中大多数与NPPD不同,都是基于某种蛋白质-蛋白质相互作用能。我们还表明,NPPD与这些基于能量的评分功能高度互补,这表明常规评分功能和NPPD的组合使用可能会大大提高当前PPD预测的准确性。

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