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Scoring Protein Interaction Decoys using Exposed Residues (SPIDER): A Novel Multi-Body Interaction Scoring Function based on Frequent Geometric Patterns of Interfacial Residues

机译:使用暴露的残留物(蜘蛛)评分蛋白质相互作用诱饵:基于频繁的界面残留的几何图案的新型多体相互作用评分函数

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摘要

Accurate prediction of the structure of protein-protein complexes in computational docking experiments remains a formidable challenge. It has been recognized that identifying native or native-like poses among multiple decoys is the major bottleneck of the current scoring functions used in docking. We have developed a novel multi-body pose-scoring function that has no theoretical limit on the number of residues contributing to the individual interaction terms. We use a coarse-grain representation of a protein-protein complex where each residue is represented by its side chain centroid. We apply a computational geometry approach called Almost-Delaunay tessellation that transforms protein-protein complexes into a residue contact network, or an un-directional graph where vertex-residues are nodes connected by edges. This treatment forms a family of interfacial graphs representing a dataset of protein-protein complexes. We then employ frequent subgraph mining approach to identify common interfacial residue patterns that appear in at least a subset of native protein-protein interfaces. The geometrical parameters and frequency of occurrence of each “native” pattern in the training set are used to develop the new SPIDER scoring function. SPIDER was validated using standard “ZDOCK” benchmark dataset that was not used in the development of SPIDER. We demonstrate that SPIDER scoring function ranks native and native-like poses above geometrical decoys and that it exceeds in performance a popular ZRANK scoring function. SPIDER was ranked among the top scoring functions in a recent round of CAPRI (Critical Assessment of PRedicted Interactions) blind test of protein–protein docking methods.
机译:准确预测计算对接实验中的蛋白质 - 蛋白质复合物的结构仍然是一个强大的挑战。已经认识到,识别多个诱饵之间的本地或本地姿势是对接中使用的当前评分功能的主要瓶颈。我们开发了一种新的多体姿势评分功能,对贡献各个交互条款的残留量没有理论限制。我们使用蛋白质蛋白质复合物的粗粒表示,其中每个残余物由其侧链质心表示。我们应用称为近似 - Delaunay曲面细胞的计算几何方法,其将蛋白质复合物转化为残留物接触网络,或者顶点残基是通过边缘连接的节点的未定向图。该处理形成代表蛋白质 - 蛋白质复合物的数据集的界面图系列。然后,我们使用常见的子图挖掘方法来鉴定在天然蛋白质 - 蛋白质界面的至少一个子集中出现的常见界面残留物。训练集中的每个“本机”模式的几何参数和发生频率用于开发新的蜘蛛评分功能。使用标准的“Zdock”基准数据集进行验证蜘蛛,该数据集未用于蜘蛛的开发。我们证明蜘蛛评分函数在上面的几何诱饵上排名本地和原生物的姿势,并且它超过了性能的流行Zrank评分功能。蜘蛛在最近一轮Capri(对预测相互作用的关键评估)盲蛋白 - 蛋白酶对接方法的盲试验中排名第一。

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