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Mining protein family specific residue packing patterns from protein structure graphs

机译:从蛋白质结构图中挖掘蛋白质家族特有的残基堆积模式

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Finding recurring residue packing patterns, or spatial motifs, that characterize protein structural families is an important problem in bioinformatics. We apply a novel frequent subgraph mining algorithm to three graph representations of protein three-dimensional (3D) structure. In each protein graph, a vertex represents an amino acid. Vertex-residues are connected by edges using three approaches: first, based on simple distance threshold between contact residues; second using the Delaunay tessellation from computational geometry, and third using the recently developed almost-Delaunay tessellation approach.Applying a frequent subgraph mining algorithm to a set of graphs representing a protein family from the Structural Classification of Proteins (SCOP) database, we typically identify several hundred common subgraphs equivalent to common packing motifs found in the majority of proteins in the family. We also use the counts of motifs extracted from proteins in two different SCOP families as input variables in a binary classification experiment. The resulting models are capable of predicting the protein family association with the accuracy exceeding 90 percent. Our results indicate that graphs based on both almost-Delaunay and Delaunay tessellations are sparser than the contact distance graphs; yet they are robust and efficient for mining protein spatial motif.
机译:寻找表征蛋白质结构家族特征的重复性残基堆积模式或空间基序,是生物信息学中的一个重要问题。我们将一种新颖的频繁子图挖掘算法应用于蛋白质三维(3D)结构的三个图形表示。在每个蛋白质图中,顶点表示氨基酸。顶点残基使用以下三种方法通过边缘连接:首先,基于接触残基之间的简单距离阈值;其次,将残基连接到顶点。第二种是使用计算几何学中的Delaunay细分,第三种是使用最近开发的近乎Deelaunay细分方法。将频繁的子图挖掘算法应用于蛋白质结构分类(SCOP)数据库中代表蛋白质家族的一组图,我们通常可以确定相当于该家族大多数蛋白质中常见包装基序的数百个常见子图。在二元分类实验中,我们还将从两个不同SCOP家族的蛋白质中提取的基序数用作输入变量。所得模型能够以超过90%的准确度预测蛋白质家族关联。我们的结果表明,基于近乎Deelaunay和Delaunay镶嵌的图比接触距离图稀疏。然而,它们对于挖掘蛋白质空间基序是强大而有效的。

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