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Graph Spectral Approach for Identifying Protein Domains

机译:鉴定蛋白质域的图谱方法

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Here we present a simple method based on graph spectral properties to automatically partition multi-domain proteins into individual domains. The identification of structural domains in proteins is based on the assumption that the interactions between the amino acids are higher within a domain than across the domains. These interactions and the topological details of protein structures can be effectively captured by the protein contact graph, constructed by considering each amino acid as a node with an edge drawn between two nodes if the C_a atoms of the amino acids are within 7A. Here we show that Newman's community detection approach in social networks can be used to identify domains in protein structures. We have implemented this approach on protein contact networks and analyze the eigenvectors of the largest eigenvalue of modularity matrix, which is a modified form of the Adjacency matrix, using a quality function called "modularity" to identify optimal divisions of the network into domains. The proposed approach works even when the domains are formed with amino acids not occurring sequentially along the polypeptide chain and no a priori information regarding the number of nodes is required.
机译:这里,我们提出基于图的光谱特性以多结构域蛋白自动分割成单个结构域的简单方法。的结构域的蛋白质的识别是基于这样的假设的氨基酸之间的相互作用比跨越域的域内更高。这些相互作用和蛋白质结构的拓扑的细节可以通过将蛋白质接触图形,通过考虑每个氨基酸与两个节点之间绘制,如果氨基酸的C_A原子7A内的边缘的节点构造可有效地捕获。在这里,我们表明,在社交网络纽曼的社区检测方法可用于识别蛋白质结构域。我们已经实现了对蛋白质接触网络,这种方法和使用所谓的“模块化”质量功能来识别网络优化部门为域分析模块化矩阵的最大特征值,这是邻接矩阵的改进形式的特征向量。当与氨基酸不沿着多肽链的顺序地出现和不要求关于节点的数量的先验信息被形成在畴所提出的方法也可使用。

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