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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Identification of family-specific residue packing motifs and their use for structure-based protein function prediction: I. Method development
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Identification of family-specific residue packing motifs and their use for structure-based protein function prediction: I. Method development

机译:家庭特异性残基堆积图案的鉴定及其在基于结构的蛋白质功能预测中的用途:I.方法开发

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摘要

Protein function prediction is one of the central problems in computational biology. We present a novel automated protein structure-based function prediction method using libraries of local residue packing patterns that are common to most proteins in a known functional family. Critical to this approach is the representation of a protein structure as a graph where residue vertices (residue name used as a vertex label) are connected by geometrical proximity edges. The approach employs two steps. First, it uses a fast subgraph mining algorithm to find all occurrences of family-specific labeled subgraphs for all well characterized protein structural and functional families. Second, it queries a new structure for occurrences of a set of motifs characteristic of a known family, using a graph index to speed up Ullman’s subgraph isomorphism algorithm. The confidence of function inference from structure depends on the number of family-specific motifs found in the query structure compared with their distribution in a large non-redundant database of proteins. This method can assign a new structure to a specific functional family in cases where sequence alignments, sequence patterns, structural superposition and active site templates fail to provide accurate annotation.
机译:蛋白质功能预测是计算生物学中的核心问题之一。我们提出了一种新颖的基于自动化蛋白质结构的功能预测方法,使用了已知功能家族中大多数蛋白质共有的局部残基堆积模式库。这种方法的关键是将蛋白质结构表示为图形,其中残基顶点(用作顶点标记的残基名称)通过几何邻近边缘相连。该方法采用两个步骤。首先,它使用快速子图挖掘算法来查找所有特征明确的蛋白质结构和功能家族的所有家族特异性标记子图。其次,它使用图形索引来加快Ullman的子图同构算法,从而查询一种新结构,以了解一组已知家族特征的图案。从结构推断功能的置信度取决于在查询结构中发现的家族特定基序的数量,以及它们在大型非冗余蛋白质数据库中的分布。在序列比对,序列模式,结构重叠和活性位点模板无法提供准确注释的情况下,该方法可以为特定功能族分配新结构。

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