首页> 外文会议>PSB;Pacific symposium on biocomputing; 20090105-09;20090105-09; Kohala Coast, HI(US);Kohala Coast, HI(US) >PAIRWISE ALIGNMENT OF INTERACTION NETWORKS BY FAST IDENTIFICATION OF MAXIMAL CONSERVED PATTERNS
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PAIRWISE ALIGNMENT OF INTERACTION NETWORKS BY FAST IDENTIFICATION OF MAXIMAL CONSERVED PATTERNS

机译:通过快速识别最大守恒模式对网络进行对等对齐

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A number of tools for the alignment of protein-protein interaction (PPI) networks have laid the foundation for PPI network analysis. They typically find conserved interaction patterns by various local or global search algorithms, and then validate the results using genome annotation. The improvement of the speed, scalability and accuracy of network alignment is still the target of ongoing research. In view of this, we introduce a connected-components based algorithm, called HopeMap for pairwise network alignment with the focus on fast identification of maximal conserved patterns across species. Observing that the number of true homologs across species is relatively small compared to the total number of proteins in all species, we start with highly homologous groups across species, find maximal conserved interaction patterns globally with a generic scoring system, and validate the results across multiple known functional annotations. The results are evaluated in terms of statistical enrichment of gene ontology (GO) terms and KEGG ortholog groups (KO) within conserved interaction patters. HopeMap is fast, with linear computational cost, accurate in terms of KO groups and GO terms specificity and sensitivity, and extensible to multiple network alignment.
机译:多种用于蛋白质-蛋白质相互作用(PPI)网络比对的工具为PPI网络分析奠定了基础。他们通常通过各种局部或全局搜索算法找到保守的相互作用模式,然后使用基因组注释验证结果。网络对齐的速度,可扩展性和准确性的提高仍然是正在进行的研究的目标。有鉴于此,我们引入了一种基于连接组件的算法,称为“希望映射”,用于成对网络对齐,着重于快速识别物种间的最大保守模式。观察到物种间真正同源物的数量相对于所有物种中蛋白质的总数而言相对较小,我们从物种之间的高度同源基团入手,使用通用评分系统在全球范围内找到最大的保守相互作用模式,并验证多个物种之间的结果已知的功能注释。在保守的相互作用模式下,根据基因本体论(GO)术语和KEGG直系同源基团(KO)的统计富集评估结果。 HopeMap速度快,具有线性计算成本,在KO组和GO方面的特异性和敏感性方面准确,并且可以扩展到多个网络对齐。

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