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Pairwise Global Alignment of Protein Interaction Networks by Matching Neighborhood Topology

机译:蛋白质相互作用网络的成对全局比对通过匹配邻域拓扑

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We describe an algorithm, IsoRank, for global alignment of two protein-protein interaction (PPI) networks. IsoRank aims to maximize the overall match between the two networks; in contrast, much of previous work has focused on the local alignment problem— identifying many possible alignments, each corresponding to a local region of similarity. IsoRank is guided by the intuition that a protein should be matched with a protein in the other network if and only if the neighbors of the two proteins can also be well matched. We encode this intuition as an eigenvalue problem, in a manner analogous to Google's PageRank method. We use IsoRank to compute the first known global alignment between the S. cerevisiae and D. melanogaster PPI networks. The common subgraph has 1420 edges and describes conserved functional components between the two species. Comparisons of our results with those of a well-known algorithm for local network alignment indicate that the globally optimized alignment resolves ambiguity introduced by multiple local alignments. Finally, we interpret the results of global alignment to identify functional orthologs between yeast and fly; our functional ortholog prediction method is much simpler than a recently proposed approach and yet provides results that are more comprehensive.
机译:我们描述了一种算法,IsoRank,用于两个蛋白质-蛋白质相互作用(PPI)网络的全局比对。 IsoRank旨在最大化两个网络之间的整体匹配度。相反,以前的许多工作都集中在局部比对问题上,即确定许多可能的比对,每个比对都对应于一个相似的局部区域。 IsoRank的直觉是,当且仅当两个蛋白质的邻居也可以很好地匹配时,蛋白质才应与另一个网络中的蛋白质匹配。我们以类似于Google的PageRank方法的方式将此直觉编码为特征值问题。我们使用IsoRank计算酿酒酵母和黑腹果蝇PPI网络之间的第一个已知的全局比对。公用子图具有1420条边,并描述了两个物种之间的保守功能组件。我们的结果与本地网络对齐的著名算法的比较表明,全局优化的对齐解决了多个本地对齐引入的歧义。最后,我们解释了整体比对的结果,以鉴定酵母和果蝇之间的功能直系同源物;我们的功能直系同源物预测方法比最近提出的方法简单得多,但结果却更全面。

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