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Accurate multiple network alignment through context-sensitive random walk

机译:通过上下文敏感的随机步行准确多次网络对齐

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Background: Comparative network analysis can provide an effective means of analyzing large-scale biological networks and gaining novel insights into their structure and organization. Global network alignment aims to predict the best overall mapping between a given set of biological networks, thereby identifying important similarities as well as differences among the networks. It has been shown that network alignment methods can be used to detect pathways or network modules that are conserved across different networks. Until now, a number of network alignment algorithms have been proposed based on different formulations and approaches, many of them focusing on pairwise alignment.Results: In this work, we propose a novel multiple network alignment algorithm based on a context-sensitive random walk model. The random walker employed in the proposed algorithm switches between two different modes, namely, an individual walk on a single network and a simultaneous walk on two networks. The switching decision is made in a context-sensitive manner by examining the current neighborhood, which is effective for quantitatively estimating the degree of correspondence between nodes that belong to different networks, in a manner that sensibly integrates node similarity and topological similarity. The resulting node correspondence scores are then used to predict the maximum expected accuracy (MEA) alignment of the given networks.Conclusions: Performance evaluation based on synthetic networks as well as real protein-protein interaction networks shows that the proposed algorithm can construct more accurate multiple network alignments compared to other leading methods.
机译:背景:比较网络分析可以提供分析大规模生物网络的有效手段,并在其结构和组织中获得新颖的洞察力。全局网络对齐旨在预测给定一组生物网络之间的最佳整体映射,从而识别重要的相似之处以及网络之间的差异。已经表明,网络对准方法可用于检测跨越不同网络保存的路径或网络模块。到目前为止,已经基于不同的配方和方法提出了许多网络对齐算法,其中许多侧重于成对对齐。结果:在这项工作中,我们提出了一种基于上下文敏感的随机步道模型的多种网络对准算法。在所提出的算法中使用的随机步行者在两个不同的模式之间切换,即单个网络上的单独步行,并在两个网络上同时散步。通过检查当前邻域以上下文相关的方式以上下文相关的方式进行切换判定,这对于定量地估计属于不同网络的节点之间的对应程度有效,以灵活地集成节点相似性和拓扑相似性。然后使用得到的节点对应分数来预测给定网络的最大预期精度(MEA)对准。链接:基于合成网络的性能评估以及真实的蛋白质 - 蛋白质相互作用网络表明,所提出的算法可以构建更准确的多个与其他领先方法相比,网络对齐。

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