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Local graph alignment and motif search in biological networks

机译:生物网络中的局部图对齐和主题搜索

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摘要

Interaction networks are of central importance in postgenomic molecular biology, with increasing amounts of data becoming available by high-throughput methods. Examples are gene regulatory networks or protein interaction maps. The main challenge in the analysis of these data is to read off biological functions from the topology of the network. Topological motifs, i.e., patterns occurring repeatedly at different positions in the network, have recently been identified as basic modules of molecular information processing. in this article, we discuss motifs derived from families of mutually similar but not necessarily identical patterns. We establish a statistical model for the occurrence of such motifs, from which we derive a scoring function for their statistical significance. Based on this scoring function, we develop a search algorithm for topological motifs called graph alignment, a procedure with some analogies to sequence alignment. The algorithm is applied to the gene regulation network of Escherichia coli.
机译:相互作用网络在后基因组分子生物学中至关重要,随着高通量方法提供的数据量越来越大。例子是基因调节网络或蛋白质相互作用图。分析这些数据的主要挑战是从网络拓扑中读取生物学功能。拓扑基序,即在网络中不同位置重复出现的模式,最近被确定为分子信息处理的基本模块。在本文中,我们讨论了从彼此相似但不一定相同的图案家族衍生的图案。我们针对此类基序的出现建立了统计模型,从中我们得出了其统计意义的评分函数。基于此评分功能,我们开发了一种用于拓扑图案的搜索算法,称为图对齐,该过程与序列对齐有些相似。该算法应用于大肠埃希菌的基因调控网络。

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