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Application of dynamic expansion tree for finding large network motifs in biological networks

机译:动态扩展树在生物网络中寻找大型网络主题的应用

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摘要

Network motifs play an important role in the structural analysis of biological networks. Identification of such network motifs leads to many important applications such as understanding the modularity and the large-scale structure of biological networks, classification of networks into super-families, and protein function annotation. However, identification of large network motifs is a challenging task as it involves the graph isomorphism problem. Although this problem has been studied extensively in the literature using different computational approaches, still there is a lot of scope for improvement. Motivated by the challenges involved in this field, an efficient and scalable network motif finding algorithm using a dynamic expansion tree is proposed. The novelty of the proposed algorithm is that it avoids computationally expensive graph isomorphism tests and overcomes the space limitation of the static expansion tree (SET) which makes it enable to find large motifs. In this algorithm, the embeddings corresponding to a child node of the expansion tree are obtained from the embeddings of a parent node, either by adding a vertex or by adding an edge. This process does not involve any graph isomorphism check. The time complexity of vertex addition and edge addition are O(n) and O(1), respectively. The growth of a dynamic expansion tree (DET) depends on the availability of patterns in the target network. Pruning of branches in the DET significantly reduces the space requirement of the SET. The proposed algorithm has been tested on a protein–protein interaction network obtained from the MINT database. The proposed algorithm is able to identify large network motifs faster than most of the existing motif finding algorithms.
机译:网络主题在生物网络的结构分析中起着重要作用。识别此类网络主题会导致许多重要的应用,例如了解生物网络的模块性和大规模结构,将网络分类为超家族以及蛋白质功能注释。但是,大型网络图案的识别是一项艰巨的任务,因为它涉及图形同构问题。尽管在文献中已使用不同的计算方法对这一问题进行了广泛的研究,但仍有很多改进的余地。受该领域所涉及的挑战的启发,提出了一种使用动态扩展树的有效且可扩展的网络主题查找算法。该算法的新颖之处在于它避免了计算量大的图形同构测试,并克服了静态扩展树(SET)的空间限制,从而使它能够找到较大的图案。在该算法中,通过添加顶点或添加边,从父节点的嵌入中获取与扩展树的子节点对应的嵌入。此过程不涉及任何图形同构检查。顶点加和边加的时间复杂度分别为O(n)和O(1)。动态扩展树(DET)的增长取决于目标网络中模式的可用性。修剪DET中的分支会大大减少SET的空间需求。所提出的算法已在从MINT数据库获得的蛋白质-蛋白质相互作用网络上进行了测试。与大多数现有的图案发现算法相比,该算法能够更快地识别大型网络图案。

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