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Detection of Network Motif Based on a Novel Graph Canonization Algorithm from Transcriptional Regulation Networks

机译:基于新型图规范化的转录调控网络网络图形检测

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摘要

Network motifs are patterns of complex networks occurring significantly more frequently than those in random networks. They have been considered as fundamental building blocks of complex networks. Therefore, the detection of network motifs in transcriptional regulation networks is a crucial step in understanding the mechanism of transcriptional regulation and network evolution. The search for network motifs is similar to solving subgraph searching problems, which has proven to be NP-complete. To quickly and effectively count subgraphs of a large biological network, we propose a novel graph canonization algorithm based on resolving sets. This method has been implemented in a command line interface (CLI) program sgip using the SeqAn library. Comparing to Babai’s algorithm, this approach has a tighter complexity bound, o(exp(nlog2n+4logn)), on strongly regular graphs. Results on several simulated datasets and transcriptional regulation networks indicate that sgip outperforms nauty on many graph cases. The source code of sgip is freely accessible in and the binary code in .
机译:网络主题是复杂网络的模式,其发生频率比随机网络中的更为频繁。它们被认为是复杂网络的基本构建块。因此,在转录调控网络中检测网络基序是理解转录调控和网络进化机制的关键步骤。搜索网络主题类似于解决子图搜索问题,事实证明这是NP完全的。为了快速有效地计算大型生物网络的子图,我们提出了一种基于分解集的新图规范化算法。已使用SeqAn库在命令行界面(CLI)程序sgip中实现了此方法。与Babai的算法相比,此方法具有更严格的复杂性范围, o exp n 日志 2 n < mo> + 4 log n < / mrow> (在强规则图上)。在一些模拟数据集和转录调控网络上的结果表明,在许多图例中,sgip的性能优于花哨的东西。 sgip的源代码可在中自由访问,而二进制代码在中。

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