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An efficient algorithm for detecting frequent subgraphs in biological networks.

机译:一种用于检测生物网络中频繁出现的子图的有效算法。

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MOTIVATION: With rapidly increasing amount of network and interaction data in molecular biology, the problem of effectively analyzing this data is an important one. Graph theoretic formalisms, commonly used for these analysis tasks, often lead to computationally hard problems due to their relation with subgraph isomorphism. RESULTS: This paper presents an innovative new algorithm for detecting frequently occurring patterns and modules in biological networks. Using an innovative graph simplification technique, which is ideally suited to biological networks, our algorithm renders these problems computationally tractable. Indeed, we show experimentally that our algorithm can extract frequently occurring patterns in metabolic pathways extracted from the KEGG database within seconds. The proposed model and algorithm are applicable to a variety of biological networks either directly or with minor modifications. AVAILABILITY: Implementation of the proposed algorithms in the C programming language is availableas open source at http://www.cs.purdue.edu/homes/koyuturk/pathway/
机译:动机:随着分子生物学中网络和相互作用数据的迅速增加,有效分析这些数据的问题是一个重要的问题。通常用于这些分析任务的图理论形式主义由于与子图同构的关系而经常导致计算困难的问题。结果:本文提出了一种创新的新算法,用于检测生物网络中频繁出现的模式和模块。使用一种非常适合生物网络的创新图形简化技术,我们的算法使这些问题在计算上易于处理。实际上,我们通过实验证明了我们的算法可以在几秒钟内从KEGG数据库提取的代谢途径中提取出频繁出现的模式。所提出的模型和算法可直接或以较小的修改应用于各种生物网络。可用性:可以在http://www.cs.purdue.edu/homes/koyuturk/pathway/上以开放源代码的形式使用C编程语言实现拟议算法。

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