Omidi Saeed, Schreiber Falk, Masoudi-Nejad Ali
Laboratory of Systems Biology and Bioinformatics (LBB), Institute of Biochemistry and Biophysics and Center of Excellence in Biomathematics, University of Tehran, Iran.
Genes Genet Syst. 2009 Oct;84(5):385-95. doi: 10.1266/ggs.84.385.
In recent years, interest has been growing in the study of complex networks. Since Erdös and Rényi (1960) proposed their random graph model about 50 years ago, many researchers have investigated and shaped this field. Many indicators have been proposed to assess the global features of networks. Recently, an active research area has developed in studying local features named motifs as the building blocks of networks. Unfortunately, network motif discovery is a computationally hard problem and finding rather large motifs (larger than 8 nodes) by means of current algorithms is impractical as it demands too much computational effort. In this paper, we present a new algorithm (MODA) that incorporates techniques such as a pattern growth approach for extracting larger motifs efficiently. We have tested our algorithm and found it able to identify larger motifs with more than 8 nodes more efficiently than most of the current state-of-the-art motif discovery algorithms. While most of the algorithms rely on induced subgraphs as motifs of the networks, MODA is able to extract both induced and non-induced subgraphs simultaneously. The MODA source code is freely available at: http://LBB.ut.ac.ir/Download/LBBsoft/MODA/
近年来,对复杂网络的研究兴趣日益浓厚。自大约50年前厄多斯和雷尼(1960年)提出他们的随机图模型以来,许多研究人员对这一领域进行了研究并使其不断发展。人们提出了许多指标来评估网络的全局特征。最近,一个活跃的研究领域在研究作为网络构建块的局部特征——模体方面得到了发展。不幸的是,网络模体发现是一个计算难题,使用当前算法找到相当大的模体(大于8个节点)是不切实际的,因为这需要太多的计算量。在本文中,我们提出了一种新算法(MODA),该算法结合了诸如模式增长方法等技术,以有效地提取更大的模体。我们已经对我们的算法进行了测试,发现它能够比大多数当前最先进的模体发现算法更有效地识别具有超过8个节点的更大模体。虽然大多数算法依赖于诱导子图作为网络的模体,但MODA能够同时提取诱导子图和非诱导子图。MODA源代码可在以下网址免费获取:http://LBB.ut.ac.ir/Download/LBBsoft/MODA/