Clustering incorporating shortest paths identifies relevant modules in functional interaction networks

J. Hallinan, M. Pocock, S. Addinall, D. Lydall, A. Wipat
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引用次数: 3

Abstract

Many biological systems can be modeled as networks. Hence, network analysis is of increasing importance to systems biology. We describe an evolutionary algorithm for selecting clusters of nodes within a large network based upon network topology together with a measure of the relevance of nodes to a set of independently identified genes of interest. We apply the algorithm to a previously published integrated functional network of yeast genes, using a set of query genes derived from a whole genome screen of yeast strains with a mutation in a telomere uncapping gene. We find that the algorithm identifies biologically plausible clusters of genes which are related to the cell cycle, and which contain interactions not previously identified as potentially important. We conclude that the algorithm is valuable for the querying of complex networks, and the generation of biological hypotheses.
结合最短路径的聚类识别功能交互网络中的相关模块
许多生物系统可以被建模为网络。因此,网络分析对系统生物学越来越重要。我们描述了一种进化算法,用于在基于网络拓扑的大型网络中选择节点簇,并测量节点与一组独立识别的感兴趣基因的相关性。我们将该算法应用于先前发表的酵母基因集成功能网络,使用一组来自端粒脱帽基因突变的酵母菌株全基因组筛选的查询基因。我们发现该算法识别生物学上合理的基因簇,这些基因簇与细胞周期有关,并且包含以前未确定为潜在重要的相互作用。我们得出结论,该算法对于复杂网络的查询和生物假设的生成是有价值的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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