Zhang Huanping, Song Xiaofeng, Wang Huinan, Zhang Xiaobai
Department of Biomedical Engineering, Nanjing University of Aeronautics and Astronautics, China.
J Biomed Biotechnol. 2009;2009:642524. doi: 10.1155/2009/642524. Epub 2010 Jan 20.
Computational analysis of microarray data has provided an effective way to identify disease-related genes. Traditional disease gene selection methods from microarray data such as statistical test always focus on differentially expressed genes in different samples by individual gene prioritization. These traditional methods might miss differentially coexpressed (DCE) gene subsets because they ignore the interaction between genes. In this paper, MIClique algorithm is proposed to identify DEC gene subsets based on mutual information and clique analysis. Mutual information is used to measure the coexpression relationship between each pair of genes in two different kinds of samples. Clique analysis is a commonly used method in biological network, which generally represents biological module of similar function. By applying the MIClique algorithm to real gene expression data, some DEC gene subsets which correlated under one experimental condition but uncorrelated under another condition are detected from the graph of colon dataset and leukemia dataset.
微阵列数据的计算分析为识别疾病相关基因提供了一种有效方法。传统的从微阵列数据中选择疾病基因的方法,如统计检验,总是通过单个基因优先级来关注不同样本中的差异表达基因。这些传统方法可能会错过差异共表达(DCE)基因子集,因为它们忽略了基因之间的相互作用。本文提出了MIClique算法,基于互信息和团分析来识别DCE基因子集。互信息用于衡量两种不同样本中每对基因之间的共表达关系。团分析是生物网络中常用的方法,通常代表相似功能的生物模块。通过将MIClique算法应用于真实基因表达数据,从结肠数据集和白血病数据集的图中检测到一些在一种实验条件下相关但在另一种条件下不相关的DCE基因子集。