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Mining co-regulated gene profiles for the detection of functional associations in gene expression data

机译:挖掘共同调控的基因概况以检测基因表达数据中的功能关联

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Motivation: Association pattern discovery (APD) methods have been successfully applied to gene expression data. They find groups of co-regulated genes in which the genes are either up- or down-regulated throughout the identified conditions. These methods, however, fail to identify similarly expressed genes whose expressions change between up- and down-regulation from one condition to another. In order to discover these hidden patterns, we propose the concept of mining co-regulated gene profiles. Co-regulated gene profiles contain two gene sets such that genes within the same set behave identically (up or down) while genes from different sets display contrary behavior. To reduce and group the large number of similar resulting patterns, we propose a new similarity measure that can be applied together with hierarchical clustering methods. Results: We tested our proposed method on two well-known yeast microarray data sets. Our implementation mined the data effectively and discovered patterns of co-regulated genes that are hidden to traditional APD methods. The high content of biologically relevant information in these patterns is demonstrated by the significant enrichment of co-regulated genes with similar functions. Our experimental results show that the Mining Attribute Profile (MAP) method is an efficient tool for the analysis of gene expression data and competitive with bi-clustering techniques.
机译:动机:关联模式发现(APD)方法已成功应用于基因表达数据。他们发现了一组共同​​调节的基因,其中在整个确定的条件下,这些基因要么上调要么下调。然而,这些方法未能鉴定相似表达的基因,其表达在从一种情况到另一种情况的上调和下调之间变化。为了发现这些隐藏模式,我们提出了挖掘共同调控的基因图谱的概念。共同调控的基因谱包含两个基因集,使得同一集合中的基因表现相同(向上或向下),而来自不同集合的基因则表现出相反的行为。为了减少和分组大量相似的结果模式,我们提出了一种新的相似性度量,可以将其与分层聚类方法一起应用。结果:我们在两个著名的酵母微阵列数据集上测试了我们提出的方法。我们的实施有效地挖掘了数据,并发现了传统APD方法隐藏的共同调控基因的模式。这些功能中生物学相关信息的含量很高,这是由具有相似功能的共同调控基因的大量富集所证明的。我们的实验结果表明,挖掘属性配置文件(MAP)方法是一种有效的工具,可用于分析基因表达数据并具有双聚类技术的竞争力。

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