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SEGS:在微阵列数据中搜索富集的基因集。

SEGS: search for enriched gene sets in microarray data.

作者信息

Trajkovski Igor, Lavrac Nada, Tolar Jakub

机构信息

Department of Knowledge Technologies, Jozef Stefan Institute, Jamova 39, 1000 Ljubljana, Slovenia.

出版信息

J Biomed Inform. 2008 Aug;41(4):588-601. doi: 10.1016/j.jbi.2007.12.001. Epub 2007 Dec 15.

Abstract

Gene Ontology (GO) terms are often used to interpret the results of microarray experiments. The most common approach is to perform Fisher's exact tests to find gene sets annotated by GO terms which are over-represented among the genes declared to be differentially expressed in the analysis of microarray data. Another way is to apply Gene Set Enrichment Analysis (GSEA) that uses predefined gene sets and ranks of genes to identify significant biological changes in microarray data sets. However, after correcting for multiple hypotheses testing, few (or no) GO terms may meet the threshold for statistical significance, because the relevant biological differences are small relative to the noise inherent to the microarray technology. In addition to the individual GO terms, we propose testing of gene sets constructed as intersections of GO terms, Kyoto Encyclopedia of Genes and Genomes Orthology (KO) terms, and gene sets constructed by using gene-gene interaction data obtained from the ENTREZ database. Our method finds gene sets that are significantly over-represented among differentially expressed genes which cannot be found by the standard enrichment testing methods applied on individual GO and KO terms, thus improving the enrichment analysis of microarray data.

摘要

基因本体论(GO)术语常被用于解释微阵列实验的结果。最常见的方法是进行费舍尔精确检验,以找出由GO术语注释的基因集,这些基因集在微阵列数据分析中被声明为差异表达的基因中过度富集。另一种方法是应用基因集富集分析(GSEA),它使用预定义的基因集和基因排名来识别微阵列数据集中显著的生物学变化。然而,在对多重假设检验进行校正后,很少(或没有)GO术语可能达到统计显著性阈值,因为相对于微阵列技术固有的噪声而言,相关的生物学差异较小。除了单个GO术语外,我们还建议对由GO术语、京都基因与基因组百科全书直系同源(KO)术语的交集构建的基因集,以及通过使用从ENTREZ数据库获得的基因-基因相互作用数据构建的基因集进行检验。我们的方法发现了在差异表达基因中显著过度富集的基因集,而这些基因集是应用于单个GO和KO术语的标准富集测试方法所无法发现的,从而改进了微阵列数据的富集分析。

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