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Statistical methods for gene set co-expression analysis

机译:基因组共表达分析的统计方法

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Motivation: The power of a microarray experiment derives from the identification of genes differentially regulated across biological conditions. To date, differential regulation is most often taken to mean differential expression, and a number of useful methods for identifying differentially expressed (DE) genes or gene sets are available. However, such methods are not able to identify many relevant classes of differentially regulated genes. One important example concerns differentially co-expressed (DC) genes.Results: We propose an approach, gene set co-expression analysis (GSCA), to identify DC gene sets. The GSCA approach provides a false discovery rate controlled list of interesting gene sets, does not require that genes be highly correlated in at least one biological condition and is readily applied to data from individual or multiple experiments, as we demonstrate using data from studies of lung cancer and diabetes.
机译:动机:微阵列实验的能力源于鉴定跨生物学条件差异调控的基因。迄今为止,差异调节最常被用来表示差异表达,并且有许多用于鉴定差异表达(DE)基因或基因组的有用方法。但是,这种方法不能鉴定出许多相关类别的差异调节基因。一个重要的例子涉及差异共表达(DC)基因。结果:我们提出了一种方法,即基因集共表达分析(GSCA),用于鉴定DC基因集。 GSCA方法提供了有趣的基因集的错误发现率控制列表,不需要在至少一种生物学条件下将基因高度相关,并且很容易应用于来自单个或多个实验的数据,正如我们使用来自肺部研究的数据所证明的那样癌症和糖尿病。

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