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A global approach to identify differentially expressed genes in cDNA (two-color) microarray experiments

机译:识别cDNA(双色)微阵列实验中差异表达基因的全球方法

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Motivation: Currently most of the methods for identifying differentially expressed genes fall into the category of so called single-geneanalysis, performing hypothesis testing on a gene-by-gene basis. In a single-gene-analysis approach, estimating the variability of each gene is required to determine whether a gene is differentially expressed or not. Poor accuracy of variability estimation makes it difficult to identify genes with small fold-changes unless a very large number of replicate experiments are performed. Results: We propose a method that can avoid the difficult task of estimating variability for each gene, while reliably identifying a group of differentially expressed genes with low false discovery rates, even when the fold-changes are very small. In this article, a new characterization of differentially expressed genes is established based on a theorem about the distribution of ranks of genes sorted by ( log) ratios within each array. This characterization of differentially expressed genes based on rank is an example of all-gene-analysis instead of single gene analysis. We apply the method to a cDNA microarray dataset and many low fold-changed genes ( as low as 1.3 fold-changes) are reliably identified without carrying out hypothesis testing on a gene-by-gene basis. The false discovery rate is estimated in two different ways reflecting the variability from all the genes without the complications related to multiple hypothesis testing. We also provide some comparisons between our approach and single-gene-analysis based methods. Contact: yyzhou@netra.wustl.edu Supplementary information: Supplementary data are available at Bioinformatics online.
机译:动机:目前,大多数鉴定差异表达基因的方法都属于所谓的单基因分析法,即在逐个基因的基础上进行假设检验。在单基因分析方法中,需要估计每个基因的变异性才能确定基因是否差异表达。变异性估计的准确性较差,除非进行大量重复实验,否则很难鉴定倍数变化小的基因。结果:我们提出了一种方法,该方法可以避免估计每个基因变异性的艰巨任务,同时即使在折叠变化很小的情况下,也可以可靠地识别出一组具有低假发现率的差异表达基因。在本文中,基于关于每个阵列内按(log)比排序的基因等级分布的定理,建立了差异表达基因的新特征。基于等级的差异表达基因的这种表征是全基因分析而不是单基因分析的一个例子。我们将该方法应用于cDNA微阵列数据集,无需进行逐个基因的假设检验即可可靠地鉴定出许多低倍变化的基因(低至1.3倍变化)。可以通过两种不同的方式估计错误发现率,以反映所有基因的变异性,而无需进行与多个假设检验相关的复杂性。我们还提供了我们的方法与基于单基因分析的方法之间的一些比较。联系人:yyzhou@netra.wustl.edu补充信息:补充数据可从Bioinformatics在线获得。

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