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An empirical bayes adjustment to increase the sensitivity of detecting differentially expressed genes in microarray experiments

机译:进行经验贝叶斯调整以提高微阵列实验中检测差异表达基因的敏感性

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Motivation: Detection of differentially expressed genes is one of the major goals of microarray experiments. Pairwise comparison for each gene is not appropriate without controlling the overall (experimentwise) type 1 error rate. Dudoit et al. have advocated use of permutation-based step-down P-value adjustments to correct the observed significance levels for the individual (i.e. for each gene) two sample t-tests. Results: In this paper, we consider an ANOVA formulation of the gene expression levels corresponding to multiple tissue types. We provide resampling-based step-down adjustments to correct the observed significance levels for the individual ANOVA t-tests for each gene and for each pair of tissue type comparisons. More importantly, we introduce a novel empirical Bayes adjustment to the t-test statistics that can be incorporated into the step-down procedure. Using simulated data, we show that the empirical Bayes adjustment improved the sensitivity of detecting differentially expressed genes up to 16%, while maintaining a high level of specificity. This adjustment also reduces the false non-discovery rate to some degree at the cost of a modest increase in the false discovery rate. We illustrate our approach using a human colon cancer dataset consisting of oligonucleotide arrays of normal, adenoma and carcinoma cells. The number of genes with differential expression level declared statistically significant was about 50 when comparing normal to adenoma cells and about five when comparing adenoma to carcinoma cells. This list includes genes previously known to be associated with colon cancer as well as some novel genes.
机译:动机:检测差异表达基因是微阵列实验的主要目标之一。如果不控制总体(实验性)1型错误率,则每个基因的成对比较是不合适的。 Dudoit等。提倡使用基于排列的降级P值调整来校正两个样本t检验对个体(即每个基因)观察到的显着性水平。结果:在本文中,我们考虑了与多种组织类型相对应的基因表达水平的方差分析。我们提供基于重新采样的降压调整,以针对每个基因和每对组织类型比较的单个ANOVA t检验校正观察到的显着性水平。更重要的是,我们对t检验统计数据引入了一种新颖的经验贝叶斯调整,可以将其纳入降压过程。使用模拟数据,我们表明经验贝叶斯调整提高了检测差异表达基因的灵敏度,最高可达16%,同时保持了很高的特异性。这种调整还以某种程度的错误发现率适度增加为代价,在某种程度上降低了错误未发现率。我们用人类结肠癌数据集说明了我们的方法,该数据集由正常,腺瘤和癌细胞的寡核苷酸阵列组成。当将正常细胞与腺瘤细胞进行比较时,具有差异表达水平的基因被宣布具有统计学意义的基因数量约为50个,而当将腺瘤与癌细胞进行比较时则约为5个。该列表包括以前已知与结肠癌有关的基因以及一些新基因。

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