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An Integrated Statistical Approach to Compare Transcriptomics Data Across Experiments: A Case Study on the Identification of Candidate Target Genes of the Transcription Factor PPARα

机译:在整个实验中比较转录组学数据的综合统计方法:以转录因子PPARα候选目标基因的鉴定为例

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摘要

An effective strategy to elucidate the signal transduction cascades activated by a transcription factor is to compare the transcriptional profiles of wild type and transcription factor knockout models. Many statistical tests have been proposed for analyzing gene expression data, but most tests are based on pair-wise comparisons. Since the analysis of microarrays involves the testing of multiple hypotheses within one study, it is generally accepted that one should control for false positives by the false discovery rate (FDR). However, it has been reported that this may be an inappropriate metric for comparing data across different experiments. Here we propose an approach that addresses the above mentioned problem by the simultaneous testing and integration of the three hypotheses (contrasts) using the cell means ANOVA model. These three contrasts test for the effect of a treatment in wild type, gene knockout, and globally over all experimental groups. We illustrate our approach on microarray experiments that focused on the identification of candidate target genes and biological processes governed by the fatty acid sensing transcription factor PPARα in liver. Compared to the often applied FDR based across experiment comparison, our approach identified a conservative but less noisy set of candidate genes with same sensitivity and specificity. However, our method had the advantage of properly adjusting for multiple testing while integrating data from two experiments, and was driven by biological inference. Taken together, in this study we present a simple, yet efficient strategy to compare differential expression of genes across experiments while controlling for multiple hypothesis testing.
机译:阐明转录因子激活的信号转导级联的有效策略是比较野生型和转录因子敲除模型的转录谱。已经提出了许多统计测试来分析基因表达数据,但是大多数测试是基于成对比较的。由于微阵列分析涉及一项研究中的多种假设的检验,因此,人们普遍认为应该通过错误发现率(FDR)控制错误阳性。但是,据报道,对于比较不同实验中的数据,这可能是不合适的指标。在这里,我们提出了一种方法,该方法通过使用单元均值ANOVA模型同时测试和整合三个假设(对比度)来解决上述问题。这三个对比测试了在所有实验组中野生型,基因敲除和全局治疗的效果。我们在微阵列实验中阐明了我们的方法,该实验着重于鉴定候选靶基因和受肝脏中脂肪酸传感转录因子PPARα调控的生物学过程。与在整个实验比较中经常使用的FDR相比,我们的方法确定了一组保守但噪音较小的候选基因,它们具有相同的灵敏度和特异性。但是,我们的方法的优点是可以适当地针对多个测试进行调整,同时整合两个实验的数据,并且受到生物学推断的驱动。综上所述,在这项研究中,我们提出了一种简单而有效的策略来比较整个实验中基因的差异表达,同时控制多个假设检验。

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