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Analysis of gene expression in pathophysiological states: Balancing false discovery and false negative rates

机译:病理生理状态下基因表达的分析:平衡错误发现和错误阴性率

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摘要

Nucleotide-microarray technology, which allows the simultaneous measurement of the expression of tens of thousands of genes, has become an important tool in the study of disease. In disorders such as malignancy, gene expression often undergoes broad changes of sizable magnitude, whereas in many common multifactorial diseases, such as diabetes, obesity, and atherosclerosis, the changes in gene expression are modest. In the latter circumstance, it is therefore challenging to distinguish the truly changing from non-changing genes, especially because statistical significance must be considered in the context of multiple hypothesis testing. Here, we present a balanced probability analysis (BPA), which provides the biologist with an approach to interpret results in the context of the total number of genes truly differentially expressed and false discovery and false negative rates for the list of genes reaching any significance threshold. In situations where the changes are of modest magnitude, sole consideration of the false discovery rate can result in poor power to detect genes truly differentially expressed. Concomitant analysis of the rate of truly differentially expressed genes not identified, i.e., the false negative rate, allows balancing of the two error rates and a more thorough insight into the data. To this end, we have developed a unique, model-based procedure for the estimation of false negative rates, which allows application of BPA to real data in which changes are modest.
机译:可以同时测量数万个基因表达的核苷酸微阵列技术已成为疾病研究中的重要工具。在诸如恶性肿瘤的疾病中,基因表达通常经历相当大的范围的广泛变化,而在许多常见的多因素疾病中,例如糖尿病,肥胖症和动脉粥样硬化,基因表达的变化是适度的。因此,在后一种情况下,将真正变化的基因与不变的基因区分开是具有挑战性的,特别是因为必须在多重假设检验的背景下考虑统计意义。在这里,我们介绍了一种平衡概率分析(BPA),它为生物学家提供了一种方法,可以在真正差异表达的基因总数和达到任何显着性阈值的基因列表中错误发现和错误阴性率的背景下解释结果。在变化幅度不大的情况下,仅考虑错误发现率可能会导致检测真正差异表达基因的能力下降。伴随分析未鉴定的真正差异表达基因的速率,即假阴性率,可以平衡两个错误率并更深入地了解数据。为此,我们开发了一种基于模型的独特程序来估计假阴性率,该程序允许将BPA应用于变化不大的真实数据。

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