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FDR Control by the BH Procedure for Two-Sided Correlated Tests with Implications to Gene Expression Data Analysis

机译:通过BH程序进行FDR控制的双向相关测试,对基因表达数据分析有影响

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摘要

The multiple testing problem attributed to gene expression analysis is challenging not only by its size, but also by possible dependence between the expression levels of different genes resulting from co-regulations of the genes. Furthermore, the measurement errors of these expression levels may be dependent as well since they are subjected to several technical factors. Multiple testing of such data faces the challenge of correlated test statistics. In such a case, the control of the False Discovery Rate (FDR) is not straightforward, and thus demands new approaches and solutions that will address multiplicity while accounting for this dependency.This paper investigates the effects of dependency between bormal test statistics on FDR control in two-sided testing, using the linear step-up procedure (BH) of Benjamini and Hochberg (1995). The case of two multiple hypotheses is examined first. A simulation study offers primary insight into the behavior of the FDR subjected to different levels of correlation and distance between null and alternative means. A theoretical analysis follows in order to obtain explicit upper bounds to the FDR. These results are then extended to more than two multiple tests, thereby offering a better perspective on the effect of the proportion of false null hypotheses, as well as the structure of the test statistics correlation matrix. An example from gene expression data analysis is presented.
机译:归因于基因表达分析的多重测试问题不仅具有挑战性,而且还具有因基因共同调控而导致的不同基因表达水平之间可能存在的依赖性的挑战。此外,这些表达水平的测量误差也可能是依赖的,因为它们受到多种技术因素的影响。此类数据的多重测试面临相关测试统计数据的挑战。在这种情况下,错误发现率(FDR)的控制并不简单,因此需要新的方法和解决方案,在解决这种依赖性的同时还要解决多重性。本文研究了随机检验统计数据之间的依赖性对FDR控制的影响。在双向测试中,使用Benjamini和Hochberg(1995)的线性升压程序(BH)。首先检查两个多重假设的情况。仿真研究提供了对FDR行为的初步了解,该行为在不同的相关程度以及无效和替代手段之间的距离下受到影响。为了获得FDR的明确上限,需要进行理论分析。然后将这些结果扩展到两个以上的多重检验,从而为错误的虚假假设的比例以及检验统计量相关矩阵的结构提供更好的视角。给出了来自基因表达数据分析的一个例子。

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