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A moment-based method for estimating the proportion of true null hypotheses and its application to microarray gene expression data

机译:基于矩的真实零假设估计比例的方法及其在微阵列基因表达数据中的应用

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摘要

Due to advances in experimental technologies, it is feasible to collect measurements for a large number of variables. When these variables are simultaneously screened by a statistical test, it is necessary to consider the adjustment for multiple hypothesis testing. The false discovery rate has been proposed and widely used to address this issue. A related problem is the estimation of the proportion of true null hypotheses. The long-standing difficulty to this problem is the identifiability of the nonparametric model. In this study, we propose a moment-based method coupled with sample splitting for estimating this proportion. If the p values from the alternative hypothesis are homogeneously distributed, then the proposed method will solve the identifiability and give its optimal performances. When the p values from the alternative hypothesis are heterogeneously distributed, we propose to approximate this mixture distribution so that the identifiability can be achieved. Theoretical aspects of the approximation error are discussed. The proposed estimation method is completely nonparametric and simple with an explicit formula. Simulation studies show the favorable performances of the proposed method when it is compared to the other existing methods. Two microarray gene expression data sets are considered for applications.
机译:由于实验技术的进步,收集大量变量的测量值是可行的。当通过统计检验同时筛选这些变量时,有必要考虑针对多个假设检验的调整。虚假发现率已经被提出并被广泛用于解决这个问题。一个相关的问题是对真实零假设的比例的估计。该问题长期存在的困难是非参数模型的可识别性。在这项研究中,我们提出了一种基于矩量的方法,并结合了样本分割来估计这一比例。如果替代假设的p值均匀分布,则所提出的方法将解决可识别性并给出其最佳性能。当来自替代假设的p值是非均质分布时,我们建议对该混合分布进行近似估计,以便可以实现可识别性。讨论了近似误差的理论方面。所提出的估计方法是完全非参数的,并且具有明确的公式简单。仿真研究表明,与其他现有方法相比,该方法具有良好的性能。考虑使用两个微阵列基因表达数据集。

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