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Variance model selection with application to joint analysis of multiple microarray datasets under false discovery rate control

机译:方差模型选择及其在错误发现率控制下的多个微阵列数据集的联合分析中的应用

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We study the problem of selecting homogeneous variance models vs. heterogeneous variance models in the context of joint analysis of multiple microarray datasets. We provide a modified multiresponse permutation procedure (MRPP), modified cross-validation procedures, and the right AICc (corrected Akaike’s information criterion) for choosing a variance model. In a simple univariate setting, our modified MRPP outperforms commonly used competitors. For microarray data analysis, we suggest using the sum of genespecific selection criteria to choose one best gene-specific model for use with all genes. Through realistic simulations based on three real microarray studies, we evaluated the proposed methods and found that using the correct model does not necessarily provide the best separation between differentially and equivalently expressed genes, but it does control false discovery rates (FDR) at desired levels. A hybrid procedure to decouple FDR control and differential expression detection is recommended.
机译:我们研究了在多个微阵列数据集的联合分析中选择均质方差模型与异质方差模型的问题。我们提供了经过修改的多响应置换程序(MRPP),经过修改的交叉验证程序以及用于选择方差模型的正确AICc(经修正的Akaike信息准则)。在简单的单变量环境中,我们的改进型MRPP优于一般竞争对手。对于微阵列数据分析,我们建议使用基因特异性选择标准的总和来选择一种适用于所有基因的最佳基因特异性模型。通过基于三项真实微阵列研究的现实模拟,我们评估了所提出的方法,发现使用正确的模型并不一定能在差异表达和等价表达的基因之间提供最佳分离,但可以将错误发现率(FDR)控制在所需水平。建议使用混合程序来解耦FDR控制和差异表达检测。

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