Gains in Power from Structured Two-Sample Tests of Means on Graphs

Laurent Jacob, P. Neuvial, S. Dudoit
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引用次数: 35

Abstract

We consider multivariate two-sample tests of means, where the location shift between the two populations is expected to be related to a known graph structure. An important application of such tests is the detection of differentially expressed genes between two patient populations, as shifts in expression levels are expected to be coherent with the structure of graphs reflecting gene properties such as biological process, molecular function, regulation, or metabolism. For a fixed graph of interest, we demonstrate that accounting for graph structure can yield more powerful tests under the assumption of smooth distribution shift on the graph. We also investigate the identification of non-homogeneous subgraphs of a given large graph, which poses both computational and multiple testing problems. The relevance and benefits of the proposed approach are illustrated on synthetic data and on breast cancer gene expression data analyzed in context of KEGG pathways.
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图上均值的结构化双样本检验的功率增益
我们考虑多变量双样本均值检验,其中两个总体之间的位置转移预计与已知的图结构相关。这种测试的一个重要应用是检测两个患者群体之间的差异表达基因,因为预计表达水平的变化与反映基因特性(如生物过程、分子功能、调节或代谢)的图形结构一致。对于一个固定的感兴趣的图,我们证明了在图上平滑分布移动的假设下,考虑图结构可以产生更强大的检验。我们还研究了给定大图的非齐次子图的识别,这将带来计算和多重测试问题。在合成数据和KEGG通路背景下分析的乳腺癌基因表达数据上说明了所提出方法的相关性和益处。
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