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Generalized Mann-Whitney Type Tests for Microarray Experiments

机译:用于微阵列实验的广义Mann-Whitney类型检验

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摘要

New statistical procedures are introduced to analyse typical microRNA expression data sets. For each separate microRNA expression, the null hypothesis to be tested is that there is no difference between the distributions of the expression in different groups. The test statistics are then constructed having certain type of alternatives in mind. To avoid strong (parametric) distributional assumptions, the alternatives are formulated using probabilities of different orders of pairs or triples of observations coming from different groups, and the test statistics are then constructed using corresponding several-sample U-statistics, natural estimates of these probabilities. Classical several-sample rank test statistics, such as the Kruskal-Wallis and Jonckheere-Terpstra tests, are special cases in our approach. Also, as the number of variables (microRNAs) is huge, we confront a serious simultaneous testing problem. Different approaches to control the family-wise error rate or the false discovery rate are shortly discussed, and it is shown how the Chen-Stein theorem can be used to show that family-wise error rate can be controlled for cluster-dependent microRNAs under weak assumptions. The theory is illustrated with an analysis of real data, a microRNA expression data set on Finnish (aggressive and non-aggressive) prostate cancer patients and their controls.
机译:引入了新的统计程序来分析典型的microRNA表达数据集。对于每个单独的microRNA表达,要测试的无效假设是不同组中表达的分布之间没有差异。然后构造测试统计数据时要牢记某些类型的备选方案。为了避免强大的(参数)分布假设,使用来自不同组的成对观测值或三元组观测值的不同顺序的概率来制定替代方案,然后使用对应的几个样本U统计量(这些概率的自然估计)构造检验统计量。经典的多样本等级检验统计数据,例如Kruskal-Wallis和Jonckheere-Terpstra检验,是我们方法中的特殊情况。另外,由于变量(microRNA)的数量巨大,我们面临着严重的同时测试问题。简短讨论了控制家族错误率或错误发现率的不同方法,并显示了如何使用Chen-Stein定理证明弱簇下簇依赖的microRNA可以控制家族错误率。假设。通过对实际数据的分析,芬兰(侵略性和非侵略性)前列腺癌患者及其对照的microRNA表达数据集来说明该理论。

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