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Nonparametric relevance-shifted multiple testing procedures for the analysis of high-dimensional multivariate data with small sample sizes

机译:非参数相关移位的多重测试程序,用于分析小样本量的高维多元数据

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Background In many research areas it is necessary to find differences between treatment groups with several variables. For example, studies of microarray data seek to find a significant difference in location parameters from zero or one for ratios thereof for each variable. However, in some studies a significant deviation of the difference in locations from zero (or 1 in terms of the ratio) is biologically meaningless. A relevant difference or ratio is sought in such cases. Results This article addresses the use of relevance-shifted tests on ratios for a multivariate parallel two-sample group design. Two empirical procedures are proposed which embed the relevance-shifted test on ratios. As both procedures test a hypothesis for each variable, the resulting multiple testing problem has to be considered. Hence, the procedures include a multiplicity correction. Both procedures are extensions of available procedures for point null hypotheses achieving exact control of the familywise error rate. Whereas the shift of the null hypothesis alone would give straight-forward solutions, the problems that are the reason for the empirical considerations discussed here arise by the fact that the shift is considered in both directions and the whole parameter space in between these two limits has to be accepted as null hypothesis. Conclusion The first algorithm to be discussed uses a permutation algorithm, and is appropriate for designs with a moderately large number of observations. However, many experiments have limited sample sizes. Then the second procedure might be more appropriate, where multiplicity is corrected according to a concept of data-driven order of hypotheses.
机译:背景技术在许多研究领域,有必要找出具有多个变量的治疗组之间的差异。例如,对微阵列数据的研究试图找到位置参数的显着差异,即对于每个变量的比率,其零或一。但是,在某些研究中,位置差异与零(或比率为1)的显着偏差在生物学上是没有意义的。在这种情况下,寻求相关的差异或比率。结果本文介绍了针对多变量并行两样本组设计对比率进行相关性移位检验。提出了两种经验方法,将相关性移动检验嵌入到比率中。由于这两个过程都针对每个变量测试了一个假设,因此必须考虑由此产生的多重测试问题。因此,该过程包括多重校正。这两个过程都是点零假设可用过程的扩展,实现了对族错误率的精确控制。尽管仅凭零假设的移动即可给出直截了当的解决方案,但由于在两个方向都考虑了移动并且在这两个极限之间的整个参数空间具有被接受为原假设。结论将要讨论的第一个算法使用置换算法,适用于观测值中等的设计。但是,许多实验的样本量有限。然后,第二个过程可能更合适,根据数据驱动的假设顺序的概念对多重性进行校正。

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