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Non-parametric combination and related permutation tests for neuroimaging

机译:神经影像的非参数组合和相关置换测试

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摘要

In this work, we show how permutation methods can be applied to combination analyses such as those that include multiple imaging modalities, multiple data acquisitions of the same modality, or simply multiple hypotheses on the same data. Using the well-known definition of union-intersection tests and closed testing procedures, we use synchronized permutations to correct for such multiplicity of tests, allowing flexibility to integrate imaging data with different spatial resolutions, surface and/or volume-based representations of the brain, including non-imaging data. For the problem of joint inference, we propose and evaluate a modification of the recently introduced non-parametric combination (NPC) methodology, such that instead of a two-phase algorithm and large data storage requirements, the inference can be performed in a single phase, with reasonable computational demands. The method compares favorably to classical multivariate tests (such as MANCOVA), even when the latter is assessed using permutations. We also evaluate, in the context of permutation tests, various combining methods that have been proposed in the past decades, and identify those that provide the best control over error rate and power across a range of situations. We show that one of these, the method of Tippett, provides a link between correction for the multiplicity of tests and their combination. Finally, we discuss how the correction can solve certain problems of multiple comparisons in one-way ANOVA designs, and how the combination is distinguished from conjunctions, even though both can be assessed using permutation tests. We also provide a common algorithm that accommodates combination and correction. Hum Brain Mapp 37:1486-1511, 2016. (c) 2016 Wiley Periodicals, Inc.
机译:在这项工作中,我们将展示如何将置换方法应用于组合分析,例如包括多个成像模态,相同模态的多个数据采集或仅对相同数据的多个假设的那些组合分析。使用众所周知的联合相交测试和封闭测试程序的定义,我们使用同步排列来校正此类多重测试,从而可以灵活地集成具有不同空间分辨率,基于表面和/或基于体积的大脑表示的成像数据,包括非成像数据。对于联合推理的问题,我们提出并评估了最近引入的非参数组合(NPC)方法的一种修改,这样,可以代替一个两阶段算法和大数据存储需求,而可以在一个阶段中进行推理,具有合理的计算需求。该方法与经典多元测试(例如MANCOVA)相比具有优势,即使后者使用置换进行评估也是如此。在排列测试的背景下,我们还评估了过去几十年来提出的各种组合方法,并确定了在各种情况下都能提供对错误率和功率的最佳控制的方法。我们显示,其中之一,即Tippett方法,为多种测试的校正及其组合之间提供了联系。最后,我们讨论了校正如何解决单向方差分析设计中多次比较的某些问题,以及如何区分组合与连词,即使两者都可以使用置换测试进行评估。我们还提供了一种适用于组合和校正的通用算法。嗡嗡声大脑Mapp 37:1486-1511,2016.(c)2016 Wiley Periodicals,Inc.

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