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Voxel-based meta-analysis via permutation of subject images (PSI): Theory and implementation for SDM

机译:基于体素的META分析通过主题图像(PSI):理论和SDM的实现

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Coordinate-based meta-analyses (CBMA) are very useful for summarizing the large number of voxel-based neuroimaging studies of normal brain functions and brain abnormalities in neuropsychiatric disorders. However, current CBMA methods do not conduct common voxelwise tests, but rather a test of convergence, which relies on some spatial assumptions that data may seldom meet, and has lower statistical power when there are multiple effects. Here we present a new algorithm that can use standard voxelwise tests and, importantly, conducts a standard permutation of subject images (PSI). Its main steps are: a) multiple imputation of study images; b) imputation of subject images; and c) subject-based permutation test to control the familywise error rate (FWER). The PSI algorithm is general and we believe that developers might implement it for several CBMA methods. We present here an implementation of PSI for seed-based d mapping (SDM) method, which additionally benefits from the use of effect sizes, random-effects models, Freedman-Lane-based permutations and threshold-free cluster enhancement (TFCE) statistics, among others. Finally, we also provide an empirical validation of the control of the FWER in SDM-PSI, which showed that it might be too conservative. We hope that the neuroimaging meta-analytic community will welcome this new algorithm and method.
机译:基于坐标的荟萃分析(CBMA)是总结了大量的正常脑功能和神经精神障碍脑畸形基于体素的神经影像学研究的非常有用的。然而,目前的CBMA方法不进行共同voxelwise测试,而是收敛的考验,它依赖于一些空间假设数据可能很少见面,并具有当有多个影响下的统计力量。在这里,我们提出了一种新的算法,可以使用标准voxelwise测试,更重要的,进行目标图像的标准置换(PSI)。其主要步骤是:a)研究图像的多重插补; b)除图像的插补;和c)基于主题的置换检验以控制familywise错误率(FWER)。 PSI的算法是通用的,我们认为,开发商可能会实现它的几个CBMA方法。我们在座的PSI基于种子d映射(SDM)的方法,其中还使用效果的大小,随机效应模型,基于弗里德曼巷排列和无门槛集群增强(TFCE)统计的利益的实现,等等。最后,我们还提供在SDM-PSI的FWER,这表明它可能是过于保守的控制的经验验证。我们希望,神经影像学荟萃分析社区会欢迎这种新的算法和方法。

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