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Statistical inference and multiple testing correction in classification-based multi-voxel pattern analysis (MVPA): random permutations and cluster size control.

机译:基于分类的多体素模式分析(MVPA)中的统计推断和多次测试校正:随机排列和簇大小控制。

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摘要

An ever-increasing number of functional magnetic resonance imaging (fMRI) studies are now using information-based multi-voxel pattern analysis (MVPA) techniques to decode mental states. In doing so, they achieve a significantly greater sensitivity compared to when they use univariate frameworks. However, the new brain-decoding methods have also posed new challenges for analysis and statistical inference on the group level. We discuss why the usual procedure of performing t-tests on accuracy maps across subjects in order to produce a group statistic is inappropriate. We propose a solution to this problem for local MVPA approaches, which achieves higher sensitivity than other procedures. Our method uses random permutation tests on the single-subject level, and then combines the results on the group level with a bootstrap method. To preserve the spatial dependency induced by local MVPA methods, we generate a random permutation set and keep it fixed across all locations. This enables us to later apply a cluster size control for the multiple testing problem. More specifically, we explicitly compute the distribution of cluster sizes and use this to determine the p-values for each cluster. Using a volumetric searchlight decoding procedure, we demonstrate the validity and sensitivity of our approach using both simulated and real fMRI data sets. In comparison to the standard t-test procedure implemented in SPM8, our results showed a higher sensitivity. We discuss the theoretical applicability and the practical advantages of our approach, and outline its generalization to other local MVPA methods, such as surface decoding techniques.
机译:现在,越来越多的功能磁共振成像(fMRI)研究使用基于信息的多体素模式分析(MVPA)技术来解码心理状态。与使用单变量框架时相比,这样做可以显着提高灵敏度。然而,新的大脑解码方法也对小组层面的分析和统计推断提出了新的挑战。我们讨论了为什么在跨主题的准确性图上执行t检验以生成组统计的常规过程是不合适的。我们提出了针对本地MVPA方法的此问题的解决方案,该解决方案比其他过程具有更高的灵敏度。我们的方法在单对象级别上使用随机置换测试,然后将组级别的结果与引导方法结合在一起。为了保留由局部MVPA方法引起的空间依赖性,我们生成了一个随机置换集并将其在所有位置保持固定。这使我们能够在以后针对多个测试问题应用集群大小控件。更具体地说,我们显式计算群集大小的分布,并使用它来确定每个群集的p值。使用体积探照灯解码程序,我们通过模拟和真实fMRI数据集展示了我们方法的有效性和敏感性。与SPM8中实施的标准t检验程序相比,我们的结果显示出更高的灵敏度。我们讨论了该方法的理论适用性和实际优势,并概述了其对其他本地MVPA方法的通用性,例如表面解码技术。

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