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首页> 外文期刊>NeuroImage >Improving permutation test power for group analysis of spatially filtered MEG data.
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Improving permutation test power for group analysis of spatially filtered MEG data.

机译:提高对空间过滤的MEG数据进行分组分析的置换测试能力。

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摘要

Non-parametric statistical methods, such as permutation, are flexible tools to analyze data when the population distribution is not known. With minimal assumptions and better statistical power compared to the parametric tests, permutation tests have recently been applied to the spatially filtered magnetoencephalography (MEG) data for group analysis. To perform permutation tests on neuroimaging data, an empirical maximal null distribution has to be found, which is free from any activated voxels, to determine the threshold to classify the voxels as active at a given probability level. An iterative procedure is used to determine the distribution by computing the null distribution, which is recomputed when a possible activated voxel is found within the current distributions. Besides the high computational costs associated with this approach, there is no guarantee that all activated voxels are excluded when constructing the maximal null distribution, which may reduce the statistical power. In this study, wepropose a novel way to construct the maximal null distribution from the data of the resting period. The approach is tested on the MEG data from a somatosensory experiment, and demonstrated that the approach could improve the power of the permutation test while reducing the computational cost at the same time.
机译:当不知道总体分布时,非参数统计方法(例如置换)是用于分析数据的灵活工具。与参数测试相比,具有最小的假设和更好的统计能力,置换测试最近已应用于空间滤波的脑磁图(MEG)数据以进行组分析。为了对神经影像数据执行置换测试,必须找到经验最大的零分布,该分布没有任何激活的体素,以确定在给定的概率水平下将体素分类为活动的阈值。迭代过程用于通过计算零分布来确定分布,当在当前分布中找到可能的激活体素时,将重新计算该零分布。除了与此方法相关的高计算成本外,不能保证在构造最大零值分布时会排除所有激活的体素,这可能会降低统计功效。在这项研究中,我们提出了一种从静止期数据构造最大零分布的新方法。该方法对来自体感实验的MEG数据进行了测试,证明该方法可以提高置换测试的能力,同时降低计算成本。

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