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Permutation tests for factorially designed neuroimaging experiments.

机译:用于因子设计神经成像实验的置换测试。

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Permutation methods for analysis of functional neuroimaging data acquired as factorially designed experiments are described and validated. The F ratio was estimated for main effects and interactions at each voxel in standard space. Critical values corresponding to probability thresholds were derived from a null distribution sampled by appropriate permutation of observations. Spatially informed, cluster-level test statistics were generated by applying a preliminary probability threshold to the voxel F maps and then computing the sum of voxel statistics in each of the resulting three-dimensional clusters, i.e., cluster "mass." Using simulations comprising two between- or within-subject factors each with two or three levels, contaminated by Gaussian and non-normal noise, the voxel-wise permutation test was compared to the standard parametric F test and to the performance of the spatially informed statistic using receiver operating characteristic (ROC) curves. Validity of the permutation-testing algorithm and software is endorsed by almost identical performance of parametric and permutation tests of the voxel-level F statistic. Permutation testing of suprathreshold voxel cluster mass, however, was found to provide consistently superior sensitivity to detect simulated signals than either of the voxel-level tests. The methods are also illustrated by application to an experimental dataset designed to investigate effects of antidepressant drug treatment on brain activation by implicit sad facial affect perception in patients with major depression. Antidepressant drug effects in left amygdala and ventral striatum were detected by this software for an interaction between time (within-subject factor) and group (between-subject factor) in a representative two-way factorial design. Hum. Brain Mapping 22:193-205, 2004.
机译:描述和验证了分析通过分析设计的实验获得的功能性神经影像数据的排列方法。 F比率是针对标准空间中每个体素的主要作用和相互作用进行估计的。相应于概率阈值的临界值是通过对观察值进行适当排列而从零分布中得出的。通过将初步概率阈值应用于体素F贴图,然后计算每个所得三维群集(即群集“质量”)中的体素统计信息的总和,可以生成具有空间信息的群集级测试统计信息。使用包含两个受试者之间或受试者内部因素的模拟,每个因素具有两个或三个级别,并受到高斯噪声和非正常噪声的污染,将体素方向置换检验与标准参数F检验和空间知觉统计量的性能进行了比较使用接收器工作特性(ROC)曲线。体素水平F统计量的参数测试和置换测试几乎具有相同的性能,从而证明了置换测试算法和软件的有效性。然而,发现超阈值体素簇质量的置换测试提供了比任何体素级测试都更高的检测模拟信号的灵敏度。还通过将其应用于实验数据集来说明这些方法,该数据集旨在研究重度抑郁症患者通过内隐的悲伤面部情感感知来研究抗抑郁药治疗对大脑激活的影响。通过该软件,在代表性的双向析因设计中,通过时间(受试者内因素)和组(受试者间因素)之间的相互作用检测了左杏仁核和腹侧纹状体的抗抑郁药作用。哼。 Brain Mapping 22:193-205,2004。

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