Article ID Journal Published Year Pages File Type
6036366 NeuroImage 2019 14 Pages PDF
Abstract
► In this paper adjusted cluster sizes are used in a permutation-testing framework for both cluster-based and threshold-free cluster enhancement (TFCE) inference and tested on both simulated and real data. ► We find TFCE inference is already fairly robust to nonstationarity in the data, while cluster-based inference requires an adjustment to ensure homogeneity. ► A group of possible multi-level adjustments are introduced and their results on simulated and real data are assessed using a new performance index. ► We also find that adjusting for local smoothness via a local estimation of a statistic's null distribution (from a first pass through the permutation testing) is more effective at removing nonstationarity than correction via local smoothness estimation.
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Life Sciences Neuroscience Cognitive Neuroscience
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