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Cluster permutation analysis for EEG series based on non-parametric Wilcoxon–Mann–Whitney statistical tests

Diego Candia‐Rivera, Gaetano Valenza

2022SoftwareX46 citationsDOIOpen Access PDF

Abstract

Cluster-based permutation tests are widely used in neuroscience studies for the analysis of highdimensional electroencephalography (EEG) and event-related potential (ERP) data as it may address the multiple comparison problem without reducing the statistical power. However, classical clusterbased permutation analysis relies on parametric t-tests, whose assumptions may not be verified in case of non-normality of the data distribution and alternative options may be considered. To overcome this limitation, here we present a new software for a cluster permutation analysis for EEG series based on non-parametric Wilcoxon-Mann-Whitney tests. We tested both t-test and non-parametric Wilcoxon implementations in two independent datasets of ERPs and EEG spectral data: while t-test-based and non-parametric Wilcoxon-based cluster analyses showed similar results in case of ERP data, the t-test implementation was not able to find clustered effects in case of spectral data. We encourage the use of non-parametric statistics for a cluster permutation analysis of EEG data, and we provide a publicly available software for this computation.

Topics & Concepts

Wilcoxon signed-rank testPermutation (music)Parametric statisticsComputer scienceStatistical hypothesis testingNonparametric statisticsResamplingCluster (spacecraft)ElectroencephalographyMann–Whitney U testStatistical parametric mappingPattern recognition (psychology)StatisticsData miningArtificial intelligenceMathematicsPsychologyMedicinePsychiatryPhysicsProgramming languageAcousticsMagnetic resonance imagingRadiologyBlind Source Separation TechniquesBayesian Methods and Mixture ModelsFractal and DNA sequence analysis