2021
DOI: 10.1101/2021.04.23.441088
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Fourier SPoC: A customised machine-learning analysis pipeline for auditory beat-based entrainment in the MEG

Abstract: We propose here (the informed use) of a customised, data-driven machine-learning pipeline to analyse magnetoencephalography (MEG) in a theoretical source space, with respect to the processing of a regular beat. This hypothesis- and data-driven analysis pipeline allows us to extract the maximally relevant components in MEG source-space, with respect to the oscillatory power in the frequency band of interest and, most importantly, the beat-related modulation of that power. Our pipeline combines Spatio-Spectral D… Show more

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