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Inter- and Intra-Subject Variability of Neuromagnetic Resting State Networks
Authors:Vincent Wens  Mathieu Bourguignon  Serge Goldman  Brice Marty  Marc Op de Beeck  Catherine Clumeck  Alison Mary  Philippe Peigneux  Patrick Van Bogaert  Matthew J. Brookes  Xavier De Tiège
Affiliation:1. Laboratoire de Cartographie fonctionnelle du Cerveau, UNI – ULB Neurosciences Institute, Université libre de Bruxelles (ULB), Brussels, Belgium
2. Brain Research Unit, O.V. Lounasmaa Laboratory, Aalto NeuroImaging, School of Science, Aalto University, FI-00076, Aalto, Espoo, Finland
3. UR2NF – Neuropsychology and Functional Neuroimaging Research Unit at CRCN – Centre de Recherches Cognition et Neurosciences, and UNI – ULB Neurosciences Institute, Université libre de Bruxelles (ULB), Brussels, Belgium
4. Sir Peter Mansfield Magnetic Resonance Centre, School of Physics and Astronomy, University of Nottingham, University Park, Nottingham, UK
Abstract:
Functional connectivity studies conducted at the group level using magnetoencephalography (MEG) suggest that resting state networks (RSNs) emerge from the large-scale envelope correlation structure within spontaneous oscillatory brain activity. However, little is known about the consistency of MEG RSNs at the individual level. This paper investigates the inter- and intra-subject variability of three MEG RSNs (sensorimotor, auditory and visual) using seed-based source space envelope correlation analysis applied to 5 min of resting state MEG data acquired from a 306-channel whole-scalp neuromagnetometer (Elekta Oy, Helsinki, Finland) and source projected with minimum norm estimation. The main finding is that these three MEG RSNs exhibit substantial variability at the single-subject level across and within individuals, which depends on the RSN type, but can be reduced after averaging over subjects or sessions. Over- and under-estimations of true RSNs variability are respectively obtained using template seeds, which are potentially mislocated due to inter-subject variations, and a seed optimization method minimizing variability. In particular, bounds on the minimal number of subjects or sessions required to obtain highly consistent between- or within-subject averages of MEG RSNs are derived. Furthermore, MEG RSN topography positively correlates with their mean connectivity at the inter-subject level. These results indicate that MEG RSNs associated with primary cortices can be robustly extracted from seed-based envelope correlation and adequate averaging. MEG thus appears to be a valid technique to compare RSNs across subjects or conditions, at least when using the current methods.
Keywords:
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