Graph analysis of resting state EEG functional networks

Master Thesis (2018)
Author(s)

Annemijn Smid (TU Delft - Applied Sciences)

Contributor(s)

Alfred Schouten – Mentor

Thijs Perenboom – Mentor

Caroline Wehrmann – Graduation committee member

Mark van de Ruit – Graduation committee member

Faculty
Mechanical Engineering
More Info
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Publication Year
2018
Language
English
Graduation Date
19-04-2018
Awarding Institution
Delft University of Technology
Faculty
Mechanical Engineering
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Abstract

Migraine is associated with brain dysfunction, possibly due to disturbances in the interactions between distributed cortical regions. Detection of these disturbances in the topological organization of the brain’s functional network would contribute to further understanding of migraine pathophysiology. Altered cortical responses to external stimulation of different modalities are observed in migraine patients, also between attacks (in the interictal state). However, it is yet unclear if abnormalities are detectable in the functional network at rest, i.e. without external stimulation. Here, we assessed abnormalities in migraine functional networks on a global and a local level, based on resting state electroencephalography (EEG) data and graph analysis. Scalp-wide (128-channel)
eyes closed EEG was recorded in 18 episodic migraine patients with and without
aura and 15 healthy controls. We calculated functional connectivity based on
coherence and phase-lag index, and performed graph analysis to characterize
network topology. The minimum spanning tree, a subgraph with maximum
functional connectivity, was used for comparison. No significant differences were
found in network topology, nor in functional connectivity strength between groups. These results demonstrate that this type of graph analyses are not sensitive to any possible abnormalities in the interictal migraine functional network in resting state. Brain dysfunction in migraine might occur only on a local level, making EEG-based graph analysis a less suitable technique to uncover such abnormalities.

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