A Biomarker for Discriminating Between Migraine With and Without Aura: Machine Learning on Functional Connectivity on Resting-State EEGs

Advanced analyses of electroencephalography (EEG) are rapidly becoming an important tool in understanding the brain’s processing of pain. To date, it appears that none have been explored as a way of distinguishing between migraine patients with aura (MWA) vs. those without aura (MWoA). In this work,...

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Veröffentlicht in:Annals of biomedical engineering 2020, Vol.48 (1), p.403-412
Hauptverfasser: Frid, Alex, Shor, Meirav, Shifrin, Alla, Yarnitsky, David, Granovsky, Yelena
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Sprache:eng
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Zusammenfassung:Advanced analyses of electroencephalography (EEG) are rapidly becoming an important tool in understanding the brain’s processing of pain. To date, it appears that none have been explored as a way of distinguishing between migraine patients with aura (MWA) vs. those without aura (MWoA). In this work, we apply a mixture of predictive, e.g., classification methods and attribute-selection techniques, and traditional explanatory, e.g., statistical, analyses on functional connectivity measures extracted from EEG signal acquired from at-rest participants ( N  = 52) during their interictal period and tested them against the distinction between MWA and MWoA. We show that a functional connectivity metric of EEG data obtained during resting state can serve as a sole biomarker to differentiate between MWA and MWoA. Using the proposed analysis, we not only have been able to present high classification results (average classification of 84.62%) but also to discuss the underlying neurophysiological mechanisms upon which our technique is based. Additionally, a more traditional statistical analysis on the selected features reveals that MWoA patients show higher than average connectivity in the Theta band ( p  = 0.03) at rest than MWAs. We propose that our data-driven analysis pipeline can be used for resting-EEG analysis in any clinical context.
ISSN:0090-6964
1573-9686
DOI:10.1007/s10439-019-02357-3