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MAREČEK, R. LAMOŠ, M. MIKL, M. BARTOŇ, M. FAJKUS, J. REKTOR, I. BRÁZDIL, M.
Original Title
What can be found in scalp EEG spectrum beyond common frequency bands. EEG– fMRI study
Type
journal article in Web of Science
Language
English
Original Abstract
Objective. The scalp EEG spectrum is a frequently used marker of neural activity. Commonly, the preprocessing of EEG utilizes constraints, e.g. dealing with a predefined subset of electrodes or a predefined frequency band of interest. Such treatment of the EEG spectrum neglects the fact that particular neural processes may be reflected in several frequency bands and/or several electrodes concurrently, and can overlook the complexity of the structure of the EEG spectrum. Approach. We showed that the EEG spectrum structure can be described by parallel factor analysis (PARAFAC), a method which blindly uncovers the spatial–temporal–spectral patterns of EEG. We used an algorithm based on variational Bayesian statistics to reveal nine patterns from the EEG of 38 healthy subjects, acquired during a semantic decision task. The patterns reflected neural activity synchronized across theta, alpha, beta and gamma bands and spread over many electrodes, as well as various EEG artifacts. Main results. Specifically, one of the patterns showed significant correlation with the stimuli timing. The correlation was higher when compared to commonly used models of neural activity (power fluctuations in distinct frequency band averaged across a subset of electrodes) and we found significantly correlated hemodynamic fluctuations in simultaneously acquired fMRI data in regions known to be involved in speech processing. Further, we show that the pattern also occurs in EEG data which were acquired outside the MR machine. Two other patterns reflected brain rhythms linked to the attentional and basal ganglia large scale networks. The other patterns were related to various EEG artifacts. Significance. These results show that PARAFAC blindly identifies neural activity in the EEG spectrum and that it naturally handles the correlations among frequency bands and electrodes. We conclude that PARAFAC seems to be a powerful tool for analysis of the EEG spectrum and might bring novel insight to the relationships between EEG activity and brain hemodynamics.
Keywords
multimodal neuroimaging, brain rhythms, blind decomposition, large scale brain networks
Authors
MAREČEK, R.; LAMOŠ, M.; MIKL, M.; BARTOŇ, M.; FAJKUS, J.; REKTOR, I.; BRÁZDIL, M.
Released
19. 7. 2016
Publisher
IOP Publishing
ISBN
1741-2552
Periodical
Journal of Neural Engineering
Year of study
13
Number
4
State
United Kingdom of Great Britain and Northern Ireland
Pages from
1
Pages to
Pages count
URL
http://iopscience.iop.org/article/10.1088/1741-2560/13/4/046026/meta
BibTex
@article{BUT142652, author="Radek {Mareček} and Martin {Lamoš} and Michal {Mikl} and Marek {Bartoň} and Jiří {Fajkus} and Ivan {Rektor} and Milan {Brázdil}", title="What can be found in scalp EEG spectrum beyond common frequency bands. EEG– fMRI study", journal="Journal of Neural Engineering", year="2016", volume="13", number="4", pages="1--13", doi="10.1088/1741-2560/13/4/046026", issn="1741-2552", url="http://iopscience.iop.org/article/10.1088/1741-2560/13/4/046026/meta" }