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Harnessing functional segregation across brain rhythms as a means to detect EEG oscillatory multiplexing during music listening

Authors :
Nikolaos A. Laskaris
Sifis Micheloyannis
Dimitrios A. Adamos
Source :
Journal of neural engineering. 15(3)
Publication Year :
2018

Abstract

Music, being a multifaceted stimulus evolving at multiple timescales, modulates brain function in a manifold way that encompasses not only the distinct stages of auditory perception but also higher cognitive processes like memory and appraisal. Network theory is apparently a promising approach to describe the functional reorganization of brain oscillatory dynamics during music listening. However, the music induced changes have so far been examined within the functional boundaries of isolated brain rhythms. Using naturalistic music, we detected the functional segregation patterns associated with different cortical rhythms, as these were reflected in the surface EEG measurements. The emerged structure was compared across frequency bands to quantify the interplay among rhythms. It was also contrasted against the structure from the rest and noise listening conditions to reveal the specific components stemming from music listening. Our methodology includes an efficient graph-partitioning algorithm, which is further utilized for mining prototypical modular patterns, and a novel algorithmic procedure for identifying switching nodes that consistently change module during music listening. Our results suggest the multiplex character of the music-induced functional reorganization and particularly indicate the dependence between the networks reconstructed from the {\delta} and {\beta}H rhythms. This dependence is further justified within the framework of nested neural oscillations and fits perfectly within the context of recently introduced cortical entrainment to music. Considering its computational efficiency, and in conjunction with the flexibility of in situ electroencephalography, it may lead to novel assistive tools for real-life applications.<br />Comment: Pre-print version of the paper published in Journal of Neural Engineering (2018)

Details

ISSN :
17412552
Volume :
15
Issue :
3
Database :
OpenAIRE
Journal :
Journal of neural engineering
Accession number :
edsair.doi.dedup.....90dd56a0e4d3145b1efcbc79791bcfab