Complex network modeling of EEG band coupling in dyslexia: An exploratory analysis of auditory processing and diagnosis
Metadata
Show full item recordEditorial
Elsevier
Materia
Dyslexia diagnosis EEG Complex network PAC
Date
2022-01-05Referencia bibliográfica
Nicolás J. Gallego-Molina... [et al.]. Complex network modeling of EEG band coupling in dyslexia: An exploratory analysis of auditory processing and diagnosis, Knowledge-Based Systems, Volume 240, 2022, 108098, ISSN 0950-7051, [https://doi.org/10.1016/j.knosys.2021.108098]
Sponsorship
Spanish Government PGC2018-098813-B-C32; Junta de Andalucia UMA20-FEDERJA-086; European Commission; NVIDIA Corporation; Ministry of Science and Innovation, Spain (MICINN) Spanish Government; European Commission; Universidad de Malaga/CBUAAbstract
Complex network analysis has an increasing relevance in the study of neurological disorders, enhancing
the knowledge of brain’s structural and functional organization. Network structure and efficiency
reveal different brain states along with different ways of processing the information. This work is
structured around the exploratory analysis of the brain processes involved in low-level auditory
processing. A complex network analysis was performed on the basis of brain coupling obtained from
electroencephalography (EEG) data, while different auditory stimuli were presented to the subjects.
This coupling is inferred from the Phase-Amplitude coupling (PAC) from different EEG electrodes to
explore differences between control and dyslexic subjects. Coupling data allows the construction of a
graph, and then, graph theory is used to study the characteristics of the complex networks throughout
time for control and dyslexic subjects. This results in a set of metrics including clustering coefficient,
path length and small-worldness. From this, different characteristics linked to the temporal evolution
of networks and coupling are pointed out for dyslexics. Our study revealed patterns related to Dyslexia
as losing the small-world topology. Finally, these graph-based features are used to classify between
control and dyslexic subjects by means of a Support Vector Machine (SVM).