RUS  ENG
Full version
JOURNALS // Computer Research and Modeling // Archive

Computer Research and Modeling, 2023 Volume 15, Issue 3, Pages 691–701 (Mi crm1083)

ANALYSIS AND MODELING OF COMPLEX LIVING SYSTEMS

Frequency, time, and spatial electroencephalogram changes after COVID-19 during a simple speech task

D. V. Vorontsovaa, M. V. Isaevab, I. A. Menshikovcde, K. Yu. Orlovf, A. Bernadottebce

a SberDevices, PJSC Sberbank, 32 Kutuzovsky pr., Moscow, 121165, Russia
b Dep. of Information Technologies and Computer Sciences, National University of Science and Technology MISIS
c Faculty of Mechanics and Mathematics, Moscow State University, GSP-1, Leninskie Gory, Moscow, 119991, Russia
d Department of Control and Applied Mathematics, Moscow Institute of Physics and Technology (MIPT), 9 Institutskiy per., Dolgoprudny, 141700, Russia
e LLC Neurosputnik, 96, pr. Vernadskogo, Moscow, 119571, Russia
f Research Center of Endovascular Neurosurgery, Federal State Budgetary Institution “Federal Center of Brain Research and Neurotechnologies” of the Federal Medical Biological Agency, 1 Ostrovityanova st., Moscow, 117513, Russia

Abstract: We found a predominance of $\alpha$-rhythm patterns in the left hemisphere in healthy people compared to people with COVID-19 history. Moreover, we observe a significant decrease in the left hemisphere contribution to the speech center area in people who have undergone COVID-19 when performing speech tasks.
Our findings show that the signal in healthy subjects is more spatially localized and synchronized between hemispheres when performing tasks compared to people who recovered from COVID-19. We also observed a decrease in low frequencies in both hemispheres after COVID-19.
EEG-patterns of COVID-19 are detectable in an unusual frequency domain. What is usually considered noise in electroencephalographic (EEG) data carries information that can be used to determine whether or not a person has had COVID-19. These patterns can be interpreted as signs of hemispheric desynchronization, premature brain ageing, and more significant brain strain when performing simple tasks compared to people who did not have COVID-19.
In our work, we have shown the applicability of neural networks in helping to detect the long-term effects of COVID-19 on EEG-data. Furthermore, our data following other studies supported the hypothesis of the severity of the long-term effects of COVID-19 detected on the EEG-data of EEG-based BCI. The presented findings of functional activity of the brain– computer interface make it possible to use machine learning methods on simple, non-invasive brain–computer interfaces to detect post-COVID syndrome and develop progress in neurorehabilitation.

Keywords: COVID-19, brain–computer interface, EEG, frequency patterns, brain ageing, neurorehabilitation, post-COVID syndrome, deep learning.

UDC: 004.5, 519.6, 519.7

Received: 06.01.2023
Revised: 10.04.2023
Accepted: 10.05.2023

Language: English

DOI: 10.20537/2076-7633-2023-15-3-691-701



© Steklov Math. Inst. of RAS, 2024