A new electroencephalography marker of the cognitive task performance
- Autores: Smirnov N.1,2, Badarin A.1,2, Kurkin S.1,2, Hramov A.1,2
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Afiliações:
- Innopolis University
- Immanuel Kant Baltic Federal University
- Edição: Volume 87, Nº 1 (2023)
- Páginas: 129-133
- Seção: Articles
- URL: https://journals.rcsi.science/0367-6765/article/view/135261
- DOI: https://doi.org/10.31857/S0367676522700247
- EDN: https://elibrary.ru/JUSBOZ
- ID: 135261
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Resumo
Universal biomarker based on the calculation of the dispersion of the ratio of alpha- and beta-rhythms energy in the registered electroencephalography signals and reflecting the level of the components of the cognitive resource of the learner was revealed. Using the Bourdon test (proofreading test) as an example, it is shown that this biomarker significantly correlates with the main indicators of success and performance of standardized cognitive tasks.
Sobre autores
N. Smirnov
Innopolis University; Immanuel Kant Baltic Federal University
Autor responsável pela correspondência
Email: n.smirnov@innopolis.university
Russia, 420500, Innopolis; Russia, 236041, Kaliningrad
A. Badarin
Innopolis University; Immanuel Kant Baltic Federal University
Email: n.smirnov@innopolis.university
Russia, 420500, Innopolis; Russia, 236041, Kaliningrad
S. Kurkin
Innopolis University; Immanuel Kant Baltic Federal University
Email: n.smirnov@innopolis.university
Russia, 420500, Innopolis; Russia, 236041, Kaliningrad
A. Hramov
Innopolis University; Immanuel Kant Baltic Federal University
Email: n.smirnov@innopolis.university
Russia, 420500, Innopolis; Russia, 236041, Kaliningrad
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