ОРИГИНАЛЬНОЕ ИССЛЕДОВАНИЕ

Исследование зрительного гнозиса с помощью анализа ЭЭГ-микросостояний

Информация об авторах

1 Федеральный центр мозга и нейротехнологий Федерального медико-биологического агентства, Москва, Россия

2 Инженерно-физический институт биомедицины Национального исследовательского ядерного университета «МИФИ», Москва, Россия

Для корреспонденции: Сергей Александрович Гуляев
ул. Островитянова, д. 1, стр. 10, г. Москва, Россия; moc.liamg@37veaylug.s

Информация о статье

Соблюдение этических стандартов: исследование одобрено этическим комитетом ФГБУ «ФЦМН» ФМБА России (протокол № 148-1 от 15 июня 2021 г.), проведено в соответствии с принципами биомедицинской этики, сформулированными в Хельсинкской декларации 1964 г. и ее последующих обновлениях. Каждый участник подписал добровольное информированное согласие на участие в исследовании.

Статья получена: 31.05.2022 Статья принята к печати: 28.06.2022 Опубликовано online: 19.07.2022
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