ОРИГИНАЛЬНОЕ ИССЛЕДОВАНИЕ

Вопрос сохранения интериктальной активности в длительных ЭЭГ-исследованиях эпилепсии

С. А. Гуляев1,2, С. Г. Климанов1, Г. А. Гермашев1, Л. М. Ханухова2, А. А. Гармаш1
Информация об авторах

1 Инженерно-физический институт биомедицины НИЯУ МИФИ, Москва, Россия

2 Клиника Ла Салюте, Москва, Россия

Для корреспонденции: Сергей Александрович Гуляев
ул. Раменки, д. 31, к. 136, г. Москва, 119607; ur.xednay@ssurgres

Информация о статье

Вклад авторов: С. А. Гуляев — идея исследования, анализ электроэнцефалограмм, написание текста; С. Г. Климанов, Г. А. Гермашев, Л. М. Ханухова — общий анализ данных; А. А. Гармаш — общее руководство проектом.

Соблюдение этических стандартов: исследование одобрено этическим комитетом ООО «Клиника Ла Салюте» (протокол № 11-011/24 от 11 января 2024 г.), проведено согласно договору ИФИБ НИЯУ МИФИ и ООО «Клиника Ла Салюте» (№ 09-01/23 от 09 января 2023 г.) в соответствии с принципами Хельсинкской декларации 1964 г. и ее последующих обновлений.

Статья получена: 12.03.2024 Статья принята к печати: 08.06.2024 Опубликовано online: 26.06.2024
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