Российский физиологический журнал им. И.М. Сеченова, 2023, T. 109, № 5, стр. 600-611

Изменение сверхмедленных колебаний потенциалов мозга под влиянием БОС-тренинга по сверхмедленным частотам ЭЭГ

В. А. Гринь-Яценко 1*, В. А. Пономарев 1, Ю. Д. Кропотов 1

1 Институт мозга человека им. Н.П. Бехтеревой Российской академии наук
Санкт-Петербург, Россия

* E-mail: veragrin.ihb@gmail.com

Поступила в редакцию 02.03.2023
После доработки 23.03.2023
Принята к публикации 26.03.2023

Аннотация

В настоящем исследовании представлено сравнение влияния на электрическую активность ЭЭГ в диапазоне сверхмедленных частот двух видов воздействия: ЭЭГ биоуправления по сверхмедленным колебаниям и тренировки вариабельности сердечного ритма. В исследовании приняли участие 17 здоровых испытуемых в возрасте от 21-го до 50-ти лет с незначительно выраженными симптомами физиологического и/или психологического характера, не имевших в анамнезе неврологических и психических заболеваний. Для оценки результатов тренинга проводился анализ спектральной мощности медленных колебаний ЭЭГ во время выполнения теста на внимание (Visual Go/NoGo), зарегистрированных до и после двадцати сеансов биоуправления. Как субъективная оценка физиологического и психологического состояния, так и результаты выполнения зрительного теста показали более выраженные положительные сдвиги под влиянием ЭЭГ биоуправления по сравнению со случаями тренировки вариабельности сердечного ритма. Значительное повышение амплитуд в сверхмедленном диапазоне наблюдалось только после ЭЭГ биоуправления.

Ключевые слова: ЭЭГ, биоуправление, электроэнцефалография, сверхмедленные колебания потенциалов мозга, вариабельность сердечного ритма

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