Уровень тревоги и показатели ЭЭГ при алкогольной зависимости: модель прогноза длительности терапевтической ремиссии

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Галкин С.А., Бохан Н.А. Уровень тревоги и показатели ЭЭГ при алкогольной зависимости: модель прогноза длительности терапевтической ремиссии // Российский психиатрический журнал. 2022. №1. С. 34-39.

Аннотация

В эмпирическом исследовании с целью построения прогностической модели длительности алкогольной ремиссии было обследовано 86 пациентов с алкогольной зависимостью. В качестве клинических данных применялась Шкала тревоги Гамильтона (HARS). В качестве электроэнцефалографических данных использовались значения спектрального анализа мощности и когерентности для θ-, α- и β-ритмов. С помощью дискриминантного анализа получена модель, позволяющая с высокой точностью прогнозировать длительность терапевтической ремиссии у пациентов с алкогольной зависимостью.

Ключевые слова алкогольная зависимость; ремиссия; прогноз; тревога; электроэнцефалография

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DOI: http://dx.doi.org/10.47877/1560-957Х-2022-10104

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