失眠症
多导睡眠图
睡眠纺锤
听力学
记忆巩固
睡眠(系统调用)
慢波睡眠
交叉研究
心理学
原发性失眠
医学
麻醉
睡眠障碍
脑电图
神经科学
精神科
呼吸暂停
计算机科学
病理
替代医学
操作系统
海马体
安慰剂
作者
Daniela Dudysová,Karolína Janků,Marek Piorecký,Veronika Hantáková,Mária Orendáčová,Václava Piorecká,Jan Štrobl,Monika Kliková,Hong‐Viet V. Ngo,Jana Kopřivová
摘要
Summary Insomnia is a prevalent and disabling condition whose treatment is not always effective. This pilot study explores the feasibility and effects of closed‐loop auditory stimulation (CLAS) as a potential non‐invasive intervention to improve sleep, its subjective quality, and memory consolidation in patients with insomnia. A total of 27 patients with chronic insomnia underwent a crossover, sham‐controlled study with 2 nights of either CLAS or sham stimulation. Polysomnography was used to record sleep parameters, while questionnaires and a word‐pair memory task were administered to assess subjective sleep quality and memory consolidation. The initial analyses included 17 patients who completed the study, met the inclusion criteria, and received CLAS. From those, 10 (58%) received only a small number of stimuli. In the remaining seven (41%) patients with sufficient CLAS, we evaluated the acute and whole‐night effect on sleep. CLAS led to a significant immediate increase in slow oscillation (0.5–1 Hz) amplitude and activity, and reduced delta (1–4 Hz) and sigma/sleep spindle (12–15 Hz) activity during slow‐wave sleep across the whole night. All these fundamental sleep rhythms are implicated in sleep‐dependent memory consolidation. Yet, CLAS did not change sleep‐dependent memory consolidation or sleep macrostructure characteristics, number of arousals, or subjective perception of sleep quality. Results showed CLAS to be feasible in patients with insomnia. However, a high variance in the efficacy of our automated stimulation approach suggests that further research is needed to optimise stimulation protocols to better unlock potential CLAS benefits for sleep structure and subjective sleep quality in such clinical settings.
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