Parasomnias的未来。

IF 3.4 3区 医学 Q2 CLINICAL NEUROLOGY
Claudia Picard-Deland, Matteo Cesari, Ambra Stefani, Jean-Baptiste Maranci, Birgit Hogl, Isabelle Arnulf
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引用次数: 0

摘要

异睡眠是在睡眠或睡眠-觉醒过渡期间的异常行为或精神体验。由于唤醒障碍(DOA)或快速眼动睡眠行为障碍(RBD)很难在睡眠实验室中捕获,可能需要在大型社区中进行诊断,因此正在开发新的家庭诊断设备,包括活动记录仪、脑电图头带以及2D红外和3D飞行时间家用相机(通常具有自动分析功能)。RBD和DOA的传统视频多导睡眠图诊断标准正变得越来越准确,深度学习方法开始对这些疾病中的异常多导睡眠图信号进行准确分类。来自临床、认知、脑成像、DNA和多导睡眠图数据的大量数据提供了与睡眠异常相关的因素的新信息,在RBD的情况下,可以预测个体转化为显性神经退行性疾病的风险。梦工程,包括在睡眠中有针对性地重新激活记忆,结合图像重复疗法和清醒梦,有助于减轻患者的噩梦。在政治层面上,RBD汇集了异常运动专家和睡眠神经学家,而对噩梦和睡眠-觉醒分离的研究则汇集了睡眠和意识科学家。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Future of Parasomnias.

Parasomnias are abnormal behaviours or mental experiences during sleep or the sleep-wake transition. As disorders of arousal (DOA) or REM sleep behaviour disorder (RBD) can be difficult to capture in the sleep laboratory and may need to be diagnosed in large communities, new home diagnostic devices are being developed, including actigraphy, EEG headbands, as well as 2D infrared and 3D time of flight home cameras (often with automatic analysis). Traditional video-polysomnographic diagnostic criteria for RBD and DOA are becoming more accurate, and deep learning methods are beginning to accurately classify abnormal polysomnographic signals in these disorders. Big data from vast collections of clinical, cognitive, brain imaging, DNA and polysomnography data have provided new information on the factors that are associated with parasomnia and, in the case of RBD, may predict the individual risk of conversion to an overt neurodegenerative disease. Dream engineering, including targeted reactivation of memory during sleep, combined with image repetition therapy and lucid dreaming, is helping to alleviate nightmares in patients. On a political level, RBD has brought together specialists in abnormal movements and sleep neurologists, and research into nightmares and sleep-wake dissociations has brought together sleep and consciousness scientists.

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来源期刊
Journal of Sleep Research
Journal of Sleep Research 医学-临床神经学
CiteScore
9.00
自引率
6.80%
发文量
234
审稿时长
6-12 weeks
期刊介绍: The Journal of Sleep Research is dedicated to basic and clinical sleep research. The Journal publishes original research papers and invited reviews in all areas of sleep research (including biological rhythms). The Journal aims to promote the exchange of ideas between basic and clinical sleep researchers coming from a wide range of backgrounds and disciplines. The Journal will achieve this by publishing papers which use multidisciplinary and novel approaches to answer important questions about sleep, as well as its disorders and the treatment thereof.
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