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The Fingerprint of Rapid Eye Movement: Its Algorithmic Detection in the Sleep Electroencephalogram Using a Single Derivation

机译:快速眼动的指纹:在睡眠脑电图中使用单导数的算法检测

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The strong associations of rapid eye movement (REM) sleep with dreaming and memory consolidation imply the existence of REM-specific brain electrical activity, notwithstanding the visual similarity of the electroencephalograms (EEGs) in REM and wake states. Our goal was to detect REM sleep by means of algorithmic analysis of the EEG. We postulated that novel depth and fragmentation variables, defined in relation to temporal changes in the signal (recurrences), could be statistically combined to allow disambiguation of REM epochs. The cohorts studied were consecutive patients with obstructive sleep apnea (OSA) recruited from a sleep medicine clinic, and clinically normal participants selected randomly from a national database (N = 20 in each cohort). Individual discriminant analyses were performed, for each subject based on 4 recurrence biomarkers, and used to classify every 30-second epoch in the subject's overnight polysomnogram as REM or NotREM (wake or any non-REM sleep stage), using standard clinical staging as ground truth. The primary outcome variable was the accuracy of algorithmic REM classification. Average accuracies of 90% and 87% (initial and cross-validation analyses) were achieved in the OSA cohort; corresponding results in the normal cohort were 87% and 85%. Analysis of brain recurrence allowed identification of REM sleep, disambiguated from wake and all other stages, using only a single EEG lead, in subjects with or without OSA.
机译:快速眼动(REM)睡眠与梦和记忆巩固之间的密切联系暗示着REM特定的脑电活动的存在,尽管在REM和唤醒状态下脑电图(EEG)在视觉上相似。我们的目标是通过对EEG进行算法分析来检测REM睡眠。我们假设可以将与信号的时间变化(重复发生)相关的新颖的深度和碎片变量进行统计组合,以消除REM时期的歧义。研究的队列是从睡眠医学诊所招募的连续性阻塞性睡眠呼吸暂停(OSA)患者,并从国家数据库中随机选择临床正常参与者(每组N = 20)。针对每个受试者,基于4种复发性生物标志物进行了单独的判别分析,并使用标准的临床分期法将受试者隔夜多导睡眠图中每30秒的时间分为REM或NotREM(苏醒或任何非REM睡眠阶段)真相。主要结果变量是算法快速眼动分类的准确性。在OSA队列中,平均准确率达到90%和87%(初始和交叉验证分析);正常队列的相应结果分别为87%和85%。对有或没有OSA的受试者,仅需使用一条EEG导线,通过对脑部复发的分析就可以识别出REM睡眠,从睡眠和所有其他阶段中消除了歧义。

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