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快速眼动睡眠行为障碍作为一种异常值检测问题。

Rapid eye movement sleep behavior disorder as an outlier detection problem.

机构信息

*Department of Electrical Engineering, Technical University of Denmark, Kongens Lyngby, Denmark; †Center for Healthy Ageing, University of Copenhagen, Copenhagen, Denmark; ‡Department of Clinical Neurophysiology, and §Danish Center for Sleep Medicine, Glostrup University Hospital, Denmark.

出版信息

J Clin Neurophysiol. 2014 Feb;31(1):86-93. doi: 10.1097/WNP.0000000000000021.

Abstract

OBJECTIVE

Idiopathic rapid eye movement (REM) sleep behavior disorder is a strong early marker of Parkinson's disease and is characterized by REM sleep without atonia and/or dream enactment. Because these measures are subject to individual interpretation, there is consequently need for quantitative methods to establish objective criteria. This study proposes a semiautomatic algorithm for the early detection of Parkinson's disease. This is achieved by distinguishing between normal REM sleep and REM sleep without atonia by considering muscle activity as an outlier detection problem.

METHODS

Sixteen healthy control subjects, 16 subjects with idiopathic REM sleep behavior disorder, and 16 subjects with periodic limb movement disorder were enrolled. Different combinations of five surface electromyographic channels, including the EOG, were tested. A muscle activity score was automatically computed from manual scored REM sleep. This was accomplished by the use of subject-specific features combined with an outlier detector (one-class support vector machine classifier).

RESULTS

It was possible to correctly separate idiopathic REM sleep behavior disorder subjects from healthy control subjects and periodic limb movement subjects with an average validation area under the receiver operating characteristic curve of 0.993 when combining the anterior tibialis with submentalis. Additionally, it was possible to separate all subjects correctly when the final algorithm was tested on 12 unseen subjects.

CONCLUSIONS

Detection of idiopathic REM sleep behavior disorder can be regarded as an outlier problem. Additionally, the EOG channels can be used to detect REM sleep without atonia and is discriminative better than the traditional submentalis. Furthermore, based on data and methodology, arousals and periodic limb movements did only have a minor influence on the quantification of the muscle activity. Analysis of muscle activity during nonrapid eye movement sleep may improve the separation even further.

摘要

目的

特发性快速眼动(REM)睡眠行为障碍是帕金森病的一个强烈早期标志物,其特征是 REM 睡眠无弛缓及/或梦境行为。由于这些措施受到个体解释的影响,因此需要定量方法来建立客观标准。本研究提出了一种用于早期检测帕金森病的半自动算法。这是通过将肌肉活动视为异常值检测问题来区分正常 REM 睡眠和 REM 睡眠无弛缓来实现的。

方法

纳入 16 名健康对照者、16 名特发性 REM 睡眠行为障碍患者和 16 名周期性肢体运动障碍患者。测试了包括眼电图(EOG)在内的五个表面肌电图通道的不同组合。通过使用基于个体特征的自动评分 REM 睡眠和异常值检测器(单类支持向量机分类器),自动计算肌肉活动评分。

结果

当将胫骨前肌与颏下肌结合使用时,平均验证受试者工作特征曲线下面积为 0.993,可正确区分特发性 REM 睡眠行为障碍患者与健康对照组和周期性肢体运动障碍患者。当最终算法在 12 名未见受试者上进行测试时,也可以正确区分所有受试者。

结论

特发性 REM 睡眠行为障碍的检测可以视为异常值问题。此外,EOG 通道可用于检测 REM 睡眠无弛缓,并且比传统颏下肌更具判别力。此外,基于数据和方法,觉醒和周期性肢体运动对肌肉活动的量化仅有较小影响。分析非快速眼动睡眠期间的肌肉活动可能会进一步提高分离度。

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