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一种数据驱动系统,用于识别快速眼动睡眠行为障碍并预测其在帕金森病前驱期的进展。

A data-driven system to identify REM sleep behavior disorder and to predict its progression from the prodromal stage in Parkinson's disease.

作者信息

Cesari Matteo, Christensen Julie A E, Muntean Maria-Lucia, Mollenhauer Brit, Sixel-Döring Friederike, Sorensen Helge B D, Trenkwalder Claudia, Jennum Poul

机构信息

Department of Health Technology, Technical University of Denmark, Kgs. Lyngby, Denmark.

Department of Health Technology, Technical University of Denmark, Kgs. Lyngby, Denmark; Danish Center for Sleep Medicine, Department of Clinical Neurophysiology, Rigshospitalet, Glostrup, Denmark.

出版信息

Sleep Med. 2021 Jan;77:238-248. doi: 10.1016/j.sleep.2020.04.010. Epub 2020 Apr 23.

Abstract

OBJECTIVES

To investigate electroencephalographic (EEG), electrooculographic (EOG) and micro-sleep abnormalities associated with rapid eye movement (REM) sleep behavior disorder (RBD) and REM behavioral events (RBEs) in Parkinson's disease (PD).

METHODS

We developed an automated system using only EEG and EOG signals. First, automatic macro- (30-s epochs) and micro-sleep (5-s mini-epochs) staging was performed. Features describing micro-sleep structure, EEG spectral content, EEG coherence, EEG complexity, and EOG energy were derived. All features were input to an ensemble of random forests, giving as outputs the probabilities of having RBD or not (P (RBD) and P (nonRBD), respectively). A patient was classified as having RBD if P (RBD)≥P (nonRBD). The system was applied to 107 de novo PD patients: 54 had normal REM sleep (PDnonRBD), 26 had RBD (PD + RBD), and 27 had at least two RBEs without meeting electromyographic RBD cut-off (PD + RBE). Sleep diagnoses were made with video-polysomnography (v-PSG).

RESULTS

Considering PDnonRBD and PD + RBD patients only, the system identified RBD with accuracy, sensitivity, and specificity over 80%. Among the features, micro-sleep instability had the highest importance for RBD identification. Considering PD + RBE patients, the ones who developed definite RBD after two years had significantly higher values of P (RBD) at baseline compared to the ones who did not. The former were distinguished from the latter with sensitivity and specificity over 75%.

CONCLUSIONS

Our method identifies RBD in PD patients using only EEG and EOG signals. Micro-sleep instability could be a biomarker for RBD and for proximity of conversion from RBEs, as prodromal RBD, to definite RBD in PD patients.

摘要

目的

研究帕金森病(PD)中与快速眼动(REM)睡眠行为障碍(RBD)及REM行为事件(RBEs)相关的脑电图(EEG)、眼电图(EOG)及微睡眠异常。

方法

我们开发了一种仅使用EEG和EOG信号的自动化系统。首先,进行自动的宏观睡眠(30秒时段)和微睡眠(5秒小时段)分期。得出描述微睡眠结构、EEG频谱内容、EEG相干性、EEG复杂性及EOG能量的特征。所有特征输入随机森林集成模型,输出有或无RBD的概率(分别为P(RBD)和P(非RBD))。若P(RBD)≥P(非RBD),则将患者分类为患有RBD。该系统应用于107例初发PD患者:54例REM睡眠正常(PD非RBD),26例患有RBD(PD + RBD),27例有至少两次RBEs但未达到肌电图RBD诊断标准(PD + RBE)。通过视频多导睡眠图(v - PSG)进行睡眠诊断。

结果

仅考虑PD非RBD和PD + RBD患者时,该系统识别RBD的准确性、敏感性和特异性超过80%。在这些特征中,微睡眠不稳定性对RBD识别的重要性最高。考虑PD + RBE患者,两年后发展为明确RBD的患者在基线时的P(RBD)值显著高于未发展为明确RBD的患者。前者与后者的区分敏感性和特异性超过75%。

结论

我们的方法仅使用EEG和EOG信号即可识别PD患者中的RBD。微睡眠不稳定性可能是RBD以及PD患者中从RBEs(作为前驱性RBD)转变为明确RBD的接近程度的生物标志物。

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