Kempfner J, Sorensen G L, Sorensen H B D, Jennum P
Department of Electrical Engineering, Technical University of Denmark, Kgs Lyngby, Denmark.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:6063-6. doi: 10.1109/IEMBS.2011.6091498.
Rapid eye movement sleep Behavior Disorder (RBD) is a strong early marker of later development of Parkinsonism. Currently there are no objective methods to identify and discriminate abnormal from normal motor activity during REM sleep. Therefore, a REM sleep detection without the use of chin electromyography (EMG) is useful. This is addressed by analyzing the classification performance when implementing two automatic REM sleep detectors. The first detector uses the electroencephalography (EEG), electrooculography (EOG) and EMG to detect REM sleep, while the second detector only uses the EEG and EOG.
Ten normal controls and ten age matched patients diagnosed with RBD were enrolled. All subjects underwent one polysomnographic (PSG) recording, which was manual scored according to the new sleep-scoring standard from the American Academy of Sleep Medicine. Based on the manual scoring, an automatic computerized REM detection algorithm has been implemented, using wavelet packet combined with artificial neural network.
When using the EEG, EOG and EMG modalities, it was possible to correctly classify REM sleep with an average Area Under Curve (AUC) equal to 0.90 ± 0.03 for normal subjects and AUC = 0.81 ± 0.05 for RBD subjects. The performance difference between the two groups was significant (p < 0.01). No significant drop (p > 0.05) in performance was observed when only using the EEG and EOG in neither of the groups.
The overall result indicates that the EMG does not play an important role when classifying REM sleep.
快速眼动睡眠行为障碍(RBD)是帕金森病后期发展的一个强有力的早期指标。目前尚无客观方法来识别和区分快速眼动睡眠期间的异常与正常运动活动。因此,不使用下颌肌电图(EMG)进行快速眼动睡眠检测是有用的。通过分析两种自动快速眼动睡眠检测器的分类性能来解决这个问题。第一种检测器使用脑电图(EEG)、眼电图(EOG)和肌电图来检测快速眼动睡眠,而第二种检测器仅使用脑电图和眼电图。
招募了10名正常对照者和10名年龄匹配的被诊断为RBD的患者。所有受试者均进行了一次多导睡眠图(PSG)记录,并根据美国睡眠医学学会的新睡眠评分标准进行人工评分。基于人工评分,使用小波包结合人工神经网络实现了一种自动计算机化的快速眼动检测算法。
当使用脑电图、眼电图和肌电图模式时,正常受试者快速眼动睡眠的正确分类平均曲线下面积(AUC)等于0.90±0.03,RBD受试者的AUC = 0.81±0.05。两组之间的性能差异显著(p < 0.01)。在两组中,仅使用脑电图和眼电图时,均未观察到性能有显著下降(p > 0.05)。
总体结果表明,在分类快速眼动睡眠时,肌电图并不起重要作用。