China Astronaut Research and Training Center, Haidian District, Beijing, People's Republic of China.
Physiol Meas. 2022 Jul 25;43(7). doi: 10.1088/1361-6579/ac6bdb.
Sleep monitoring by polysomnography (PSG) severely degrades sleep quality. In order to reduce the load of sleep monitoring, an approach to automatic sleep stage classification without an electroencephalogram (EEG) was proposed.A total of 124 records from the public dataset ISRUC-Sleep incorporating American Academy of Sleep Medicine (AASM) standards were used: 10 records were from the healthy group while the others were from sleep disorder groups. The 124 records were collected from 116 subjects (eight subjects had two records each, the others had one record each) with ages ranging from 20 to 85 years. A total of 108 features were extracted from the two-channel electrooculograms (EOGs) and six features were extracted from the one-channel. A novel 'quasi-normalization' method was proposed and used for feature normalization. Then the random forest algorithm was used to classify five stages, including wakefulness, rapid eye movement sleep, N1 sleep, N2 sleep and N3 sleep.Using 114 normalized features from the combination of EOG (108 features) and EMG (6 features) data, Cohen's kappa coefficient was 0.749 and the accuracy was 80.8% by leave-one-out cross-validation. As a reference for AASM standards using a computer-assisted method, Cohen's kappa coefficient was 0.801 and the accuracy was 84.7% for the same dataset based on 438 normalized features from a combination of EEG (324 features), EOG (108 features) and EMG (6 features) data.A combination of EOG and EMG can reduce the load of sleep monitoring, and achieves comparable performance to the 'gold standard' signals of EEG, EOG and EMG for sleep stage classification.
多导睡眠图(PSG)监测严重降低了睡眠质量。为了降低睡眠监测的负荷,提出了一种无需脑电图(EEG)的自动睡眠阶段分类方法。
使用了来自包含美国睡眠医学学会(AASM)标准的公共数据集 ISRUC-Sleep 的 124 个记录:10 个记录来自健康组,其余来自睡眠障碍组。这 124 个记录来自 116 名受试者(8 名受试者每人有两个记录,其余每人一个记录),年龄在 20 至 85 岁之间。从双通道眼动图(EOG)中提取了 108 个特征,从单通道中提取了 6 个特征。提出并使用了一种新的“拟归一化”方法进行特征归一化。然后使用随机森林算法对五个阶段进行分类,包括清醒、快速眼动睡眠、N1 睡眠、N2 睡眠和 N3 睡眠。
使用 EOG(108 个特征)和 EMG(6 个特征)数据组合的 114 个归一化特征,Cohen's kappa 系数为 0.749,留一交叉验证的准确率为 80.8%。作为使用计算机辅助方法的 AASM 标准的参考,基于 EEG(324 个特征)、EOG(108 个特征)和 EMG(6 个特征)数据组合的 438 个归一化特征,相同数据集的 Cohen's kappa 系数为 0.801,准确率为 84.7%。
EOG 和 EMG 的组合可以降低睡眠监测的负荷,并在睡眠阶段分类方面达到与 EEG、EOG 和 EMG 的“金标准”信号相当的性能。