Chen Kun, Zhang Cheng, Ma Jing, Wang Guangfa, Zhang Jue
Academy for Advanced Interdisciplinary Studies, Peking University, Beijing, 100871, China.
Department of Respiratory and Critical Care Medicine, Peking University First Hospital, Beijing, 100034, China.
Sleep Breath. 2019 Dec;23(4):1159-1167. doi: 10.1007/s11325-019-01789-4. Epub 2019 Mar 12.
Portable sleep monitoring devices with less-attached sensors and high-accuracy sleep staging methods can expedite sleep disorder diagnosis. The aim of this study was to propose a single-channel EEG sleep staging model, SleepStageNet, which extracts sleep EEG features by multi-scale convolutional neural networks (CNN) and then infers the type of sleep stages by capturing the contextual information between adjacent epochs using recurrent neural networks (RNN) and conditional random field (CRF).
To verify the feasibility of our model, two datasets, one composed by two different single-channel EEGs (Fpz-Cz and Pz-Oz) on 20 healthy people and one composed by a single-channel EEG (F4-M1) on 104 obstructive sleep apnea (OSA) patients with different severities, were examined. The corresponding sleep stages were scored as four states (wake, REM, light sleep, and deep sleep). The accuracy measures were obtained from epoch-by-epoch comparison between the model and PSG scorer, and the agreement between them was quantified with Cohen's kappa (ҡ).
Our model achieved superior performance with average accuracy (Fpz-Cz, 0.88; Pz-Oz, 0.85) and ҡ (Fpz-Cz, 0.82; Pz-Oz, 0.77) on the healthy people. Furthermore, we validated this model on the OSA patients with average accuracy (F4-M1, 0.80) and ҡ (F4-M1, 0.67). Our model significantly improved the accuracy and ҡ compared to previous methods.
The proposed SleepStageNet has proved feasible for assessment of sleep architecture among OSA patients using single-channel EEG. We suggest that this technological advancement could augment the current use of home sleep apnea testing.
带有较少附着传感器的便携式睡眠监测设备以及高精度的睡眠分期方法能够加快睡眠障碍的诊断。本研究的目的是提出一种单通道脑电图睡眠分期模型SleepStageNet,该模型通过多尺度卷积神经网络(CNN)提取睡眠脑电图特征,然后使用循环神经网络(RNN)和条件随机场(CRF)捕捉相邻时段之间的上下文信息,进而推断睡眠阶段的类型。
为验证我们模型的可行性,对两个数据集进行了检验,一个数据集由20名健康人的两种不同单通道脑电图(Fpz-Cz和Pz-Oz)组成,另一个数据集由104名不同严重程度的阻塞性睡眠呼吸暂停(OSA)患者的单通道脑电图(F4-M1)组成。相应的睡眠阶段被分为四种状态(清醒、快速眼动睡眠、浅睡眠和深睡眠)。通过模型与多导睡眠图评分者之间逐时段的比较获得准确性指标,并使用科恩kappa系数(ҡ)对两者之间的一致性进行量化。
我们的模型在健康人数据集上取得了优异的性能,平均准确率(Fpz-Cz为0.88;Pz-Oz为0.85)和ҡ(Fpz-Cz为0.82;Pz-Oz为0.77)。此外,我们在OSA患者数据集上验证了该模型,平均准确率(F4-M1为0.80)和ҡ(F4-M1为0.67)。与先前的方法相比,我们的模型显著提高了准确率和ҡ。
所提出的SleepStageNet已被证明可用于使用单通道脑电图评估OSA患者的睡眠结构。我们认为这一技术进步可以扩大当前家庭睡眠呼吸暂停测试的应用。