School of Biomedical Engineering, Sun Yat-sen University, Guangzhou 510275 People's Republic of China.
Physiol Meas. 2020 Jun 30;41(6):065008. doi: 10.1088/1361-6579/ab921d.
Sleep-stage scoring is important for sleep-quality evaluation and the diagnosis of related diseases. In this study, an automatic sleep-stage scoring method using photoplethysmographic (PPG) signals was proposed.
To construct the classification model, we extracted 14 time-domain features, 17 frequency-domain features, and 20 pulse rate variability (PRV) features along with four SpO features from PPG signals. An artificial neural network classifier was used to integrate the results of ten binary support vector machine classifiers and realise sleep-stage classification. Leave-one-subject-out validation was applied to evaluate our proposed model.
Thirty-one subjects were enrolled in the study, in which 21 subjects were with high sleep quality (sleep efficiencies ⩾85%). Our model achieved accuracies of 57% (κ = 0.39), 62% (κ = 0.41), and 78% (κ = 0.54) for the classification of five sleep stages (wake, N1, N2, N3, and rapid eye movement (REM) sleeps), four sleep stages (wake, light, deep, and REM sleeps) and three sleep stages (wake, non-rapid eye movement (NREM), and REM sleeps), respectively. For the remaining ten subjects with poor sleep quality, the results came to 55% (κ = 0.39), 62% (κ = 0.43), and 75% (κ = 0.52).
The satisfactory performance of our proposed model reveals the potential of PPG signals for sleep-stage scoring, which may contribute to automatic sleep monitoring in the home environment.
睡眠分期对于评估睡眠质量和诊断相关疾病非常重要。本研究提出了一种基于光电容积脉搏波(PPG)信号的自动睡眠分期方法。
为了构建分类模型,我们从 PPG 信号中提取了 14 个时域特征、17 个频域特征和 20 个脉搏率变异性(PRV)特征,以及 4 个 SpO2 特征。采用人工神经网络分类器整合十个二分类支持向量机分类器的结果,实现睡眠分期分类。采用留一受试者验证评估我们提出的模型。
共有 31 名受试者参与了研究,其中 21 名受试者的睡眠质量较高(睡眠效率 ⩾85%)。我们的模型在五期睡眠(觉醒、N1、N2、N3 和快速眼动(REM)睡眠)、四期睡眠(觉醒、浅睡、深睡和 REM 睡眠)和三期睡眠(觉醒、非快速眼动(NREM)和 REM 睡眠)的分类中分别达到了 57%(κ=0.39)、62%(κ=0.41)和 78%(κ=0.54)的准确率。对于另外 10 名睡眠质量较差的受试者,结果分别为 55%(κ=0.39)、62%(κ=0.43)和 75%(κ=0.52)。
我们提出的模型表现良好,表明 PPG 信号在睡眠分期中的应用具有潜力,这可能有助于在家庭环境中实现自动睡眠监测。