Deep learning enables sleep staging from photoplethysmogram for patients with suspected sleep apnea

被引:75
|
作者
Korkalainen, Henri [1 ,2 ]
Aakko, Juhani [3 ]
Duce, Brett [4 ,5 ]
Kainulainen, Samu [1 ,2 ]
Leino, Akseli [1 ,2 ]
Nikkonen, Sami [1 ,2 ]
Afara, Isaac O. [1 ,6 ]
Myllymaa, Sami [1 ,2 ]
Toyras, Juha [1 ,2 ,6 ]
Leppanen, Timo [1 ,2 ]
机构
[1] Univ Eastern Finland, Dept Appl Phys, Yliopistonranta 1,POB 1627, FI-70211 Kuopio, Finland
[2] Kuopio Univ Hosp, Diagnost Imaging Ctr, Kuopio, Finland
[3] CGI Suomi Oy, Helsinki, Finland
[4] Princess Alexandra Hosp, Sleep Disorders Ctr, Dept Resp & Sleep Med, Brisbane, Qld, Australia
[5] Queensland Univ Technol, Inst Hlth & Biomed Innovat, Brisbane, Qld, Australia
[6] Univ Queensland, Sch Informat Technol & Elect Engn, Brisbane, Qld, Australia
基金
芬兰科学院;
关键词
deep learning; photoplethysmogram; obstructive sleep apnea; recurrent neural networks; sleep staging; HEART-RATE-VARIABILITY; ACTIGRAPHY; AGREEMENT; PLETHYSMOGRAPHY; RELIABILITY; POPULATION; HOME;
D O I
10.1093/sleep/zsaa098
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Study Objectives: Accurate identification of sleep stages is essential in the diagnosis of sleep disorders (e.g. obstructive sleep apnea [OSA]) but relies on labor-intensive electroencephalogram (EEG)-based manual scoring. Furthermore, long-term assessment of sleep relies on actigraphy differentiating only between wake and sleep periods without identifying specific sleep stages and having low reliability in identifying wake periods after sleep onset. To address these issues, we aimed to develop an automatic method for identifying the sleep stages from the photoplethysmogram (PPG) signal obtained with a simple finger pulse oximeter. Methods: PPG signals from the diagnostic polysomnographies of susptected OSA patients (n = 894) were utilized to develop a combined convolutional and recurrent neural network. The deep learning model was trained individually for three-stage (wake/NREM/REM), four-stage (wake/N1+N2/N3/REM), and five-stage (wake/N1/N2/N3/REM) classification of sleep. Results: The three-stage model achieved an epoch-by-epoch accuracy of 80.1% with Cohen's kappa of 0.65. The four- and five-stage models achieved 68.5% (kappa = 0.54), and 64.1% (kappa = 0.51) accuracies, respectively. With the five-stage model, the total sleep time was underestimated with a mean bias error (SD) of of 7.5 (55.2) minutes. Conclusion: The PPG-based deep learning model enabled accurate estimation of sleep time and differentiation between sleep stages with a moderate agreement to manual EEG-based scoring. As PPG is already included in ambulatory polygraphic recordings, applying the PPG-based sleep staging could improve their diagnostic value by enabling simple, low-cost, and reliable monitoring of sleep and help assess otherwise overlooked conditions such as REM-related OSA.
引用
收藏
页数:10
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