A novel deep learning model for obstructive sleep apnea diagnosis: hybrid CNN-Transformer approach for radar-based detection of apnea-hypopnea events

被引:6
作者
Choi, Jae Won [1 ,2 ]
Koo, Dae Lim [2 ,3 ]
Kim, Dong Hyun [2 ,4 ]
Nam, Hyunwoo [2 ,3 ]
Lee, Ji Hyun [2 ,4 ]
Hong, Seung-No [2 ,5 ]
Kim, Baekhyun [2 ,6 ]
机构
[1] Seoul Natl Univ Hosp, Dept Radiol, Seoul, South Korea
[2] Seoul Natl Univ, Coll Med, Seoul, South Korea
[3] Seoul Natl Univ, Boramae Med Ctr, Dept Neurol, Seoul Metropolitan Govt, Seoul, South Korea
[4] Seoul Natl Univ, Boramae Med Ctr, Dept Radiol, Seoul Metropolitan Govt, Seoul, South Korea
[5] Seoul Natl Univ, Boramae Med Ctr, Dept Otorhinolaryngol Head & Neck Surg, Seoul Metropolitan Govt, Seoul, South Korea
[6] AU Inc, Daejeon, South Korea
关键词
OSA; machine learning; sleep-disordered breathing; radar; deep learning;
D O I
10.1093/sleep/zsae184
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Study Objectives The demand for cost-effective and accessible alternatives to polysomnography (PSG), the conventional diagnostic method for obstructive sleep apnea (OSA), has surged. In this study, we have developed and validated a deep learning model for detecting apnea-hypopnea events using radar data.Methods We conducted a single-center prospective cohort study, dividing participants with suspected sleep-disordered breathing into development and temporally independent test sets. Utilizing a hybrid CNN-Transformer architecture, we performed fivefold cross-validation on the development set to develop and subsequently validate the model. Evaluation metrics included sensitivity for event detection, mean absolute error (MAE), intraclass correlation coefficient (ICC), and Pearson correlation coefficient (r) for apnea-hypopnea index (AHI) estimation. Linearly weighted kappa statistics (kappa) assessed OSA severity.Results The development set comprised 54 participants (July 2021-May 2022), while the test set included 35 participants (June 2022-June 2023). In the test set, our model achieved an event detection sensitivity of 67.2% (95% CI = 65.8% to 68.5%) and demonstrated a MAE of 7.54 (95% CI = 5.36 to 9.72), indicating good agreement (ICC = 0.889 [95% CI = 0.792 to 0.942]) and a strong correlation (r = 0.892 [95% CI = 0.795 to 0.945]) with the ground truth for AHI estimation. Furthermore, OSA severity estimation showed substantial agreement (kappa = 0.780 [95% CI = 0.658 to 0.903]).Conclusions Our study highlights radar sensors and advanced AI models' potential to improve OSA diagnosis, paving the path for future radar-based diagnostic models in sleep medicine research. Graphical Abstract
引用
收藏
页数:11
相关论文
共 40 条
[1]   Monitoring of Cardiorespiratory Signal: Principles of Remote Measurements and Review of Methods [J].
Al-Naji, Ali ;
Gibson, Kim ;
Lee, Sang-Heon ;
Chahl, Javaan .
IEEE ACCESS, 2017, 5 :15776-15790
[2]   Rules for Scoring Respiratory Events in Sleep: Update of the 2007 AASM Manual for the Scoring of Sleep and Associated Events [J].
Berry, Richard B. ;
Budhiraja, Rohit ;
Gottlieb, Daniel J. ;
Gozal, David ;
Iber, Conrad ;
Kapur, Vishesh K. ;
Marcus, Carole L. ;
Mehra, Reena ;
Parthasarathy, Sairam ;
Quan, Stuart F. ;
Redline, Susan ;
Strohl, Kingman P. ;
Ward, Sally L. Davidson ;
Tangredi, Michelle M. .
JOURNAL OF CLINICAL SLEEP MEDICINE, 2012, 8 (05) :597-619
[3]  
Buysse D J, 1989, Psychiatry Res, V28, P193
[4]   The reliability and validity of the Korean version of the Epworth sleepiness scale [J].
Cho, Yong Won ;
Lee, Joo Hwa ;
Son, Hyo Kyung ;
Lee, Seung Hoon ;
Shin, Chol ;
Johns, Murray W. .
SLEEP AND BREATHING, 2011, 15 (03) :377-384
[5]   Automated Detection of Sleep Apnea-Hypopnea Events Based on 60 GHz Frequency-Modulated Continuous-Wave Radar Using Convolutional Recurrent Neural Networks: A Preliminary Report of a Prospective Cohort Study [J].
Choi, Jae Won ;
Kim, Dong Hyun ;
Koo, Dae Lim ;
Park, Yangmi ;
Nam, Hyunwoo ;
Lee, Ji Hyun ;
Kim, Hyo Jin ;
Hong, Seung-No ;
Jang, Gwangsoo ;
Lim, Sungmook ;
Kim, Baekhyun .
SENSORS, 2022, 22 (19)
[6]   Paediatric sleep apnea event prediction using nasal air pressure and machine learning [J].
Crowson, Matthew G. G. ;
Gipson, Kevin S. S. ;
Kadosh, Orna Katz ;
Hartnick, Elizabeth ;
Grealish, Ellen ;
Keamy, Donald G. G. ;
Kinane, Thomas Bernard ;
Hartnick, Christopher J. J. .
JOURNAL OF SLEEP RESEARCH, 2023, 32 (04)
[7]   The Impact of Body Posture and Sleep Stages on Sleep Apnea Severity in Adults [J].
Eiseman, Nathaniel A. ;
Westover, M. Brandon ;
Ellenbogen, Jeffrey M. ;
Bianchi, Matt T. .
JOURNAL OF CLINICAL SLEEP MEDICINE, 2012, 8 (06) :655-+
[8]   Deep learning approaches for automatic detection of sleep apnea events from an electrocardiogram [J].
Erdenebayar, Urtnasan ;
Kim, Yoon Ji ;
Park, Jong-Uk ;
Joo, Eun Yeon ;
Lee, Kyoung-Joung .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2019, 180
[9]   Automated sleep scoring: A review of the latest approaches [J].
Fiorillo, Luigi ;
Puiatti, Alessandro ;
Papandrea, Michela ;
Ratti, Pietro-Luca ;
Favaro, Paolo ;
Roth, Corinne ;
Bargiotas, Panagiotis ;
Bassetti, Claudio L. ;
Faraci, Francesca D. .
SLEEP MEDICINE REVIEWS, 2019, 48
[10]   The Development of a Dual-Radar System with Automatic Hypopnea Threshold Optimization for Contact-Free Sleep Apnea-Hypopnea Syndrome Screening [J].
Gotoh, Shinji ;
Matsui, Takemi ;
Naka, Yoshikazu ;
Kurita, Osamu .
JOURNAL OF SENSORS, 2018, 2018