Deep learning-based automated diagnosis of obstructive sleep apnea and sleep stage classification in children using millimeter-wave radar and pulse oximeter.
Wei Wang, Ruobing Song, Yunxiao Wu, Li Zheng, Wenyu Zhang, Zhaoxi Chen, Gang Li, Zhifei Xu
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引用次数: 0
Abstract
Study objectives: Due to the high cost, complexity, and workload of polysomnography, a radar-based sleep monitoring device, QSA600, has been developed as a more simplified alternative for children. This study evaluates its agreement with polysomnography for obstructive sleep apnea diagnosis and sleep staging.
Methods: This diagnostic accuracy study included 281 children (1-18 years) who underwent simultaneous polysomnography and QSA600 monitoring at Beijing Children's Hospital from September-November 2023. QSA600 recordings were automatically analyzed using a deep learning model, while polysomnography data were manually scored.
Results: The obstructive apnea-hypopnea index (OAHI) obtained from QSA600 and polysomnography demonstrates a high level of agreement with an intraclass correlation coefficient of 0.945 (95% CI: 0.93-0.96). Bland-Altman analysis indicated that the mean difference of obstructive apnea-hypopnea index between QSA600 and polysomnography was -0.10 events/h (95% CI: -11.15 to 10.96). The deep learning model evaluated through cross-validation showed good sensitivity (81.8%, 84.3%, and 89.7%) and specificity (90.5%, 95.3%, and 97.1%) values for diagnosing children with OAHI >1, OAHI >5, and OAHI >10. The area under the receiver operating characteristic curve was 0.923, 0.955, and 0.988, respectively. For sleep stage classification, the model achieved Kappa coefficients of 0.854, 0.781, and 0.734, with corresponding overall accuracies of 95.0%, 84.8%, and 79.7% for Wake-Sleep classification, Wake-REM-Light-Deep classification, and Wake-REM-N1-N2-N3 classification, respectively.
Conclusions: QSA600 has demonstrated high agreement with polysomnography in diagnosing obstructive sleep apnea and performing sleep staging in children. The device is portable, low-burden, and suitable for follow-up and long-term pediatric sleep assessment.
期刊介绍:
Sleep Health Journal of the National Sleep Foundation is a multidisciplinary journal that explores sleep''s role in population health and elucidates the social science perspective on sleep and health. Aligned with the National Sleep Foundation''s global authoritative, evidence-based voice for sleep health, the journal serves as the foremost publication for manuscripts that advance the sleep health of all members of society.The scope of the journal extends across diverse sleep-related fields, including anthropology, education, health services research, human development, international health, law, mental health, nursing, nutrition, psychology, public health, public policy, fatigue management, transportation, social work, and sociology. The journal welcomes original research articles, review articles, brief reports, special articles, letters to the editor, editorials, and commentaries.