Obstructive sleep apnea (OSA) is a prevalent sleep-related breathing disorder, estimated to affect nearly one billion people worldwide. Patients with OSA commonly suffer from fatigue and daytime sleepiness, which not only affects their life quality, but also increases the risk for traffic accidents and workplace accidents. Polysomnography (PSG) is the golden standard for diagnosis of OSA, which records 16 physical signals and is carried out in the exclusive sleep laboratory. PSG not only requires specific hospital settings, but is also invasive and may interrupt with sleep, factors that make OSA diagnosis a costly and uncomfortable procedure. Consequently, 80%–90% of the OSA cases are estimated to be undiagnosed and untreated. Therefore, reliable alternative methods that use fewer sensors and provide better availability for OSA detection should be developed.
Abstract:
Obstructive sleep apnea (OSA) is one of the most commonsleep-related breathing disorders. Nearly 1 billion people worldwide suffer from it, causing serious health effects...Show MoreMetadata
Abstract:
Obstructive sleep apnea (OSA) is one of the most commonsleep-related breathing disorders. Nearly 1 billion people worldwide suffer from it, causing serious health effects and social burden. However, traditional monitoring systems often fall short in terms of cost and accessibility. In this article, we first propose a deep active learning model to detect OSA events from electrocardiogram (ECG). We then designed and developed a prototype of OSA monitoring system using an ECG sensor and smartphone, in which our OSA detection algorithm is implemented and validated. Experiments show that we achieve accuracy of 92.15% while using 40% of labeled data, significantly reducing the cost of labeling and maximizing the performance. According to detection results and health-related multimedia signals, we provide OSA risk level and medical advice to the users. We believe that the multimedia monitoring system can efficiently help diagnose OSA, which could lead to effective intervention strategies and better sleep care.
Published in: IEEE MultiMedia ( Volume: 29, Issue: 3, 01 July-Sept. 2022)
Funding Agency:
Citations are not available for this document.
Cites in Papers - |
Cites in Papers - IEEE (1)
Select All
1.
Usman Ahmed, Jerry Chun-Wei Lin, Gautam Srivastava, "Efficient Multimedia Frame-Skipping Architecture Using Deep Learning in Vehicular Networks", IEEE MultiMedia, vol.29, no.2, pp.66-73, 2022.
Cites in Papers - Other Publishers (4)
1.
Biswarup Ganguly, Debangshu Dey, "An improved time-frequency representation aided deep learning framework for automated diagnosis of sleep apnea from ECG signals", Measurement, pp.116170, 2024.
2.
Jorge Jimenez-Garcia, Maria Garcia, Gonzalo C. Gutierrez-Tobal, Leila Kheirandish-Gozal, Fernando Vaquerizo-Villar, Daniel Alvarez, Felix del Campo, David Gozal, Roberto Hornero, "An explainable deep-learning architecture for pediatric sleep apnea identification from overnight airflow and oximetry signals", Biomedical Signal Processing and Control, vol.87, pp.105490, 2024.
3.
Enming Zhang, Yuan Yao, Nan Zhou, Yu Chen, Haibo Zhang, Jinhong Guo, Fei Teng, "A fine-grained convolutional recurrent model for obstructive sleep apnea detection", International Journal of Machine Learning and Cybernetics, 2024.
4.
Miguel A. Espinosa , Pedro Ponce , Arturo Molina , Vicente Borja , Martha G. Torres , Mario Rojas , " Advancements in Home-Based Devices for Detecting Obstructive Sleep Apnea: A Comprehensive Study ", Sensors , vol. 23 , no. 23 , pp. 9512 , 2023 .