 Obstructive Sleep Apnea and Hypopnea Syndrome (OSAHS) is a widespread non-communicable disease in which the vast majority of cases remains undetected. To solve this problem, we introduced APNIWAVE: An efficient radar-based sleep-apnea screening device for use at home. APNIWAVE is a device that includes an ultra-wideband radar
Obstructive Sleep Apnea and Hypopnea Syndrome (OSAHS) is a widespread non-communicable disease in which the vast majority of cases remains undetected. To solve this problem, we introduced APNIWAVE: An efficient radar-based sleep-apnea screening device for use at home. APNIWAVE is a device that includes an ultra-wideband radar  sensor, an edge computing module, and Machine Learning algorithms to detect OSAHS by observing the breathing pattern of the screened patients. The developed solution is based on low-cost components, it is very convenient to use and can be particularly used for screening patients at their home, adding in this way zero additional burden to the overloaded third-grade units worldwide. The proposed solution was applied to 11 patients with OSAHS. The data were collected during their entire sleep interval (ranging between 5.5 – 8 hours) and used for the training of five Machine Learning algorithms. The highest classification accuracy was 88% and was achieved using random forest, validating the effectiveness of the developed framework.
sensor, an edge computing module, and Machine Learning algorithms to detect OSAHS by observing the breathing pattern of the screened patients. The developed solution is based on low-cost components, it is very convenient to use and can be particularly used for screening patients at their home, adding in this way zero additional burden to the overloaded third-grade units worldwide. The proposed solution was applied to 11 patients with OSAHS. The data were collected during their entire sleep interval (ranging between 5.5 – 8 hours) and used for the training of five Machine Learning algorithms. The highest classification accuracy was 88% and was achieved using random forest, validating the effectiveness of the developed framework.
Project Τitle: APNIWAVE: An Efficient Radar-Based Sleep-Apnea Screening Device for Use at Home
Project Duration: 19/04/2022 – 31/12/2022
Project Framework & Funding: EIT Health RIS
Scientific coordinator (UNIWA): Stelios MITILINEOS, Professor, EEE Department, UNIWA
Consortium – Partners:
Eight Bells Ltd. Greek Branch
Vascular Research S.A.
Research Publications / Results / Patents:
[1] Uzunidis, D., Liapis, D., Kasnesis, P., Ferles, C., Margaritis, E., Patrikakis, C. Z., Tzanis, G., and Mitilineos, S. A., “APNIWAVE: An efficient radar-based sleep-apnea screening device for use at home”, Proceedings of the 12th International Conference on Modern Circuits and Systems Technologies (MOCAST 2023), pp. 1-5, June 28-30, 2023, Athens, GREECE; DOI: 10.1109/MOCAST57943.2023.10176741.
 
		 
				
