Multispectral Video Fusion for Non-Contact Monitoring of Respiratory Rate and Apnea
Overview
Biophysics
Affiliations
Continuous monitoring of respiratory activity is desirable in many clinical applications to detect respiratory events. Non-contact monitoring of respiration can be achieved with near- and far-infrared spectrum cameras. However, current technologies are not sufficiently robust to be used in clinical applications. For example, they fail to estimate an accurate respiratory rate (RR) during apnea. We present a novel algorithm based on multispectral data fusion that aims at estimating RR also during apnea. The algorithm independently addresses the RR estimation and apnea detection tasks. Respiratory information is extracted from multiple sources and fed into an RR estimator and an apnea detector whose results are fused into a final respiratory activity estimation. We evaluated the system retrospectively using data from 30 healthy adults who performed diverse controlled breathing tasks while lying supine in a dark room and reproduced central and obstructive apneic events. Combining multiple respiratory information from multispectral cameras improved the root mean square error (RMSE) accuracy of the RR estimation from up to 4.64 monospectral data down to 1.60 breaths/min. The median F1 scores for classifying obstructive (0.75 to 0.86) and central apnea (0.75 to 0.93) also improved. Furthermore, the independent consideration of apnea detection led to a more robust system (RMSE of 4.44 vs. 7.96 breaths/min). Our findings may represent a step towards the use of cameras for vital sign monitoring in medical applications.
Thermal Cameras for Continuous and Contactless Respiration Monitoring.
Alves R, van Meulen F, Overeem S, Zinger S, Stuijk S Sensors (Basel). 2025; 24(24.
PMID: 39771853 PMC: 11679429. DOI: 10.3390/s24248118.
Video-Based Respiratory Rate Estimation for Infants in the NICU.
Ahani S, Niknafs N, Lavoie P, Holsti L, Dumont G IEEE J Transl Eng Health Med. 2024; 12:684-696.
PMID: 39559825 PMC: 11573411. DOI: 10.1109/JTEHM.2024.3488523.
A Review on Recent Advancements of Biomedical Radar for Clinical Applications.
Dong S, Wen L, Ye Y, Zhang Z, Wang Y, Liu Z IEEE Open J Eng Med Biol. 2024; 5:707-724.
PMID: 39184961 PMC: 11342929. DOI: 10.1109/OJEMB.2024.3401105.
Challenges and prospects of visual contactless physiological monitoring in clinical study.
Huang B, Hu S, Liu Z, Lin C, Su J, Zhao C NPJ Digit Med. 2023; 6(1):231.
PMID: 38097771 PMC: 10721846. DOI: 10.1038/s41746-023-00973-x.
Geriatric Care Management System Powered by the IoT and Computer Vision Techniques.
Paulauskaite-Taraseviciene A, Siaulys J, Sutiene K, Petravicius T, Navickas S, Oliandra M Healthcare (Basel). 2023; 11(8).
PMID: 37107987 PMC: 10138364. DOI: 10.3390/healthcare11081152.