Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea

A reliable, accessible, and non-intrusive method for tracking respiratory and heart rate is important for improving monitoring and detection of sleep apnea. In this study, an algorithm based on motion analysis of infrared video recordings was validated in 50 adults referred for clinical overnight po...

Full description

Bibliographic Details
Main Authors: Kaiyin Zhu, Michael Li, Sina Akbarian, Maziar Hafezi, Azadeh Yadollahi, Babak Taati
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Journal of Translational Engineering in Health and Medicine
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8868225/
id doaj-b80193c97df4465da2deab25eb5bb44c
record_format Article
spelling doaj-b80193c97df4465da2deab25eb5bb44c2021-03-29T18:41:28ZengIEEEIEEE Journal of Translational Engineering in Health and Medicine2168-23722019-01-0171810.1109/JTEHM.2019.29461478868225Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep ApneaKaiyin Zhu0Michael Li1https://orcid.org/0000-0002-6244-8500Sina Akbarian2https://orcid.org/0000-0002-0024-3999Maziar Hafezi3https://orcid.org/0000-0002-0643-4112Azadeh Yadollahi4Babak Taati5https://orcid.org/0000-0001-9763-4293KITE, Toronto Rehabilitation Institute, University Health Network, Toronto, CanadaKITE, Toronto Rehabilitation Institute, University Health Network, Toronto, CanadaKITE, Toronto Rehabilitation Institute, University Health Network, Toronto, CanadaKITE, Toronto Rehabilitation Institute, University Health Network, Toronto, CanadaKITE, Toronto Rehabilitation Institute, University Health Network, Toronto, CanadaKITE, Toronto Rehabilitation Institute, University Health Network, Toronto, CanadaA reliable, accessible, and non-intrusive method for tracking respiratory and heart rate is important for improving monitoring and detection of sleep apnea. In this study, an algorithm based on motion analysis of infrared video recordings was validated in 50 adults referred for clinical overnight polysomnography (PSG). The algorithm tracks the displacements of selected feature points on each sleeping participant and extracts respiratory rate using principal component analysis and heart rate using independent component analysis. For respiratory rate estimation (mean ± standard deviation), 89.89 % ± 10.95 % of the overnight estimation was accurate within 1 breath per minute compared to the PSG-derived respiratory rate from the respiratory inductive plethysmography signal, with an average root mean square error (RMSE) of 2.10 ± 1.64 breaths per minute. For heart rate estimation, 77.97 % ± 18.91 % of the overnight estimation was within 5 beats per minute of the heart rate derived from the pulse oximetry signal from PSG, with mean RMSE of 7.47 ± 4.79 beats per minute. No significant difference in estimation of RMSE of either signal was found according to differences in body position, sleep stage, or amount of the body covered by blankets. This vision-based method may prove suitable for overnight, non-contact monitoring of respiratory rate. However, at present, heart rate monitoring is less reliable and will require further work to improve accuracy.https://ieeexplore.ieee.org/document/8868225/Cardiopulmonary ratenoncontactsleep disordered breathingcomputer vision
collection DOAJ
language English
format Article
sources DOAJ
author Kaiyin Zhu
Michael Li
Sina Akbarian
Maziar Hafezi
Azadeh Yadollahi
Babak Taati
spellingShingle Kaiyin Zhu
Michael Li
Sina Akbarian
Maziar Hafezi
Azadeh Yadollahi
Babak Taati
Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea
IEEE Journal of Translational Engineering in Health and Medicine
Cardiopulmonary rate
noncontact
sleep disordered breathing
computer vision
author_facet Kaiyin Zhu
Michael Li
Sina Akbarian
Maziar Hafezi
Azadeh Yadollahi
Babak Taati
author_sort Kaiyin Zhu
title Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea
title_short Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea
title_full Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea
title_fullStr Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea
title_full_unstemmed Vision-Based Heart and Respiratory Rate Monitoring During Sleep – A Validation Study for the Population at Risk of Sleep Apnea
title_sort vision-based heart and respiratory rate monitoring during sleep – a validation study for the population at risk of sleep apnea
publisher IEEE
series IEEE Journal of Translational Engineering in Health and Medicine
issn 2168-2372
publishDate 2019-01-01
description A reliable, accessible, and non-intrusive method for tracking respiratory and heart rate is important for improving monitoring and detection of sleep apnea. In this study, an algorithm based on motion analysis of infrared video recordings was validated in 50 adults referred for clinical overnight polysomnography (PSG). The algorithm tracks the displacements of selected feature points on each sleeping participant and extracts respiratory rate using principal component analysis and heart rate using independent component analysis. For respiratory rate estimation (mean ± standard deviation), 89.89 % ± 10.95 % of the overnight estimation was accurate within 1 breath per minute compared to the PSG-derived respiratory rate from the respiratory inductive plethysmography signal, with an average root mean square error (RMSE) of 2.10 ± 1.64 breaths per minute. For heart rate estimation, 77.97 % ± 18.91 % of the overnight estimation was within 5 beats per minute of the heart rate derived from the pulse oximetry signal from PSG, with mean RMSE of 7.47 ± 4.79 beats per minute. No significant difference in estimation of RMSE of either signal was found according to differences in body position, sleep stage, or amount of the body covered by blankets. This vision-based method may prove suitable for overnight, non-contact monitoring of respiratory rate. However, at present, heart rate monitoring is less reliable and will require further work to improve accuracy.
topic Cardiopulmonary rate
noncontact
sleep disordered breathing
computer vision
url https://ieeexplore.ieee.org/document/8868225/
work_keys_str_mv AT kaiyinzhu visionbasedheartandrespiratoryratemonitoringduringsleepx2013avalidationstudyforthepopulationatriskofsleepapnea
AT michaelli visionbasedheartandrespiratoryratemonitoringduringsleepx2013avalidationstudyforthepopulationatriskofsleepapnea
AT sinaakbarian visionbasedheartandrespiratoryratemonitoringduringsleepx2013avalidationstudyforthepopulationatriskofsleepapnea
AT maziarhafezi visionbasedheartandrespiratoryratemonitoringduringsleepx2013avalidationstudyforthepopulationatriskofsleepapnea
AT azadehyadollahi visionbasedheartandrespiratoryratemonitoringduringsleepx2013avalidationstudyforthepopulationatriskofsleepapnea
AT babaktaati visionbasedheartandrespiratoryratemonitoringduringsleepx2013avalidationstudyforthepopulationatriskofsleepapnea
_version_ 1724196632753340416