Deep learning for automated sleep staging using instantaneous heart rate

Abstract Clinical sleep evaluations currently require multimodal data collection and manual review by human experts, making them expensive and unsuitable for longer term studies. Sleep staging using cardiac rhythm is an active area of research because it can be measured much more easily using a wide...

Full description

Bibliographic Details
Main Authors: Niranjan Sridhar, Ali Shoeb, Philip Stephens, Alaa Kharbouch, David Ben Shimol, Joshua Burkart, Atiyeh Ghoreyshi, Lance Myers
Format: Article
Language:English
Published: Nature Publishing Group 2020-08-01
Series:npj Digital Medicine
Online Access:https://doi.org/10.1038/s41746-020-0291-x
id doaj-c084e2967b6a460f92c88b5f74ed96b3
record_format Article
spelling doaj-c084e2967b6a460f92c88b5f74ed96b32021-08-22T11:10:11ZengNature Publishing Groupnpj Digital Medicine2398-63522020-08-013111010.1038/s41746-020-0291-xDeep learning for automated sleep staging using instantaneous heart rateNiranjan Sridhar0Ali Shoeb1Philip Stephens2Alaa Kharbouch3David Ben Shimol4Joshua Burkart5Atiyeh Ghoreyshi6Lance Myers7Verily Life SciencesVerily Life SciencesVerily Life SciencesVerily Life SciencesVerily Life SciencesVerily Life SciencesVerily Life SciencesVerily Life SciencesAbstract Clinical sleep evaluations currently require multimodal data collection and manual review by human experts, making them expensive and unsuitable for longer term studies. Sleep staging using cardiac rhythm is an active area of research because it can be measured much more easily using a wide variety of both medical and consumer-grade devices. In this study, we applied deep learning methods to create an algorithm for automated sleep stage scoring using the instantaneous heart rate (IHR) time series extracted from the electrocardiogram (ECG). We trained and validated an algorithm on over 10,000 nights of data from the Sleep Heart Health Study (SHHS) and Multi-Ethnic Study of Atherosclerosis (MESA). The algorithm has an overall performance of 0.77 accuracy and 0.66 kappa against the reference stages on a held-out portion of the SHHS dataset for classifying every 30 s of sleep into four classes: wake, light sleep, deep sleep, and rapid eye movement (REM). Moreover, we demonstrate that the algorithm generalizes well to an independent dataset of 993 subjects labeled by American Academy of Sleep Medicine (AASM) licensed clinical staff at Massachusetts General Hospital that was not used for training or validation. Finally, we demonstrate that the stages predicted by our algorithm can reproduce previous clinical studies correlating sleep stages with comorbidities such as sleep apnea and hypertension as well as demographics such as age and gender.https://doi.org/10.1038/s41746-020-0291-x
collection DOAJ
language English
format Article
sources DOAJ
author Niranjan Sridhar
Ali Shoeb
Philip Stephens
Alaa Kharbouch
David Ben Shimol
Joshua Burkart
Atiyeh Ghoreyshi
Lance Myers
spellingShingle Niranjan Sridhar
Ali Shoeb
Philip Stephens
Alaa Kharbouch
David Ben Shimol
Joshua Burkart
Atiyeh Ghoreyshi
Lance Myers
Deep learning for automated sleep staging using instantaneous heart rate
npj Digital Medicine
author_facet Niranjan Sridhar
Ali Shoeb
Philip Stephens
Alaa Kharbouch
David Ben Shimol
Joshua Burkart
Atiyeh Ghoreyshi
Lance Myers
author_sort Niranjan Sridhar
title Deep learning for automated sleep staging using instantaneous heart rate
title_short Deep learning for automated sleep staging using instantaneous heart rate
title_full Deep learning for automated sleep staging using instantaneous heart rate
title_fullStr Deep learning for automated sleep staging using instantaneous heart rate
title_full_unstemmed Deep learning for automated sleep staging using instantaneous heart rate
title_sort deep learning for automated sleep staging using instantaneous heart rate
publisher Nature Publishing Group
series npj Digital Medicine
issn 2398-6352
publishDate 2020-08-01
description Abstract Clinical sleep evaluations currently require multimodal data collection and manual review by human experts, making them expensive and unsuitable for longer term studies. Sleep staging using cardiac rhythm is an active area of research because it can be measured much more easily using a wide variety of both medical and consumer-grade devices. In this study, we applied deep learning methods to create an algorithm for automated sleep stage scoring using the instantaneous heart rate (IHR) time series extracted from the electrocardiogram (ECG). We trained and validated an algorithm on over 10,000 nights of data from the Sleep Heart Health Study (SHHS) and Multi-Ethnic Study of Atherosclerosis (MESA). The algorithm has an overall performance of 0.77 accuracy and 0.66 kappa against the reference stages on a held-out portion of the SHHS dataset for classifying every 30 s of sleep into four classes: wake, light sleep, deep sleep, and rapid eye movement (REM). Moreover, we demonstrate that the algorithm generalizes well to an independent dataset of 993 subjects labeled by American Academy of Sleep Medicine (AASM) licensed clinical staff at Massachusetts General Hospital that was not used for training or validation. Finally, we demonstrate that the stages predicted by our algorithm can reproduce previous clinical studies correlating sleep stages with comorbidities such as sleep apnea and hypertension as well as demographics such as age and gender.
url https://doi.org/10.1038/s41746-020-0291-x
work_keys_str_mv AT niranjansridhar deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT alishoeb deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT philipstephens deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT alaakharbouch deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT davidbenshimol deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT joshuaburkart deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT atiyehghoreyshi deeplearningforautomatedsleepstagingusinginstantaneousheartrate
AT lancemyers deeplearningforautomatedsleepstagingusinginstantaneousheartrate
_version_ 1721200123999944704