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PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device

BACKGROUND: Actigraphs are wrist-worn devices that record tri-axial accelerometry data used clinically and in research studies. The expense of research-grade actigraphs, however, limit their widespread adoption, especially in clinical settings. Tri-axial accelerometer-based consumer wearable devices...

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Autores principales: Cheung, Joseph, Leary, Eileen B., Lu, Haoyang, Zeitzer, Jamie M., Mignot, Emmanuel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7498244/
https://www.ncbi.nlm.nih.gov/pubmed/32941498
http://dx.doi.org/10.1371/journal.pone.0238464
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author Cheung, Joseph
Leary, Eileen B.
Lu, Haoyang
Zeitzer, Jamie M.
Mignot, Emmanuel
author_facet Cheung, Joseph
Leary, Eileen B.
Lu, Haoyang
Zeitzer, Jamie M.
Mignot, Emmanuel
author_sort Cheung, Joseph
collection PubMed
description BACKGROUND: Actigraphs are wrist-worn devices that record tri-axial accelerometry data used clinically and in research studies. The expense of research-grade actigraphs, however, limit their widespread adoption, especially in clinical settings. Tri-axial accelerometer-based consumer wearable devices have gained worldwide popularity and hold potential for a cost-effective alternative. The lack of independent validation of minute-to-minute accelerometer data with polysomnographic data or even research-grade actigraphs, as well as access to raw data has hindered the utility and acceptance of consumer-grade actigraphs. METHODS: Sleep clinic patients wore a consumer-grade wearable (Huami Arc) on their non-dominant wrist while undergoing an overnight polysomnography (PSG) study. The sample was split into two, 20 in a training group and 21 in a testing group. In addition to the Arc, the testing group also wore a research-grade actigraph (Philips Actiwatch Spectrum). Sleep was scored for each 60-s epoch on both devices using the Cole-Kripke algorithm. RESULTS: Based on analysis of our training group, Arc and PSG data were aligned best when a threshold of 10 units was used to examine the Arc data. Using this threshold value in our testing group, the Arc has an accuracy of 90.3%±4.3%, sleep sensitivity (or wake specificity) of 95.5%±3.5%, and sleep specificity (wake sensitivity) of 55.6%±22.7%. Compared to PSG, Actiwatch has an accuracy of 88.7%±4.5%, sleep sensitivity of 92.6%±5.2%, and sleep specificity of 60.5%±20.2%, comparable to that observed in the Arc. CONCLUSIONS: An optimized sleep/wake threshold value was identified for a consumer-grade wearable Arc trained by PSG data. By applying this sleep/wake threshold value for Arc generated accelerometer data, when compared to PSG, sleep and wake estimates were adequate and comparable to those generated by a clinical-grade actigraph. As with other actigraphs, sleep specificity plateaus due to limitations in distinguishing wake without movement from sleep. Further studies are needed to evaluate the Arc’s ability to differentiate between sleep and wake using other sources of data available from the Arc, such as high resolution accelerometry and photoplethysmography.
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spelling pubmed-74982442020-09-24 PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device Cheung, Joseph Leary, Eileen B. Lu, Haoyang Zeitzer, Jamie M. Mignot, Emmanuel PLoS One Research Article BACKGROUND: Actigraphs are wrist-worn devices that record tri-axial accelerometry data used clinically and in research studies. The expense of research-grade actigraphs, however, limit their widespread adoption, especially in clinical settings. Tri-axial accelerometer-based consumer wearable devices have gained worldwide popularity and hold potential for a cost-effective alternative. The lack of independent validation of minute-to-minute accelerometer data with polysomnographic data or even research-grade actigraphs, as well as access to raw data has hindered the utility and acceptance of consumer-grade actigraphs. METHODS: Sleep clinic patients wore a consumer-grade wearable (Huami Arc) on their non-dominant wrist while undergoing an overnight polysomnography (PSG) study. The sample was split into two, 20 in a training group and 21 in a testing group. In addition to the Arc, the testing group also wore a research-grade actigraph (Philips Actiwatch Spectrum). Sleep was scored for each 60-s epoch on both devices using the Cole-Kripke algorithm. RESULTS: Based on analysis of our training group, Arc and PSG data were aligned best when a threshold of 10 units was used to examine the Arc data. Using this threshold value in our testing group, the Arc has an accuracy of 90.3%±4.3%, sleep sensitivity (or wake specificity) of 95.5%±3.5%, and sleep specificity (wake sensitivity) of 55.6%±22.7%. Compared to PSG, Actiwatch has an accuracy of 88.7%±4.5%, sleep sensitivity of 92.6%±5.2%, and sleep specificity of 60.5%±20.2%, comparable to that observed in the Arc. CONCLUSIONS: An optimized sleep/wake threshold value was identified for a consumer-grade wearable Arc trained by PSG data. By applying this sleep/wake threshold value for Arc generated accelerometer data, when compared to PSG, sleep and wake estimates were adequate and comparable to those generated by a clinical-grade actigraph. As with other actigraphs, sleep specificity plateaus due to limitations in distinguishing wake without movement from sleep. Further studies are needed to evaluate the Arc’s ability to differentiate between sleep and wake using other sources of data available from the Arc, such as high resolution accelerometry and photoplethysmography. Public Library of Science 2020-09-17 /pmc/articles/PMC7498244/ /pubmed/32941498 http://dx.doi.org/10.1371/journal.pone.0238464 Text en https://creativecommons.org/publicdomain/zero/1.0/ This is an open access article, free of all copyright, and may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose. The work is made available under the Creative Commons CC0 (https://creativecommons.org/publicdomain/zero/1.0/) public domain dedication.
spellingShingle Research Article
Cheung, Joseph
Leary, Eileen B.
Lu, Haoyang
Zeitzer, Jamie M.
Mignot, Emmanuel
PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
title PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
title_full PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
title_fullStr PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
title_full_unstemmed PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
title_short PSG Validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
title_sort psg validation of minute-to-minute scoring for sleep and wake periods in a consumer wearable device
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7498244/
https://www.ncbi.nlm.nih.gov/pubmed/32941498
http://dx.doi.org/10.1371/journal.pone.0238464
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