Cargando…

Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study

BACKGROUND: Consumer sleep trackers (CSTs) have gained significant popularity because they enable individuals to conveniently monitor and analyze their sleep. However, limited studies have comprehensively validated the performance of widely used CSTs. Our study therefore investigated popular CSTs ba...

Descripción completa

Detalles Bibliográficos
Autores principales: Lee, Taeyoung, Cho, Younghoon, Cha, Kwang Su, Jung, Jinhwan, Cho, Jungim, Kim, Hyunggug, Kim, Daewoo, Hong, Joonki, Lee, Dongheon, Keum, Moonsik, Kushida, Clete A, Yoon, In-Young, Kim, Jeong-Whun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10654909/
https://www.ncbi.nlm.nih.gov/pubmed/37917155
http://dx.doi.org/10.2196/50983
_version_ 1785136713454059520
author Lee, Taeyoung
Cho, Younghoon
Cha, Kwang Su
Jung, Jinhwan
Cho, Jungim
Kim, Hyunggug
Kim, Daewoo
Hong, Joonki
Lee, Dongheon
Keum, Moonsik
Kushida, Clete A
Yoon, In-Young
Kim, Jeong-Whun
author_facet Lee, Taeyoung
Cho, Younghoon
Cha, Kwang Su
Jung, Jinhwan
Cho, Jungim
Kim, Hyunggug
Kim, Daewoo
Hong, Joonki
Lee, Dongheon
Keum, Moonsik
Kushida, Clete A
Yoon, In-Young
Kim, Jeong-Whun
author_sort Lee, Taeyoung
collection PubMed
description BACKGROUND: Consumer sleep trackers (CSTs) have gained significant popularity because they enable individuals to conveniently monitor and analyze their sleep. However, limited studies have comprehensively validated the performance of widely used CSTs. Our study therefore investigated popular CSTs based on various biosignals and algorithms by assessing the agreement with polysomnography. OBJECTIVE: This study aimed to validate the accuracy of various types of CSTs through a comparison with in-lab polysomnography. Additionally, by including widely used CSTs and conducting a multicenter study with a large sample size, this study seeks to provide comprehensive insights into the performance and applicability of these CSTs for sleep monitoring in a hospital environment. METHODS: The study analyzed 11 commercially available CSTs, including 5 wearables (Google Pixel Watch, Galaxy Watch 5, Fitbit Sense 2, Apple Watch 8, and Oura Ring 3), 3 nearables (Withings Sleep Tracking Mat, Google Nest Hub 2, and Amazon Halo Rise), and 3 airables (SleepRoutine, SleepScore, and Pillow). The 11 CSTs were divided into 2 groups, ensuring maximum inclusion while avoiding interference between the CSTs within each group. Each group (comprising 8 CSTs) was also compared via polysomnography. RESULTS: The study enrolled 75 participants from a tertiary hospital and a primary sleep-specialized clinic in Korea. Across the 2 centers, we collected a total of 3890 hours of sleep sessions based on 11 CSTs, along with 543 hours of polysomnography recordings. Each CST sleep recording covered an average of 353 hours. We analyzed a total of 349,114 epochs from the 11 CSTs compared with polysomnography, where epoch-by-epoch agreement in sleep stage classification showed substantial performance variation. More specifically, the highest macro F1 score was 0.69, while the lowest macro F1 score was 0.26. Various sleep trackers exhibited diverse performances across sleep stages, with SleepRoutine excelling in the wake and rapid eye movement stages, and wearables like Google Pixel Watch and Fitbit Sense 2 showing superiority in the deep stage. There was a distinct trend in sleep measure estimation according to the type of device. Wearables showed high proportional bias in sleep efficiency, while nearables exhibited high proportional bias in sleep latency. Subgroup analyses of sleep trackers revealed variations in macro F1 scores based on factors, such as BMI, sleep efficiency, and apnea-hypopnea index, while the differences between male and female subgroups were minimal. CONCLUSIONS: Our study showed that among the 11 CSTs examined, specific CSTs showed substantial agreement with polysomnography, indicating their potential application in sleep monitoring, while other CSTs were partially consistent with polysomnography. This study offers insights into the strengths of CSTs within the 3 different classes for individuals interested in wellness who wish to understand and proactively manage their own sleep.
format Online
Article
Text
id pubmed-10654909
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-106549092023-11-02 Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study Lee, Taeyoung Cho, Younghoon Cha, Kwang Su Jung, Jinhwan Cho, Jungim Kim, Hyunggug Kim, Daewoo Hong, Joonki Lee, Dongheon Keum, Moonsik Kushida, Clete A Yoon, In-Young Kim, Jeong-Whun JMIR Mhealth Uhealth Original Paper BACKGROUND: Consumer sleep trackers (CSTs) have gained significant popularity because they enable individuals to conveniently monitor and analyze their sleep. However, limited studies have comprehensively validated the performance of widely used CSTs. Our study therefore investigated popular CSTs based on various biosignals and algorithms by assessing the agreement with polysomnography. OBJECTIVE: This study aimed to validate the accuracy of various types of CSTs through a comparison with in-lab polysomnography. Additionally, by including widely used CSTs and conducting a multicenter study with a large sample size, this study seeks to provide comprehensive insights into the performance and applicability of these CSTs for sleep monitoring in a hospital environment. METHODS: The study analyzed 11 commercially available CSTs, including 5 wearables (Google Pixel Watch, Galaxy Watch 5, Fitbit Sense 2, Apple Watch 8, and Oura Ring 3), 3 nearables (Withings Sleep Tracking Mat, Google Nest Hub 2, and Amazon Halo Rise), and 3 airables (SleepRoutine, SleepScore, and Pillow). The 11 CSTs were divided into 2 groups, ensuring maximum inclusion while avoiding interference between the CSTs within each group. Each group (comprising 8 CSTs) was also compared via polysomnography. RESULTS: The study enrolled 75 participants from a tertiary hospital and a primary sleep-specialized clinic in Korea. Across the 2 centers, we collected a total of 3890 hours of sleep sessions based on 11 CSTs, along with 543 hours of polysomnography recordings. Each CST sleep recording covered an average of 353 hours. We analyzed a total of 349,114 epochs from the 11 CSTs compared with polysomnography, where epoch-by-epoch agreement in sleep stage classification showed substantial performance variation. More specifically, the highest macro F1 score was 0.69, while the lowest macro F1 score was 0.26. Various sleep trackers exhibited diverse performances across sleep stages, with SleepRoutine excelling in the wake and rapid eye movement stages, and wearables like Google Pixel Watch and Fitbit Sense 2 showing superiority in the deep stage. There was a distinct trend in sleep measure estimation according to the type of device. Wearables showed high proportional bias in sleep efficiency, while nearables exhibited high proportional bias in sleep latency. Subgroup analyses of sleep trackers revealed variations in macro F1 scores based on factors, such as BMI, sleep efficiency, and apnea-hypopnea index, while the differences between male and female subgroups were minimal. CONCLUSIONS: Our study showed that among the 11 CSTs examined, specific CSTs showed substantial agreement with polysomnography, indicating their potential application in sleep monitoring, while other CSTs were partially consistent with polysomnography. This study offers insights into the strengths of CSTs within the 3 different classes for individuals interested in wellness who wish to understand and proactively manage their own sleep. JMIR Publications 2023-11-02 /pmc/articles/PMC10654909/ /pubmed/37917155 http://dx.doi.org/10.2196/50983 Text en ©Taeyoung Lee, Younghoon Cho, Kwang Su Cha, Jinhwan Jung, Jungim Cho, Hyunggug Kim, Daewoo Kim, Joonki Hong, Dongheon Lee, Moonsik Keum, Clete A Kushida, In-Young Yoon, Jeong-Whun Kim. Originally published in JMIR mHealth and uHealth (https://mhealth.jmir.org), 02.11.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR mHealth and uHealth, is properly cited. The complete bibliographic information, a link to the original publication on https://mhealth.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Lee, Taeyoung
Cho, Younghoon
Cha, Kwang Su
Jung, Jinhwan
Cho, Jungim
Kim, Hyunggug
Kim, Daewoo
Hong, Joonki
Lee, Dongheon
Keum, Moonsik
Kushida, Clete A
Yoon, In-Young
Kim, Jeong-Whun
Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study
title Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study
title_full Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study
title_fullStr Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study
title_full_unstemmed Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study
title_short Accuracy of 11 Wearable, Nearable, and Airable Consumer Sleep Trackers: Prospective Multicenter Validation Study
title_sort accuracy of 11 wearable, nearable, and airable consumer sleep trackers: prospective multicenter validation study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10654909/
https://www.ncbi.nlm.nih.gov/pubmed/37917155
http://dx.doi.org/10.2196/50983
work_keys_str_mv AT leetaeyoung accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT choyounghoon accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT chakwangsu accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT jungjinhwan accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT chojungim accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT kimhyunggug accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT kimdaewoo accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT hongjoonki accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT leedongheon accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT keummoonsik accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT kushidacletea accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT yooninyoung accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy
AT kimjeongwhun accuracyof11wearablenearableandairableconsumersleeptrackersprospectivemulticentervalidationstudy