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      Validation of the Samsung Smartwatch for Sleep–Wake Determination and Sleep Stage Estimation

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      https://www.riss.kr/link?id=A108569462

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      다국어 초록 (Multilingual Abstract)

      Objectives: Galaxy Watch 3 (GW3) is a commercially available smartwatch equipped with a sleep-tracking function capable of collecting longitudinal sleep data in a real-world environment. We aimed to investigate the validity of GW3 for estimating sleep stages compared with reference data from polysomnography (PSG).Methods: Thirty-two healthy adults (mean age 37.8, male 87.5%) were recruited to wear a GW3 concurrently with in-laboratory overnight PSG recording. Sleep parameters, including total sleep time (TST) and the duration of each sleep stage (light, deep, and rapid eye movement [REM] sleep), were calculated for both GW3 and PSG. Sleep parameters were compared using intraclass correlation coefficients (ICCs) and Bland–Altman plots. The epoch-by-epoch classification performance was evaluated to determine the sensitivity, specificity, accuracy, kappa values, and confusion matrices.Results: Bland–Altman plots showed moderate agreement between GW3 and PSG for TST (ICC=0.640), light sleep (ICC=0.518), and deep sleep (ICC=0.639), whereas REM sleep duration was not reliably estimated using the GW3. The GW3 overestimated TST by a mean of 9.5 min. The sensitivity of epoch-by-epoch sleep detection was 0.954; however, the specificity was 0.524. The sensitivity of each sleep stage estimation was 0.695 for light sleep, 0.612 for deep sleep, and 0.598 for REM sleep. The overall accuracy of GW3 in distinguishing the four-stage sleep epochs was 0.651.Conclusions: GW3 demonstrated high performance in sleep detection but moderate performance in wake determination and sleep stage estimation compared with PSG results, which were comparable to previously reported results for other consumer wearable devices.
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      Objectives: Galaxy Watch 3 (GW3) is a commercially available smartwatch equipped with a sleep-tracking function capable of collecting longitudinal sleep data in a real-world environment. We aimed to investigate the validity of GW3 for estimating sleep...

      Objectives: Galaxy Watch 3 (GW3) is a commercially available smartwatch equipped with a sleep-tracking function capable of collecting longitudinal sleep data in a real-world environment. We aimed to investigate the validity of GW3 for estimating sleep stages compared with reference data from polysomnography (PSG).Methods: Thirty-two healthy adults (mean age 37.8, male 87.5%) were recruited to wear a GW3 concurrently with in-laboratory overnight PSG recording. Sleep parameters, including total sleep time (TST) and the duration of each sleep stage (light, deep, and rapid eye movement [REM] sleep), were calculated for both GW3 and PSG. Sleep parameters were compared using intraclass correlation coefficients (ICCs) and Bland–Altman plots. The epoch-by-epoch classification performance was evaluated to determine the sensitivity, specificity, accuracy, kappa values, and confusion matrices.Results: Bland–Altman plots showed moderate agreement between GW3 and PSG for TST (ICC=0.640), light sleep (ICC=0.518), and deep sleep (ICC=0.639), whereas REM sleep duration was not reliably estimated using the GW3. The GW3 overestimated TST by a mean of 9.5 min. The sensitivity of epoch-by-epoch sleep detection was 0.954; however, the specificity was 0.524. The sensitivity of each sleep stage estimation was 0.695 for light sleep, 0.612 for deep sleep, and 0.598 for REM sleep. The overall accuracy of GW3 in distinguishing the four-stage sleep epochs was 0.651.Conclusions: GW3 demonstrated high performance in sleep detection but moderate performance in wake determination and sleep stage estimation compared with PSG results, which were comparable to previously reported results for other consumer wearable devices.

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      참고문헌 (Reference)

      1 Bastien CH, "Validation of the Insomnia Severity Index as an outcome measure for insomnia research" 2 : 297-307, 2001

      2 Gruwez A, "The validity of two commerciallyavailable sleep trackers and actigraphy for assessment of sleep parameters in obstructive sleep apnea patients" 14 : e0210569-, 2019

      3 Sadeh A, "The role of actigraphy in sleep medicine" 6 : 113-124, 2002

      4 Buysse DJ, "The Pittsburgh Sleep Quality Index : a new instrument for psychiatric practice and research" 28 : 193-213, 1989

      5 Evenson KR, "Systematic review of the validity and reliability of consumer-wearable activity trackers" 12 : 159-, 2015

      6 Walch O, "Sleep stage prediction with raw acceleration and photoplethysmography heart rate data derived from a consumer wearable device" 42 : zsz180-, 2019

      7 Grigsby-Toussaint DS, "Sleep apps and behavioral constructs : a content analysis" 6 : 126-129, 2017

      8 Chinoy ED, "Performance of seven consumer sleep-tracking devices compared with polysomnography" 44 : zsaa291-, 2021

      9 Lujan MR, "Past, present, and future of multisensory wearable technology to monitor sleep and circadian rhythms" 3 : 721919-, 2021

      10 Hayano J, "Night-to-night variability of sleep apnea detected by cyclic variation of heart rate during long-term continuous ECG monitoring" 27 : e12901-, 2022

      1 Bastien CH, "Validation of the Insomnia Severity Index as an outcome measure for insomnia research" 2 : 297-307, 2001

      2 Gruwez A, "The validity of two commerciallyavailable sleep trackers and actigraphy for assessment of sleep parameters in obstructive sleep apnea patients" 14 : e0210569-, 2019

      3 Sadeh A, "The role of actigraphy in sleep medicine" 6 : 113-124, 2002

      4 Buysse DJ, "The Pittsburgh Sleep Quality Index : a new instrument for psychiatric practice and research" 28 : 193-213, 1989

      5 Evenson KR, "Systematic review of the validity and reliability of consumer-wearable activity trackers" 12 : 159-, 2015

      6 Walch O, "Sleep stage prediction with raw acceleration and photoplethysmography heart rate data derived from a consumer wearable device" 42 : zsz180-, 2019

      7 Grigsby-Toussaint DS, "Sleep apps and behavioral constructs : a content analysis" 6 : 126-129, 2017

      8 Chinoy ED, "Performance of seven consumer sleep-tracking devices compared with polysomnography" 44 : zsaa291-, 2021

      9 Lujan MR, "Past, present, and future of multisensory wearable technology to monitor sleep and circadian rhythms" 3 : 721919-, 2021

      10 Hayano J, "Night-to-night variability of sleep apnea detected by cyclic variation of heart rate during long-term continuous ECG monitoring" 27 : e12901-, 2022

      11 Krystal AD, "Measuring sleep quality" 9 (9): S10-S17, 2008

      12 Marino M, "Measuring sleep : accuracy, sensitivity, and specificity of wrist actigraphy compared to polysomnography" 36 : 1747-1755, 2013

      13 Hayano J, "Diagnosis of sleep apnea by the analysis of heart rate variation : a mini review" 2011 : 7731-7734, 2011

      14 Roberts DM, "Detecting sleep using heart rate and motion data from multisensor consumer-grade wearables, relative to wrist actigraphy and polysomnography" 43 : zsaa045-, 2020

      15 Kim K, "Consumer-grade sleep trackers are still not up to par compared to polysomnography" 26 : 1573-1582, 2022

      16 Khosla S, "Consumer sleep technology : an American Academy of Sleep Medicine position statement" 14 : 877-880, 2018

      17 Ko PR, "Consumer sleep technologies : a review of the landscape" 11 : 1455-1461, 2015

      18 Goldstein CA, "Artificial intelligence in sleep medicine : background and implications for clinicians" 16 : 609-618, 2020

      19 Berry RB, "AASM scoring manual updates for 2017(Version 2. 4)" 13 : 665-666, 2017

      20 de Zambotti M, "A validation study of Fitbit Charge 2(TM)compared with polysomnography in adults" 35 : 465-476, 2018

      21 Imtiaz SA, "A systematic review of sensing technologies for wearable sleep staging" 21 : 1562-, 2021

      22 Johns MW, "A new method for measuring daytime sleepiness : the Epworth sleepiness scale" 14 : 540-545, 1991

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