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Evaluating Reliability in Wearable Devices for Sleep Staging

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Journal NPJ Digit Med
Date 2024 Mar 19
PMID 38499793
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Abstract

Sleep is crucial for physical and mental health, but traditional sleep quality assessment methods have limitations. This scoping review analyzes 35 articles from the past decade, evaluating 62 wearable setups with varying sensors, algorithms, and features. Our analysis indicates a trend towards combining accelerometer and photoplethysmography (PPG) data for out-of-lab sleep staging. Devices using only accelerometer data are effective for sleep/wake detection but fall short in identifying multiple sleep stages, unlike those incorporating PPG signals. To enhance the reliability of sleep staging wearables, we propose five recommendations: (1) Algorithm validation with equity, diversity, and inclusion considerations, (2) Comparative performance analysis of commercial algorithms across multiple sleep stages, (3) Exploration of feature impacts on algorithm accuracy, (4) Consistent reporting of performance metrics for objective reliability assessment, and (5) Encouragement of open-source classifier and data availability. Implementing these recommendations can improve the accuracy and reliability of sleep staging algorithms in wearables, solidifying their value in research and clinical settings.

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References
1.
Miller D, Sargent C, Roach G . A Validation of Six Wearable Devices for Estimating Sleep, Heart Rate and Heart Rate Variability in Healthy Adults. Sensors (Basel). 2022; 22(16). PMC: 9412437. DOI: 10.3390/s22166317. View

2.
Stucky B, Clark I, Azza Y, Karlen W, Achermann P, Kleim B . Validation of Fitbit Charge 2 Sleep and Heart Rate Estimates Against Polysomnographic Measures in Shift Workers: Naturalistic Study. J Med Internet Res. 2021; 23(10):e26476. PMC: 8527385. DOI: 10.2196/26476. View

3.
Sridhar N, Shoeb A, Stephens P, Kharbouch A, Ben Shimol D, Burkart J . Deep learning for automated sleep staging using instantaneous heart rate. NPJ Digit Med. 2020; 3:106. PMC: 7441407. DOI: 10.1038/s41746-020-0291-x. View

4.
de Zambotti M, Claudatos S, Inkelis S, Colrain I, Baker F . Evaluation of a consumer fitness-tracking device to assess sleep in adults. Chronobiol Int. 2015; 32(7):1024-8. PMC: 4780439. DOI: 10.3109/07420528.2015.1054395. View

5.
Regalia G, Gerboni G, Migliorini M, Lai M, Pham J, Puri N . Sleep assessment by means of a wrist actigraphy-based algorithm: agreement with polysomnography in an ambulatory study on older adults. Chronobiol Int. 2020; 38(3):400-414. DOI: 10.1080/07420528.2020.1835942. View