The Promise of Sleep: A Multi-Sensor Approach for Accurate Sleep Stage Detection Using the Oura Ring

被引:103
作者
Altini, Marco [1 ,2 ]
Kinnunen, Hannu [1 ]
机构
[1] Oura Hlth, Elektroniikkatie 10, Oulu 90590, Finland
[2] Vrije Univ Amsterdam, Dept Human Movement Sci, Boelelaan 1105, NL-1081 HV Amsterdam, Netherlands
关键词
sleep staging; wearables; heart rate variability; accelerometer; machine learning; AMERICAN ACADEMY; VALIDATION; POLYSOMNOGRAPHY; TEMPERATURE; TECHNOLOGY; TRACKING; SIGNALS; HEALTH;
D O I
10.3390/s21134302
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Consumer-grade sleep trackers represent a promising tool for large scale studies and health management. However, the potential and limitations of these devices remain less well quantified. Addressing this issue, we aim at providing a comprehensive analysis of the impact of accelerometer, autonomic nervous system (ANS)-mediated peripheral signals, and circadian features for sleep stage detection on a large dataset. Four hundred and forty nights from 106 individuals, for a total of 3444 h of combined polysomnography (PSG) and physiological data from a wearable ring, were acquired. Features were extracted to investigate the relative impact of different data streams on 2-stage (sleep and wake) and 4-stage classification accuracy (light NREM sleep, deep NREM sleep, REM sleep, and wake). Machine learning models were evaluated using a 5-fold cross-validation and a standardized framework for sleep stage classification assessment. Accuracy for 2-stage detection (sleep, wake) was 94% for a simple accelerometer-based model and 96% for a full model that included ANS-derived and circadian features. Accuracy for 4-stage detection was 57% for the accelerometer-based model and 79% when including ANS-derived and circadian features. Combining the compact form factor of a finger ring, multidimensional biometric sensory streams, and machine learning, high accuracy wake-sleep detection and sleep staging can be accomplished.
引用
收藏
页数:21
相关论文
共 59 条
[1]   About the Accuracy and Problems of Consumer Devices in the Assessment of Sleep [J].
Ameen, Mohamed S. ;
Cheung, Lok Man ;
Hauser, Theresa ;
Hahn, Michael A. ;
Schabus, Manuel .
SENSORS, 2019, 19 (19)
[2]   ESTIMATION OF SLEEP STAGES USING CARDIAC AND ACCELEROMETER DATA FROM A WRIST-WORN DEVICE [J].
Beattie, Z. ;
Pantelopoulos, A. ;
Ghoreyshi, A. ;
Oyang, Y. ;
Statan, A. ;
Heneghan, C. .
SLEEP, 2017, 40 :A26-A26
[3]   Effect of wearables on sleep in healthy individuals: a randomized crossover trial and validation study [J].
Berryhill, Sarah ;
Morton, Christopher J. ;
Dean, Adam ;
Berryhill, Adam ;
Provencio-Dean, Natalie ;
Patel, Salma I. ;
Estep, Lauren ;
Combs, Daniel ;
Mashaqi, Saif ;
Gerald, Lynn B. ;
Krishnan, Jerry A. ;
Parthasarathy, Sairam .
JOURNAL OF CLINICAL SLEEP MEDICINE, 2020, 16 (05) :775-783
[4]  
Borbely A A, 1982, Hum Neurobiol, V1, P195
[5]   The two-process model of sleep regulation: a reappraisal [J].
Borbely, Alexander A. ;
Daan, Serge ;
Wirz-Justice, Anna ;
Deboer, Tom .
JOURNAL OF SLEEP RESEARCH, 2016, 25 (02) :131-143
[6]   Sleep Health: Can We Define It? Does It Matter? [J].
Buysse, Daniel J. .
SLEEP, 2014, 37 (01) :9-U219
[7]   RAPID DECLINE IN BODY-TEMPERATURE BEFORE SLEEP - FLUFFING THE PHYSIOLOGICAL PILLOW [J].
CAMPBELL, SS ;
BROUGHTON, RJ .
CHRONOBIOLOGY INTERNATIONAL, 1994, 11 (02) :126-131
[8]   Multi-Night Validation of a Sleep Tracking Ring in Adolescents Compared with a Research Actigraph and Polysomnography [J].
Chee, Nicholas I. Y. N. ;
Ghorbani, Shohreh ;
Golkashani, Hosein Aghayan ;
Leong, Ruth L. F. ;
Ong, Ju Lynn ;
Chee, Michael W. L. .
NATURE AND SCIENCE OF SLEEP, 2021, 13 :177-190
[9]  
Colten HR, 2006, SLEEP DISORDERS SLEE
[10]   The wrist is not the brain: Estimation of sleep by clinical and consumer wearable actigraphy devices is impacted by multiple patient- and device-specific factors [J].
Danzig, Rachel ;
Wang, Mengxi ;
Shah, Amit ;
Trotti, Lynn Marie .
JOURNAL OF SLEEP RESEARCH, 2020, 29 (01)