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

机译:睡眠的承诺:使用牛角圈的精确睡眠阶段检测的多传感器方法

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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.
机译:消费者级睡眠跟踪器代表大规模研究和健康管理的有希望的工具。然而,这些装置的潜在和限制仍然不太良好地量化。解决这个问题,我们的目的是对加速度计,自主神经系统(ANS)介绍的外围信号和昼夜主教特征进行全面分析大型数据集的睡眠阶段检测。获得了106人的四百四十夜,获得了总共3444小时的组合多组织摄影(PSG)和来自可穿戴环的生理数据。提取特征以研究不同数据流对2级(睡眠和唤醒)和4阶段分类精度(Light NREM睡眠,深NREM睡眠,REM睡眠和唤醒)的相对影响。使用5倍的交叉验证和睡眠阶段分类评估的标准化框架评估机器学习模型。对于基于简单的加速度计的模型,2阶段检测(睡眠,尾唤醒)的精度为94%,并且为包括ANS派生和昼夜节律功能的完整模型的96%。当包括ANS衍生和昼夜节律特征时,4阶段检测的精度为57%,79%。结合手指环的紧凑型,多维生物识别感觉流和机器学习,可以实现高精度唤醒检测和睡眠分期。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者

    Marco Altini; Hannu Kinnunen;

  • 作者单位
  • 年(卷),期 2021(21),13
  • 年度 2021
  • 页码 4302
  • 总页数 21
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:睡眠分期;可穿戴设备;心率变异性;加速度计;机器学习;

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