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使用胸部佩戴加速度计进行夜间睡眠分期。

Overnight Sleep Staging Using Chest-Worn Accelerometry.

机构信息

Department of Electrical Engineering, Eindhoven University of Technology, 5612 AP Eindhoven, The Netherlands.

Philips Sleep and Respiratory Care, 5656 AE Eindhoven, The Netherlands.

出版信息

Sensors (Basel). 2024 Sep 2;24(17):5717. doi: 10.3390/s24175717.

Abstract

Overnight sleep staging is an important part of the diagnosis of various sleep disorders. Polysomnography is the gold standard for sleep staging, but less-obtrusive sensing modalities are of emerging interest. Here, we developed and validated an algorithm to perform "proxy" sleep staging using cardiac and respiratory signals derived from a chest-worn accelerometer. We collected data in two sleep centers, using a chest-worn accelerometer in combination with full PSG. A total of 323 participants were analyzed, aged 13-83 years, with BMI 18-47 kg/m. We derived cardiac and respiratory features from the accelerometer and then applied a previously developed method for automatic cardio-respiratory sleep staging. We compared the estimated sleep stages against those derived from PSG and determined performance. Epoch-by-epoch agreement with four-class scoring (Wake, REM, N1+N2, N3) reached a Cohen's kappa coefficient of agreement of 0.68 and an accuracy of 80.8%. For Wake vs. Sleep classification, an accuracy of 93.3% was obtained, with a sensitivity of 78.7% and a specificity of 96.6%. We showed that cardiorespiratory signals obtained from a chest-worn accelerometer can be used to estimate sleep stages among a population that is diverse in age, BMI, and prevalence of sleep disorders. This opens up the path towards various clinical applications in sleep medicine.

摘要

整夜睡眠分期是各种睡眠障碍诊断的重要组成部分。多导睡眠图是睡眠分期的金标准,但侵入性较小的传感方式也越来越受到关注。在这里,我们开发并验证了一种使用源自胸部佩戴式加速度计的心脏和呼吸信号进行“代理”睡眠分期的算法。我们在两个睡眠中心收集数据,使用胸部佩戴式加速度计结合全 PSG。共分析了 323 名年龄在 13-83 岁、BMI 为 18-47kg/m 的参与者。我们从加速度计中提取了心脏和呼吸特征,然后应用了先前开发的自动心肺睡眠分期方法。我们将估计的睡眠阶段与 PSG 得出的睡眠阶段进行了比较,并确定了性能。四分类评分(觉醒、REM、N1+N2、N3)的逐时一致性达到了 0.68 的 Cohen's kappa 系数一致性和 80.8%的准确性。对于觉醒与睡眠的分类,获得了 93.3%的准确性,灵敏度为 78.7%,特异性为 96.6%。我们表明,从胸部佩戴式加速度计获得的心肺信号可用于估计年龄、BMI 和睡眠障碍患病率差异较大的人群的睡眠阶段。这为睡眠医学中的各种临床应用开辟了道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd51/11398147/e9a85b406be5/sensors-24-05717-g001.jpg

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