Montazeri Ghahjaverestan Nasim, Akbarian Sina, Hafezi Maziar, Saha Shumit, Zhu Kaiyin, Gavrilovic Bojan, Taati Babak, Yadollahi Azadeh
Kite - Toronto Rehabilitation Institute, University Health Network, Toronto, ON, Canada.
Institute of Biomedical Engineering, University of Toronto, Toronto, ON, Canada.
Nat Sci Sleep. 2020 Nov 17;12:1009-1021. doi: 10.2147/NSS.S276107. eCollection 2020.
The current gold standard to detect sleep/wakefulness is based on electroencephalogram, which is inconvenient if included in portable sleep screening devices. Therefore, a challenge in the portable devices is sleeping time estimation. Without sleeping time, sleep parameters such as apnea/hypopnea index (AHI), an index for quantifying sleep apnea severity, can be underestimated. Recent studies have used tracheal sounds and movements for sleep screening and calculating AHI without considering sleeping time. In this study, we investigated the detection of sleep/wakefulness states and estimation of sleep parameters using tracheal sounds and movements.
Participants with suspected sleep apnea who were referred for sleep screening were included in this study. Simultaneously with polysomnography, tracheal sounds and movements were recorded with a small wearable device, called the Patch, attached over the trachea. Each 30-second epoch of tracheal data was scored as sleep or wakefulness using an automatic classification algorithm. The performance of the algorithm was compared to the sleep/wakefulness scored blindly based on the polysomnography.
Eighty-eight subjects were included in this study. The accuracy of sleep/wakefulness detection was 82.3±8.66% with a sensitivity of 87.8±10.8 % (sleep), specificity of 71.4±18.5% (awake), F1 of 88.1±9.3% and Cohen's kappa of 0.54. The correlations between the estimated and polysomnography-based measures for total sleep time and sleep efficiency were 0.78 (<0.001) and 0.70 (<0.001), respectively.
Sleep/wakefulness periods can be detected using tracheal sound and movements. The results of this study combined with our previous studies on screening sleep apnea with tracheal sounds provide strong evidence that respiratory sounds analysis can be used to develop robust, convenient and cost-effective portable devices for sleep apnea monitoring.
目前检测睡眠/清醒状态的金标准基于脑电图,若将其纳入便携式睡眠筛查设备则不太方便。因此,便携式设备面临的一项挑战是睡眠时间估计。若没有睡眠时间,诸如呼吸暂停低通气指数(AHI,一种用于量化睡眠呼吸暂停严重程度的指标)等睡眠参数可能会被低估。最近的研究使用气管声音和动作进行睡眠筛查并计算AHI,而未考虑睡眠时间。在本研究中,我们调查了利用气管声音和动作检测睡眠/清醒状态以及估计睡眠参数的情况。
本研究纳入了因疑似睡眠呼吸暂停而被转诊进行睡眠筛查的参与者。在进行多导睡眠图监测的同时,使用一种名为“贴片”的小型可穿戴设备记录气管声音和动作,该设备贴于气管上方。利用自动分类算法将每30秒的气管数据时段评定为睡眠或清醒状态。将该算法的性能与基于多导睡眠图盲目评定的睡眠/清醒状态进行比较。
本研究纳入了88名受试者。睡眠/清醒状态检测的准确率为82.3±8.66%,敏感度为87.8±10.8%(睡眠),特异度为71.4±18.5%(清醒),F1值为88.1±9.3%,科恩kappa系数为0.54。估计的总睡眠时间和睡眠效率与基于多导睡眠图测量值之间的相关性分别为0.78(<0.001)和0.70(<0.001)。
可利用气管声音和动作检测睡眠/清醒时段。本研究结果与我们之前关于利用气管声音筛查睡眠呼吸暂停的研究相结合,提供了有力证据,表明呼吸声音分析可用于开发用于睡眠呼吸暂停监测的强大、便捷且经济高效的便携式设备。