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首页> 外文期刊>Scientific reports. >Wearable monitoring of sleep-disordered breathing: estimation of the apnea–hypopnea index using wrist-worn reflective photoplethysmography
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Wearable monitoring of sleep-disordered breathing: estimation of the apnea–hypopnea index using wrist-worn reflective photoplethysmography

机译:睡眠无序呼吸的可穿戴监测:使用手腕磨损的反射光学读物描绘估算呼吸暂停缺氧性指数

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A large part of the worldwide population suffers from obstructive sleep apnea (OSA), a disorder impairing the restorative function of sleep and constituting a risk factor for several cardiovascular pathologies. The standard diagnostic metric to define OSA is the apnea–hypopnea index (AHI), typically obtained by manually annotating polysomnographic recordings. However, this clinical procedure cannot be employed for screening and for long-term monitoring of OSA due to its obtrusiveness and cost. Here, we propose an automatic unobtrusive AHI estimation method fully based on wrist-worn reflective photoplethysmography (rPPG), employing a deep learning model exploiting cardiorespiratory and sleep information extracted from the rPPG signal trained with 250 recordings. We tested our method with an independent set of 188 heterogeneously disordered clinical recordings and we found it estimates the AHI with a good agreement to the gold standard polysomnography reference (correlation = 0.61, estimation error = 3±10 events/h). The estimated AHI was shown to reliably assess OSA severity (weighted Cohen’s kappa = 0.51) and screen for OSA (ROC–AUC = 0.84/0.86/0.85 for mild/moderate/severe OSA). These findings suggest that wrist-worn rPPG measurements that can be implemented in wearables such as smartwatches, have the potential to complement standard OSA diagnostic techniques by allowing unobtrusive sleep and respiratory monitoring.
机译:世界各地的一大部分人口患有阻塞性睡眠呼吸暂停(OSA),这种疾病损害睡眠恢复功能,构成几种心血管病理的危险因素。定义OSA的标准诊断度量是呼吸暂停缺氧索引(AHI),通常通过手动注释多色摄影记录来获得。然而,由于其谴责和成本,这种临床程序不能用于筛选和长期监测OSA。在这里,我们基于腕带磨损的反射光电电瓶描绘(RPPG)完全提出了一种自动不引人注目的AHI估计方法,采用深度学习模型利用从250次录制训练的RPPG信号中提取的内透视和睡眠信息。我们通过独立的188年的独立无序临床记录测试了我们的方法,我们发现它估计AHI对金标准多组织摄影参考(相关= 0.61,估计误差= 3±10事件/ H)估计AHI。显示估计的AHI可可靠地评估OSA严重程度(加权Cohen的Kappa = 0.51)和筛选OSA(Roc-Auc = 0.84 / 0.86 / 0.85,用于温和/中度/严重OSA)。这些发现表明,可以通过智能手表等可穿戴物(如Smartwatches)在智能手表中实现的腕带RPPG测量,这是通过允许不引人注心的睡眠和呼吸监测来补充标准的OSA诊断技术。

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