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Automated sleep stage classification based on tracheal body sound and actigraphy

机译:基于气管体声和肌动图的自动睡眠阶段分类

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摘要

The current gold standard for assessment of most sleep disorders is the in-laboratory polysomnography (PSG). This approach produces high costs and inconveniences for the patients. An accessible and simple preliminary screening method to diagnose the most common sleep disorders and to decide whether a PSG is necessary or not is therefore desirable. A minimalistic type-4 monitoring system which utilized tracheal body sound and actigraphy to accurately diagnose the obstructive sleep apnea syndrome was previously developed. To further improve the diagnostic ability of said system, this study aims to examine if it is possible to perform automated sleep staging utilizing body sound to extract cardiorespiratory features and actigraphy to extract movement features.A linear discriminant classifier based on those features was used for automated sleep staging using the type-4 sleep monitor. For validation 53 subjects underwent a full-night screening at Ulm University Hospital using the developed sleep monitor in addition to polysomnography. To assess sleep stages from PSG, a trained technician manually evaluated EEG, EOG, and EMG recordings. The classifier reached 86.9% accuracy and a Kappa of 0.69 for sleep/wake classification, 76.3% accuracy and a Kappa of 0.42 for Wake/REM/NREM classification, and 56.5% accuracy and a Kappa of 0.36 for Wake/REM/light sleep/deep sleep classification. For the calculation of sleep efficiency (SE), a coefficient of determination r2 of 0.78 is reached. Additionally, subjects were classified into groups of SEs (SE≥40%, SE≥60% and SE≥80%). A Cohen’s Kappa >0.61 was reached for all groups, which is considered as substantial agreement.The presented method provides satisfactory performance in sleep/wake and wake/REM/NREM sleep staging while maintaining a simple setup and offering high comfort. This minimalistic approach may address the need for a simple yet reliable preliminary sleep screening in an ambulatory setting.
机译:目前用于评估大多数睡眠障碍的金标准是实验室多导睡眠图(PSG)。这种方法给患者带来高成本和不便。因此,需要一种可访问且简单的初步筛查方法,以诊断最常见的睡眠障碍并决定是否需要PSG。先前已经开发出一种简约的4型监测系统,该系统利用气管体声和肌动描记术来准确诊断阻塞性睡眠呼吸暂停综合症。为了进一步提高该系统的诊断能力,本研究旨在检查是否有可能利用体音提取心肺功能并通过笔法提取运动特征来进行自动睡眠分期。基于这些特征的线性判别式分类器用于自动使用Type-4睡眠监视器进行睡眠分期。为了进行验证,除多导睡眠图检查外,还使用发达的睡眠监测器在乌尔姆大学医院对53名受试者进行了整夜筛查。为了评估PSG的睡眠阶段,训练有素的技术人员手动评估了EEG,EOG和EMG记录。该分类器的睡眠/苏醒分类准确度达到86.9%,Kappa为0.69,Wake / REM / NREM分类的分类准确度为76.3%,Kappa为0.42,Wake / REM /轻度睡眠/唤醒准确度为56.5%,Kappa为0.36。深度睡眠分类。为了计算睡眠效率(SE),确定系数r 2 为0.78。此外,将受试者分为SEs组(SE≥40%,SE≥60%和SE≥80%)。所有组的Cohen Kappa均> 0.61,这被认为是基本一致。所提出的方法在睡眠/唤醒和唤醒/ REM / NREM睡眠阶段中提供令人满意的性能,同时保持简单的设置并提供较高的舒适度。这种简约的方法可以满足在非卧床环境中进行简单而可靠的初步睡眠筛查的需求。

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