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使用 R-R 间期估算健康受试者和 OSA 患者的慢波睡眠

Slow-Wave Sleep Estimation for Healthy Subjects and OSA Patients Using R-R Intervals.

出版信息

IEEE J Biomed Health Inform. 2018 Jan;22(1):119-128. doi: 10.1109/JBHI.2017.2712861. Epub 2017 Jun 7.

Abstract

We developed an automatic slow-wave sleep (SWS) detection algorithm that can be applied to groups of healthy subjects and patients with obstructive sleep apnea (OSA). This algorithm detected SWS based on autonomic activations derived from the heart rate variations of a single sensor. An autonomic stability, which is an SWS characteristic, was evaluated and quantified using R-R intervals from an electrocardiogram (ECG). The thresholds and the heuristic rule to determine SWS were designed based on the physiological backgrounds for sleep process and distribution across the night. The automatic algorithm was evaluated based on a fivefold cross validation using data from 21 healthy subjects and 24 patients with OSA. An epoch-by-epoch (30 s) analysis showed that the overall Cohen's kappa, accuracy, sensitivity, and specificity of our method were 0.56, 89.97%, 68.71%, and 93.75%, respectively. SWS-related information, including SWS duration (min) and percentage (%), were also calculated. A significant correlation in these parameters was found between automatic and polysomnography scorings. Compared with similar methods, the proposed algorithm convincingly discriminated SWS from non-SWS. The simple method using only R-R intervals has the potential to be utilized in mobile and wearable devices that can easily measure this information. Moreover, when combined with other sleep staging methods, the proposed method is expected to be applicable to long-term sleep monitoring at home and ambulatory environments.

摘要

我们开发了一种自动慢波睡眠 (SWS) 检测算法,可应用于健康受试者和阻塞性睡眠呼吸暂停 (OSA) 患者群体。该算法基于单个传感器的心率变化来检测 SWS。使用心电图 (ECG) 的 R-R 间隔评估和量化自主稳定性,这是 SWS 的特征之一。根据睡眠过程的生理背景和夜间分布,设计了确定 SWS 的阈值和启发式规则。使用来自 21 名健康受试者和 24 名 OSA 患者的数据,通过五重交叉验证评估自动算法。逐epoch(30 秒)分析表明,我们的方法的总体 Cohen's kappa、准确性、敏感性和特异性分别为 0.56、89.97%、68.71%和 93.75%。还计算了 SWS 相关信息,包括 SWS 持续时间(分钟)和百分比(%)。在这些参数中,自动评分和多导睡眠图评分之间存在显著相关性。与类似方法相比,该算法令人信服地将 SWS 与非 SWS 区分开来。该算法仅使用 R-R 间隔的简单方法有可能在可轻松测量此信息的移动和可穿戴设备中得到应用。此外,当与其他睡眠分期方法结合使用时,该方法有望适用于家庭和动态环境中的长期睡眠监测。

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