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用于睡眠呼吸暂停患者的睡眠-觉醒预测和风险检测的电容耦合 ECG 和呼吸。

Capacitively-Coupled ECG and Respiration for Sleep-Wake Prediction and Risk Detection in Sleep Apnea Patients.

机构信息

STADIUS Center for Dynamical Systems, Signal Processing and Data Analytics, Department of Electrical Engineering (ESAT), KU Leuven, 3001 Leuven, Belgium.

Circuits and Systems for Health, Imec-Leuven, 3001 Leuven, Belgium.

出版信息

Sensors (Basel). 2021 Sep 25;21(19):6409. doi: 10.3390/s21196409.

Abstract

Obstructive sleep apnea (OSA) patients would strongly benefit from comfortable home diagnosis, during which detection of wakefulness is essential. Therefore, capacitively-coupled electrocardiogram (ccECG) and bioimpedance (ccBioZ) sensors were used to record the sleep of suspected OSA patients, in parallel with polysomnography (PSG). The three objectives were quality assessment of the unobtrusive signals during sleep, prediction of sleep-wake using ccECG and ccBioZ, and detection of high-risk OSA patients. First, signal quality indicators (SQIs) determined the data coverage of ccECG and ccBioZ. Then, a multimodal convolutional neural network (CNN) for sleep-wake prediction was tested on these preprocessed ccECG and ccBioZ data. Finally, two indices derived from this prediction detected patients at risk. The data included 187 PSG recordings of suspected OSA patients, 36 (dataset "Test") of which were recorded simultaneously with PSG, ccECG, and ccBioZ. As a result, two improvements were made compared to prior studies. First, the ccBioZ signal coverage increased significantly due to adaptation of the acquisition system. Secondly, the utility of the sleep-wake classifier increased as it became a unimodal network only requiring respiratory input. This was achieved by using data augmentation during training. Sleep-wake prediction on "Test" using PSG respiration resulted in a Cohen's kappa (κ) of 0.39 and using ccBioZ in κ = 0.23. The OSA risk model identified severe OSA patients with a κ of 0.61 for PSG respiration and κ of 0.39 using ccBioZ (accuracy of 80.6% and 69.4%, respectively). This study is one of the first to perform sleep-wake staging on capacitively-coupled respiratory signals in suspected OSA patients and to detect high risk OSA patients based on ccBioZ. The technology and the proposed framework could be applied in multi-night follow-up of OSA patients.

摘要

阻塞性睡眠呼吸暂停(OSA)患者将从舒适的家庭诊断中受益,在此过程中,检测觉醒状态至关重要。因此,我们使用电容耦合心电图(ccECG)和生物阻抗(ccBioZ)传感器来记录疑似 OSA 患者的睡眠,同时进行多导睡眠图(PSG)监测。我们的三个目标是评估睡眠期间非侵入性信号的质量,使用 ccECG 和 ccBioZ 预测睡眠-觉醒,以及检测高危 OSA 患者。首先,信号质量指标(SQIs)确定了 ccECG 和 ccBioZ 的数据覆盖范围。然后,我们在这些预处理后的 ccECG 和 ccBioZ 数据上测试了用于睡眠-觉醒预测的多模态卷积神经网络(CNN)。最后,从这个预测中提取出两个指标来检测有风险的患者。这些数据包括 187 例疑似 OSA 患者的 PSG 记录,其中 36 例(数据集“Test”)与 PSG、ccECG 和 ccBioZ 同时记录。结果,与之前的研究相比,我们有两个改进。首先,由于采集系统的适应性,ccBioZ 信号的覆盖范围显著增加。其次,睡眠-觉醒分类器的实用性提高了,因为它成为了一个仅需要呼吸输入的单模态网络。这是通过在训练中使用数据增强来实现的。在“Test”上使用 PSG 呼吸进行睡眠-觉醒预测,柯恩氏 κ(κ)值为 0.39,使用 ccBioZ 的 κ 值为 0.23。OSA 风险模型通过 PSG 呼吸识别严重 OSA 患者的 κ 值为 0.61,使用 ccBioZ 的 κ 值为 0.39(准确性分别为 80.6%和 69.4%)。这项研究是首次在疑似 OSA 患者中使用电容耦合呼吸信号进行睡眠-觉醒分期,并基于 ccBioZ 检测高危 OSA 患者的研究之一。该技术和提出的框架可以应用于 OSA 患者的多夜随访。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2daa/8512805/adb74536670c/sensors-21-06409-g001.jpg

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