睡眠呼吸暂停患者家庭监测的睡眠-觉醒分类

Dorien Huysmans, Eva Heffinck, I. Castro, Margot Deviaene, Pascal Borzée, B. Buyse, D. Testelmans, S. Huffel, C. Varon
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引用次数: 1

摘要

睡眠呼吸暂停是一种常见的睡眠障碍,其诊断可以从家庭筛查中获益良多。由于总睡眠时间是评估睡眠呼吸暂停严重程度的必要条件,因此建立了基于心率和呼吸的睡眠-觉醒分类器。选择这两个信号是因为它们可以使用不显眼的传感器进行测量。设计一维卷积神经网络(CNN)对30个epoch的声速图和呼吸电感体积脉搏波(RIP)信号进行分类。基于节拍到节拍可变性的输入允许使用不同类型的传感器。使用56例呼吸暂停低通气指数(AHI)低于10的患者的数据集来训练和验证该网络。将该CNN应用于25名受试者的ECG和RIP信号独立测试集。其中,8名受试者同时使用集成在床垫中的电容耦合ECG (ccECG)传感器进行监测。对采集到的数据进行伪影去除和数据校正。在ECG和RIP独立数据集上的性能与最先进的性能相当,κ = 0.48。然而,对ccECG数据的应用导致性能下降,κ = 0.30。这是由于数据清理后剩余的尾流epoch数量很少造成的。重要的是,该网络对30个睡眠呼吸暂停患者进行了分类,而不依赖于过去或未来的信息进行特征提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sleep-Wake Classification for Home Monitoring of Sleep Apnea Patients
Sleep apnea is a common sleep disorder, whose diagnosis can strongly benefit from home-based screening. As the total sleep time is essential to assess the sleep apnea severity, a sleep-wake classifier was developed based on heart rate and respiration. These two signals were selected as they can be measured using unobtrusive sensors. A 1D convolutional neural network (CNN) was designed to classify 30s epochs of tachograms and respiratory inductance plethysmography (RIP) signals. The input based on beat-to-beat variability allows the use of different sensor types. A dataset of 56 patients with an apnea-hypopnea index (AHI) below 10 was used to train and validate the network. This CNN was applied to an independent test set of ECG and RIP signals of 25 subjects. Of these, 8 subjects were simultaneously monitored using an unobtrusive capacitive-coupled ECG (ccECG) sensor integrated in a mattress. Artefact removal and data correction was performed on this acquired data. The performance on the independent dataset of ECG and RIP is comparable to state-of-the-art, with κ = 0.48. However, application on the ccECG data resulted in a drop in performance, with κ = 0.30. This was caused by a low amount of remaining wake epochs after data cleaning. Importantly, the network classified 30s segments of sleep apnea patients, without relying on past or future information for feature extraction.
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