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基于非线性参数的心电信号自动检测睡眠呼吸暂停

Automated detection of sleep apnea from electrocardiogram signals using nonlinear parameters.

机构信息

School of Electronic and Computer Engineering Ngee Ann Polytechnic, Clementi Road, Singapore.

出版信息

Physiol Meas. 2011 Mar;32(3):287-303. doi: 10.1088/0967-3334/32/3/002. Epub 2011 Feb 1.

Abstract

Sleep apnoea is a very common sleep disorder which can cause symptoms such as daytime sleepiness, irritability and poor concentration. To monitor patients with this sleeping disorder we measured the electrical activity of the heart. The resulting electrocardiography (ECG) signals are both non-stationary and nonlinear. Therefore, we used nonlinear parameters such as approximate entropy, fractal dimension, correlation dimension, largest Lyapunov exponent and Hurst exponent to extract physiological information. This information was used to train an artificial neural network (ANN) classifier to categorize ECG signal segments into one of the following groups: apnoea, hypopnoea and normal breathing. ANN classification tests produced an average classification accuracy of 90%; specificity and sensitivity were 100% and 95%, respectively. We have also proposed unique recurrence plots for the normal, hypopnea and apnea classes. Detecting sleep apnea with this level of accuracy can potentially reduce the need of polysomnography (PSG). This brings advantages to patients, because the proposed system is less cumbersome when compared to PSG.

摘要

睡眠呼吸暂停是一种非常常见的睡眠障碍,可导致日间嗜睡、易怒和注意力不集中等症状。为了监测患有这种睡眠障碍的患者,我们测量了心脏的电活动。由此产生的心电图 (ECG) 信号既不稳定又非线性。因此,我们使用了近似熵、分形维数、关联维数、最大 Lyapunov 指数和 Hurst 指数等非线性参数来提取生理信息。这些信息用于训练人工神经网络 (ANN) 分类器,将 ECG 信号段分类为以下组之一:呼吸暂停、呼吸不足和正常呼吸。ANN 分类测试的平均分类准确率为 90%;特异性和灵敏度分别为 100%和 95%。我们还为正常、呼吸不足和呼吸暂停三类提出了独特的递归图。如此高的准确性可以减少对多导睡眠图(PSG)的需求。这为患者带来了优势,因为与 PSG 相比,拟议的系统不那么繁琐。

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