首页> 外文期刊>Annals of Biomedical Engineering: The Journal of the Biomedical Engineering Society >Modeling respiratory movement signals during central and obstructive sleep apnea events using electrocardiogram.
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Modeling respiratory movement signals during central and obstructive sleep apnea events using electrocardiogram.

机译:使用心电图模拟中枢和阻塞性睡眠呼吸暂停事件期间的呼吸运动信号。

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摘要

Obstructive sleep apnea (OSA) causes a pause in airflow with continuing breathing effort. In contrast, central sleep apnea (CSA) event is not accompanied with breathing effort. CSA is recognized when respiratory effort falls below 15% of pre-event peak-to-peak amplitude of the respiratory effort. The aim of this study is to investigate whether a combination of respiratory sinus arrhythmia (RSA), ECG-derived respiration (EDR) from R-wave amplitudes and wavelet-based features of ECG signals during OSA and CSA can act as surrogate of changes in thoracic movement signal measured by respiratory inductance plethysmography (RIP). Therefore, RIP and ECG signals during 250 pre-scored OSA and 150 pre-scored CSA events, and 10 s preceding the events were collected from 17 patients. RSA, EDR, and wavelet decomposition of ECG signals at level 9 (0.15-0.32 Hz) were used as input to the support vector regression (SVR) model to recognize the RIP signals and classify OSA from CSA. Using cross-validation test, an optimal SVR (radial basis function kernel; C = 2(8) and epsilon = 2(-2) where C is the coefficient for trade-off between empirical and structural risk and epsilon is the width of epsilon-insensitive region) showed that it correctly recognized 243/250 OSA and 139/150 CSA events (95.5% detection accuracy). Independent test was performed on 80 OSA and 80 CSA events from 12 patients. The independent test accuracies of OSA and CSA detections were found to be 92.5 and 95.0%, respectively. Results suggest superior performance of SVR using ECG as the surrogate in recognizing the reduction of respiratory movement during OSA and CSA. Results also indicate that ECG-based SVR model could act as a potential surrogate signal of respiratory movement during sleep-disordered breathing.
机译:阻塞性睡眠呼吸暂停(OSA)会导致呼吸暂停并持续呼吸。相反,中枢性睡眠呼吸暂停(CSA)事件并不伴随呼吸努力。当呼吸作用力降至事前呼吸作用峰峰值幅度的15%以下时,即可识别为CSA。这项研究的目的是调查OSA和CSA期间呼吸窦性心律不齐(RSA),源自R波振幅的ECG衍生呼吸(EDR)和基于小波的ECG信号特征是否可以替代通过呼吸感应体积描记法(RIP)测量的胸廓运动信号。因此,从17位患者中收集了250例OSA评分和150例CSA评分之前以及事件发生前10 s的RIP和ECG信号。 RSA,EDR和第9级(0.15-0.32 Hz)的ECG信号的小波分解被用作支持向量回归(SVR)模型的输入,以识别RIP信号并从CSA对OSA进行分类。使用交叉验证测试,获得最佳SVR(径向基函数核; C = 2(8)和epsilon = 2(-2),其中C是经验风险和结构风险之间的权衡系数,epsilon是epsilon的宽度-不敏感区域)显示可以正确识别243/250 OSA和139/150 CSA事件(检测准确度为95.5%)。对来自12位患者的80例OSA和80例CSA事件进行了独立测试。发现OSA和CSA检测的独立测试准确度分别为92.5%和95.0%。结果表明,以心电图为代表的SVR在识别OSA和CSA期间呼吸运动减少方面表现出优异的表现。结果还表明,基于ECG的SVR模型可以充当睡眠障碍性呼吸过程中呼吸运动的潜在替代信号。

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