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Application of an optimal class of antisymmetric wavelet filter banks for obstructive sleep apnea diagnosis using ECG signals

机译:应用ECG信号阻塞性睡眠呼吸暂停诊断的最佳类反对子小波滤波器诊断

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Obstructive sleep apnea (OSA) is a sleep disorder caused due to interruption of breathing resulting in insufficient oxygen to the human body and brain. If the OSA is detected and treated at an early stage the possibility of severe health impairment can be mitigated. Therefore, an accurate automated OSA detection system is indispensable. Generally, OSA based computer-aided diagnosis (CAD) system employs multi-channel, multi-signal physiological signals. However, there is a great need for single-channel bio-signal based low-power, a portable OSA-CAD system which can be used at home. In this study, we propose single-channel electrocardiogram (ECG) based OSA-CAD system using a new class of optimal biorthogonal antisymmetric wavelet filter bank (BAWFB). In this class of filter bank, all filters are of even length. The filter bank design problem is transformed into a constrained optimization problem wherein the objective is to minimize either frequency-spread for the given time-spread or time-spread for the given frequency-spread. The optimization problem is formulated as a semi-definite programming (SDP) problem. In the SDP problem, the objective function (time-spread or frequency-spread), constraints of perfect reconstruction (PR) and zero moment (ZM) are incorporated in their time domain matrix formulations. The global solution for SDP is obtained using interior point algorithm. The newly designed BAWFB is used for the classification of OSA using ECG signals taken from the physionet's Apnea-ECG database. The ECG segments of 1 min duration are decomposed into six wavelet subbands (WSBs) by employing the proposed BAWFB. Then, the fuzzy entropy (FE) and log-energy (LE) features are computed from all six WSBs. The FE and LE features are classified into normal and OSA groups using least squares support vector machine (LS-SVM) with 35-fold cross-validation strategy. The proposed OSA detection model achieved the average classification accuracy, sensitivity, specificity and F-score of 90.11%, 90.87% 88.88% and 0.92, respectively. The performance of the model is found to be better than the existing works in detecting OSA using the same database. Thus, the proposed automated OSA detection system is accurate, cost-effective and ready to be tested with a huge database.
机译:阻塞性睡眠呼吸暂停(OSA)是由于呼吸中断而导致的睡眠障碍导致人体和大脑的氧气不足。如果检测到OSA并在早期进行治疗,则可以减轻严重健康损害的可能性。因此,准确的自动化OSA检测系统是必不可少的。通常,基于OSA的计算机辅助诊断(CAD)系统采用多通道,多信号生理信号。然而,对基于单通道生物信号的低功耗,可以在家里使用的便携式OSA-CAD系统。在本研究中,我们使用新的最优双正交反对二手小波滤波器组(BAWFB)提出了基于单通道心电图(ECG)OSA-CAD系统。在这类过滤器银行中,所有过滤器均为长度。滤波器组设计问题被转换为约束优化问题,其中目标是最小化给定频率扩展的给定时间扩展或时间扩展的频率扩展。优化问题被制定为半定编程(SDP)问题。在SDP问题中,目标函数(时间扩展或频率扩展),完美的重建(PR)和零时刻(ZM)的约束被纳入其时域矩阵制剂中。使用内部点算法获得SDP的全局解决方案。新设计的BAWFB用于使用来自PhysoioNet的APNEA-ECG数据库中的ECG信号进行OSA的分类。通过采用所提出的BAWFB,1分钟持续时间的ECG段被分解为六个小波子带(WSB)。然后,从所有六个WSB计算模糊熵(FE)和Log-Energy(Lo)功能。使用最小二乘支持向量机(LS-SVM)与35倍交叉验证策略,FE和LE功能分为正常和OSA组。所提出的OSA检测模型分别达到了平均分类准确度,敏感度,特异性和F分,分别为90.11%,90.87%88.8%和0.92。发现模型的性能比使用相同数据库检测OSA的现有工作更好。因此,所提出的自动化OSA检测系统是准确的,经济高效的,准备用巨大的数据库进行测试。

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