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首页> 外文期刊>Journal of clinical monitoring and computing >Classification of sleep apnea types using wavelet packet analysis of short-term ECG signals.
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Classification of sleep apnea types using wavelet packet analysis of short-term ECG signals.

机译:使用短期ECG信号的小波包分析对睡眠呼吸暂停类型进行分类。

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Obstructive sleep apnea (OSA) causes a pause in airflow with reduced breathing effort. In contrast, central sleep apnea (CSA) event is not accompanied with breathing effort. The aim of this study is to differentiate CSA and OSA events using wavelet packet analysis and support vector machines of ECG signals over 5?s period.Eight level wavelet packet analysis was performed on each 5?s clip using Daubechies (DB3) mother wavelet and for comparison discrete wavelet analysis was performed using Symlet (SYM3) wavelets. The choice of wavelet basis function was based on a grid search using Daubechies, Symlet and biorthogonal wavelets with decomposition levels varying between 2 and 5. Support vector machine is used for two-class classification. Out of 29 overnight polysomnographic studies, 23 of them were used in the training phase and 6 patients were used for independent testing.The proposed algorithm is shown to perform better in classifying CSA and OSA with wavelet packet features (accuracy-91%, sensitivity-88.14% and specificity-91.11%) than with the traditional wavelet decomposition based features (accuracy-83.79%, sensitivity-89.18% and specificity-83.59%). The independent test resulted in overall classification accuracy, sensitivity and specificity of 91.08, 91.02 and 91.09% respectively using wavelet packet analysis.The classification result indicates the possibility of non-invasively classifying CSA and OSA events based on shorter segments of ECG signals.
机译:阻塞性睡眠呼吸暂停(OSA)会导致气流暂停,呼吸作用减少。相反,中枢性睡眠呼吸暂停(CSA)事件并不伴随呼吸努力。这项研究的目的是使用小波包分析和支持向量机在5?s的时间内区分CSA和OSA事件。使用Daubechies(DB3)母小波对每个5?s片段进行八级小波包分析。为了进行比较,使用Symlet(SYM3)小波进行了离散小波分析。小波基函数的选择是基于使用Daubechies,Symlet和双正交小波的网格搜索,分解级别在2到5之间变化。支持向量机用于两类分类。在29个通宵多导睡眠图研究中,其中23个用于训练阶段,另外6个患者用于独立测试。该算法在小波包特征(准确度-91%,敏感性- 88.14%和特异性-91.11%)比基于传统小波分解的特征(精度-83.79%,灵敏度-89.18%和特异性-83.59%)高。通过小波包分析,独立测试得出的总体分类准确度,敏感性和特异性分别为91.08、91.02和91.09%。分类结果表明,可以基于较短的ECG信号对CSA和OSA事件进行无创分类。

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