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Analysis of features for myocardial infarction and healthy patients based on wavelet

机译:基于小波的心肌梗死与健康患者特征分析

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摘要

An electrocardiogram (ECG) is the recording of the electrical activity of the heart. For different pathologies, different changes are observed in a normal ECG signal. In this paper, the features of 12 lead ECG signals are analyzed using wavelet decomposition and eigen space analysis for the detection. Wavelet decomposition distributes the diagnostic information present in the ECG signal amongst different sub-bands. It is observed that changes in the ECG signal for myocardial infarction patients are reflected in the statistical parameters (mean, variance, standard deviation and entropy) and wavelet energies of the wavelet coefficients of each sub-band that are calculated after decomposition with the mother wavelet and also in the eigen values calculated from covariance matrices obtained from subband matrices in the eigen space. Therefore, the statistical parameters along with wavelet energies and the eigen values can be used as training features for classification of the ECG signals into those belonging to that of healthy control (HC) and myocardial infarction (MI) patients. The 12 lead ECG signals of both healthy control (HC) and myocardial infarction (MI) are obtained from the PTB Diagnostic ECG Database.
机译:心电图(ECG)是心脏电活动的记录。对于不同的病理,在正常的ECG信号中观察到不同的变化。本文利用小波分解和特征空间分析对12种前导心电信号的特征进行了分析。小波分解将ECG信号中存在的诊断信息分布在不同的子带中。观察到,对于心肌梗塞患者,ECG信号的变化反映在统计参数(均值,方差,标准差和熵)和每个子带的子波系数的子波能量中,这些子波能量是用母子波分解后计算得出的以及从特征空间中子带矩阵获得的协方差矩阵计算出的特征值中。因此,统计参数以及小波能量和特征值可以用作将ECG信号分类为健康对照(HC)和心肌梗塞(MI)患者的训练特征。可从PTB诊断ECG数据库中获得健康对照(HC)和心肌梗塞(MI)的12个主要ECG信号。

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