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Detection and Classification of Anterior Myocardial Infarction Using Combined Linear and Nonlinear Features of ECG Signals

机译:利用ECG信号的线性和非线性特征对心肌梗死进行检测和分类

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Timely recognition of changes occurring in the electrocardiogram(ECG) leads is important to identify anteroseptal myocardial infraction (ASMI). Many existing detection methods extract linear feature from ECG data. However, hidden information in the ECG signals can be extracted from nonlinear features. A combination of linear and nonlinear features of ECG is proposed to improve the classification of ASMI and normal subjects. Linear features related to ECG morphology contain S and T wave amplitude, negative area of S wave and ST segment derivate. Moreover, discrete wavelet transformation(DWT) is used in ECG data, and then three types of nonlinear features are obtained from the DWT coefficients, containing approximate entropy, Shannon entropy and wavelet entropy. PTB database is used to evaluate the performance of proposed method by SVM classifier. We only use lead V2 ECG signal. Our proposed method yielded classification results of 99.76% accuracy. The sensitivity for normal is 99.83% and for ASMI is 99.71%. Our proposed method can be used for locating the ASMI by studying one lead and there is no need for analyzing other leads. Thus, our proposed algorithm can assist the physicians to locate ASMI accurately.
机译:及时识别心电图(ECG)导线中发生的变化对于识别前房间隔心肌梗死(ASMI)很重要。许多现有的检测方法从ECG数据中提取线性特征。但是,可以从非线性特征中提取ECG信号中的隐藏信息。提出了将心电图的线性和非线性特征相结合的方法,以改善ASMI和正常人的分类。与ECG形态相关的线性特征包括S波和T波振幅,S波的负面积和ST段导数。此外,在ECG数据中使用离散小波变换(DWT),然后从DWT系数中获得三种类型的非线性特征,包括近似熵,香农熵和小波熵。使用PTB数据库通过SVM分类器评估所提出方法的性能。我们仅使用V2导联心电图信号。我们提出的方法产生了99.76%的准确度的分类结果。正常的敏感性为99.83%,ASMI的敏感性为99.71%。我们提出的方法可用于通过研究一根引线来定位ASMI,而无需分析其他引线。因此,我们提出的算法可以帮助医生准确地定位ASMI。

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