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Heartbeat classification using different classifiers with non-linear feature extraction

机译:使用具有非线性特征提取功能的不同分类器进行心跳分类

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The electrocardiogram (ECG) is an important technique for heart disease diagnosis. This paper proposes a novel method for ECG beat classification. Several important issues exist in the ECG beat classification, which, if suitably addressed, may lead to development of more robust and efficient recognizers. Some of these issues include feature extraction, choice of classification approach and optimization. A new method for non-linear feature extraction of ECG signals based on empirical mode decomposition (EMD), approximate entropy (ApEn) and wavelet packet entropy is presented. The proposed method first uses EMD to decompose ECG signals into a finite number of intrinsic mode functions (IMFs), calculates the ApEn of IMFs as one feature and then obtains the wavelet packet entropy of wavelet packet coefficients as another feature. The two features are regarded as a feature vector. The support vector machine (SVM) and probabilistic neural network (PNN) are used for beat classification. The particle swarm optimization algorithm is used to optimize parameters of the PNN and SVM. The performance of the SVM classifier is slightly superior to that of the PNN classifier with 98.6% accuracy.
机译:心电图(ECG)是诊断心脏病的重要技术。本文提出了一种心电图心跳分类的新方法。 ECG搏动分类中存在几个重要问题,如果适当解决,可能会导致开发更强大和有效的识别器。其中一些问题包括特征提取,分类方法的选择和优化。提出了一种基于经验模态分解(EMD),近似熵(ApEn)和小波包熵的心电信号非线性特征提取新方法。所提出的方法首先使用EMD将ECG信号分解为有限数量的固有模式函数(IMF),计算IMF的ApEn作为一个特征,然后获得小波包系数的小波包熵作为另一个特征。这两个特征被视为特征向量。支持向量机(SVM)和概率神经网络(PNN)用于心跳分类。粒子群优化算法用于优化PNN和SVM的参数。 SVM分类器的性能以98.6%的准确性略优于PNN分类器。

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