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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >CHAOTIC FEATURE EXTRACTION AND NEURO-FUZZY CLASSIFIER FOR ECG SIGNAL CHARACTERIZATION
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CHAOTIC FEATURE EXTRACTION AND NEURO-FUZZY CLASSIFIER FOR ECG SIGNAL CHARACTERIZATION

机译:ECG信号特征的混沌特征提取和神经模糊分类器

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In this paper, a neuro-fuzzy network is employed to classify the ECG beats based on the extracted chaotic features. Six groups of ECG beats (MIT-BIH Normal Sinus rhythm, BIDMC congestive heart failure, CU ventricular tachyarrhythmia, MIT-BIH atrial fibrillation, MIT-BIH Malignant Ventricular Arrhythmia and MIT-BIH supraventricular arrhythmia) are characterized by the six chaotic parameters including the largest Lyapunov exponent and average of the Lyapunov spectrum (related to the chaoticity of the signal), time lag and embedding dimension (related to the phase space reconstruction) and correlation dimension and approximate entropy of the signal (related to the complexity of the signal). Finally, six structures of the neuro-fuzzy network (in terms of the type of fuzzy set, the number of fuzzy sets per variable and the number of learning epochs) were employed to perform the ECG beats classification based on all extracted features for two lengths of the signals. It was found that all respective chaotic features are discriminative and they improve the classification rate of ECG beats. Also, it is shown that a minimum length of the signal is needed for exhibitive feature extraction and for the higher lengths of the signal (in time) no significant improvement is achieved in feature extraction and calculations. The criteria for the classification task are considered as accuracy, specificity and sensitivity which all together comprehensively demonstrate the capability and performance of the classification. Some conclusions are drawn and they are discussed at the end of the paper.
机译:在本文中,基于提取的混沌特征,采用神经模糊网络对心电图搏动进行分类。六组心电图节律(MIT-BIH窦性心律,BIDMC充血性心力衰竭,CU室性心律失常,MI​​T-BIH房颤,MIT-BIH恶性室性心律不齐和MIT-BIH室上性心律失常包括六个参数)最大Lyapunov指数和Lyapunov谱的平均值(与信号的混沌性有关),时滞和嵌入维数(与相空间重构有关)以及信号的相关维数和近似熵(与信号的复杂性有关) 。最后,神经模糊网络的六个结构(根据模糊集的类型,每个变量的模糊集的数量和学习时期的数量)被用于基于所有长度的两个特征提取的心电图心跳搏动分类的信号。发现所有各自的混沌特征是可区分的,并且它们提高了ECG心跳的分类率。同样,示出了表现性特征提取需要最小的信号长度,并且对于较大的信号长度(及时),特征提取和计算没有显着改善。分类任务的标准被认为是准确性,特异性和敏感性,它们共同全面地证明了分类的能力和性能。得出了一些结论,并在本文末尾进行了讨论。

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