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Cardiac Arrhythmias Classification Method Based on MUSIC, Morphological Descriptors, and Neural Network

机译:基于MUSIC,形态学描述符和神经网络的心律失常分类方法

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An electrocardiogram (ECG) beat classification scheme based on multiple signal classification (MUSIC) algorithm, morphological descriptors, and neural networks is proposed for discriminating nine ECG beat types. These are normal, fusion of ventricular and normal, fusion of paced and normal, left bundle branch block, right bundle branch block, premature ventricular concentration, atrial premature contraction, paced beat, and ventricular flutter. ECG signal samples from MIT-BIH arrhythmia database are used to evaluate the scheme. MUSIC algorithm is used to calculate pseudospectrum of ECG signals. The low-frequency samples are picked to have the most valuable heartbeat information. These samples along with two morphological descriptors, which deliver the characteristics and features of all parts of the heart, form an input feature vector. This vector is used for the initial training of a classifier neural network. The neural network is designed to have nine sample outputs which constitute the nine beat types. Two neural network schemes, namely multilayered perceptron (MLP) neural network and a probabilistic neural network (PNN), are employed. The experimental results achieved a promising accuracy of 99.03% for classifying the beat types using MLP neural network. In addition, our scheme recognizes NORMAL class with 100% accuracy and never misclassifies any other classes as NORMAL.
机译:提出了一种基于多信号分类(MUSIC)算法,形态学描述符和神经网络的心电图(ECG)心跳分类方案,用于区分九种心电图心跳类型。这些是正常的,心室与正常的融合,起搏与正常的融合,左束支传导阻滞,右束支传导阻滞,心室早搏,心房过早收缩,搏动搏动和心室扑动。 MIT-BIH心律失常数据库中的ECG信号样本用于评估该方案。 MUSIC算法用于计算ECG信号的伪频谱。挑选低频样本以具有最有价值的心跳信息。这些样本与两个形态描述符一起提供了输入特征向量,这些形态描述符提供了心脏所有部位的特征和特征。该向量用于分类器神经网络的初始训练。神经网络被设计为具有九种样本输出,这些样本输出构成了九种拍子类型。采用了两种神经网络方案,即多层感知器(MLP)神经网络和概率神经网络(PNN)。实验结果实现了使用MLP神经网络对节拍类型进行分类的有希望的准确性,达到了99.03%。此外,我们的方案能够以100%的准确度识别NORMAL类,而不会将任何其他类误分类为NORMAL。

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