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Classification of ECG arrhythmias using Type-2 Fuzzy Clustering Neural Network

机译:使用2型模糊聚类神经网络对ECG心律失常进行分类

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In this study, Type-2 Fuzzy clustering neural network (T2FCNN) architecture realized for classification of electrocardiography arrhythmias is presented. Type-2 fuzzy clustering neural network is cascade structure formed by clustering and classification stages. In T2FCNN architecture, clustering stage consisted of select best patterns in all patterns that belongs to same class is executed by type-2 fuzzy c-means clustering (T2FCM). The aim of using T2FCM clustering algorithm is to reduce classification error of neural network by optimization of training pattern set. A new training set consisted of cluster centers obtained by type-2 fuzzy c-means clustering algorithm for each class as separately is formed inputs of neural network. Neural network is trained using backpropagation algorithm. Proposed structure is used classification of five ECG signal class composed normal sinus rhythm, sinus bradycardia, sinus arrhythmia, right bundle branch block and left bundle branch block. Data used in this study is obtained from Physionet database, that belongs to MIT-BIH ECG arrhythmia database. In the end of making applications, proposed T2FCNN structure is classified ECG arrhythmias with 99% detection rate.
机译:在这项研究中,提出了用于心电图心律失常分类的2型模糊聚类神经网络(T2FCNN)体系结构。类型2模糊聚类神经网络是由聚类和分类阶段形成的级联结构。在T2FCNN体系结构中,聚类阶段由类型2模糊c均值聚类(T2FCM)执行,该聚类阶段包括属于同一类的所有模式中的最佳选择模式。使用T2FCM聚类算法的目的是通过优化训练模式集来减少神经网络的分类错误。神经网络的输入构成了一个新的训练集,该训练集由通过类型2模糊c均值聚类算法分别获得的每个类的聚类中心组成。使用反向传播算法训练神经网络。拟议的结构采用五种心电图信号类别的分类,包括正常窦性心律,窦性心动过缓,窦性心律不齐,右束支传导阻滞和左束支传导阻滞。本研究中使用的数据来自Physionet数据库,该数据库属于MIT-BIH ECG心律失常数据库。在最终应用中,建议的T2FCNN结构被分类为ECG心律失常,检出率达99%。

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