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Performance evaluation of Radial Basis Function Neural Network on ECG beat classification

机译:径向基函数神经网络对心电图心跳分类的性能评估

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In this study radial basis function neural network (RBFNN) was trained by different methods to study performance of each method on classification of ECG beats. To train the neural networks six types of beats including, normal beat (N), premature ventricular contraction (PVC), fusion of ventricular and normal beat (F), atrial premature beat (A), right bundle branch blok beat (R), and fusion of paced and normal beat (f) were selected from the MIT-BIH arrhythmia database. Training of the neural networks were performed with a training set which includes 100 beats for each class. Four time domain (morphological) features were extracted from the beats for classification process. Then several experiments were performed over the test set, and it was observed that, combining RBFNN with different methods has a positive effect on the classification performance of ECG beats.
机译:在这项研究中,通过不同的方法训练了径向基函数神经网络(RBFNN),以研究每种方法对心电图搏动分类的性能。要训​​练神经网络六种类型的搏动,包括正常搏动(N),室性早搏(PVC),心室搏动与正常搏动(F),房性早搏(A),右束支大块搏动(R),从MIT-BIH心律失常数据库中选择节奏和正常搏动(f)的融合。用训练集执行神经网络的训练,该训练集每个班级包括100个节拍。从节拍中提取四个时域(形态)特征以进行分类过程。然后,在测试集上进行了几次实验,发现将RBFNN与不同方法结合使用对ECG搏动的分类性能有积极影响。

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