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Deep Learning Based Patient-Specific Classification of Arrhythmia on ECG signal

机译:基于深度学习的ECG信号对心律失常的患者特异性分类

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The classification of the heartbeat type is an essential function in the automatical electrocardiogram (ECG) analysis algorithm. The guideline of the ANSI/AAMI EC57 defined five types of heartbeat: non-ectopic or paced beat (N), supraventricular ectopic beat (S), ventricular ectopic beat (V), fusion of a ventricular and normal beat (F), pace beat or fusion of a paced and a normal or beat that cannot be classified (Q). In the work, a deep neural network based method was proposed to classify these five types of heartbeat. After removing the noise from ECG signals by a low-pass filter, the two-lead heartbeat segments with 2-s length were generated on the filtered signals, and classified by an adaptive ResNet model. The proposed method was evaluated on the MIT-BIH Arrhythmia Database with the patient-specific pattern. The overall accuracy was 98.6% and sensitivity of N, S, V, F were 99.4%, 85.4%, 96.6%, 90.6% respectively. Experimental results show that the proposed method achieved a good performance, and would be useful in the clinic practice.
机译:心跳型的分类是自动心电图(ECG)分析算法中的基本函数。 ANSI / AAMI EC57的指南定义了五种类型的心跳:非异位或节奏搏动(N),髁间畸形搏动,心室异位搏动(V),融合心室和正常节拍(F),步伐节奏的节拍或融合和无法分类的正常或节拍(Q)。在工作中,提出了一种深度神经网络的方法,以分类这五种类型的心跳。通过低通滤波器从ECG信号移除噪声后,在滤波信号上产生具有2-S长度的双引导心跳段,并由Adaptive Reset模型分类。用患者特异性模式对MIT-BIH心律失常数据库评估所提出的方法。总体准确性为98.6%,N,S,V,F的敏感性分别为99.4%,85.4%,分别为96.6%,90.6%。实验结果表明,该方法达到了良好的性能,并且可用于临床实践。

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