Identification and Classification of Electrocardiogram Signals Based on Convolutional Recurrent Neural Network

Jinwei Ma, Shengping Liu, Guoming Chen
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引用次数: 2

Abstract

Electrocardiogram (ECG)signals are important sign signal of human heart health. Arrhythmia is one of the main features of heart disease. Therefore, ECG signal recognition and classification have important clinical significance. In this paper, the ECG signals in the MIT - BIH standard library were used as sample data, which were identified and classified based on the algorithm of convolutional recurrent neural network (CRNN)in order to realize the intelligent identification and classification of ECG signals. The R-wave peak location and heartbeat segmentation of the ECG signals were performed on the sample data using the differential threshold method, and a convolutional recurrent neural network was constructed to identify and classify the signals. The classification results show that the overall recognition rate of ECG signals in the MIT - BIH database sample is 98.81 %, the recognition rate of normal ECG signals is up to 99.67%. The results show that the CRNN has strong generalization ability, fast convergence rate and a good recognition classification rate for ECG signals.
基于卷积递归神经网络的心电图信号识别与分类
心电图信号是反映人体心脏健康状况的重要信号。心律失常是心脏病的主要特征之一。因此,心电信号的识别与分类具有重要的临床意义。本文以MIT - BIH标准库中的心电信号为样本数据,基于卷积递归神经网络(CRNN)算法对其进行识别和分类,实现对心电信号的智能识别和分类。采用差分阈值法对样本数据进行心电信号的r波峰定位和心跳分割,并构建卷积递归神经网络对信号进行识别和分类。分类结果表明,MIT - BIH数据库样本对心电信号的总体识别率为98.81%,对正常心电信号的识别率高达99.67%。结果表明,该神经网络泛化能力强,收敛速度快,对心电信号有较好的识别分类率。
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