基于迁移学习方法的心电图多类心脏异常检测

S. Hadiyoso, S. Aulia, I. D. Irawati
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引用次数: 0

摘要

心脏是循环系统中的重要器官之一。定期检查对预防心脏病非常重要。最基本的检查是血压,然后进一步的检查与使用心电图(ECG)评估心脏的电活动有关。心电图载有关于各种心脏功能异常的重要信息。已经提出了几种自动分类技术来促进诊断。然而,并非所有的数字ECG设备都提供用于分析的原始数据。基于图像的ECG分类方法可以是分类中的一种替代方法。因此,本研究提出了基于信号图像对心电信号进行分类。所提出的分类方法使用VGG、AlexNet和DenseNet架构的迁移学习。用于多类别心电图分类的方法包括正常、PVC、心房颤动、AFL、双联、LBBB和APB。模拟结果产生了92%的最佳准确度和92%的F1分数。使用DenseNet架构在60个时代实现了最佳性能。本研究有望为心电信号分类提供一种新的参考技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Class Heart Abnormalities Detection Based on ECG Graph Using Transfer Learning Method
The heart is one of the vital organs in the circulatory system. Regular checkups are very important to prevent heart disease. The most basic examination is blood pressure then further examination is related to the evaluation of the electrical activity of the heart using an electrocardiogram (ECG). The ECG carries important information regarding various abnormalities of heart function. Several automated classification techniques have been proposed to facilitate diagnosis. However, not all digital ECG devices provide raw data for analysis. ECG classification method based on images can be an alternative in classification. Therefore, in this study, it is proposed to classify ECG based on signal images. The proposed classification method uses transfer learning with VGG, AlexNet, and DenseNet architectures. The method used for the classification of multi-class ECG consists of normal, PVC, Atrial Fibrilation, AFL, Bigeminy, LBBB, and APB. The simulation results generate the best accuracy of 92% and F1-score of 92%. Best performance is achieved using DenseNet architecture at 60 epochs. This study is expected to be a new reference technique in the classification of ECG signals.
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