1D CNN model for ECG diagnosis based on several classifiers

M. Bassiouni, I. Hegazy, N. Rizk, E. El-Dahshan, A. Salem
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Abstract

One of the main reasons for human death is diseases caused by the heart. Detecting heart diseases in the early stage can stop heart failure or any damage related to the heart muscle. One of the main signals that can be beneficial in the diagnosis of diseases of the heart is the electrocardiogram (ECG). This paper concentrates on the diagnosis of four types of ECG records such as myocardial infarction (MYC), normal (N), variances in the ST-segment (ST), and supraventricular arrhythmia (SV). The methodology captures the data from six main datasets, and then the ECG records are filtered using a pre-processing chain. Afterward, a proposed 1D CNN model is applied to extract features from the ECG records. Then, two different classifiers are applied to test the extracted features’ performance and obtain a robust diagnosis accuracy. The two classifiers are the softmax and random forest (RF) classifiers. An experiment is applied to diagnose the four types of ECG records. Finally, the highest performance was achieved using the RF classifier, reaching an accuracy of 98.3%. The comparison with other related works showed that the proposed methodology could be applied as a medical application for the early detection of heart diseases.
基于多个分类器的1D CNN心电诊断模型
人类死亡的主要原因之一是由心脏引起的疾病。在早期发现心脏病可以阻止心力衰竭或任何与心肌有关的损伤。心电图(ECG)是诊断心脏疾病的主要信号之一。本文对心肌梗死(MYC)、正常(N)、ST段方差(ST)、室上性心律失常(SV)四种心电图记录的诊断进行了探讨。该方法从六个主要数据集中捕获数据,然后使用预处理链对心电记录进行过滤。然后,应用提出的一维CNN模型从心电记录中提取特征。然后,使用两种不同的分类器来测试提取的特征的性能,获得鲁棒的诊断精度。这两个分类器分别是softmax和random forest (RF)分类器。通过实验对四种类型的心电记录进行了诊断。最后,使用RF分类器获得了最高的性能,达到了98.3%的准确率。与其他相关工作的比较表明,所提出的方法可以作为心脏疾病早期检测的医学应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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