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Multi-Class Cardiovascular Diseases Diagnosis from Electrocardiogram Signals using 1-D Convolution Neural Network

机译:使用一维卷积神经网络从心电图信号诊断多类心血管疾病

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The electrocardiogram (ECG) is an important signal in the health informatics for the detection of cardiac abnormalities. There have been several researches on using machine learning techniques for analyzing ECG. However, they need additional computation owning to ECG signals challenges. We introduce a new architecture of 1-D convolution neural network (CNN) to diagnose arrhythmia diseases automatically. The proposed architecture consists of four convolution layers, three pooling layers, and three fully connected layers evaluated on the arrhythmia dataset. All previous researches are conducted to classify healthy people from people with Arrhythmia disease. In this paper, we propose to go further multiclass classification with two classes of cardiac diseases and one class of healthy people. The results are compared with common 1-D CNN and seven different classifiers. The experimental results demonstrate that the proposed architecture is superior to existing classifiers and also competitive with state of the art in terms of accuracy.
机译:心电图(ECG)是健康信息学中检测心脏异常的重要信号。关于使用机器学习技术来分析ECG的研究已经很多。但是,由于ECG信号挑战,他们需要进行其他计算。我们介绍了一种一维卷积神经网络(CNN)的新架构来自动诊断心律失常疾病。所提出的体系结构由在心律不齐数据集上评估的四个卷积层,三个池化层和三个完全连接的层组成。进行了所有先前的研究,以将健康人与心律失常疾病的人进行分类。在本文中,我们建议对两类心脏病和一类健康人进行进一步的多类分类。将结果与常见的一维CNN和七个不同的分类器进行比较。实验结果表明,所提出的体系结构优于现有的分类器,并且在准确性方面也与现有技术竞争。

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