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PDNet: A Convolutional Neural Network Has Potential to be Deployed on Small Intelligent Devices for Arrhythmia Diagnosis

机译:PDANET:卷积神经网络有可能部署在用于心律失常诊断的小型智能设备上

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摘要

Heart arrhythmia is a group of irregular heartbeat conditions and is usually detected by electrocardiograms (ECG) signals. Over the past years, deep learning methods have been developed to classify different types of heart arrhythmias through ECG based on computer-aided diagnosis systems (CADs), but these deep learning methods usually cannot trade-off between classification performance and parameters of deep learning methods. To tackle this problem, this work proposes a convolutional neural network (CNN) model named PDNet to recognize different types of heart arrhythmias efficiently. In the PDNet, a convolutional block named PDblock is devised, which is comprised of a pointwise convolutional layer and a depthwise convolutional layer. Furthermore, an improved loss function is utilized to improve the results of heart arrhythmias classification. To verify the proposed CNN model, extensive experiments are conducted on public MIT-BIH ECG databases. The experimental results demonstrate that the proposed PDNet achieves an accuracy of 98.2% accuracy and outperforms state-of-the-art methods about 2%.
机译:心脏心律失常是一组不规则的心跳条件,通常通过心电图(ECG)信号检测。在过去几年中,通过基于计算机辅助诊断系统(CADS),通过ECG对深度学习方法进行了分类,以通过ECG对不同类型的心脏心律失常进行分类,但这些深度学习方法通​​常无法在深度学习方法的分类性能和参数之间进行权衡。 。为了解决这个问题,这项工作提出了一个名为PDNet的卷积神经网络(CNN)模型,以有效地识别不同类型的心脏心律失常。在PDNET中,设计了一种名为Pdblock的卷积块,其由尖锐的卷积层和深度卷积层组成。此外,利用改进的损失函数来改善心律失常分类的结果。为了验证所提出的CNN模型,在公共MIT-BIH ECG数据库上进行了广泛的实验。实验结果表明,所提出的PDNET实现了98.2%的精度和优于最先进的方法的准确性,最先进的方法约为2%。

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