用于心肌梗死远程监测的多通道轻量级卷积神经网络

Yangjie Cao, Tingting Wei, Nan Lin, Di Zhang, J. Rodrigues
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引用次数: 7

摘要

远程心肌梗死(RMI)监测利用电子设备检测心电图变化,在紧急情况下及时通知医生,是挽救患者生命的有效解决方案。在本文中,我们提出了多通道轻量级CNN (Multi-Channel Lightweight CNN, MCL-CNN),它结合了来自4个导联(v2, v3, v5和aVL)的心电图信号来检测前路心肌梗死(AMI)。它的多通道设计允许每个引线的卷积相互独立,并允许它们找到最适合它们的滤波器。此外,在MCL-CNN模型中使用不同的卷积组合构建轻量级网络,使得网络在计算运行时参数方面具有一定优势,更适合于移动设备。同时,我们利用平衡交叉熵来解决数据集类不平衡的问题。这些策略使得MCL-CNN适用于多导联心电处理。利用从PTB诊断数据库中获得的公开心电图数据集进行实验,结果表明MCL-CNN的准确率为96.65%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Channel Lightweight Convolutional Neural Network for Remote Myocardial Infarction Monitoring
Remote Myocardial Infarction (RMI) monitoring uses electronic devices to detect the electrocardiogram changes and inform the doctor in emergency conditions, which is an effective solution to save the patient's life. In this paper, we propose the Multi-Channel Lightweight CNN (MCL-CNN), which combines electrocardiogram signals from four leads (v2, v3, v5 and aVL) to detect the Anterior MI (AMI). Its multi-channel design allows the convolution of each lead to be independent of each other, and allowing them to find the filter that best suits them. In addition, constructing a lightweight network using different convolutional combinations in the MCL-CNN model, which makes the network has certain advantages in computing runtime parameters and more suitable for mobile devices. Meanwhile, we use balanced cross entropy to solve the problem of dataset class imbalance. These strategies make the MCL-CNN suitable for multi-lead ECG processing. Experimental results using public ECG datasets obtained from the PTB diagnostic database demonstrate that MCL-CNN's accuracy is 96.65%.
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