Ma Hao, Chen Chao, Zhu Qing, Yuan Haitao, Chen Liming, Shu Minglei
Shandong Artificial Intelligence Institute, Qilu University of Technology (Shandong Academy of Sciences), Jinan 250353, China.
Qilu Hospital of Shandong University, Jinan 250012, China.
Comput Math Methods Med. 2021 Feb 2;2021:6627939. doi: 10.1155/2021/6627939. eCollection 2021.
The incidence of cardiovascular disease is increasing year by year and is showing a younger trend. At the same time, existing medical resources are tight. The automatic detection of ECG signals becomes increasingly necessary. This paper proposes an automatic classification of ECG signals based on a dilated causal convolutional neural network. To solve the problem that the recurrent neural network framework network cannot be accelerated by hardware equipment, the dilated causal convolutional neural network is adopted. Given the features of the same input and output time steps of the recurrent neural network and the nondisclosure of future information, the network is constructed with fully convolutional networks and causal convolution. To reduce the network depth and prevent gradient explosion or gradient disappearance, the dilated factor is introduced into the model, and the residual blocks are introduced into the model according to the shortcut connection idea. The effectiveness of the algorithm is verified in the MIT-BIH Atrial Fibrillation Database (MIT-BIH AFDB). In the experiment of the MIT-BIH AFDB database, the classification accuracy rate is 98.65%.
心血管疾病的发病率逐年上升且呈年轻化趋势。与此同时,现有的医疗资源紧张。心电图(ECG)信号的自动检测变得越来越必要。本文提出了一种基于扩张因果卷积神经网络的心电图信号自动分类方法。为了解决循环神经网络框架网络无法通过硬件设备加速的问题,采用了扩张因果卷积神经网络。鉴于循环神经网络相同输入和输出时间步长的特点以及未来信息的不可泄露性,该网络由全卷积网络和因果卷积构建而成。为了减少网络深度并防止梯度爆炸或梯度消失,将扩张因子引入模型,并根据捷径连接思想将残差块引入模型。该算法的有效性在麻省理工学院 - 贝斯以色列女执事医疗中心房颤数据库(MIT - BIH AFDB)中得到了验证。在MIT - BIH AFDB数据库的实验中,分类准确率为98.65%。