Gan Y, Shi J, Gao L, He W
School of Mechanical Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.
Faculty of Science and Engineering, Chuo University, Tokyo 112-0003, Japan.
Nan Fang Yi Ke Da Xue Xue Bao. 2021 Aug 31;41(9):1296-1303. doi: 10.12122/j.issn.1673-4254.2021.09.02.
We propose a parallel neural network classification method to improve the performance of classification of 4 types of arrhythmias: normal beat, supraventricular ectopic beat, ventricular ectopic beat and fused beat.
Preprocessing was performed including denoising of ECG signal, segmentation of small-scale heartbeat and large-scale heartbeat and data enhancement. Based on deep learning theory, densely connected convolutional network was applied to improve the limitation of waveform feature extraction, and bidirectional long short-term memory network and efficient channel attention network were combined to enhance the function of time series features and important features of the waveform. The parallel network structure was adopted, and the waveform features of small- scale heartbeat and large-scale heartbeat were input to improve the accuracy of arrhythmia classification at the same time. Softmax was used to carry out the 4 classification tasks of arrhythmia by the parallel network model.
The proposed method was verified using MIT-BIH Arrhythmia Database and 3 groups of experiments. The experiments for comparing the classification performance of multiple parallel network models and that of each classification model under different heartbeat input methods showed that the proposed classification model had an overall accuracy, average sensitivity and average specificity of 99.36%, 96.08% and 99.41%, respectively. Convergence performance analysis of the parallel network classification model showed that the training time of the classification model was 41 s.
The parallel multi-network classification method can improve the average sensitivity, specificity and training time while maintaining a high overall accuracy, and may thus provide a new technical solution for clinical diagnosis of arrhythmia.
我们提出一种并行神经网络分类方法,以提高对4种心律失常类型的分类性能,这4种类型分别为正常搏动、室上性异位搏动、室性异位搏动和融合搏动。
进行了预处理,包括心电图信号去噪、小规模心跳和大规模心跳分割以及数据增强。基于深度学习理论,应用密集连接卷积网络来改善波形特征提取的局限性,并结合双向长短期记忆网络和高效通道注意力网络来增强时间序列特征和波形重要特征的功能。采用并行网络结构,输入小规模心跳和大规模心跳的波形特征,以同时提高心律失常分类的准确性。通过并行网络模型使用Softmax进行心律失常的4种分类任务。
使用麻省理工学院 - 贝斯以色列女执事医疗中心心律失常数据库和3组实验对所提出的方法进行了验证。比较多个并行网络模型以及不同心跳输入方法下每个分类模型的分类性能的实验表明,所提出的分类模型的总体准确率、平均灵敏度和平均特异性分别为99.36%、96.08%和99.41%。并行网络分类模型的收敛性能分析表明,分类模型的训练时间为41秒。
并行多网络分类方法在保持较高总体准确率的同时,可以提高平均灵敏度、特异性和训练时间,从而可能为心律失常的临床诊断提供一种新的技术解决方案。