An end-end arrhythmia diagnosis model based on deep learning neural network with multi-scale feature extraction

被引:0
作者
Li Jiahao
Luo Shuixian
You Keshun
Zen Bohua
机构
[1] Ganzhou Polytechnic,
[2] The First Affiliated Hospital of Gannan Medical College,undefined
[3] Jiangxi University of Science and Technology,undefined
来源
Physical and Engineering Sciences in Medicine | 2023年 / 46卷
关键词
Heartbeat rhythm signal; Feature engineering; End-to-end deep learning arrhythmia; Diagnosis model; Multi-scale features; Adaptive online convolutional network in time (AOCT);
D O I
暂无
中图分类号
学科分类号
摘要
This study presents an innovative end-to-end deep learning arrhythmia diagnosis model that aims to address the problems in arrhythmia diagnosis. The model performs pre-processing of the heartbeat signal by automatically and efficiently extracting time-domain, time-frequency-domain and multi-scale features at different scales. These features are imported into an adaptive online convolutional network-based classification inference module for arrhythmia diagnosis. Experimental results show that the AOCT-based deep learning neural network diagnostic module has excellent parallel computing and classification inference capabilities, and the overall performance of the model improves with increasing scales. In particular, when multi-scale features are used as inputs, the model is able to learn both time-frequency domain information and other rich information, thus significantly improving the performance of the end-to-end diagnostic model. The final results show that the AOCT-based deep learning neural network model has an average accuracy of 99.72%, a recall of 99.62%, and an F1 score of 99.3% in diagnosing four common heart diseases.
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页码:1341 / 1352
页数:11
相关论文
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