Recognition Method of Arrhythmia Based on Variable Weight Singular Spectrum Analysis

被引:0
|
作者
Li H.-R. [1 ]
Ren Z.-Y. [1 ]
Huang Y.-H. [1 ]
Yu X. [1 ]
机构
[1] School of Information Science & Engineering, Northeastern University, Shenyang
关键词
Arrhythmia recognition; Deep learning; Electrocardiogram(ECG); Random forest; Singular spectrum analysis(SSA);
D O I
10.12068/j.issn.1005-3026.2022.03.001
中图分类号
学科分类号
摘要
Many existing arrhythmia researches focus on the separation of different frequency characteristic components in the ECG signal. However, the contribution of different subsequences to the final target decision-making is lack of research and analysis. In order to enhance the impact of high-contribution subsequences on the classifier, a recognition method combining variable weight singular spectrum analysis and deep learning is proposed. Multiple subsequences are obtained through singular spectrum analysis.The Gini coefficient under the random forest is calculated by the singular value of each sequence and used as the weight. The sequence samples with variable weights are used to train the neural network model, which can mine useful information more efficiently and further improve the recognition accuracy. The accuracy rate of final arrhythmia recognition is 98.35%, and Macro-F1 is 97.95%. Compared with the traditional fixed weight, the proposed recognition method of variable weight has a significant improvement in various performance indicators. © 2022, Editorial Department of Journal of Northeastern University. All right reserved.
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页码:305 / 312
页数:7
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