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[Research on Arrhythmia Classification Algorithm Based on Adaptive Multi-Feature Fusion Network].

Sheng wu yi xue gong cheng xue za zhi = Journal of biomedical engineering = Shengwu yixue gongchengx...(2025)

Faculty of Applied Sciences

Cited 0|Views4
Abstract
Deep learning method can be used to automatically analyze electrocardiogram (ECG) data and rapidly implement arrhythmia classification, which provides significant clinical value for the early screening of arrhythmias. How to select arrhythmia features effectively under limited abnormal sample supervision is an urgent issue to address. This paper proposed an arrhythmia classification algorithm based on an adaptive multi-feature fusion network. The algorithm extracted RR interval features from ECG signals, employed one-dimensional convolutional neural network (1D-CNN) to extract time-domain deep features, employed Mel frequency cepstral coefficients (MFCC) and two-dimensional convolutional neural network (2D-CNN) to extract frequency-domain deep features. The features were fused using adaptive weighting strategy for arrhythmia classification. The paper used the arrhythmia database jointly developed by the Massachusetts Institute of Technology and Beth Israel Hospital (MIT-BIH) and evaluated the algorithm under the inter-patient paradigm. Experimental results demonstrated that the proposed algorithm achieved an average precision of 75.2%, an average recall of 70.1% and an average F 1-score of 71.3%, demonstrating high classification accuracy and being able to provide algorithmic support for arrhythmia classification in wearable devices.
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要点】:本研究提出了一种基于自适应多特征融合网络的失常分类算法,通过深度学习技术自动分析心电图数据,有效解决了在有限异常样本监督下如何有效选择失常特征的问题。

方法】:算法通过提取ECG信号的RR间隔特征,运用一维卷积神经网络(1D-CNN)提取时域深度特征,采用梅尔频率倒谱系数(MFCC)和二维卷积神经网络(2D-CNN)提取频域深度特征,并使用自适应加权策略融合特征以进行失常分类。

实验】:实验使用了麻省理工学院和贝斯以色列医院联合开发的失常数据库(MIT-BIH),在患者间范式下评估算法。实验结果显示,所提算法的平均精确度为75.2%,平均召回率为70.1%,平均F1得分为71.3%,显示出高分类精度,并可为可穿戴设备中的失常分类提供算法支持。