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基于注意力机制的信息特征融合图像的心律失常分类深度学习建模

Deep Learning Modeling of Cardiac Arrhythmia Classification on Information Feature Fusion Image with Attention Mechanism.

作者信息

Zhang Mingming, Jin Huiyuan, Zheng Bin, Luo Wenbo

机构信息

Faculty of Science, Beijing University of Technology, Beijing 100124, China.

Zhengzhou Aerotropolis Institute of Artificial Intelligence, Zhengzhou 451162, China.

出版信息

Entropy (Basel). 2023 Aug 26;25(9):1264. doi: 10.3390/e25091264.

Abstract

The electrocardiogram (ECG) is a crucial tool for assessing cardiac health in humans. Aiming to enhance the accuracy of ECG signal classification, a novel approach is proposed based on relative position matrix and deep learning network information features for the classification task in this paper. The approach improves the feature extraction capability and classification accuracy via techniques of image conversion and attention mechanism. In terms of the recognition strategy, this paper presents an image conversion using relative position matrix information. This information is utilized to describe the relative spatial relationships between different waveforms, and the image identification is successfully applied to the Gam-Resnet18 deep learning network model with a transfer learning concept for classification. Ultimately, this model achieved a total accuracy of 99.30%, an average positive prediction rate of 98.76%, a sensitivity of 98.90%, and a specificity of 99.84% with the relative position matrix approach. To evaluate the effectiveness of the proposed method, different image conversion techniques are compared on the test set. The experimental results demonstrate that the relative position matrix information can better reflect the differences between various types of arrhythmias, thereby improving the accuracy and stability of classification.

摘要

心电图(ECG)是评估人类心脏健康的关键工具。本文旨在提高心电图信号分类的准确性,提出了一种基于相对位置矩阵和深度学习网络信息特征的新颖方法用于分类任务。该方法通过图像转换和注意力机制技术提高了特征提取能力和分类准确率。在识别策略方面,本文提出了一种利用相对位置矩阵信息的图像转换方法。该信息用于描述不同波形之间的相对空间关系,并将图像识别成功应用于具有迁移学习概念的Gam-Resnet18深度学习网络模型进行分类。最终,该模型采用相对位置矩阵方法实现了总准确率99.30%、平均阳性预测率98.76%、灵敏度98.90%和特异性99.84%。为了评估所提方法的有效性,在测试集上比较了不同的图像转换技术。实验结果表明,相对位置矩阵信息能够更好地反映各类心律失常之间的差异,从而提高分类准确率和稳定性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cf89/10527647/d36659237c24/entropy-25-01264-g001.jpg

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