SE-ECGNet:多导联心电图数据的多尺度SE-Net

Jiabo Chen, Tianlong Chen, Bin Xiao, Xiuli Bi, Yongchao Wang, Han Duan, Weisheng Li, Junhui Zhang, Xu Ma
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引用次数: 8

摘要

心血管疾病是一种危及生命的疾病,有2000多万人死于心脏病。因此,开发一种客观、高效的计算机辅助心脏病诊断工具已成为一个有前景的研究课题。本文设计了一种多尺度共享卷积核模型。在该模型中,设计了两条路径来提取心电图特征。两条路径的卷积核大小不同,分别为3×1和5×1。这种多尺度设计使得网络可以获得不同的感受场,捕获不同尺度的信息,显著提高了分类效果。在模型的每条路径上都加入了挤压激励网络(SE-Net)。SE-Net的注意机制根据损失来学习特征权重,使得有效的特征映射具有较大的权重,而无效或低效果的特征映射具有较小的权重。我们的队名是CQUPT_ECG。我们的方法获得了0.640的挑战验证分数和0.411的完整测试分数,在41个官方排名中排名第8。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SE-ECGNet: Multi-scale SE-Net for Multi-lead ECG Data
Cardiovascular disease is a life-threatening condition, and more than 20 million people die from heart disease. Therefore, developing an objective and efficient computer-aided tool for diagnosis of heart disease has become a promising research topic. In this paper, we design a multi-scale shared convolution kernel model. In this model, two paths are designed to extract the features of electrocardiogram(ECG). The two paths have different convolution kernel sizes, which are 3×1 and 5×1, respectively. Such multi-scale design enables the network to obtain different receptive fields and capture information at different scales, which significantly improves the classification effect. And squeeze-and-excitation networks (SE-Net) are added to every path of the model. The attention mechanism of SE-Net learns feature weights according to loss, which makes the effective feature maps have large weights and the ineffective or low-effect feature maps have small weights. Our team name is CQUPT_ECG. Our approach achieved a challenge validation score of 0.640, and full test score of 0.411, placing us 8 out of 41 in the official ranking.
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