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研究使用标准 12 导联心电图数据进行节律类型心电图分类问题。

Study on the use of standard 12-lead ECG data for rhythm-type ECG classification problems.

机构信息

HUINNO Co., Ltd., Seoul, Republic of Korea.

HUINNO Co., Ltd., Seoul, Republic of Korea.

出版信息

Comput Methods Programs Biomed. 2022 Feb;214:106521. doi: 10.1016/j.cmpb.2021.106521. Epub 2021 Nov 10.

Abstract

BACKGROUND AND OBJECTIVES

Most deep-learning-related methodologies for electrocardiogram (ECG) classification are focused on finding an optimal deep-learning architecture to improve classification performance. However, in this study, we proposed a methodology for fusion of various single-lead ECG data as training data in the single-lead ECG classification problem.

METHODS

We used a squeeze-and-excitation residual network (SE-ResNet) with 152 layers as the baseline model. We compared the performance of a 152-layer SE-ResNet trained on ECG signals from various leads of a standard 12-lead ECG system to that of a 152-layer SE-ResNet trained on only single-lead ECG data with the same lead information as the test set. The experiments were performed using five different types of rhythm-type single-lead ECG data obtained from Konkuk University Hospital in South Korea.

RESULTS

Experiment results based on the combination from the relationship experiments of the leads showed that lead -aVR or II revealed the best classification performance. In case of -aVR, this model achieved a high F1 score for normal (98.7%), AF (98.2%), APC (95.1%), and VPC (97.4%), indicating its potential for practical use in the medical field.

CONCLUSION

We concluded that the 152-layer SE-ResNet trained by fusion of single-lead ECGs had better classification performance than the 152-layer SE-ResNet trained on only single-lead ECG data, regardless of the single-lead ECG signal type. We also found that the best performance directions for single-lead ECG classification are Lead -aVR and II.

摘要

背景与目的

大多数与深度学习相关的心电图 (ECG) 分类方法都侧重于寻找最佳的深度学习架构来提高分类性能。然而,在本研究中,我们提出了一种将各种单导联 ECG 数据融合为训练数据的方法,用于单导联 ECG 分类问题。

方法

我们使用具有 152 层的压缩激励残差网络 (SE-ResNet) 作为基线模型。我们比较了在标准 12 导联 ECG 系统的各种导联的 ECG 信号上训练的 152 层 SE-ResNet 与仅在与测试集具有相同导联信息的单导联 ECG 数据上训练的 152 层 SE-ResNet 的性能。实验使用来自韩国孔敬大学医院的五种不同类型的节律型单导联 ECG 数据进行。

结果

基于导联关系实验的组合的实验结果表明,导联-aVR 或 II 显示出最佳的分类性能。在-aVR 的情况下,该模型在正常 (98.7%)、AF (98.2%)、APC (95.1%) 和 VPC (97.4%) 方面获得了高 F1 分数,表明其在医学领域具有实际应用的潜力。

结论

我们得出结论,与仅在单导联 ECG 数据上训练的 152 层 SE-ResNet 相比,融合单导联 ECG 训练的 152 层 SE-ResNet 具有更好的分类性能,无论单导联 ECG 信号类型如何。我们还发现,单导联 ECG 分类的最佳性能方向是导联-aVR 和 II。

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