S4D-ECG:用于心脏异常分类的最新浅层模型。

IF 1.6 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS Cardiovascular Engineering and Technology Pub Date : 2024-06-01 Epub Date: 2024-02-08 DOI:10.1007/s13239-024-00716-3
Zhaojing Huang, Luis Fernando Herbozo Contreras, Leping Yu, Nhan Duy Truong, Armin Nikpour, Omid Kavehei
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引用次数: 0

摘要

目的:本研究介绍了一种专门用于处理未经处理的 12 导联心电图(ECG)数据的算法,其主要目的是检测心脏异常:所提议的模型将对角线状态空间序列(S4D)模型集成到其架构中,充分利用其捕捉时间序列数据动态的有效性。S4D 模型设计有用于处理原始输入数据的堆叠 S4D 层,以及用于预测异常类型的使用密集层的简化解码器。实验优化确定了 S4D 层的最佳数量,在计算效率和预测性能之间取得了平衡。这种全面的方法确保了模型适合在功能有限的硬件设备上进行实时处理,为心脏监测提供了一种精简而有效的解决方案:该算法的显著特点之一是具有很强的抗噪能力,使算法的平均 F1 分数达到 81.2%,泛化 AUROC 达到 95.5%。该模型专门对导联 II 心电信号进行了测试,结果表明其性能稳定,F1 分数为 79.5%,AUROC 为 95.7%:该算法的特点是消除了预处理特征,并采用了低复杂度架构,由于易于实现,因此适合在众多计算设备上实施。因此,该算法在分析真实世界心电图数据的实际应用中具有相当大的潜力。该模型可以放在云端进行诊断。该模型还在单独的心电图导联 II 上进行了测试,并取得了可喜的结果,支持其在设备上的应用潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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S4D-ECG: A Shallow State-of-the-Art Model for Cardiac Abnormality Classification.

Purpose: This study introduces an algorithm specifically designed for processing unprocessed 12-lead electrocardiogram (ECG) data, with the primary aim of detecting cardiac abnormalities.

Methods: The proposed model integrates Diagonal State Space Sequence (S4D) model into its architecture, leveraging its effectiveness in capturing dynamics within time-series data. The S4D model is designed with stacked S4D layers for processing raw input data and a simplified decoder using a dense layer for predicting abnormality types. Experimental optimization determines the optimal number of S4D layers, striking a balance between computational efficiency and predictive performance. This comprehensive approach ensures the model's suitability for real-time processing on hardware devices with limited capabilities, offering a streamlined yet effective solution for heart monitoring.

Results: Among the notable features of this algorithm is its strong resilience to noise, enabling the algorithm to achieve an average F1-score of 81.2% and an AUROC of 95.5% in generalization. The model underwent testing specifically on the lead II ECG signal, exhibiting consistent performance with an F1-score of 79.5% and an AUROC of 95.7%.

Conclusion: It is characterized by the elimination of pre-processing features and the availability of a low-complexity architecture that makes it suitable for implementation on numerous computing devices because it is easily implementable. Consequently, this algorithm exhibits considerable potential for practical applications in analyzing real-world ECG data. This model can be placed on the cloud for diagnosis. The model was also tested on lead II of the ECG alone and has demonstrated promising results, supporting its potential for on-device application.

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来源期刊
Cardiovascular Engineering and Technology
Cardiovascular Engineering and Technology Engineering-Biomedical Engineering
CiteScore
4.00
自引率
0.00%
发文量
51
期刊介绍: Cardiovascular Engineering and Technology is a journal publishing the spectrum of basic to translational research in all aspects of cardiovascular physiology and medical treatment. It is the forum for academic and industrial investigators to disseminate research that utilizes engineering principles and methods to advance fundamental knowledge and technological solutions related to the cardiovascular system. Manuscripts spanning from subcellular to systems level topics are invited, including but not limited to implantable medical devices, hemodynamics and tissue biomechanics, functional imaging, surgical devices, electrophysiology, tissue engineering and regenerative medicine, diagnostic instruments, transport and delivery of biologics, and sensors. In addition to manuscripts describing the original publication of research, manuscripts reviewing developments in these topics or their state-of-art are also invited.
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