基于深度学习的心律不齐分类中患者间、患者内部和患者特异性训练的研究。

IF 1.6 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS
Reza Bahrami, Ali Mohammad Fotouhi
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引用次数: 0

摘要

心电图的有效诊断是评估心脏功能最简单、最快捷的方法之一。近十年来,人们已经进行了各种尝试,以自动分类心电图信号,以检测基于深度学习的心律失常。然而,由于缺乏关于如何将数据库划分为训练和测试数据集的综合标准以及为此目的使用的各种方法,因此无法对许多研究进行公平的比较。创建对最终结果有很大影响的训练和测试数据集的主要标准之一是它们的分布范式。为此目的有三种范例,包括患者间、患者内和患者特异性。在本研究中,我们详细研究了这三种范式对基于cnn的深度学习模型将心律失常分为五类的最终结果的影响。在标准心律失常数据集上的实验结果表明,患者特异性在所有指标上达到了最佳的平均性能。此外,这种训练模式更实用,可用于创建用于心电心律失常分类的患者定制设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Investigation of Inter-Patient, Intra-Patient, and Patient-Specific Based Training in Deep Learning for Classification of Heartbeat Arrhythmia.

Effective diagnosis of electrocardiogram (ECG) is one of the simplest and fastest ways to assess the heart's function. In the recent decade, various attempts have been made to automate the classification of electrocardiogram signals to detect heartbeat arrhythmias based on deep learning. However, due to the lack of a comprehensive standard for how to divide the database into the train and test datasets and the variety of methods used for this purpose, it is not possible to make a fair comparison between many of these studies. One of the main criteria for creating train and test datasets that have a great impact on the final results is their distribution paradigm. There are three paradigms for this purpose, including Inter-Patient, Intra-Patient, and Patient-Specific. In this research, we have conducted a detailed study of the impact of these three paradigms on the final results obtained from a CNN-based deep learning model for the classification of heartbeat arrhythmia into five classes. The experimental results on the standard arrhythmia dataset show that the Patient-Specific reached the best average performance in all of the metrics. Also, this training pattern is more practical and can be employed to create patient customized devices for the classification of ECG arrhythmia.

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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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