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1D-CADCapsNet:基于一维深度胶囊网络的心电图信号冠心病检测

1D-CADCapsNet: One dimensional deep capsule networks for coronary artery disease detection using ECG signals.

机构信息

Department of Computer Engineering, Fırat University, Elazığ, Turkey.

Department of Computer Engineering, Munzur University, Tunceli, Turkey.

出版信息

Phys Med. 2020 Feb;70:39-48. doi: 10.1016/j.ejmp.2020.01.007. Epub 2020 Jan 18.

DOI:10.1016/j.ejmp.2020.01.007
PMID:31962284
Abstract

PURPOSE

Cardiovascular disease (CVD) is a leading cause of death globally. Electrocardiogram (ECG), which records the electrical activity of the heart, has been used for the diagnosis of CVD. The automated and robust detection of CVD from ECG signals plays a significant role for early and accurate clinical diagnosis. The purpose of this study is to provide automated detection of coronary artery disease (CAD) from ECG signals using capsule networks (CapsNet).

METHODS

Deep learning-based approaches have become increasingly popular in computer aided diagnosis systems. Capsule networks are one of the new promising approaches in the field of deep learning. In this study, we used 1D version of CapsNet for the automated detection of coronary artery disease (CAD) on two second (95,300) and five second-long (38,120) ECG segments. These segments are obtained from 40 normal and 7 CAD subjects. In the experimental studies, 5-fold cross validation technique is employed to evaluate performance of the model.

RESULTS

The proposed model, which is named as 1D-CADCapsNet, yielded a promising 5-fold diagnosis accuracy of 99.44% and 98.62% for two- and five-second ECG signal groups, respectively. We have obtained the highest performance results using 2 s ECG segment than the state-of-art studies reported in the literature.

CONCLUSIONS

1D-CADCapsNet model automatically learns the pertinent representations from raw ECG data without using any hand-crafted technique and can be used as a fast and accurate diagnostic tool to help cardiologists.

摘要

目的

心血管疾病(CVD)是全球主要的死亡原因。心电图(ECG)记录心脏的电活动,已用于 CVD 的诊断。从 ECG 信号中自动且稳健地检测 CVD 对于早期和准确的临床诊断起着重要作用。本研究旨在使用胶囊网络(CapsNet)从 ECG 信号中自动检测冠状动脉疾病(CAD)。

方法

基于深度学习的方法在计算机辅助诊断系统中越来越受欢迎。胶囊网络是深度学习领域中一种很有前途的新方法。在这项研究中,我们使用 1D 版本的 CapsNet 对两秒(95300)和五秒(38120)长的 ECG 段进行 CAD 的自动检测。这些片段取自 40 名正常人和 7 名 CAD 患者。在实验研究中,采用 5 倍交叉验证技术来评估模型的性能。

结果

所提出的模型,名为 1D-CADCapsNet,在 2 秒和 5 秒 ECG 信号组中分别获得了有前途的 5 倍诊断准确率 99.44%和 98.62%。与文献中报道的最新研究相比,我们使用 2 秒 ECG 段获得了最高的性能结果。

结论

1D-CADCapsNet 模型无需使用任何手工技术即可从原始 ECG 数据中自动学习相关表示,可作为帮助心脏病专家进行快速准确诊断的工具。

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