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基于深度学习的全面心电图诊断。

Comprehensive electrocardiographic diagnosis based on deep learning.

机构信息

Department of Electronics and Computer Engineering, Ngee Ann Polytechnic, Singapore.

National Heart Centre, Singapore.

出版信息

Artif Intell Med. 2020 Mar;103:101789. doi: 10.1016/j.artmed.2019.101789. Epub 2020 Jan 20.

DOI:10.1016/j.artmed.2019.101789
PMID:32143796
Abstract

Cardiovascular disease (CVD) is the leading cause of death worldwide, and coronary artery disease (CAD) is a major contributor. Early-stage CAD can progress if undiagnosed and left untreated, leading to myocardial infarction (MI) that may induce irreversible heart muscle damage, resulting in heart chamber remodeling and eventual congestive heart failure (CHF). Electrocardiography (ECG) signals can be useful to detect established MI, and may also be helpful for early diagnosis of CAD. For the latter especially, the ECG perturbations can be subtle and potentially misclassified during manual interpretation and/or when analyzed by traditional algorithms found in ECG instrumentation. For automated diagnostic systems (ADS), deep learning techniques are favored over conventional machine learning techniques, due to the automatic feature extraction and selection processes involved. This paper highlights various deep learning algorithms exploited for the classification of ECG signals into CAD, MI, and CHF conditions. The Convolutional Neural Network (CNN), followed by combined CNN and Long Short-Term Memory (LSTM) models, appear to be the most useful architectures for classification. A 16-layer LSTM model was developed in our study and validated using 10-fold cross-validation. A classification accuracy of 98.5% was achieved. Our proposed model has the potential to be a useful diagnostic tool in hospitals for the classification of abnormal ECG signals.

摘要

心血管疾病 (CVD) 是全球范围内的主要致死原因,而冠状动脉疾病 (CAD) 是其主要病因之一。如果早期 CAD 得不到诊断和治疗,它可能会进展,导致心肌梗死 (MI),从而可能导致不可逆转的心肌损伤,导致心腔重构,最终导致充血性心力衰竭 (CHF)。心电图 (ECG) 信号可用于检测已确诊的 MI,也可用于 CAD 的早期诊断。特别是对于后者,心电图的扰动可能很细微,在手动解释和/或传统 ECG 仪器中的算法分析时可能会被错误分类。对于自动化诊断系统 (ADS),深度学习技术比传统的机器学习技术更受欢迎,因为它涉及自动特征提取和选择过程。本文重点介绍了各种用于将 ECG 信号分类为 CAD、MI 和 CHF 状态的深度学习算法。卷积神经网络 (CNN),其次是 CNN 和长短期记忆 (LSTM) 模型的组合,似乎是最有用的分类架构。我们在研究中开发了一个 16 层的 LSTM 模型,并使用 10 倍交叉验证进行了验证。实现了 98.5%的分类准确率。我们提出的模型有可能成为医院中用于分类异常 ECG 信号的有用诊断工具。

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