Automated atrial fibrillation recognition in 12- lead electrocardiographic records: a signal to image and transfer learning approach: A case-control accuracy study

IF 1.9 Q2 MEDICINE, GENERAL & INTERNAL Precision and Future Medicine Pub Date : 2021-12-31 DOI:10.23838/pfm.2021.00058
Elena Caires Silveira
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Abstract

Purpose: Atrial fibrillation (AF), the most common among cardiac arrhythmias, is associated with significant morbidity and mortality. For its diagnosis, documentation of the electrocardiographic tracing is required. The use of eletrocardiogram has been established as a valuable noninvasive diagnostic tool, and the interpretation of electrocardiographic records using deep learning models has attracted significant attention in recent years. Relying on signal-to-image and transfer learning approaches, this study is aimed at the development of a deep neural network for classifying binary electrocardiographic records according to their rhythm, i.e., normal or AF.Methods: Electrocardiographic records labeled as normal (n = 917) or AF (n = 1,097) from the China Physiological Signal Challenge 2018 were collected and used to generate images, which were split into training and test sets and used as inputs to a dense convolutional neural network (DCNN). For the training, transfer learning with a fine tuning of all layers was applied. For a performance evaluation of the test set, the accuracy, sensitivity, specificity, F1-score, and area under the curve (AUC) were used as metrics.Results: For the test set, the proposed model achieved an accuracy of 99.34%, sensitivity of 98.85%, specificity of 100.00%, F1-score, of 99.42%, and AUC of 0.99.Conclusion: To validate the methodology, as well as apply it to the multilabel classification of arrhythmia, it is important that further studies adopting this approach be conducted for the detection of AF in larger volumes of data.
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在12导联心电图记录中自动识别房颤:一种信号到图像和转移学习方法:一项病例对照准确性研究
目的:心房颤动(AF)是心律失常中最常见的一种,与显著的发病率和死亡率有关。对于其诊断,需要心电图描记的文件。心电图的使用已被确定为一种有价值的非侵入性诊断工具,近年来,使用深度学习模型解释心电图记录引起了极大的关注。基于信号到图像和迁移学习方法,本研究旨在开发一种深度神经网络,用于根据二值心电图记录的节奏对其进行分类,即。,方法:收集2018年中国生理信号挑战赛中标记为正常(n=917)或AF(n=1097)的心电图记录,并用于生成图像,将其分为训练集和测试集,用作密集卷积神经网络(DCNN)的输入。对于训练,采用了对所有层面进行微调的迁移学习。对于测试集的性能评估,使用准确性、敏感性、特异性、F1评分和曲线下面积(AUC)作为指标。结果:对于测试集,所提出的模型实现了99.34%的准确度、98.85%的灵敏度、100.00%的特异性、99.42%的F1评分和0.99的AUC。结论:为了验证该方法,并将其应用于心律失常的多标签分类,重要的是在更大数据量中对采用该方法检测AF进行进一步的研究。
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来源期刊
Precision and Future Medicine
Precision and Future Medicine MEDICINE, GENERAL & INTERNAL-
自引率
0.00%
发文量
15
审稿时长
10 weeks
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