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使用基于纸质心电图报告的深度学习方法自动检测新冠肺炎。

Automated Detection of COVID-19 Using Deep Learning Approaches with Paper-Based ECG Reports.

作者信息

Bassiouni Mahmoud M, Hegazy Islam, Rizk Nouhad, El-Dahshan El-Sayed A, Salem Abdelbadeeh M

机构信息

Egyptian E-Learning University (EELU), 33 El-messah Street, Eldokki, El-Giza, 11261 Egypt.

Faculty of Computer and Information Science, Ain Shams University, Abbassia, Cairo, 11566 Egypt.

出版信息

Circuits Syst Signal Process. 2022;41(10):5535-5577. doi: 10.1007/s00034-022-02035-1. Epub 2022 May 20.

Abstract

One of the pandemics that have caused many deaths is the Coronavirus disease 2019 (COVID-19). It first appeared in late 2019, and many deaths are increasing day by day until now. Therefore, the early diagnosis of COVID-19 has become a salient issue. Additionally, the current diagnosis methods have several demerits, and a new investigation is required to enhance the diagnosis performance. In this paper, a set of phases are performed, such as collecting data, filtering and augmenting images, extracting features, and classifying ECG images. The data were obtained from two publicly available ECG image datasets, and one of them contained COVID ECG reports. A set of preprocessing methods are applied to the ECG images, and data augmentation is performed to balance the ECG images based on the classes. A deep learning approach based on a convolutional neural network (CNN) is performed for feature extraction. Four different pre-trained models are applied, such as Vgg16, Vgg19, ResNet-101, and Xception. Moreover, an ensemble of Xception and the temporary convolutional network (TCN), which is named ECGConvnet, is proposed. Finally, the results obtained from the former models are fed to four main classifiers. These classifiers are softmax, random forest (RF), multilayer perception (MLP), and support vector machine (SVM). The former classifiers are used to evaluate the diagnosis ability of the proposed methods. The classification scenario is based on fivefold cross-validation. Seven experiments are presented to evaluate the performance of the ECGConvnet. Three of them are multi-class, and the remaining are binary class diagnosing. Six out of seven experiments diagnose COVID-19 patients. The aforementioned experimental results indicated that ECGConvnet has the highest performance over other pre-trained models, and the SVM classifier showed higher accuracy in comparison with the other classifiers. The resulting accuracies from ECGConvnet based on SVM are (99.74%, 98.6%, 99.1% on the multi-class diagnosis tasks) and (99.8% on one of the binary-class diagnoses, while the remaining achieved 100%). It is possible to develop an automatic diagnosis system for COVID based on deep learning using ECG data.

摘要

导致众多死亡的大流行病之一是2019冠状病毒病(COVID-19)。它于2019年末首次出现,截至目前死亡人数与日俱增。因此,COVID-19的早期诊断已成为一个突出问题。此外,当前的诊断方法存在若干缺点,需要进行新的研究以提高诊断性能。本文进行了一系列步骤,如收集数据、过滤和增强图像、提取特征以及对心电图图像进行分类。数据取自两个公开可用的心电图图像数据集,其中一个包含COVID心电图报告。对心电图图像应用了一组预处理方法,并进行数据增强以根据类别平衡心电图图像。基于卷积神经网络(CNN)的深度学习方法用于特征提取。应用了四种不同的预训练模型,如Vgg16、Vgg19、ResNet-101和Xception。此外,还提出了一种由Xception和临时卷积网络(TCN)组成的集成模型,名为ECGConvnet。最后,将前几种模型得到的结果输入到四个主要分类器中。这些分类器分别是softmax、随机森林(RF)、多层感知器(MLP)和支持向量机(SVM)。前几种分类器用于评估所提方法的诊断能力。分类方案基于五折交叉验证。进行了七个实验来评估ECGConvnet的性能。其中三个是多类别实验,其余是二分类诊断实验。七个实验中有六个用于诊断COVID-19患者。上述实验结果表明,ECGConvnet比其他预训练模型具有更高的性能,并且与其他分类器相比,SVM分类器显示出更高的准确率。基于SVM的ECGConvnet在多类别诊断任务中的准确率分别为(99.74%、98.6%、99.1%),在一个二分类诊断中为99.8%,而其余二分类诊断的准确率达到100%。利用心电图数据基于深度学习开发用于COVID的自动诊断系统是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/32ad/9122255/76e23871d0dc/34_2022_2035_Fig1_HTML.jpg

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