Automated detection of COVID-19 coronavirus infection based on analysis of chest X-ray images by deep learning methods

Pub Date : 2022-03-01 DOI:10.17223/19988605/58/9
Evgenii Yu. Shchetinin, L. A. Sevastyanov
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Abstract

Early detection of COVID-19 infected patients is essential to ensure adequate treatment and reduce the load on the healthcare systems. One of effective methods for detecting COVID-19 is deep learning models of chest X-ray images. They can detect the changes caused by COVID-19 even in asymptomatic patients, so they have great potential as auxiliary systems for diagnostics or screening tools. This paper proposed a methodology consisting of the stage of pre-processing of X-ray images, augmentation and classification using deep convolutional neural networksXception, InceptionResNetV2, MobileNetV2, DenseNet121, ResNet50 and VGG16, previously trained on thelmageNet dataset. Next, they fine-tuned and trained on prepared data set of chest X-rays images. The results of computer experiments showed that theVGG16 model with fine tuning of the parameters demonstrated the best performance in the classification of COVID-19 with accuracy 99,09%, recall=98,318%, precision=99,08% and f1_score=98,78. This signifies the performance of proposed fine-tuned deep learning models for COVID-19 detection on chest X-ray images.
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基于胸部x线图像分析的深度学习方法自动检测COVID-19冠状病毒感染
早期发现COVID-19感染患者对于确保适当治疗和减轻卫生保健系统的负担至关重要。胸部x线图像的深度学习模型是检测COVID-19的有效方法之一。即使在无症状患者中,它们也能检测到COVID-19引起的变化,因此它们作为诊断或筛查工具的辅助系统具有很大潜力。本文提出了一种方法,包括x射线图像预处理,增强和分类阶段,使用深度卷积神经网络seption, InceptionResNetV2, MobileNetV2, DenseNet121, ResNet50和VGG16,之前在magenet数据集上训练。接下来,他们对准备好的胸部x光图像数据集进行微调和训练。计算机实验结果表明,参数微调后的vgg16模型在COVID-19分类中表现最佳,准确率为99,09%,召回率为98,318%,精度为99,08%,f1_score=98,78。这表明所提出的用于COVID-19胸部x射线图像检测的微调深度学习模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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