Deep Learning-and Transfer Learning-based Models for COVID-19 Detection using Radiography Images

A. Mazari, Hamza Kheddar
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引用次数: 2

Abstract

Image classification and segmentation techniques are still very popular in the medical field (for healthcare), in which the medical image plays an important role in the detection and screening of diseases. Recently, the spread of new viral diseases, namely Covid-19, requires powerful computer models and rich resources (datasets) to fight this phenomenon. In this study, we propose to examine the CNN Deep Learning algorithm and two Transfer Learning models, namely RestNet50 and MobileNetV2 using the pretrained model of the ImageNet database, experimented on the new dataset (COVID-QU-Ex Dataset 2022) offered by the University of Qatar. These models are tested to classify radiography images into two classes (Covid19 and Normal). The results achieved by CNN (Acc =95.97%), ResNet50 (Acc =95.53%) and MobileNetV2 (Acc =97.32%) show that these algorithms are promising in order to combat this Covid-19 disease by detecting it through thoracic images (Chest X-ray type).
基于深度学习和迁移学习的基于放射图像的COVID-19检测模型
图像分类和分割技术在医学领域(用于医疗保健)仍然非常流行,其中医学图像在疾病的检测和筛查中起着重要作用。最近,新型病毒性疾病,即Covid-19的传播需要强大的计算机模型和丰富的资源(数据集)来应对这一现象。在本研究中,我们提出使用ImageNet数据库的预训练模型,在卡塔尔大学提供的新数据集(covid - q - ex dataset 2022)上实验,对CNN深度学习算法和RestNet50和MobileNetV2两个迁移学习模型进行检验。对这些模型进行测试,将放射成像图像分为两类(covid - 19和正常)。CNN (Acc =95.97%)、ResNet50 (Acc =95.53%)和MobileNetV2 (Acc =97.32%)的结果表明,这些算法很有希望通过胸部图像(胸部x线类型)检测出Covid-19疾病。
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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