A Comparative Study of Deep Learning Networks for COVID-19 Recognition in Chest X-ray Images

Sabrina Nefoussi, Abdenour Amamra, Idir Amine Amarouche
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引用次数: 4

Abstract

The COVID-19 pandemic is devastatingly affecting the health and well-being of the worldwide population. A basic advance in the battle against it resides in effective screening of infected patients, with one of the key screening approaches such as radiological imaging based on chest radiography. Faced with this challenge, various artificial intelligence (AI) frameworks, mostly based on deep learning, have been proposed and results have been getting better and very promising as the precision of positive cases recognition is constantly refined. In the light of previous work on automated X-ray image screening, we train several deep convolutional networks for the classification of chest pathologies into: normal, pneumonia, and COVID-19. We use three open-source and one private dataset for the validation of our findings. Unfortunately, data scarcity remains a big challenge hurdling COVID-19 automatic recognition research. In our case, we used a total of 518 COVID-19 positive X-ray images. We evaluate different architectures for COVID-19 recognition with different deep neural architecture.
深度学习网络在胸部x线图像中识别COVID-19的比较研究
2019冠状病毒病大流行正在严重影响全球人民的健康和福祉。在与它的斗争中,一个基本的进步在于对感染患者进行有效的筛查,其中一个关键的筛查方法是基于胸部x线摄影的放射成像。面对这一挑战,人们提出了各种基于深度学习的人工智能(AI)框架,随着积极案例识别精度的不断提高,结果越来越好,非常有前景。根据之前在自动x射线图像筛查方面的工作,我们训练了几个深度卷积网络,用于将胸部病变分类为:正常、肺炎和COVID-19。我们使用三个开源数据集和一个私有数据集来验证我们的发现。不幸的是,数据稀缺仍然是阻碍COVID-19自动识别研究的一大挑战。在本例中,我们共使用了518张COVID-19阳性x射线图像。我们用不同的深度神经结构评估了不同的COVID-19识别架构。
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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