论文标题
深度学习胸部X射线图像的Covid-19,MERS和SAR的可靠分类
Deep Learning for Reliable Classification of COVID-19, MERS, and SARS from Chest X-Ray Images
论文作者
论文摘要
新型冠状病毒疾病(Covid-19)是一种非常具有传染性且迅速传播的冠状病毒侵扰。严重的急性呼吸综合征(SARS)和中东呼吸道综合征(MERS),在2002年和2011年爆发,当前的Covid-19大流行全部来自同一冠状病毒家族。这项工作旨在使用深卷积神经网络(CNN)对COVID-19,SARS和MERS胸部X射线(CXR)图像进行分类。创建了一个独特的数据库,即所谓的Qu-Covid家庭,由423 COVID-19、144 Mers和134个SARS CXR图像组成。此外,还提出了一个强大的COVID-19识别系统,以使用CNN分割模型(U-NET)识别肺区域,然后使用预先训练的CNN分类器将分段的肺图像分类为Covid-19,MERS或SARS。此外,利用了得分摄像机可视化方法可视化分类输出,并了解深CNN决定背后的推理。对几个深度学习分类器进行了培训和测试。报告了四种跑步算法。原始图像和预处理图像单独使用,并将其一起用作网络的输入。考虑了两种识别方案:普通的CXR分类和分割的CXR分类。对于普通的CXR,观察到,InceptionV3优于其他3通道方案的其他网络,分别用于分类Covid-19,Mers和SARS图像的敏感性分别为99.5%,93.1%和97%。相反,对于分段的CXR,InceptionV3的表现优于使用原始CXR数据集,并且分别用于分类Covid-19,MERS和SARS图像的敏感性分别为96.94%,79.68%和90.26%。所有网络均显示出较高的COVID-19检测灵敏度(> 96%),分段肺图像。这表明在AI眼中,Covid-19病例的独特射线照相签名,这对于医生来说通常是一项艰巨的任务。
Novel Coronavirus disease (COVID-19) is an extremely contagious and quickly spreading Coronavirus infestation. Severe Acute Respiratory Syndrome (SARS) and Middle East Respiratory Syndrome (MERS), which outbreak in 2002 and 2011, and the current COVID-19 pandemic are all from the same family of coronavirus. This work aims to classify COVID-19, SARS, and MERS chest X-ray (CXR) images using deep Convolutional Neural Networks (CNNs). A unique database was created, so-called QU-COVID-family, consisting of 423 COVID-19, 144 MERS, and 134 SARS CXR images. Besides, a robust COVID-19 recognition system was proposed to identify lung regions using a CNN segmentation model (U-Net), and then classify the segmented lung images as COVID-19, MERS, or SARS using a pre-trained CNN classifier. Furthermore, the Score-CAM visualization method was utilized to visualize classification output and understand the reasoning behind the decision of deep CNNs. Several Deep Learning classifiers were trained and tested; four outperforming algorithms were reported. Original and preprocessed images were used individually and all together as the input(s) to the networks. Two recognition schemes were considered: plain CXR classification and segmented CXR classification. For plain CXRs, it was observed that InceptionV3 outperforms other networks with a 3-channel scheme and achieves sensitivities of 99.5%, 93.1%, and 97% for classifying COVID-19, MERS, and SARS images, respectively. In contrast, for segmented CXRs, InceptionV3 outperformed using the original CXR dataset and achieved sensitivities of 96.94%, 79.68%, and 90.26% for classifying COVID-19, MERS, and SARS images, respectively. All networks showed high COVID-19 detection sensitivity (>96%) with the segmented lung images. This indicates the unique radiographic signature of COVID-19 cases in the eyes of AI, which is often a challenging task for medical doctors.