论文标题

X射线和CT图像中冠状病毒病(COVID-19)的自动检测:一种基于机器学习的方法

Automatic Detection of Coronavirus Disease (COVID-19) in X-ray and CT Images: A Machine Learning-Based Approach

论文作者

Kassani, Sara Hosseinzadeh, Kassasni, Peyman Hosseinzadeh, Wesolowski, Michal J., Schneider, Kevin A., Deters, Ralph

论文摘要

新鉴定的冠状病毒肺炎随后称为Covid-19,是高度传播和致病性的,没有临床批准的抗病毒药或疫苗可用于治疗。 Covid-19的最常见症状是干性咳嗽,喉咙痛和发烧。症状可以发展为严重的肺炎形式,其中包括败血性休克,肺水肿,急性呼吸窘迫综合征和多器官衰竭。虽然目前不建议在加拿大进行医学成像以进行COVID-19的主要诊断,但计算机辅助诊断系统可以帮助早期发现COVID-19异常,并有助于监测疾病的发展,并可能降低死亡率。在这项研究中,我们比较了自动Covid-19分类的流行基于深度学习的功能提取框架。为了获得最准确的特征,这是学习的重要组成部分,Mobilenet,densenet,Xception,Resnet,IntectionV3,InceptionResnetv2,vggnet,nasnet是在深层卷积神经网络中选择的。然后将提取的特征送入几个机器学习分类器中,以将受试者分类为Covid-19或对照组的情况。这种方法避免了特定于任务的数据预处理方法,以支持对看不见数据的更好的概括能力。在胸部X射线和CT图像的公开可用的COVID-19数据集上验证了所提出的方法的性能。带包装树分类器的Densenet121提取器提取器以99%的分类精度达到了最佳性能。第二好的学习者是由LightGBM训练的A RESNET50提取器的混合体,精度为98%。

The newly identified Coronavirus pneumonia, subsequently termed COVID-19, is highly transmittable and pathogenic with no clinically approved antiviral drug or vaccine available for treatment. The most common symptoms of COVID-19 are dry cough, sore throat, and fever. Symptoms can progress to a severe form of pneumonia with critical complications, including septic shock, pulmonary edema, acute respiratory distress syndrome and multi-organ failure. While medical imaging is not currently recommended in Canada for primary diagnosis of COVID-19, computer-aided diagnosis systems could assist in the early detection of COVID-19 abnormalities and help to monitor the progression of the disease, potentially reduce mortality rates. In this study, we compare popular deep learning-based feature extraction frameworks for automatic COVID-19 classification. To obtain the most accurate feature, which is an essential component of learning, MobileNet, DenseNet, Xception, ResNet, InceptionV3, InceptionResNetV2, VGGNet, NASNet were chosen amongst a pool of deep convolutional neural networks. The extracted features were then fed into several machine learning classifiers to classify subjects as either a case of COVID-19 or a control. This approach avoided task-specific data pre-processing methods to support a better generalization ability for unseen data. The performance of the proposed method was validated on a publicly available COVID-19 dataset of chest X-ray and CT images. The DenseNet121 feature extractor with Bagging tree classifier achieved the best performance with 99% classification accuracy. The second-best learner was a hybrid of the a ResNet50 feature extractor trained by LightGBM with an accuracy of 98%.

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