Kusakunniran Worapan, Karnjanapreechakorn Sarattha, Siriapisith Thanongchai, Borwarnginn Punyanuch, Sutassananon Krittanat, Tongdee Trongtum, Saiviroonporn Pairash
Mahidol University, Faculty of Information and Communication Technology, Nakhon Pathom, Thailand.
Mahidol University, Department of Radiology, Siriraj Hospital, Bangkok, Thailand.
J Med Imaging (Bellingham). 2021 Jan;8(Suppl 1):014001. doi: 10.1117/1.JMI.8.S1.014001. Epub 2021 Jan 9.
The outbreak of COVID-19 or coronavirus was first reported in 2019. It has widely and rapidly spread around the world. The detection of COVID-19 cases is one of the important factors to stop the epidemic, because the infected individuals must be quarantined. One reliable way to detect COVID-19 cases is using chest x-ray images, where signals of the infection are located in lung areas. We propose a solution to automatically classify COVID-19 cases in chest x-ray images. The ResNet-101 architecture is adopted as the main network with more than 44 millions parameters. The whole net is trained using the large size of x-ray images. The heatmap under the region of interest of segmented lung is constructed to visualize and emphasize signals of COVID-19 in each input x-ray image. Lungs are segmented using the pretrained U-Net. The confidence score of being COVID-19 is also calculated for each classification result. The proposed solution is evaluated based on COVID-19 and normal cases. It is also tested on unseen classes to validate a regularization of the constructed model. They include other normal cases where chest x-ray images are normal without any disease but with some small remarks, and other abnormal cases where chest x-ray images are abnormal with some other diseases containing remarks similar to COVID-19. The proposed method can achieve the sensitivity, specificity, and accuracy of 97%, 98%, and 98%, respectively. It can be concluded that the proposed solution can detect COVID-19 in a chest x-ray image. The heatmap and confidence score of the detection are also demonstrated, such that users or human experts can use them for a final diagnosis in practical usages.
2019年首次报告了新型冠状病毒肺炎(COVID-19)或冠状病毒的爆发。它已在全球广泛迅速传播。检测COVID-19病例是阻止疫情的重要因素之一,因为感染个体必须被隔离。检测COVID-19病例的一种可靠方法是使用胸部X光图像,感染信号位于肺部区域。我们提出了一种在胸部X光图像中自动分类COVID-19病例的解决方案。采用ResNet-101架构作为主网络,其参数超过4400万个。整个网络使用大尺寸的X光图像进行训练。构建分割肺部感兴趣区域下的热图,以可视化并突出每个输入胸部X光图像中COVID-19的信号。使用预训练的U-Net对肺部进行分割。还为每个分类结果计算COVID-19的置信度得分。所提出的解决方案基于COVID-19病例和正常病例进行评估。它还在未见类别上进行测试,以验证所构建模型的正则化。这些类别包括其他正常病例,其胸部X光图像正常,无任何疾病但有一些小注释;以及其他异常病例,其胸部X光图像异常,患有一些其他疾病,包含与COVID-19类似的注释。所提出的方法分别可以达到97%、98%和98%的灵敏度、特异性和准确率。可以得出结论,所提出的解决方案可以在胸部X光图像中检测出COVID-19。还展示了检测的热图和置信度得分,以便用户或医学专家在实际应用中用于最终诊断。