论文标题
COVID-19感染图生成和从胸部X射线图像检测
COVID-19 Infection Map Generation and Detection from Chest X-Ray Images
论文作者
论文摘要
计算机辅助诊断已成为2019年准确和直接冠状病毒疾病(COVID-19)检测的必要性,以帮助治疗并防止病毒传播。大量研究提出将深度学习技术用于COVID-19诊断。但是,他们使用了非常有限的胸部X射线(CXR)图像存储库来评估少量,数百个Covid-19样品。此外,这些方法既不能定位,也不能将COVID-19感染的严重程度进行分级。为此,最近的研究建议探索深网的激活图。但是,它们仍然不准确地将实际的侵扰定位,这使得它们在临床上不可靠。这项研究提出了一种新的方法,用于通过产生所谓的感染图,从CXR图像中从CXR图像中检测COVID-19。为此,我们使用了119,316张CXR图像编辑了最大的数据集,包括2951 COVID-19-19样品,其中通过一种新型的协作人类计算方法,在CXR上执行了地面真相分割口罩的注释。此外,我们公开发布了第一个CXR数据集,并带有COVID-19受感染区域的地面细分面罩。一组详细的实验表明,最先进的分割网络可以学会以83.20%的F1分数本地化为COVID-19的感染,这比以前方法创建的激活图明显优于。最后,提出的方法以94.96%的敏感性和99.88%的特异性实现了COVID-19检测性能。
Computer-aided diagnosis has become a necessity for accurate and immediate coronavirus disease 2019 (COVID-19) detection to aid treatment and prevent the spread of the virus. Numerous studies have proposed to use Deep Learning techniques for COVID-19 diagnosis. However, they have used very limited chest X-ray (CXR) image repositories for evaluation with a small number, a few hundreds, of COVID-19 samples. Moreover, these methods can neither localize nor grade the severity of COVID-19 infection. For this purpose, recent studies proposed to explore the activation maps of deep networks. However, they remain inaccurate for localizing the actual infestation making them unreliable for clinical use. This study proposes a novel method for the joint localization, severity grading, and detection of COVID-19 from CXR images by generating the so-called infection maps. To accomplish this, we have compiled the largest dataset with 119,316 CXR images including 2951 COVID-19 samples, where the annotation of the ground-truth segmentation masks is performed on CXRs by a novel collaborative human-machine approach. Furthermore, we publicly release the first CXR dataset with the ground-truth segmentation masks of the COVID-19 infected regions. A detailed set of experiments show that state-of-the-art segmentation networks can learn to localize COVID-19 infection with an F1-score of 83.20%, which is significantly superior to the activation maps created by the previous methods. Finally, the proposed approach achieved a COVID-19 detection performance with 94.96% sensitivity and 99.88% specificity.