State Key Laboratory for Novel Software Technology, Nanjing University, Nanjing, 210046, China; National Institute of Healthcare Data Science, Nanjing University, Nanjing, 210046, China.
Department of Radiology, The Second Xiangya Hospital, Central South University, Changsha, 410011, China.
Med Image Anal. 2021 Apr;69:101978. doi: 10.1016/j.media.2021.101978. Epub 2021 Feb 3.
How to fast and accurately assess the severity level of COVID-19 is an essential problem, when millions of people are suffering from the pandemic around the world. Currently, the chest CT is regarded as a popular and informative imaging tool for COVID-19 diagnosis. However, we observe that there are two issues - weak annotation and insufficient data that may obstruct automatic COVID-19 severity assessment with CT images. To address these challenges, we propose a novel three-component method, i.e., 1) a deep multiple instance learning component with instance-level attention to jointly classify the bag and also weigh the instances, 2) a bag-level data augmentation component to generate virtual bags by reorganizing high confidential instances, and 3) a self-supervised pretext component to aid the learning process. We have systematically evaluated our method on the CT images of 229 COVID-19 cases, including 50 severe and 179 non-severe cases. Our method could obtain an average accuracy of 95.8%, with 93.6% sensitivity and 96.4% specificity, which outperformed previous works.
如何快速准确地评估 COVID-19 的严重程度是一个至关重要的问题,因为目前全世界有数百万的人正在遭受这一疫情的折磨。目前,胸部 CT 被认为是 COVID-19 诊断的一种流行且信息量丰富的成像工具。然而,我们观察到存在两个问题——注释薄弱和数据不足,这可能会阻碍使用 CT 图像对 COVID-19 严重程度进行自动评估。为了解决这些挑战,我们提出了一种新颖的三组件方法,即 1)具有实例级注意力的深度多实例学习组件,用于联合对包进行分类并对实例进行加权,2)基于袋级别的数据扩充组件,通过重新组织高机密实例来生成虚拟袋,3)自监督的前置任务组件,辅助学习过程。我们在 229 例 COVID-19 病例的 CT 图像上系统地评估了我们的方法,包括 50 例严重病例和 179 例非严重病例。我们的方法平均准确率达到 95.8%,灵敏度为 93.6%,特异性为 96.4%,优于以前的工作。