IEEE Trans Med Imaging. 2022 Jan;41(1):88-102. doi: 10.1109/TMI.2021.3104474. Epub 2021 Dec 30.
Early and accurate severity assessment of Coronavirus disease 2019 (COVID-19) based on computed tomography (CT) images offers a great help to the estimation of intensive care unit event and the clinical decision of treatment planning. To augment the labeled data and improve the generalization ability of the classification model, it is necessary to aggregate data from multiple sites. This task faces several challenges including class imbalance between mild and severe infections, domain distribution discrepancy between sites, and presence of heterogeneous features. In this paper, we propose a novel domain adaptation (DA) method with two components to address these problems. The first component is a stochastic class-balanced boosting sampling strategy that overcomes the imbalanced learning problem and improves the classification performance on poorly-predicted classes. The second component is a representation learning that guarantees three properties: 1) domain-transferability by prototype triplet loss, 2) discriminant by conditional maximum mean discrepancy loss, and 3) completeness by multi-view reconstruction loss. Particularly, we propose a domain translator and align the heterogeneous data to the estimated class prototypes (i.e., class centers) in a hyper-sphere manifold. Experiments on cross-site severity assessment of COVID-19 from CT images show that the proposed method can effectively tackle the imbalanced learning problem and outperform recent DA approaches.
基于计算机断层扫描 (CT) 图像对 2019 年冠状病毒病 (COVID-19) 进行早期、准确的严重程度评估,为重症监护室事件的评估和治疗计划的临床决策提供了很大帮助。为了扩充标记数据并提高分类模型的泛化能力,有必要从多个站点聚合数据。这项任务面临着一些挑战,包括轻度和重度感染之间的不平衡,站点之间的领域分布差异,以及存在异构特征。在本文中,我们提出了一种新的域自适应 (DA) 方法,该方法由两个组件组成,用于解决这些问题。第一个组件是一种随机类平衡提升抽样策略,该策略克服了不平衡学习问题,并提高了对预测较差类别的分类性能。第二个组件是表示学习,它保证了三个属性:1)原型三元组损失的域可转移性,2)条件最大均值差异损失的判别能力,以及 3)多视图重建损失的完整性。特别是,我们提出了一种域翻译器,并在超球流形中将异构数据与估计的类原型(即类中心)对齐。来自 CT 图像的跨站点 COVID-19 严重程度评估实验表明,所提出的方法可以有效地解决不平衡学习问题,并优于最近的 DA 方法。