We aim to develop semi-supervised domain adaptation (SSDA) for medical image segmentation, which is largely underexplored. We propose to exploit both labeled source and target domain data, in addition to unlabeled target data in a unified manner. Specifically, we present a novel asymmetric co-training (ACT) framework to integrate these subsets and avoid the domination of the source domain data. Following a divide-and-conquer strategy, we explicitly decouple the label supervisions in SSDA into two asymmetric sub-tasks, including semi-supervised learning (SSL) and UDA, and leverage different knowledge from two segmentors to take into account the distinction between the source and target label supervisions. The knowledge learned in the two modules is then adaptively integrated with ACT, by iteratively teaching each other, based on the confidence-aware pseudo-label. In addition, pseudo label noise is well-controlled with an exponential MixUp decay scheme for smooth propagation. Experiments on cross-modality brain tumor MRI segmentation tasks using the BraTS18 database showed, even with limited labeled target samples, ACT yielded marked improvements over UDA and state-of-the-art SSDA methods.
翻译:我们的目标是开发医疗图像分割的半监督域适应(SSDA),这在很大程度上未得到充分探讨。我们提议利用标签源和目标域数据,以及无标签目标数据,统一利用标签源和目标域数据。具体地说,我们提出了一个新的不对称共同培训框架,以整合这些子集,避免源域数据主宰。我们采取了分而治之的战略,明确将SDA的标签监管分拆成两个不对称的子任务,包括半监督学习(SSL)和UDA,并利用两个分区的不同知识,以考虑到源和目标标签监督之间的区别。然后,在两个单元中学习的知识与ACTA适应性地结合,根据信任觉的假标签相互相互教学。此外,假标签噪音与一个用于顺利传播的指数MixUP衰变计划有着良好的控制。对跨模式脑肿瘤MRI的实验显示,即使有有限的标签目标样品,ACTA在SADA和状态上也取得了显著的改进。