While deep learning methods hitherto have achieved considerable success in medical image segmentation, they are still hampered by two limitations: (i) reliance on large-scale well-labeled datasets, which are difficult to curate due to the expert-driven and time-consuming nature of pixel-level annotations in clinical practices, and (ii) failure to generalize from one domain to another, especially when the target domain is a different modality with severe domain shifts. Recent unsupervised domain adaptation~(UDA) techniques leverage abundant labeled source data together with unlabeled target data to reduce the domain gap, but these methods degrade significantly with limited source annotations. In this study, we address this underexplored UDA problem, investigating a challenging but valuable realistic scenario, where the source domain not only exhibits domain shift~w.r.t. the target domain but also suffers from label scarcity. In this regard, we propose a novel and generic framework called ``Label-Efficient Unsupervised Domain Adaptation"~(LE-UDA). In LE-UDA, we construct self-ensembling consistency for knowledge transfer between both domains, as well as a self-ensembling adversarial learning module to achieve better feature alignment for UDA. To assess the effectiveness of our method, we conduct extensive experiments on two different tasks for cross-modality segmentation between MRI and CT images. Experimental results demonstrate that the proposed LE-UDA can efficiently leverage limited source labels to improve cross-domain segmentation performance, outperforming state-of-the-art UDA approaches in the literature. Code is available at: https://github.com/jacobzhaoziyuan/LE-UDA.
翻译:尽管迄今为止深层次的学习方法在医学图像分割方面取得了相当大的成功,但它们仍然受到两个限制的阻碍:(一) 依赖大规模贴有良好标签的数据集,由于临床实践中像素级说明的专家驱动和耗时性,这些数据集难以翻译,以及(二) 未能从一个领域向另一个领域推广,特别是当目标领域是一种不同的方式,且存在严重的域变换时。最近未经监督的域适应(UDA)技术利用了大量标记的源数据以及未标记的目标数据来缩小域间差距,但这些方法在来源说明有限的情况下大大退化。在本研究中,我们解决了UDA这一探索不足的数据集问题,调查了具有挑战性但很有价值的现实情景,即该源域不仅显示域域间变换 ~w.r.t.t. 目标领域,而且还受到标签稀缺的影响。在这方面,我们提出了一个新的和通用的框架,称为 " Label-Effion-Efficulatedation Domaisa-addation " ~(LE-UDA)。在LE-UDA中,我们构建了自我浓缩的系统,在两个领域之间的知识转移上建立了自我同步的一致性一致性,在两个领域之间实现了更好的数据转换。