UniAda: Domain Unifying and Adapting Network for Generalizable Medical Image Segmentation

Zhongzhou Zhang;Yingyu Chen;Hui Yu;Zhiwen Wang;Shanshan Wang;Fenglei Fan;Hongming Shan;Yi Zhang
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Abstract

Learning a generalizable medical image segmentation model is an important but challenging task since the unseen (testing) domains may have significant discrepancies from seen (training) domains due to different vendors and scanning protocols. Existing segmentation methods, typically built upon domain generalization (DG), aim to learn multi-source domain-invariant features through data or feature augmentation techniques, but the resulting models either fail to characterize global domains during training or cannot sense unseen domain information during testing. To tackle these challenges, we propose a domain Unifying and Adapting network (UniAda) for generalizable medical image segmentation, a novel “unifying while training, adapting while testing” paradigm that can learn a domain-aware base model during training and dynamically adapt it to unseen target domains during testing. First, we propose to unify the multi-source domains into a global inter-source domain via a novel feature statistics update mechanism, which can sample new features for the unseen domains, facilitating the training of a domain base model. Second, we leverage the uncertainty map to guide the adaptation of the trained model for each testing sample, considering the specific target domain may be outside the global inter-source domain. Extensive experimental results on two public cross-domain medical datasets and one in-house cross-domain dataset demonstrate the strong generalization capacity of the proposed UniAda over state-of-the-art DG methods. The source code of our UniAda is available at https://github.com/ZhouZhang233/UniAda.
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面向广义医学图像分割的领域统一与自适应网络
学习一个通用的医学图像分割模型是一项重要但具有挑战性的任务,因为由于不同的供应商和扫描协议,不可见(测试)域可能与可见(训练)域存在显著差异。现有的分割方法通常基于域泛化(DG),旨在通过数据或特征增强技术学习多源域不变特征,但所得到的模型要么无法在训练过程中表征全局域,要么无法在测试过程中感知未见过的域信息。为了解决这些问题,我们提出了一种用于泛化医学图像分割的领域统一和自适应网络(UniAda),这是一种新的“在训练中统一,在测试中自适应”的范式,可以在训练过程中学习一个领域感知的基础模型,并在测试过程中动态地使其适应未知的目标领域。首先,我们提出了一种新的特征统计更新机制,将多源域统一为一个全局的源间域,该机制可以为未见过的域抽取新的特征,从而便于域基模型的训练。其次,考虑到特定的目标域可能在全局源间域之外,我们利用不确定性映射来指导训练模型对每个测试样本的适应。在两个公共跨域医学数据集和一个内部跨域数据集上的大量实验结果表明,所提出的UniAda比最先进的DG方法具有强大的泛化能力。我们的UniAda的源代码可在https://github.com/ZhouZhang233/UniAda上获得。
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