IEEE Trans Med Imaging. 2020 Jul;39(7):2494-2505. doi: 10.1109/TMI.2020.2972701. Epub 2020 Feb 10.
Unsupervised domain adaptation has increasingly gained interest in medical image computing, aiming to tackle the performance degradation of deep neural networks when being deployed to unseen data with heterogeneous characteristics. In this work, we present a novel unsupervised domain adaptation framework, named as Synergistic Image and Feature Alignment (SIFA), to effectively adapt a segmentation network to an unlabeled target domain. Our proposed SIFA conducts synergistic alignment of domains from both image and feature perspectives. In particular, we simultaneously transform the appearance of images across domains and enhance domain-invariance of the extracted features by leveraging adversarial learning in multiple aspects and with a deeply supervised mechanism. The feature encoder is shared between both adaptive perspectives to leverage their mutual benefits via end-to-end learning. We have extensively evaluated our method with cardiac substructure segmentation and abdominal multi-organ segmentation for bidirectional cross-modality adaptation between MRI and CT images. Experimental results on two different tasks demonstrate that our SIFA method is effective in improving segmentation performance on unlabeled target images, and outperforms the state-of-the-art domain adaptation approaches by a large margin.
无监督域自适应在医学图像计算中越来越受到关注,旨在解决深度神经网络在部署到具有异构特征的未见数据时性能下降的问题。在这项工作中,我们提出了一种新颖的无监督域自适应框架,称为协同图像和特征对齐(SIFA),以有效地将分割网络自适应到未标记的目标域。我们提出的 SIFA 从图像和特征两个方面进行协同对齐。具体来说,我们通过在多个方面利用对抗性学习和深度监督机制,同时变换跨域图像的外观,并增强提取特征的域不变性。特征编码器在两个自适应视角之间共享,以通过端到端学习利用它们的相互益处。我们使用心脏亚结构分割和腹部多器官分割在 MRI 和 CT 图像之间的双向交叉模态自适应中对我们的方法进行了广泛评估。两个不同任务的实验结果表明,我们的 SIFA 方法在提高未标记目标图像的分割性能方面是有效的,并且大大优于最先进的域自适应方法。