4.7 Article

UPL-SFDA: Uncertainty-Aware Pseudo Label Guided Source-Free Domain Adaptation for Medical Image Segmentation

期刊

IEEE TRANSACTIONS ON MEDICAL IMAGING
卷 42, 期 12, 页码 3932-3943

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2023.3318364

关键词

Adaptation models; Predictive models; Image segmentation; Training; Entropy; Minimization; Head; Source-free domain adaptation; self-training; fetal MRI; heart MRI; entropy minimization

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Domain Adaptation is crucial for deep learning models in medical image segmentation to handle testing images from new target domains. Source-Free Domain Adaptation (SFDA) is an appealing approach for efficient adaptation to the target domain without source-domain data. However, existing SFDA methods suffer from limited performance due to lack of sufficient supervision with unavailable source-domain images and unlabeled target-domain images. In this study, we propose a novel Uncertainty-aware Pseudo Label guided SFDA method for medical image segmentation, which improves performance by enhancing diversity in the target domain and using reliable pseudo labels.
Domain Adaptation (DA) is important for deep learning-based medical image segmentation models to deal with testing images from a new target domain. As the source-domain data are usually unavailable when a trained model is deployed at a new center, Source-Free Domain Adaptation (SFDA) is appealing for data and annotation-efficient adaptation to the target domain. However, existing SFDA methods have a limited performance due to lack of sufficient supervision with source-domain images unavailable and target-domain images unlabeled. We propose a novel Uncertainty-aware Pseudo Label guided (UPL) SFDA method for medical image segmentation. Specifically, we propose Target Domain Growing (TDG) to enhance the diversity of predictions in the target domain by duplicating the pre-trained model's prediction head multiple times with perturbations. The different predictions in these duplicated heads are used to obtain pseudo labels for unlabeled target-domain images and their uncertainty to identify reliable pseudo labels. We also propose a Twice Forward pass Supervision (TFS) strategy that uses reliable pseudo labels obtained in one forward pass to supervise predictions in the next forward pass. The adaptation is further regularized by a mean prediction-based entropy minimization term that encourages confident and consistent results in different prediction heads. UPL-SFDA was validated with a multi-site heart MRI segmentation dataset, a cross-modality fetal brain segmentation dataset, and a 3D fetal tissue segmentation dataset. It improved the average Dice by 5.54, 5.01 and 6.89 percentage points for the three tasks compared with the baseline, respectively, and outperformed several state-of-the-art SFDA methods.

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