Unsupervised domain adaptation (UDA) is an emerging technique that enables the transfer of domain knowledge learned from a labeled source domain to unlabeled target domains, providing a way of coping with the difficulty of labeling in new domains. The majority of prior work has relied on both source and target domain data for adaptation. However, because of privacy concerns about potential leaks in sensitive information contained in patient data, it is often challenging to share the data and labels in the source domain and trained model parameters in cross-center collaborations. To address this issue, we propose a practical framework for UDA with a black-box segmentation model trained in the source domain only, without relying on source data or a white-box source model in which the network parameters are accessible. In particular, we propose a knowledge distillation scheme to gradually learn target-specific representations. Additionally, we regularize the confidence of the labels in the target domain via unsupervised entropy minimization, leading to performance gain over UDA without entropy minimization. We extensively validated our framework on a few datasets and deep learning backbones, demonstrating the potential for our framework to be applied in challenging yet realistic clinical settings.
Unsupervised Black-Box Model Domain Adaptation for Brain Tumor Segmentation
Xiaofeng Liu,Chaehwa Yoo,Fangxu Xing,C.-C. Jay Kuo,G. El Fakhri,Je-Won Kang,Jonghye Woo
Published 2022 in Frontiers in Neuroscience
ABSTRACT
PUBLICATION RECORD
- Publication year
2022
- Venue
Frontiers in Neuroscience
- Publication date
2022-06-02
- Fields of study
Medicine, Computer Science
- Identifiers
- External record
- Source metadata
Semantic Scholar, PubMed
CITATION MAP
EXTRACTION MAP
CLAIMS
- No claims are published for this paper.
CONCEPTS
- No concepts are published for this paper.
REFERENCES
Showing 1-55 of 55 references · Page 1 of 1
CITED BY
Showing 1-20 of 20 citing papers · Page 1 of 1