MetaTeacher: Coordinating Multi-Model Domain Adaptation for Medical Image Classification
–Neural Information Processing Systems
In medical image analysis, often we need to build an image recognition system for a target scenario with the access to small labeled data and abundant unlabeled data, as well as multiple related models pretrained on different source scenarios. This presents the combined challenges of multi-source-free domain adaptation and semisupervised learning simultaneously. However, both problems are typically studied independently in the literature, and how to effectively combine existing methods is non-trivial in design. In this work, we introduce a novel MetaTeacher framework with three key components: (1) A learnable coordinating scheme for adaptive domain adaptation of individual source models, (2) A mutual feedback mechanism between the target model and source models for more coherent learning, and (3) A semi-supervised bilevel optimization algorithm for consistently organizing the adaption of source models and the learning of target model. It aims to leverage the knowledge of source models adaptively whilst maximize their complementary benefits collectively to counter the challenge of limited supervision. Extensive experiments on five chest x-ray image datasets show that our method outperforms clearly all the state-of-the-art alternatives.
Neural Information Processing Systems
Jun-1-2025, 00:13:49 GMT
- Country:
- North America > United States
- Massachusetts (0.14)
- Texas (0.14)
- North America > United States
- Genre:
- Instructional Material
- Course Syllabus & Notes (0.41)
- Online (0.41)
- Instructional Material
- Industry:
- Health & Medicine > Diagnostic Medicine > Imaging (1.00)
- Technology: