Med-LEGO: Editing and Adapting toward Generalist Medical Image Diagnosis
By: Yitao Zhu , Yuan Yin , Jiaming Li and more
Potential Business Impact:
Combines AI doctors to diagnose more diseases.
The adoption of visual foundation models has become a common practice in computer-aided diagnosis (CAD). While these foundation models provide a viable solution for creating generalist medical AI, privacy concerns make it difficult to pre-train or continuously update such models across multiple domains and datasets, leading many studies to focus on specialist models. To address this challenge, we propose Med-LEGO, a training-free framework that enables the seamless integration or updating of a generalist CAD model by combining multiple specialist models, similar to assembling LEGO bricks. Med-LEGO enhances LoRA (low-rank adaptation) by incorporating singular value decomposition (SVD) to efficiently capture the domain expertise of each specialist model with minimal additional parameters. By combining these adapted weights through simple operations, Med-LEGO allows for the easy integration or modification of specific diagnostic capabilities without the need for original data or retraining. Finally, the combined model can be further adapted to new diagnostic tasks, making it a versatile generalist model. Our extensive experiments demonstrate that Med-LEGO outperforms existing methods in both cross-domain and in-domain medical tasks while using only 0.18% of full model parameters. These merged models show better convergence and generalization to new tasks, providing an effective path toward generalist medical AI.
Similar Papers
MedM-VL: What Makes a Good Medical LVLM?
CV and Pattern Recognition
Helps doctors understand medical pictures better.
Scaling Down to Scale Up: Towards Operationally-Efficient and Deployable Clinical Models via Cross-Modal Low-Rank Adaptation for Medical Vision-Language Models
CV and Pattern Recognition
Helps doctors find diseases in CT scans faster.
Learning from a Generative Oracle: Domain Adaptation for Restoration
CV and Pattern Recognition
Fixes blurry pictures without needing perfect examples.