KA$^2$ER: Knowledge Adaptive Amalgamation of ExpeRts for Medical Images Segmentation
Shangde Gao, Yichao Fu, Ke Liu, Hongxia Xu, Jian Wu

TL;DR
This paper introduces KA$^2$ER, a framework that adaptively combines expert models for medical image segmentation, effectively addressing domain shifts and improving performance across diverse tasks.
Contribution
The paper proposes a novel adaptive amalgamation framework that integrates multiple expert models into a versatile foundation model for medical image segmentation.
Findings
Effective reduction of domain shift effects.
Improved segmentation accuracy across multiple tasks.
Demonstrated adaptability in real-world medical data.
Abstract
Recently, many foundation models for medical image analysis such as MedSAM, SwinUNETR have been released and proven to be useful in multiple tasks. However, considering the inherent heterogeneity and inhomogeneity of real-world medical data, directly applying these models to specific medical image segmentation tasks often leads to negative domain shift effects, which can severely weaken the model's segmentation capabilities. To this end, we propose an adaptive amalgamation knowledge framework that aims to train a versatile foundation model to handle the joint goals of multiple expert models, each specialized for a distinct task. Specifically, we first train an nnUNet-based expert model for each task, and reuse the pre-trained SwinUNTER as the target foundation model. Then, the input data for all challenging tasks are encoded in the foundation model and the expert models, respectively,…
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Taxonomy
TopicsMedical Image Segmentation Techniques · AI in cancer detection · Medical Imaging and Analysis
MethodsSoftmax · Attention Is All You Need
