Mixture-of-Shape-Experts (MoSE): End-to-End Shape Dictionary Framework to Prompt SAM for Generalizable Medical Segmentation.

Jia Wei, Xiaoqi Zhao, Jonghye Woo, Jinsong Ouyang, Georges El Fakhri, Qingyu Chen, Xiaofeng Liu
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Abstract

Single domain generalization (SDG) has recently attracted growing attention in medical image segmentation. One promising strategy for SDG is to leverage consistent semantic shape priors across different imaging protocols, scanner vendors, and clinical sites. However, existing dictionary learning methods that encode shape priors often suffer from limited representational power with a small set of offline computed shape elements, or overfitting when the dictionary size grows. Moreover, they are not readily compatible with large foundation models such as the Segment Anything Model (SAM). In this paper, we propose a novel Mixture-of-Shape-Experts (MoSE) framework that seamlessly integrates the idea of mixture-of-experts (MoE) training into dictionary learning to efficiently capture diverse and robust shape priors. Our method conceptualizes each dictionary atom as a "shape expert," which specializes in encoding distinct semantic shape information. A gating network dynamically fuses these shape experts into a robust shape map, with sparse activation guided by SAM encoding to prevent overfitting. We further provide this shape map as a prompt to SAM, utilizing the powerful generalization capability of SAM through bidirectional integration. All modules, including the shape dictionary, are trained in an end-to-end manner. Extensive experiments on multiple public datasets demonstrate its effectiveness.

形状混合专家(MoSE):端到端形状字典框架,提示SAM用于可推广的医学分割。
单域泛化(SDG)在医学图像分割中越来越受到关注。SDG的一个有希望的策略是在不同的成像协议、扫描仪供应商和临床站点之间利用一致的语义形状先验。然而,现有的对形状先验进行编码的字典学习方法,在使用一小组离线计算的形状元素时,往往存在表征能力有限的问题,或者当字典大小增加时,存在过拟合的问题。此外,它们不容易与诸如分段任意模型(SAM)这样的大型基础模型兼容。在本文中,我们提出了一种新的混合形状专家(MoSE)框架,该框架无缝地将混合专家(MoE)训练的思想集成到字典学习中,以有效地捕获多样化和鲁棒的形状先验。我们的方法将每个字典原子概念化为一个“形状专家”,专门编码不同的语义形状信息。门控网络将这些形状专家动态融合成一个鲁棒的形状图,并在SAM编码指导下进行稀疏激活以防止过拟合。我们进一步将该形状图作为SAM的提示,通过双向集成利用SAM强大的泛化能力。所有模块,包括形状字典,都以端到端的方式进行训练。在多个公共数据集上的大量实验证明了该方法的有效性。
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