Cycle Context Verification for In-Context Medical Image Segmentation
Journal:
arXiv
Published Date:
Jul 11, 2025
Abstract
In-context learning (ICL) is emerging as a promising technique for achieving
universal medical image segmentation, where a variety of objects of interest
across imaging modalities can be segmented using a single model. Nevertheless,
its performance is highly sensitive to the alignment between the query image
and in-context image-mask pairs. In a clinical scenario, the scarcity of
annotated medical images makes it challenging to select optimal in-context
pairs, and fine-tuning foundation ICL models on contextual data is infeasible
due to computational costs and the risk of catastrophic forgetting. To address
this challenge, we propose Cycle Context Verification (CCV), a novel framework
that enhances ICL-based medical image segmentation by enabling
self-verification of predictions and accordingly enhancing contextual
alignment. Specifically, CCV employs a cyclic pipeline in which the model
initially generates a segmentation mask for the query image. Subsequently, the
roles of the query and an in-context pair are swapped, allowing the model to
validate its prediction by predicting the mask of the original in-context
image. The accuracy of this secondary prediction serves as an implicit measure
of the initial query segmentation. A query-specific prompt is introduced to
alter the query image and updated to improve the measure, thereby enhancing the
alignment between the query and in-context pairs. We evaluated CCV on seven
medical image segmentation datasets using two ICL foundation models,
demonstrating its superiority over existing methods. Our results highlight
CCV's ability to enhance ICL-based segmentation, making it a robust solution
for universal medical image segmentation. The code will be available at
https://github.com/ShishuaiHu/CCV.