Treffer: Prompt Learning With Bounding Box Constraints for Medical Image Segmentation.

Title:
Prompt Learning With Bounding Box Constraints for Medical Image Segmentation.
Source:
IEEE transactions on bio-medical engineering [IEEE Trans Biomed Eng] 2026 Jan; Vol. 73 (1), pp. 359-368.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Institute Of Electrical And Electronics Engineers Country of Publication: United States NLM ID: 0012737 Publication Model: Print Cited Medium: Internet ISSN: 1558-2531 (Electronic) Linking ISSN: 00189294 NLM ISO Abbreviation: IEEE Trans Biomed Eng Subsets: MEDLINE
Imprint Name(s):
Publication: New York, NY : Institute Of Electrical And Electronics Engineers
Original Publication: New York, IEEE Professional Technical Group on Bio-Medical Engineering.
Entry Date(s):
Date Created: 20250624 Date Completed: 20251229 Latest Revision: 20251230
Update Code:
20251230
DOI:
10.1109/TBME.2025.3582749
PMID:
40553663
Database:
MEDLINE

Weitere Informationen

Pixel-wise annotations are notoriously labourious and costly to obtain in the medical domain. To mitigate this burden, weakly supervised approaches based on bounding box annotations-much easier to acquire-offer a practical alternative. Vision foundation models have recently shown noteworthy segmentation performance when provided with prompts such as points or bounding boxes. Prompt learning exploits these models by adapting them to downstream tasks and automating segmentation, thereby reducing user intervention. However, existing prompt learning approaches depend on fully annotated segmentation masks. This paper proposes a novel framework that combines the representational power of foundation models with the annotation efficiency of weakly supervised segmentation. More specifically, our approach automates prompt generation for foundation models using only bounding box annotations. Our proposed optimization scheme integrates multiple constraints derived from box annotations with pseudo-labels generated by the prompted foundation model. Extensive experiments across multi-modal datasets reveal that, using the Segment Anything Model (SAM) as backbone, our weakly supervised method achieves an average Dice score of 84.90% in a limited data setting, outperforming existing fully-supervised and weakly-supervised approaches.