Developing Foundation Models for Universal Segmentation from 3D Whole-Body Positron Emission Tomography
arXiv cs.CV / 3/13/2026
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Key Points
- The paper announces SegAnyPET, a foundational model for universal segmentation in 3D whole-body PET imaging, built on what the authors claim is the largest PET dataset to date with 11,041 scans and 59,831 segmentation masks.
- It introduces a 3D architecture with a prompt engineering strategy for mask generation, enabling generalizable segmentation across organs and lesions with zero-shot capabilities.
- The model supports efficient human-in-the-loop workflows, facilitating easy human correction with minimal effort in clinical settings.
- Extensive multi-center, multi-tracer, multi-disease evaluations demonstrate strong zero-shot performance across diverse segmentation tasks, highlighting potential clinical impact.
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