Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Opportunistic Promptable Segmentation: Leveraging Routine Radiological Annotations to Guide 3D CT Lesion Segmentation

About

The development of machine learning models for CT imaging depends on the availability of large, high-quality, and diverse annotated datasets. Although large volumes of CT images and reports are readily available in clinical picture archiving and communication systems (PACS), 3D segmentations of critical findings are costly to obtain, typically requiring extensive manual annotation by radiologists. On the other hand, it is common for radiologists to provide limited annotations of findings during routine reads, such as line measurements and arrows, that are often stored in PACS as GSPS objects. We posit that these sparse annotations can be extracted along with CT volumes and converted into 3D segmentations using promptable segmentation models, a paradigm we term Opportunistic Promptable Segmentation. To enable this paradigm, we propose SAM2CT, the first promptable segmentation model designed to convert radiologist annotations into 3D segmentations in CT volumes. SAM2CT builds upon SAM2 by extending the prompt encoder to support arrow and line inputs and by introducing Memory-Conditioned Memories (MCM), a memory encoding strategy tailored to 3D medical volumes. On public lesion segmentation benchmarks, SAM2CT outperforms existing promptable segmentation models and similarly trained baselines, achieving Dice similarity coefficients of 0.649 for arrow prompts and 0.757 for line prompts. Applying the model to pre-existing GSPS annotations from a clinical PACS (N = 60), SAM2CT generates 3D segmentations that are clinically acceptable or require only minor adjustments in 87% of cases, as scored by radiologists. Additionally, SAM2CT demonstrates strong zero-shot performance on select Emergency Department findings. These results suggest that large-scale mining of historical GSPS annotations represents a promising and scalable approach for generating 3D CT segmentation datasets.

Samuel Church, Joshua D. Warner, Danyal Maqbool, Xin Tie, Junjie Hu, Meghan G. Lubner, Tyler J. Bradshaw• 2026

Related benchmarks

TaskDatasetResultRank
Lesion SegmentationMSD Colon
BBox Score0.729
6
Lesion SegmentationLiTS 17
BBox Score0.799
6
Lesion SegmentationDL3D-Bone
BBox IoU0.779
6
Lesion SegmentationAll Datasets
BBox Score0.777
6
Lesion SegmentationMSD Lung
BBox Score0.751
6
Lesion SegmentationKiTS 23
BBox Score86.8
6
Lesion SegmentationMSD Pancreas
BBox Error0.816
6
Lesion SegmentationNIH-ABD
BBox Error0.732
6
Lesion SegmentationNIH-MED
BBox Error0.739
6
Medical Image SegmentationEmergency Department data (test)
Abscess62.4
5
Showing 10 of 13 rows

Other info

Follow for update