Foundation models (FMs) have shown transformative potential in radiology by performing diverse, complex tasks across imaging modalities. Here, we developed CT-FM, a large-scale 3D image-based pre-trained model designed explicitly for various radiological tasks. CT-FM was pre-trained using 148,000 computed tomography (CT) scans from the Imaging Data Commons through label-agnostic contrastive learning. We evaluated CT-FM across four categories of tasks, namely, whole-body and tumor segmentation, head CT triage, medical image retrieval, and semantic understanding, showing superior performance against state-of-the-art models. Beyond quantitative success, CT-FM demonstrated the ability to cluster regions anatomically and identify similar anatomical and structural concepts across scans. Furthermore, it remained robust across test-retest settings and indicated reasonable salient regions attached to its embeddings. This study demonstrates the value of large-scale medical imaging foundation models and by open-sourcing the model weights, code, and data, aims to support more adaptable, reliable, and interpretable AI solutions in radiology.
Vision Foundation Models for Computed Tomography
A large-scale 3D image-based pre-trained model, CT-FM, developed using label-agnostic contrastive learning, demonstrates superior performance in various radiological tasks, including segmentation, triage, retrieval, and semantic understanding.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 8
- Hosting
- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2501.09001v2ARXIV-DEFAULT
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