VesselTok: Tokenizing Vessel-like 3D Biomedical Graph Representations for Reconstruction and Generation
arXiv cs.CV / 3/20/2026
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Key Points
- VesselTok introduces a token-based latent representation for vessel-like 3D graphs by encoding tubular geometry with centerline points and a pseudo radius to reduce computational complexity in dense networks.
- The approach learns neural implicit representations conditioned on centerline points, enabling reconstruction and generation of realistic tubular structures.
- The method demonstrates generalization to unseen anatomies (lung airways, lung vessels, brain vessels) and supports generative modeling of plausible graphs, with transfer to downstream tasks such as link prediction.
- By framing spatial graphs parametrically, VesselTok aims to tackle the high-resolution, computational challenges of vascular and similar networks in clinical and biomedical research.
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