AbdomenGen: Sequential Volume-Conditioned Diffusion Framework for Abdominal Anatomy Generation
Yubraj Bhandari, Lavsen Dahal, Paul Segars, Joseph Y. Lo
TLDR
AbdomenGen is a diffusion framework that generates controllable abdominal anatomies using a Volume Control Scalar for precise organ size modulation.
Key contributions
- Introduces AbdomenGen, a sequential diffusion framework for controllable abdominal anatomy generation.
- Presents Volume Control Scalar (VCS) to decouple organ size from body habitus for modulation.
- Achieves high geometric fidelity (e.g., liver dice 0.83) across 11 abdominal organs.
- Enables independent multi-organ control while maintaining global anatomical coherence.
Why it matters
Current medical imaging research lacks systems for controlled anatomical variations. AbdomenGen offers a calibrated, distribution-aware framework for constructing controllable abdominal phantoms. This significantly advances simulation studies by enabling precise, interpretable anatomical control.
Original Abstract
Computational phantoms are widely used in medical imaging research, yet current systems to generate controlled, clinically meaningful anatomical variations remain limited. We present AbdomenGen, a sequential volume-conditioned diffusion framework for controllable abdominal anatomy generation. We introduce the \textbf{Volume Control Scalar (VCS)}, a standardized residual that decouples organ size from body habitus, enabling interpretable volume modulation. Organ masks are synthesized sequentially, conditioning on the body mask and previously generated structures to preserve global anatomical coherence while supporting independent, multi-organ control. Across 11 abdominal organs, the proposed framework achieves strong geometric fidelity (e.g., liver dice $0.83 \pm 0.05$), stable single-organ calibration over $[-3,+3]$ VCS, and disentangled multi-organ modulation. To showcase clinical utility with a hepatomegaly cohort selected from MERLIN, Wasserstein-based VCS selection reduces distributional distance of training data by 73.6\% . These results demonstrate calibrated, distribution-aware anatomical generation suitable for controllable abdominal phantom construction and simulation studies.
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