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📄 Abstract
Abstract: Sparse-View CT (SVCT) reconstruction enhances temporal resolution and reduces
radiation dose, yet its clinical use is hindered by artifacts due to view
reduction and domain shifts from scanner, protocol, or anatomical variations,
leading to performance degradation in out-of-distribution (OOD) scenarios. In
this work, we propose a Cross-Distribution Diffusion Priors-Driven Iterative
Reconstruction (CDPIR) framework to tackle the OOD problem in SVCT. CDPIR
integrates cross-distribution diffusion priors, derived from a Scalable
Interpolant Transformer (SiT), with model-based iterative reconstruction
methods. Specifically, we train a SiT backbone, an extension of the Diffusion
Transformer (DiT) architecture, to establish a unified stochastic interpolant
framework, leveraging Classifier-Free Guidance (CFG) across multiple datasets.
By randomly dropping the conditioning with a null embedding during training,
the model learns both domain-specific and domain-invariant priors, enhancing
generalizability. During sampling, the globally sensitive transformer-based
diffusion model exploits the cross-distribution prior within the unified
stochastic interpolant framework, enabling flexible and stable control over
multi-distribution-to-noise interpolation paths and decoupled sampling
strategies, thereby improving adaptation to OOD reconstruction. By alternating
between data fidelity and sampling updates, our model achieves state-of-the-art
performance with superior detail preservation in SVCT reconstructions.
Extensive experiments demonstrate that CDPIR significantly outperforms existing
approaches, particularly under OOD conditions, highlighting its robustness and
potential clinical value in challenging imaging scenarios.