Towards Trustworthy Selective Generation: Reliability-Guided Diffusion for Ultra-Low-Field to High-Field MRI Synthesis
arXiv cs.CV / 3/13/2026
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Key Points
- A new reliability-aware diffusion framework, ReDiff, aims to improve low-field to high-field MRI synthesis by enhancing robustness during sampling and post-generation stages.
- It introduces a reliability-guided sampling strategy to suppress unreliable responses during denoising and an uncertainty-aware multi-candidate selection scheme to improve the final prediction.
- The approach reduces artifacts and improves structural fidelity, addressing anatomically inconsistent patterns such as spurious edges or artificial texture variations.
- Experiments on multi-center MRI datasets show improvements over state-of-the-art methods in structural fidelity and artifact reduction.
- The work emphasizes clinical trust by targeting not only visual accuracy but also spatial reliability for downstream analyses like tissue delineation and volumetric estimation.
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