Subject-Specific Low-Field MRI Synthesis via a Neural Operator
arXiv cs.AI / 3/27/2026
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Key Points
- The paper addresses a key limitation of low-field (LF) MRI—reduced signal-to-noise and contrast degradation—by proposing realistic LF image synthesis from high-field (HF) MRI.
- It criticizes existing LF simulators that mainly use noise injection and smoothing, arguing they do not accurately reproduce the contrast changes observed in true LF acquisitions.
- The authors introduce an end-to-end framework (H2LO) that uses a coordinate-image decoupled neural operator to learn the HF-to-LF degradation process from a small set of paired HF-LF scans.
- Experiments on T1w and T2w MRI show H2LO generates more faithful LF simulations than parameterized noise models and common image-to-image translation approaches.
- The method also boosts performance on downstream image enhancement tasks, suggesting it could help improve diagnostic quality for LF MRI.
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