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.

Abstract

Low-field (LF) magnetic resonance imaging (MRI) improves accessibility and reduces costs but generally has lower signal-to-noise ratios and degraded contrast compared to high field (HF) MRI, limiting its clinical utility. Simulating LF MRI from HF MRI enables virtual evaluation of novel imaging devices and development of LF algorithms. Existing low field simulators rely on noise injection and smoothing, which fail to capture the contrast degradation seen in LF acquisitions. To this end, we introduce an end-to-end LF-MRI synthesis framework that learns HF to LF image degradation directly from a small number of paired HF-LF MRIs. Specifically, we introduce a novel HF to LF coordinate-image decoupled neural operator (H2LO) to model the underlying degradation process, and tailor it to capture high-frequency noise textures and image structure. Experimental results in T1w and T2w MRI demonstrate that H2LO produces more faithful simulated low-field images than existing parameterized noise synthesis models and popular image-to-image translation models. Furthermore, it improves performance in downstream image enhancement tasks, showcasing its potential to enhance LF MRI diagnostic capabilities.