PSIRNet: Deep Learning-based Free-breathing Rapid Acquisition Late Enhancement Imaging
arXiv cs.AI / 4/13/2026
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Key Points
- The study proposes PSIRNet, a physics-guided deep learning network that reconstructs phase-sensitive inversion recovery (PSIR) late gadolinium enhancement (LGE) cardiac MRI from a single free-breathing acquisition over two heartbeats.
- Using a large retrospective dataset (800,653 slices from 55,917 patients across 1.5T/3T and multiple sites), PSIRNet was trained end-to-end with surface coil correction and evaluated against motion-corrected (MOCO) PSIR references using both quantitative metrics (SSIM, PSNR, NRMSE) and blinded expert cardiologist scoring.
- Reader assessments found PSIRNet reconstructions to be superior for dark-blood LGE and superior/equivalent for bright-blood and wideband variants relative to MOCO, with statistical support reported in the paper.
- The method substantially reduces reconstruction/inference time to ~100 ms per slice (vs >5 s for MOCO PSIR) and targets an 8–24× reduction in acquisition time by removing the need for 8–24 MOCO signal averages.
- Overall, PSIRNet is positioned as a route to faster, diagnostic-quality free-breathing PSIR LGE imaging without extensive motion-corrected averaging.
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