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UPMRI: Unsupervised Parallel MRI Reconstruction via Projected Conditional Flow Matching

About

Reconstructing high-quality images from substantially undersampled k-space data for accelerated MRI presents a challenging ill-posed inverse problem. While supervised deep learning has revolutionized this field, it relies heavily on large datasets of fully sampled ground-truth images, which are often impractical or impossible to acquire in clinical settings due to long scan times. Despite advances in self-supervised/unsupervised MRI reconstruction, their performance remains inadequate at high acceleration rates. To bridge this gap, we introduce UPMRI, an unsupervised reconstruction framework based on Projected Conditional Flow Matching (PCFM) and its unsupervised transformation. Unlike standard generative models, PCFM learns the prior distribution of fully sampled parallel MRI data by utilizing only undersampled k-space measurements. To reconstruct the image, we establish a novel theoretical link between the marginal vector field in the measurement space, governed by the continuity equation, and the optimal solution to the PCFM objective. This connection results in a cyclic dual-space sampling algorithm for high-quality reconstruction. Extensive evaluations on the fastMRI brain and CMRxRecon cardiac datasets demonstrate that UPMRI significantly outperforms state-of-the-art self-supervised and unsupervised baselines. Notably, it also achieves reconstruction fidelity comparable to or better than leading supervised methods at high acceleration factors, while requiring no fully sampled training data.

Xinzhe Luo, Yingzhen Li, Chen Qin• 2025

Related benchmarks

TaskDatasetResultRank
Multi-Coil MRI ReconstructionfastMRI Brain multi-coil 4x acceleration
SSIM98.3
13
Multi-Coil MRI ReconstructionfastMRI Brain 8x acceleration multi-coil
SSIM0.948
13
Multi-Coil MRI ReconstructionCMRxRecon Cardiac T1 T2 Mapping 4x acceleration multi-coil
SSIM99.4
13
Multi-Coil MRI ReconstructionCMRxRecon Cardiac T1/T2 Mapping multi-coil 8x acceleration
SSIM97.4
13
MRI ReconstructionCMRxRecon 2023
Time (ms)500
12
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