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Bayesian Uncertainty-Aware MRI Reconstruction

About

We propose a novel framework for joint magnetic resonance image reconstruction and uncertainty quantification using under-sampled k-space measurements. The problem is formulated as a Bayesian linear inverse problem, where prior distributions are assigned to the unknown model parameters. Specifically, we assume the target image is sparse in its spatial gradient and impose a total variation prior model. A Markov chain Monte Carlo (MCMC) method, based on a split-and-augmented Gibbs sampler, is then used to sample from the resulting joint posterior distribution of the unknown parameters. Experiments conducted using single- and multi-coil datasets demonstrate the superior performance of the proposed framework over optimisation-based compressed sensing algorithms. Additionally, our framework effectively quantifies uncertainty, showing strong correlation with error maps computed from reconstructed and ground-truth images.

Ahmed Karam Eldaly, Matteo Figini, Daniel C. Alexander• 2026

Related benchmarks

TaskDatasetResultRank
MRI ReconstructionHCP (Human Connectome Project) single-coil T1-weighted (test)
RMSE0.9
20
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