Generalized TV--$\ell_p$ Structured Priors for Bayesian $T_1$ Mapping

June 03, 2026 ยท Grace Period ยท ๐Ÿ› Machine.Learning.for.Biomedical.Imaging. 2026 (2026)

โณ Grace Period
This paper is less than 90 days old. We give authors time to release their code before passing judgment.
Authors Disi Lin, Martin Berggren, Tommy Lรถfstedt arXiv ID 2606.05381 Category cs.LG: Machine Learning Citations 0 Venue Machine.Learning.for.Biomedical.Imaging. 2026 (2026)
Abstract
We propose an extended family of structured spatial priors that incorporates the total variation (TV) function with $\ell_p$ norms. The prior is proven to be proper and incorporated into a Bayesian regression framework to enable uncertainty quantification in $T_1$ mapping, with posterior inference performed using the No-U-Turn Sampler (NUTS). This TV--$\ell_p$ construction is proven to constitute a well-defined family of prior distributions, and it naturally enforces spatial consistency and smooth variations in the estimated parameter maps. The method was evaluated in comparison to maximum-likelihood estimation and several Bayesian alternative priors based on the uniform, Gamma, and bounded TV priors. The evaluation includes experiments on synthetic brain and cardiac $T_1$ mapping datasets, as well as a real in-vivo breast $T_1$ mapping dataset. The results show that the TV--$\ell_p$ prior yields more concentrated posterior densities, indicating reduced uncertainty. It also consistently achieves lower variance and smaller (negative) bias, leading to more reliable estimates. Overall, embedding a TV-based structured penalty along with $\ell_p$ norms in a prior in a Bayesian model improves spatial coherence in $T_1$ maps and enhances uncertainty quantification, offering a robust approach for $T_1$ mapping with uncertainties.
Community shame:
Not yet rated
Community Contributions

Found the code? Know the venue? Think something is wrong? Let us know!

๐Ÿ“œ Similar Papers

In the same crypt โ€” Machine Learning