q3-MuPa: Quick, Quiet, Quantitative Multi-Parametric MRI using Physics-Informed Diffusion Models
Shishuai Wang, Florian Wiesinger, Noemi Sgambelluri, Carolin Pirkl, Stefan Klein, Juan A. Hernandez-Tamames, Dirk H.J. Poot

TL;DR
This paper introduces q3-MuPa, a rapid, silent, and accurate multi-parametric MRI mapping method using physics-informed diffusion models that generalize well from synthetic training data to real clinical scans.
Contribution
It develops a diffusion model-based qMRI mapping technique incorporating physics-based data consistency, enabling high-quality, accelerated imaging from minimal scan data.
Findings
High accuracy qMRI maps from synthetic training data
Effective noise reduction and structural detail preservation
Successful application to real clinical scans despite synthetic training
Abstract
The 3D fast silent multi-parametric mapping sequence with zero echo time (MuPa-ZTE) is a novel quantitative MRI (qMRI) acquisition that enables nearly silent scanning by using a 3D phyllotaxis sampling scheme. MuPa-ZTE improves patient comfort and motion robustness, and generates quantitative maps of T1, T2, and proton density using the acquired weighted image series. In this work, we propose a diffusion model-based qMRI mapping method that leverages both a deep generative model and physics-based data consistency to further improve the mapping performance. Furthermore, our method enables additional acquisition acceleration, allowing high-quality qMRI mapping from a fourfold-accelerated MuPa-ZTE scan (approximately 1 minute). Specifically, we trained a denoising diffusion probabilistic model (DDPM) to map MuPa-ZTE image series to qMRI maps, and we incorporated the MuPa-ZTE forward signal…
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