Acceleration Strategies for MR-STAT: Achieving High-Resolution Reconstructions on a Desktop PC within 3 minutes
Hongyan Liu, Oscar van der Heide, Stefano Mandija, Cornelis A. T. van, den Berg, Alessandro Sbrizzi

TL;DR
This paper introduces a novel accelerated MR-STAT reconstruction method using neural networks and problem splitting, enabling high-resolution imaging on a desktop PC within 3 minutes.
Contribution
It presents a new approach combining neural network surrogates and problem reformulation to significantly speed up MR-STAT reconstructions compared to prior methods.
Findings
Reconstruction time reduced by at least 40 times
Achieved high-quality images comparable to previous methods
Reconstructed data within 3 minutes on a standard desktop PC
Abstract
MR-STAT is an emerging quantitative magnetic resonance imaging technique which aims at obtaining multi-parametric tissue parameter maps from single short scans. It describes the relationship between the spatial-domain tissue parameters and the time-domain measured signal by using a comprehensive, volumetric forward model. The MR-STAT reconstruction solves a large-scale nonlinear problem, thus is very computationally challenging. In previous work, MR-STAT reconstruction using Cartesian readout data was accelerated by approximating the Hessian matrix with sparse, banded blocks, and can be done on high performance CPU clusters with tens of minutes. In the current work, we propose an accelerated Cartesian MR-STAT algorithm incorporating two different strategies: firstly, a neural network is trained as a fast surrogate to learn the magnetization signal not only in the full time-domain but…
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