Generalizable synthetic MRI with physics-informed convolutional networks
Luuk Jacobs, Stefano Mandija, Hongyan Liu, Cornelis A.T. van den Berg,, Alessandro Sbrizzi, Matteo Maspero

TL;DR
This paper introduces a physics-informed deep learning approach to synthesize multiple MRI contrasts from a single quick scan, demonstrating high quality and generalizability to unseen contrasts, potentially speeding up neuroimaging procedures.
Contribution
The study presents a novel physics-informed GAN that synthesizes MRI contrasts from minimal data and generalizes to arbitrary contrasts, outperforming previous end-to-end deep learning methods.
Findings
Achieved high similarity metrics for standard contrasts.
Successfully synthesized unseen contrasts with comparable quality.
Demonstrated potential for faster neuroimaging protocols.
Abstract
In this study, we develop a physics-informed deep learning-based method to synthesize multiple brain magnetic resonance imaging (MRI) contrasts from a single five-minute acquisition and investigate its ability to generalize to arbitrary contrasts to accelerate neuroimaging protocols. A dataset of fifty-five subjects acquired with a standard MRI protocol and a five-minute transient-state sequence was used to develop a physics-informed deep learning-based method. The model, based on a generative adversarial network, maps data acquired from the five-minute scan to "effective" quantitative parameter maps, here named q*-maps, by using its generated PD, T1, and T2 values in a signal model to synthesize four standard contrasts (proton density-weighted, T1-weighted, T2-weighted, and T2-weighted fluid-attenuated inversion recovery), from which losses are computed. The q*-maps are compared to…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Machine Learning in Materials Science · Atomic and Subatomic Physics Research
