Deep learning using a biophysical model for Robust and Accelerated Reconstruction (RoAR) of quantitative and artifact-free R2* images
Max Torop, Satya VVN Kothapalli, Yu Sun, Jiaming Liu, Sayan Kahali,, Dmitriy A. Yablonskiy, and Ulugbek S. Kamilov

TL;DR
This paper introduces RoAR, a deep learning method that rapidly reconstructs artifact-free R2* maps from MRI data using a biophysical model, without needing ground-truth images, improving accuracy and speed for clinical use.
Contribution
RoAR is a novel CNN-based approach that leverages a biophysical model and self-supervised learning to produce accurate R2* maps without ground-truth data.
Findings
RoAR significantly reduces computation time from hours to seconds.
It maintains high accuracy even at low SNR levels.
RoAR is less sensitive to noise compared to existing methods.
Abstract
Purpose: To introduce a novel deep learning method for Robust and Accelerated Reconstruction (RoAR) of quantitative and B0-inhomogeneity-corrected R2* maps from multi-gradient recalled echo (mGRE) MRI data. Methods: RoAR trains a convolutional neural network (CNN) to generate quantitative R2* maps free from field inhomogeneity artifacts by adopting a self-supervised learning strategy given (a) mGRE magnitude images, (b) the biophysical model describing mGRE signal decay, and (c) preliminary-evaluated F-function accounting for contribution of macroscopic B0 field inhomogeneities. Importantly, no ground-truth R2* images are required and F-function is only needed during RoAR training but not application. Results: We show that RoAR preserves all features of R2* maps while offering significant improvements over existing methods in computation speed (seconds vs. hours) and reduced…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Medical Imaging Techniques and Applications · Advanced Neuroimaging Techniques and Applications
