The goal of this project is to increase the precision and resolution of quantitative magnetic resonance imaging (MRI). Quantitative information such as tissue relaxation parameters (e.g., T1 and T2) measure tissue function and indicate disease-related changes in the heart, liver, brain, and other organs. For instance, T1 changes can provide evidence of diffuse fibrosis in the myocardium that can signal heart disease. Quantitative maps also are reproducible, directly comparable longitudinally and across subjects, and less affected by the properties of the scanner used, when compared versus common weighted (non-quantitative) clinical imaging. But, quantitative imaging involves more complicated and time-consuming pulse sequences. To accomplish this goal, this project will develop new machine learning algorithms for high-quality parameter mapping from free-breathing data.
The first aim of this project will increase parameter map resolution achievable from highly accelerated, noisy data. The proposed method will integrate existing deep cascade network-based image reconstructions with convolutional network-based blocks for super-resolution and parameter map estimation. Preliminary studies suggest these new blocks improve sharpness and mitigate artifacts in the reconstructed parameter maps. The next aim will improve the training precision of such artificial neural networks to account for the significant per-voxel nonlinear fit variability in quantitative MRI. The proposed method will reweight the loss function used for calibrating these networks by the goodness-of-fit (coefficient of determination) of the reference maps obtained from fully sampled training data. Preliminary results demonstrate that quality-aware reweighting significantly improves reconstructed image quality when working with noisy training data. Experiments will evaluate the precision of both of these innovations against existing deep-learning-based reconstructions on T1 maps obtained from pre- and post-contrast cardiac images of volunteer patients.
The final aim will address motion during the acquisition by estimating and tracking nonrigid motion in the data consistency stages of the deep cascade artificial neural network architecture. Two methods are proposed: deformable motion estimation already demonstrated on compressive model-based image reconstructions, and a new ?re-blurring? convolutional neural network that automatically introduces artifacts into a ?clean? image to match the motion-corrupted data. Both of these methods enforce consistency between motion-affected data and a motion-free image during the reconstruction. Both methods will be validated on both cardiac and abdominal images for motion artifacts and reconstruction quality against breath-held parameter mapping acquisitions.

Public Health Relevance

Quantitative magnetic resonance imaging noninvasively measures physical properties of tissue connected to cardiovascular disease and many other conditions. Novel machine learning methods for processing data to produce higher quality maps will facilitate earlier and more accurate treatment of these diseases. This project will facilitate rapid quantitative imaging with freely breathing subjects.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
High Priority, Short Term Project Award (R56)
Project #
1R56EB028254-01
Application #
10007241
Study Section
Emerging Imaging Technologies and Applications Study Section (EITA)
Program Officer
Shabestari, Behrouz
Project Start
2019-09-16
Project End
2020-08-31
Budget Start
2019-09-16
Budget End
2020-08-31
Support Year
1
Fiscal Year
2019
Total Cost
Indirect Cost
Name
University of Virginia
Department
Engineering (All Types)
Type
Biomed Engr/Col Engr/Engr Sta
DUNS #
065391526
City
Charlottesville
State
VA
Country
United States
Zip Code
22904