Affiliation:
1. Biomedical Imaging Research Institute Cedars‐Sinai Medical Center Los Angeles California USA
2. Department of Radiological Sciences David Geffen School of Medicine at UCLA Los Angeles California USA
3. Department of Bioengineering University of California, Los Angeles Los Angeles California USA
4. Departments of Imaging and Cardiology Cedars‐Sinai Medical Center Los Angeles California USA
Abstract
AbstractPurposeTo develop a novel low‐rank tensor reconstruction approach leveraging the complete acquired data set to improve precision and repeatability of multiparametric mapping within the cardiovascular MR Multitasking framework.MethodsA novel approach that alternated between estimation of temporal components and spatial components using the entire data set acquired (i.e., including navigator data and imaging data) was developed to improve reconstruction. The precision and repeatability of the proposed approach were evaluated on numerical simulations, 10 healthy subjects, and 10 cardiomyopathy patients at multiple scan times for 2D myocardial T1/T2 mapping with MR Multitasking and were compared with those of the previous navigator‐derived fixed‐basis approach.ResultsIn numerical simulations, the proposed approach outperformed the previous fixed‐basis approach with lower T1 and T2 error against the ground truth at all scan times studied and showed better motion fidelity. In human subjects, the proposed approach showed no significantly different sharpness or T1/T2 measurement and significantly improved T1 precision by 20%–25%, T2 precision by 10%–15%, T1 repeatability by about 30%, and T2 repeatability by 25%–35% at 90‐s and 50‐s scan times The proposed approach at the 50‐s scan time also showed comparable results with that of the previous fixed‐basis approach at the 90‐s scan time.ConclusionThe proposed approach improved precision and repeatability for quantitative imaging with MR Multitasking while maintaining comparable motion fidelity, T1/T2 measurement, and septum sharpness and had the potential for further reducing scan time from 90 s to 50 s.
Funder
National Institutes of Health