| Literature DB >> 30880863 |
Sunli Tang1, Carlos Fernandez-Granda1,2, Sylvain Lannuzel2,3, Brett Bernstein1, Riccardo Lattanzi4,5, Martijn Cloos4,5, Florian Knoll4,5, Jakob Assländer4,5.
Abstract
Magnetic resonance fingerprinting (MRF) is a technique for quantitative estimation of spin- relaxation parameters from magnetic-resonance data. Most current MRF approaches assume that only one tissue is present in each voxel, which neglects intravoxel structure, and may lead to artifacts in the recovered parameter maps at boundaries between tissues. In this work, we propose a multicompartment MRF model that accounts for the presence of multiple tissues per voxel. The model is fit to the data by iteratively solving a sparse linear inverse problem at each voxel, in order to express the measured magnetization signal as a linear combination of a few elements in a precomputed fingerprint dictionary. Thresholding-based methods commonly used for sparse recovery and compressed sensing do not perform well in this setting due to the high local coherence of the dictionary. Instead, we solve this challenging sparse-recovery problem by applying reweighted-𝓁1-norm regularization, implemented using an efficient interior-point method. The proposed approach is validated with simulated data at different noise levels and undersampling factors, as well as with a controlled phantom-imaging experiment on a clinical magnetic-resonance system.Entities:
Keywords: Quantitative MRI; coherent dictionaries; magnetic resonance fingerprinting; multicompartment models; parameter estimation; reweighted 𝓁1 -norm; sparse recovery
Year: 2018 PMID: 30880863 PMCID: PMC6415771 DOI: 10.1088/1361-6420/aad1c3
Source DB: PubMed Journal: Inverse Probl ISSN: 0266-5611 Impact factor: 2.407