| Literature DB >> 32206691 |
Burhaneddin Yaman1, Sebastian Weingärtner1, Nikolaos Kargas2, Nicholas D Sidiropoulos3, Mehmet Akçakaya1.
Abstract
Multi-dimensional, multi-contrast magnetic resonance imaging (MRI) has become increasingly available for comprehensive and time-efficient evaluation of various pathologies, providing large amounts of data and offering new opportunities for improved image reconstructions. Recently, a cardiac phase-resolved myocardial T 1 mapping method has been introduced to provide dynamic information on tissue viability. Improved spatio-temporal resolution in clinically acceptable scan times is highly desirable but requires high acceleration factors. Tensors are well-suited to describe inter-dimensional hidden structures in such multi-dimensional datasets. In this study, we sought to utilize and compare different tensor decomposition methods, without the use of auxiliary navigator data. We explored multiple processing approaches in order to enable high-resolution cardiac phase-resolved myocardial T 1 mapping. Eight different low-rank tensor approximation and processing approaches were evaluated using quantitative analysis of accuracy and precision in T 1 maps acquired in six healthy volunteers. All methods provided comparable T 1 values. However, the precision was significantly improved using local processing, as well as a direct tensor rank approximation. Low-rank tensor approximation approaches are well-suited to enable dynamic T 1 mapping at high spatio-temporal resolutions.Entities:
Keywords: Accelerated imaging; PARAFAC; Tucker; low-rank tensors; multi-dimensional MRI; myocardial T1 mapping; tensor processing
Year: 2019 PMID: 32206691 PMCID: PMC7087548 DOI: 10.1109/tci.2019.2940916
Source DB: PubMed Journal: IEEE Trans Comput Imaging