Improved image quality for static blade magnetic resonance imaging using the total-variation regularized least absolute deviation solver
Journal
Tomography
Journal Volume
7
Journal Issue
4
Date Issued
2021-12-01
Author(s)
Chen, Hsin Chia
Yang, Haw Chiao
Chen, Chih Ching
Harrevelt, Seb
Chao, Yu Chieh
Lin, Jyh Miin
Yu, WeiHsuan
Chang, Hing Chiu
Hwang, Feng Nan
Abstract
In order to improve the image quality of BLADE magnetic resonance imaging (MRI) using the index tensor solvers and to evaluate MRI image quality in a clinical setting, we imple-mented BLADE MRI reconstructions using two tensor solvers (the least-squares solver and the L1 total-variation regularized least absolute deviation (L1TV-LAD) solver) on a graphics processing unit (GPU). The BLADE raw data were prospectively acquired and presented in random order before being assessed by two independent radiologists. Evaluation scores were examined for con-sistency and then by repeated measures analysis of variance (ANOVA) to identify the superior algorithm. The simulation showed the structural similarity index (SSIM) of various tensor solvers ranged between 0.995 and 0.999. Inter-reader reliability was high (Intraclass correlation coefficient (ICC) = 0.845, 95% confidence interval: 0.817, 0.87). The image score of L1TV-LAD was significantly higher than that of vendor-provided image and the least-squares method. The image score of the least-squares method was significantly lower than that of the vendor-provided image. No signifi-cance was identified in L1TV-LAD with a regularization strength of λ = 0.4–1.0. The L1TV-LAD with a regularization strength of λ = 0.4–0.7 was found consistently better than least-squares and vendor-provided reconstruction in BLADE MRI with a SENSitivity Encoding (SENSE) factor of 2. This warrants further development of the integrated computing system with the scanner.
Subjects
BLADE MRI | Graphic processing unit (GPU) | Least absolute deviation | Non-uniform fast Fourier transform (NUFFT)
Type
journal article