4.7 Article

The application of the distributed-order time fractional Bloch model to magnetic resonance imaging

期刊

APPLIED MATHEMATICS AND COMPUTATION
卷 427, 期 -, 页码 -

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.amc.2022.127188

关键词

Distributed-order time fractional Bloch equations; Anomalous relaxation; Truncated normal distribution; Beta distribution; Graded mesh; Parameter estimation

资金

  1. Australian Research Council [DP180103858, DP190101889]
  2. eResearch Office, Queensland University of Technology, Brisbane, Australia

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It is well known that the magnetic resonance imaging (MRI) signal decay exhibits anomalous relaxation, which deviates from the classical mono-exponential relaxation. This study investigates the utility of distributed-order time fractional Bloch equations in describing anomalous relaxation processes in human brain MRI data. The results show that models 2 and 3 may be more suitable than model 1 for characterizing anomalous relaxation processes in human brain MRI data.
It is now well known that the magnetic resonance imaging (MRI) signal decay deviates from the classical mono-exponential relaxation. This deviation is referred to in the literature as anomalous relaxation. The modelling of this anomalous relaxation can provide a better understanding of MRI magnetization. The purpose of this work is to investigate the utility of the distributed-order time fractional Bloch equations to describe anomalous relaxation processes in human brain MRI data. Two choices of continuous distribution weight functions, which are parameterised by their mean mu and standard deviation sigma, are studied to investigate their impact on the model solution behaviour. An implicit numerical method implemented on a graded mesh is proposed to solve the model and the stability and convergence analysis are presented. We also derive semi-analytical solutions of the fully coupled Bloch equations using the Laplace transform technique to assess the accuracy of the numerical scheme. Furthermore, three different voxel models of continuous distribution weight functions, namely a single continuous probability distribution (model 1), two distinct continuous probability distributions (model 2) and a mixture of two continuous probability distributions (model 3), are applied to the in vivo human brain MRI data, and a feasible and reliable parameter estimation method based on a modified hybrid Nelder-Mead simplex search and particle swarm optimization is presented to perform the voxel-level temporal fitting of the MRI data. The application of these distributed-order time fractional Bloch models highlights the validity of the proposed models, and based on the mean square error we conclude that models 2 and 3 might be more suitable than model 1 to characterize anomalous relaxation processes in human brain MRI data. (c) 2022 Elsevier Inc. All rights reserved.

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