Abstract

Dynamic magnetic resonance imaging (dynamic MRI) is used to visualize living tissues and their changes over time. In this paper, we propose a new tensor-based dynamic MRI approach for reconstruction from highly undersampled (k, t)-space data, which combines low tensor train rankness and temporal sparsity constraints. Considering tensor train (TT) decomposition has superior performance in dealing with high-dimensional tensors, we introduce TT decomposition and utilize the low rankness of TT matrices to exploit the inner structural prior information of dynamic MRI data. First, ket augmentation (KA) scheme is used to permute the 3-order (k, t)-space data to a high order tensor and low rankness of each TT matrix is enforced with different weights. To reduce the computational complexity, we replace the nuclear norm of TT matrices with the minimum Frobenius norm of two factorization matrices to avoid singular value decomposition. Secondly, the I <sub xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">1</sub> norm of the Fourier coefficients along the temporal dimension is added as a sparsity constraint to further improve the reconstruction. Lastly, an effective algorithm based on the alternating direction method of multipliers (ADMM) is developed to solve the proposed optimization problem. Numerous experiments have been conducted on three dynamic MRI data sets to estimate the performance of our proposed method. The experimental results and comparisons with several state-of-the-art imaging methods demonstrate the superior performance of the proposed method.

Highlights

  • IntroductionDynamic magnetic resonance imaging (dynamic MRI) can provide visualization of living tissues and their changes over time

  • Dynamic magnetic resonance imaging can provide visualization of living tissues and their changes over time

  • We propose a new CS-dynamic MRI reconstruction method that exploits the low tensor train (TT) rankness and sparsity of dynamic MRI simultaneously

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Summary

Introduction

Dynamic magnetic resonance imaging (dynamic MRI) can provide visualization of living tissues and their changes over time. It is widely used in clinical applications, such as cardiac, perfusion and functional brain imaging. The inherently slow acquisition time and the limitation of spatial and temporal resolution limited its application. Fully sampled (k, t)-space data are acquired to obtain high spatial and temporal resolution. The problem is that it is difficult to sample (k, t)-space at the Nyquist rate since the number of the measurements grows exponentially with the physical dimension. Compressed sensing based dynamic MRI (CS-dynamic MRI) methods exploit the prior information to reconstruct the dynamic images from highly undersampled (k, t)-space data.

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