Javascript must be enabled to continue!
Accelerating Dynamic MRI Reconstruction Using Adaptive Sequentially Truncated Higher-Order Singular Value Decomposition
View through CrossRef
Background:
Dynamic magnetic resonance imaging (dMRI) plays an important role in
cardiac perfusion and functional clinical exams. However, further applications are limited by the speed
of data acquisition.
Objective:
A low-rank plus sparse decomposition approach is often introduced for reconstructing dynamic
magnetic resonance imaging (dMRI) from highly under-sampling K-space data. In this paper,
the reconstruction problem of DMR is transformed into a low-rank tensor plus sparse tensor recovery
problem.
Methods:
A sequentially truncated higher-order singular value decomposition method is proposed to
quickly approximate the low-rank tensor space structure and learn sparse components by adding a tensor
kernel norm to the low-rank tensor and a l1 norm to the sparse tensor to constrain the two parts at
the same time. The optimization problem is solved by using the iterative soft-thresholding algorithm;
therefore, under the premise of ensuring the accuracy of the data, the amount of computation can be
effectively reduced.
Results:
Compared with the state-of-the-art methods, the experimental results show that the proposed
method can achieve better performance in terms of reconstruction speed and reconstruction quality on
3D and 4D dMRI datasets.
Conclusion:
The multidimensional MRI time series is represented by the tensor tool and decomposed
into low rank tensor terms and sparse tensor terms. The low rank spatial structure is captured by the
adaptive ST-HOSVD for fast approximation and the sparse component is constrained efficiently with a
sparsity transform and l1 norm. The optimization problem is solved by an iterative soft-thresholding
algorithm. Through extensive 3D and 4D dMRI experiments, it is demonstrated that our method can
achieve superior reconstruction performance and efficiency compared with the other three state-of-theart
methods reported in the literature.
Bentham Science Publishers Ltd.
Title: Accelerating Dynamic MRI Reconstruction Using Adaptive Sequentially
Truncated Higher-Order Singular Value Decomposition
Description:
Background:
Dynamic magnetic resonance imaging (dMRI) plays an important role in
cardiac perfusion and functional clinical exams.
However, further applications are limited by the speed
of data acquisition.
Objective:
A low-rank plus sparse decomposition approach is often introduced for reconstructing dynamic
magnetic resonance imaging (dMRI) from highly under-sampling K-space data.
In this paper,
the reconstruction problem of DMR is transformed into a low-rank tensor plus sparse tensor recovery
problem.
Methods:
A sequentially truncated higher-order singular value decomposition method is proposed to
quickly approximate the low-rank tensor space structure and learn sparse components by adding a tensor
kernel norm to the low-rank tensor and a l1 norm to the sparse tensor to constrain the two parts at
the same time.
The optimization problem is solved by using the iterative soft-thresholding algorithm;
therefore, under the premise of ensuring the accuracy of the data, the amount of computation can be
effectively reduced.
Results:
Compared with the state-of-the-art methods, the experimental results show that the proposed
method can achieve better performance in terms of reconstruction speed and reconstruction quality on
3D and 4D dMRI datasets.
Conclusion:
The multidimensional MRI time series is represented by the tensor tool and decomposed
into low rank tensor terms and sparse tensor terms.
The low rank spatial structure is captured by the
adaptive ST-HOSVD for fast approximation and the sparse component is constrained efficiently with a
sparsity transform and l1 norm.
The optimization problem is solved by an iterative soft-thresholding
algorithm.
Through extensive 3D and 4D dMRI experiments, it is demonstrated that our method can
achieve superior reconstruction performance and efficiency compared with the other three state-of-theart
methods reported in the literature.
Related Results
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Novedades sobre el enterramiento femenino de la Primera Edad del Hierro de Casa del Carpio (Belvís de la Jara, Toledo)
Novedades sobre el enterramiento femenino de la Primera Edad del Hierro de Casa del Carpio (Belvís de la Jara, Toledo)
Las características de la ubicación de la tumba de Casa del Carpio (Belvís de la Jara, Toledo), las circunstancias de su documentación, y lo excepcional del ajuar documentado han c...
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Abstract
Background:To explore whether there is abnormality of neonatal brains’ MRI and BAEP with different bilirubin levels, and to provide an objective basis for early di...
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Analysis on the MRI and BAEP Results of Neonatal Brain with Different Levels of Bilirubin
Abstract
Background:To explore whether there is abnormality of neonatal brains’ MRI and BAEP with different bilirubin levels, and to provide an objective basis for early di...
APPLICATION OF SVD METHOD IN SOLVING INCORRECT GEODESIC PROBLEMS
APPLICATION OF SVD METHOD IN SOLVING INCORRECT GEODESIC PROBLEMS
The most reliable method for calculating linear equations of the least squares principle, which can be used to solve incorrect geodetic problems, is based on matrix factorization, ...
The Application of S‐transform Spectrum Decomposition Technique in Extraction of Weak Seismic Signals
The Application of S‐transform Spectrum Decomposition Technique in Extraction of Weak Seismic Signals
AbstractIn processing of deep seismic reflection data, when the frequency band difference between the weak useful signal and noise both from the deep subsurface is very small and h...
Does bore size matter?—A comparison of the subjective perception of patient comfort during low field (0.55 Tesla) and standard (1.5 Tesla) MRI imaging
Does bore size matter?—A comparison of the subjective perception of patient comfort during low field (0.55 Tesla) and standard (1.5 Tesla) MRI imaging
The purpose of the present study was to evaluate the subjectively perceived patient comfort during magnetic resonance imaging (MRI) examinations and to assess potential differences...
On the Jacobians of the Factors of the Truncated Singular Value Decomposition
On the Jacobians of the Factors of the Truncated Singular Value Decomposition
HighlightsOn the Jacobians of the Factors of the Truncated Singular Value DecompositionThe aim of this paper is to derive analytical expressions for the Jacobians for the factors o...

