Synergistic PET and SENSE MR Image Reconstruction Using Joint Sparsity Regularization

In this paper, we propose a generalized joint sparsity regularization prior and reconstruction framework for the synergistic reconstruction of positron emission tomography (PET) and under sampled sensitivity encoded magnetic resonance imaging data with the aim of improving image quality beyond that...

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Veröffentlicht in:IEEE transactions on medical imaging 2018-01, Vol.37 (1), p.20-34
Hauptverfasser: Mehranian, Abolfazl, Belzunce, Martin A., Prieto, Claudia, Hammers, Alexander, Reader, Andrew J.
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Belzunce, Martin A.
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Reader, Andrew J.
description In this paper, we propose a generalized joint sparsity regularization prior and reconstruction framework for the synergistic reconstruction of positron emission tomography (PET) and under sampled sensitivity encoded magnetic resonance imaging data with the aim of improving image quality beyond that obtained through conventional independent reconstructions. The proposed prior improves upon the joint total variation (TV) using a non-convex potential function that assigns a relatively lower penalty for the PET and MR gradients, whose magnitudes are jointly large, thus permitting the preservation and formation of common boundaries irrespective of their relative orientation. The alternating direction method of multipliers (ADMM) optimization framework was exploited for the joint PET-MR image reconstruction. In this framework, the joint maximum a posteriori objective function was effectively optimized by alternating between well-established regularized PET and MR image reconstructions. Moreover, the dependency of the joint prior on the PET and MR signal intensities was addressed by a novel alternating scaling of the distribution of the gradient vectors. The proposed prior was compared with the separate TV and joint TV regularization methods using extensive simulation and real clinical data. In addition, the proposed joint prior was compared with the recently proposed linear parallel level sets (PLSs) method using a benchmark simulation data set. Our simulation and clinical data results demonstrated the improved quality of the synergistically reconstructed PET-MR images compared with the unregularized and conventional separately regularized methods. It was also found that the proposed prior can outperform both the joint TV and linear PLS regularization methods in assisting edge preservation and recovery of details, which are otherwise impaired by noise and aliasing artifacts. In conclusion, the proposed joint sparsity regularization within the presented a ADMM reconstruction framework is a promising technique, nonetheless our clinical results showed that the clinical applicability of joint reconstruction might be limited in current PET-MR scanners, mainly due to the lower resolution of PET images.
doi_str_mv 10.1109/TMI.2017.2691044
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subjects Algorithms
Aliasing
Brain - diagnostic imaging
Coding
Computer Simulation
Data models
Dependence
Humans
Image edge detection
Image processing
Image Processing, Computer-Assisted - methods
Image quality
Image reconstruction
Magnetic resonance imaging
Magnetic Resonance Imaging - methods
Multi-modal imaging
Objective function
Optimization
Phantoms, Imaging
Positron emission
Positron emission tomography
positron emission tomography (PET)-magnetic resonance imaging (MRI)
Positron-Emission Tomography - methods
Preservation
Regularization
Regularization methods
Scaling
Scanners
Sensitivity
sensitivity encoding
Simulation
Sparsity
sparsity regularization
synergistic reconstruction
Tomography
total variation
title Synergistic PET and SENSE MR Image Reconstruction Using Joint Sparsity Regularization
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