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Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction

BACKGROUND: In emission tomography maximum likelihood expectation maximization reconstruction technique has replaced the analytical approaches in several applications. The most important drawback of this iterative method is its linear rate of convergence and the corresponding computational burden. T...

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Autores principales: Somai, Vencel, Legrady, David, Tolnai, Gabor
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Sciendo 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6137365/
https://www.ncbi.nlm.nih.gov/pubmed/30210038
http://dx.doi.org/10.2478/raon-2018-0013
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author Somai, Vencel
Legrady, David
Tolnai, Gabor
author_facet Somai, Vencel
Legrady, David
Tolnai, Gabor
author_sort Somai, Vencel
collection PubMed
description BACKGROUND: In emission tomography maximum likelihood expectation maximization reconstruction technique has replaced the analytical approaches in several applications. The most important drawback of this iterative method is its linear rate of convergence and the corresponding computational burden. Therefore, simplifications are usually required in the Monte Carlo simulation of the back projection step. In order to overcome these problems, a reconstruction code has been developed with graphical processing unit based Monte Carlo engine which enabled full physical modelling in the back projection. MATERIALS AND METHODS: Code performance was evaluated with simulations on two geometries. One is a sophisticated scanner geometry which consists of a dodecagon with inscribed circle radius of 8.7 cm, packed on each side with an array of 39 × 81 LYSO detector pixels of 1.17 mm sided squares, similar to a Mediso nanoScan PET/CT scanner. The other, simplified geometry contains a 38,4mm long interval as a voxel space, detector pixels are assigned in two parallel sections each containing 81 crystals of a size 1.17×1.17 mm. RESULTS: We have demonstrated that full Monte Carlo modelling in the back projection step leads to material dependent inhomogeneities in the reconstructed image. The reasons behind this apparently anomalous behaviour was analysed in the simplified system by means of singular value decomposition and explained by different speed of convergence. CONCLUSIONS: To still take advantage of the higher noise stability of the full physical modelling, a new filtering technique is proposed for convergence acceleration. Some theoretical considerations for the practical implementation and for further development are also presented.
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spelling pubmed-61373652018-09-14 Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction Somai, Vencel Legrady, David Tolnai, Gabor Radiol Oncol Research Article BACKGROUND: In emission tomography maximum likelihood expectation maximization reconstruction technique has replaced the analytical approaches in several applications. The most important drawback of this iterative method is its linear rate of convergence and the corresponding computational burden. Therefore, simplifications are usually required in the Monte Carlo simulation of the back projection step. In order to overcome these problems, a reconstruction code has been developed with graphical processing unit based Monte Carlo engine which enabled full physical modelling in the back projection. MATERIALS AND METHODS: Code performance was evaluated with simulations on two geometries. One is a sophisticated scanner geometry which consists of a dodecagon with inscribed circle radius of 8.7 cm, packed on each side with an array of 39 × 81 LYSO detector pixels of 1.17 mm sided squares, similar to a Mediso nanoScan PET/CT scanner. The other, simplified geometry contains a 38,4mm long interval as a voxel space, detector pixels are assigned in two parallel sections each containing 81 crystals of a size 1.17×1.17 mm. RESULTS: We have demonstrated that full Monte Carlo modelling in the back projection step leads to material dependent inhomogeneities in the reconstructed image. The reasons behind this apparently anomalous behaviour was analysed in the simplified system by means of singular value decomposition and explained by different speed of convergence. CONCLUSIONS: To still take advantage of the higher noise stability of the full physical modelling, a new filtering technique is proposed for convergence acceleration. Some theoretical considerations for the practical implementation and for further development are also presented. Sciendo 2018-03-24 /pmc/articles/PMC6137365/ /pubmed/30210038 http://dx.doi.org/10.2478/raon-2018-0013 Text en © 2018 Vencel Somai, David Legrady, Gabor Tolnai, published by Sciendo http://creativecommons.org/licenses/by-nc-nd/3.0 This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.
spellingShingle Research Article
Somai, Vencel
Legrady, David
Tolnai, Gabor
Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction
title Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction
title_full Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction
title_fullStr Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction
title_full_unstemmed Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction
title_short Singular Value Decomposition Analysis of Back Projection Operator of Maximum Likelihood Expectation Maximization PET Image Reconstruction
title_sort singular value decomposition analysis of back projection operator of maximum likelihood expectation maximization pet image reconstruction
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6137365/
https://www.ncbi.nlm.nih.gov/pubmed/30210038
http://dx.doi.org/10.2478/raon-2018-0013
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