Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors
Abstract Background The aim of this study was to evaluate and compare PET image reconstruction algorithms on novel digital silicon photomultiplier PET/CT in patients with newly diagnosed and histopathologically confirmed lung cancer. A total of 45 patients undergoing 18F-FDG PET/CT for initial lung...
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doaj-010ffa9020024d31b4151cd30b3e3dd32020-11-25T02:29:18ZengSpringerOpenEJNMMI Physics2197-73642018-09-015111310.1186/s40658-018-0223-xImpact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumorsMichael Messerli0Paul Stolzmann1Michèle Egger-Sigg2Josephine Trinckauf3Stefano D’Aguanno4Irene A. Burger5Gustav K. von Schulthess6Philipp A. Kaufmann7Martin W. Huellner8Department of Nuclear Medicine, University Hospital Zurich/University of ZurichDepartment of Nuclear Medicine, University Hospital Zurich/University of ZurichDepartment of Pathology and Molecular Pathology, University Hospital Zurich/University of ZurichDepartment of Nuclear Medicine, University Hospital Zurich/University of ZurichGE Medical Systems (Schweiz) AGDepartment of Nuclear Medicine, University Hospital Zurich/University of ZurichDepartment of Nuclear Medicine, University Hospital Zurich/University of ZurichDepartment of Nuclear Medicine, University Hospital Zurich/University of ZurichDepartment of Nuclear Medicine, University Hospital Zurich/University of ZurichAbstract Background The aim of this study was to evaluate and compare PET image reconstruction algorithms on novel digital silicon photomultiplier PET/CT in patients with newly diagnosed and histopathologically confirmed lung cancer. A total of 45 patients undergoing 18F-FDG PET/CT for initial lung cancer staging were included. PET images were reconstructed using ordered subset expectation maximization (OSEM) with time-of-flight and point spread function modelling as well as Bayesian penalized likelihood reconstruction algorithm (BSREM) with different β-values yielding a total of 7 datasets per patient. Subjective and objective image assessment with all image datasets was carried out, including subgroup analyses for patients with high dose (> 2.0 MBq/kg) and low dose (≤ 2.0 MBq/kg) of 18F-FDG injection regimen. Results Subjective image quality ratings were significantly different among all different reconstruction algorithms as well as among BSREM using different β-values only (both p < 0.001). BSREM with a β-value of 600 was assigned the highest score for general image quality, image sharpness, and lesion conspicuity. BSREM reconstructions resulted in higher SUVmax of lung tumors compared to OSEM of up to + 28.0% (p < 0.001). BSREM reconstruction resulted in higher signal-/ and contrast-to-background ratios of lung tumor and higher signal-/ and contrast-to-noise ratio compared to OSEM up to a β-value of 800. Lower β-values (BSREM450) resulted in the best image quality for high dose 18F-FDG injections, whereas higher β-values (BSREM600) lead to the best image quality in low dose 18F-FDG PET/CT (p < 0.05). Conclusions BSREM reconstruction algorithm used in digital detector PET leads to significant increases of lung tumor SUVmax, signal-to-background ratio, and signal-to-noise ratio, which translates into a higher image quality, tumor conspicuity, and image sharpness.http://link.springer.com/article/10.1186/s40658-018-0223-xPositron-emission tomographyLung cancerImage reconstructionPET/CTImage quality enhancement |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Michael Messerli Paul Stolzmann Michèle Egger-Sigg Josephine Trinckauf Stefano D’Aguanno Irene A. Burger Gustav K. von Schulthess Philipp A. Kaufmann Martin W. Huellner |
spellingShingle |
Michael Messerli Paul Stolzmann Michèle Egger-Sigg Josephine Trinckauf Stefano D’Aguanno Irene A. Burger Gustav K. von Schulthess Philipp A. Kaufmann Martin W. Huellner Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors EJNMMI Physics Positron-emission tomography Lung cancer Image reconstruction PET/CT Image quality enhancement |
author_facet |
Michael Messerli Paul Stolzmann Michèle Egger-Sigg Josephine Trinckauf Stefano D’Aguanno Irene A. Burger Gustav K. von Schulthess Philipp A. Kaufmann Martin W. Huellner |
author_sort |
Michael Messerli |
title |
Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors |
title_short |
Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors |
title_full |
Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors |
title_fullStr |
Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors |
title_full_unstemmed |
Impact of a Bayesian penalized likelihood reconstruction algorithm on image quality in novel digital PET/CT: clinical implications for the assessment of lung tumors |
title_sort |
impact of a bayesian penalized likelihood reconstruction algorithm on image quality in novel digital pet/ct: clinical implications for the assessment of lung tumors |
publisher |
SpringerOpen |
series |
EJNMMI Physics |
issn |
2197-7364 |
publishDate |
2018-09-01 |
description |
Abstract Background The aim of this study was to evaluate and compare PET image reconstruction algorithms on novel digital silicon photomultiplier PET/CT in patients with newly diagnosed and histopathologically confirmed lung cancer. A total of 45 patients undergoing 18F-FDG PET/CT for initial lung cancer staging were included. PET images were reconstructed using ordered subset expectation maximization (OSEM) with time-of-flight and point spread function modelling as well as Bayesian penalized likelihood reconstruction algorithm (BSREM) with different β-values yielding a total of 7 datasets per patient. Subjective and objective image assessment with all image datasets was carried out, including subgroup analyses for patients with high dose (> 2.0 MBq/kg) and low dose (≤ 2.0 MBq/kg) of 18F-FDG injection regimen. Results Subjective image quality ratings were significantly different among all different reconstruction algorithms as well as among BSREM using different β-values only (both p < 0.001). BSREM with a β-value of 600 was assigned the highest score for general image quality, image sharpness, and lesion conspicuity. BSREM reconstructions resulted in higher SUVmax of lung tumors compared to OSEM of up to + 28.0% (p < 0.001). BSREM reconstruction resulted in higher signal-/ and contrast-to-background ratios of lung tumor and higher signal-/ and contrast-to-noise ratio compared to OSEM up to a β-value of 800. Lower β-values (BSREM450) resulted in the best image quality for high dose 18F-FDG injections, whereas higher β-values (BSREM600) lead to the best image quality in low dose 18F-FDG PET/CT (p < 0.05). Conclusions BSREM reconstruction algorithm used in digital detector PET leads to significant increases of lung tumor SUVmax, signal-to-background ratio, and signal-to-noise ratio, which translates into a higher image quality, tumor conspicuity, and image sharpness. |
topic |
Positron-emission tomography Lung cancer Image reconstruction PET/CT Image quality enhancement |
url |
http://link.springer.com/article/10.1186/s40658-018-0223-x |
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