Cargando…

4D-CT-based motion correction of PET images using 3D iterative deconvolution

OBJECTIVES: Positron emission tomography acquisition takes several minutes representing an image averaged over multiple breathing cycles. Therefore, in areas influenced by respiratory movement, PET-positive lesions occur larger, but less intensive than they actually are, resulting in false quantitat...

Descripción completa

Detalles Bibliográficos
Autores principales: Thomas, Lena, Schultz, Thomas, Prokic, Vesna, Guckenberger, Matthias, Tanadini-Lang, Stephanie, Hohberg, Melanie, Wild, Markus, Drzezga, Alexander, Bundschuh, Ralph A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6508203/
https://www.ncbi.nlm.nih.gov/pubmed/31105880
http://dx.doi.org/10.18632/oncotarget.26862
_version_ 1783417078669115392
author Thomas, Lena
Schultz, Thomas
Prokic, Vesna
Guckenberger, Matthias
Tanadini-Lang, Stephanie
Hohberg, Melanie
Wild, Markus
Drzezga, Alexander
Bundschuh, Ralph A.
author_facet Thomas, Lena
Schultz, Thomas
Prokic, Vesna
Guckenberger, Matthias
Tanadini-Lang, Stephanie
Hohberg, Melanie
Wild, Markus
Drzezga, Alexander
Bundschuh, Ralph A.
author_sort Thomas, Lena
collection PubMed
description OBJECTIVES: Positron emission tomography acquisition takes several minutes representing an image averaged over multiple breathing cycles. Therefore, in areas influenced by respiratory movement, PET-positive lesions occur larger, but less intensive than they actually are, resulting in false quantitative assessment. We developed a motion-correction algorithm based on 4D-CT without the need to adapt PET-acquisition. METHODS: The algorithm is based on a full 3D iterative Richardson-Lucy-Deconvolution using a point-spread-function constructed using the motion information obtained from the 4D-CT. In a motion phantom study (3 different hot spheres in background activity), optimal parameters for the algorithm in terms of number of iterations and start image were estimated. Finally, the correction method was applied to 3 patient data sets. In phantom and patient data sets lesions were delineated and compared between motion corrected and uncorrected images for activity uptake and volume. RESULTS: Phantom studies showed best results for motion correction after 6 deconvolution steps or higher. In phantom studies, lesion volume improved up to 23% for the largest, 43% for the medium and 49% for the smallest sphere due to the correction algorithm. In patient data the correction resulted in a significant reduction of the tumor volume up to 33.3 % and an increase of the maximum and mean uptake of the lesion up to 62.1 and 19.8 % respectively. CONCLUSION: In conclusion, the proposed motion correction method showed good results in phantom data and a promising reduction of detected lesion volume and a consequently increasing activity uptake in three patients with lung lesions.
format Online
Article
Text
id pubmed-6508203
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher Impact Journals LLC
record_format MEDLINE/PubMed
spelling pubmed-65082032019-05-17 4D-CT-based motion correction of PET images using 3D iterative deconvolution Thomas, Lena Schultz, Thomas Prokic, Vesna Guckenberger, Matthias Tanadini-Lang, Stephanie Hohberg, Melanie Wild, Markus Drzezga, Alexander Bundschuh, Ralph A. Oncotarget Research Paper OBJECTIVES: Positron emission tomography acquisition takes several minutes representing an image averaged over multiple breathing cycles. Therefore, in areas influenced by respiratory movement, PET-positive lesions occur larger, but less intensive than they actually are, resulting in false quantitative assessment. We developed a motion-correction algorithm based on 4D-CT without the need to adapt PET-acquisition. METHODS: The algorithm is based on a full 3D iterative Richardson-Lucy-Deconvolution using a point-spread-function constructed using the motion information obtained from the 4D-CT. In a motion phantom study (3 different hot spheres in background activity), optimal parameters for the algorithm in terms of number of iterations and start image were estimated. Finally, the correction method was applied to 3 patient data sets. In phantom and patient data sets lesions were delineated and compared between motion corrected and uncorrected images for activity uptake and volume. RESULTS: Phantom studies showed best results for motion correction after 6 deconvolution steps or higher. In phantom studies, lesion volume improved up to 23% for the largest, 43% for the medium and 49% for the smallest sphere due to the correction algorithm. In patient data the correction resulted in a significant reduction of the tumor volume up to 33.3 % and an increase of the maximum and mean uptake of the lesion up to 62.1 and 19.8 % respectively. CONCLUSION: In conclusion, the proposed motion correction method showed good results in phantom data and a promising reduction of detected lesion volume and a consequently increasing activity uptake in three patients with lung lesions. Impact Journals LLC 2019-04-26 /pmc/articles/PMC6508203/ /pubmed/31105880 http://dx.doi.org/10.18632/oncotarget.26862 Text en Copyright: © 2019 Thomas et al. http://creativecommons.org/licenses/by/3.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/3.0/) 3.0 (CC BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Paper
Thomas, Lena
Schultz, Thomas
Prokic, Vesna
Guckenberger, Matthias
Tanadini-Lang, Stephanie
Hohberg, Melanie
Wild, Markus
Drzezga, Alexander
Bundschuh, Ralph A.
4D-CT-based motion correction of PET images using 3D iterative deconvolution
title 4D-CT-based motion correction of PET images using 3D iterative deconvolution
title_full 4D-CT-based motion correction of PET images using 3D iterative deconvolution
title_fullStr 4D-CT-based motion correction of PET images using 3D iterative deconvolution
title_full_unstemmed 4D-CT-based motion correction of PET images using 3D iterative deconvolution
title_short 4D-CT-based motion correction of PET images using 3D iterative deconvolution
title_sort 4d-ct-based motion correction of pet images using 3d iterative deconvolution
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6508203/
https://www.ncbi.nlm.nih.gov/pubmed/31105880
http://dx.doi.org/10.18632/oncotarget.26862
work_keys_str_mv AT thomaslena 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT schultzthomas 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT prokicvesna 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT guckenbergermatthias 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT tanadinilangstephanie 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT hohbergmelanie 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT wildmarkus 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT drzezgaalexander 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution
AT bundschuhralpha 4dctbasedmotioncorrectionofpetimagesusing3diterativedeconvolution