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Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template

Though currently approved for visual assessment only, there is evidence to suggest that quantification of amyloid-β (Aβ) PET images may reduce interreader variability and aid in the monitoring of treatment effects in clinical trials. Quantification typically involves a regional atlas in standard spa...

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Autores principales: Lilja, Johan, Leuzy, Antoine, Chiotis, Konstantinos, Savitcheva, Irina, Sörensen, Jens, Nordberg, Agneta
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Nuclear Medicine 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8833851/
https://www.ncbi.nlm.nih.gov/pubmed/29903930
http://dx.doi.org/10.2967/jnumed.118.207811
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author Lilja, Johan
Leuzy, Antoine
Chiotis, Konstantinos
Savitcheva, Irina
Sörensen, Jens
Nordberg, Agneta
author_facet Lilja, Johan
Leuzy, Antoine
Chiotis, Konstantinos
Savitcheva, Irina
Sörensen, Jens
Nordberg, Agneta
author_sort Lilja, Johan
collection PubMed
description Though currently approved for visual assessment only, there is evidence to suggest that quantification of amyloid-β (Aβ) PET images may reduce interreader variability and aid in the monitoring of treatment effects in clinical trials. Quantification typically involves a regional atlas in standard space, requiring PET images to be spatially normalized. Different uptake patterns in Aβ-positive and Aβ-negative subjects, however, make spatial normalization challenging. In this study, we proposed a method to spatially normalize (18)F-flutemetamol images using a synthetic template based on principal-component images to overcome these challenges. Methods: (18)F-flutemetamol PET and corresponding MR images from a phase II trial (n = 70), including subjects ranging from Aβ-negative to Aβ-positive, were spatially normalized to standard space using an MR-driven registration method (SPM12). (18)F-flutemetamol images were then intensity-normalized using the pons as a reference region. Principal-component images were calculated from the intensity-normalized images. A linear combination of the first 2 principal-component images was then used to model a synthetic template spanning the whole range from Aβ-negative to Aβ-positive. The synthetic template was then incorporated into our registration method, by which the optimal template was calculated as part of the registration process, providing a PET-only–driven registration method. Evaluation of the method was done in 2 steps. First, coregistered gray matter masks generated using SPM12 were spatially normalized using the PET- and MR-driven methods, respectively. The spatially normalized gray matter masks were then visually inspected and quantified. Second, to quantitatively compare the 2 registration methods, additional data from an ongoing study were spatially normalized using both methods, with correlation analysis done on the resulting cortical SUV ratios. Results: All scans were successfully spatially normalized using the proposed method with no manual adjustments performed. Both visual and quantitative comparison between the PET- and MR-driven methods showed high agreement in cortical regions. (18)F-flutemetamol quantification showed strong agreement between the SUV ratios for the PET- and MR-driven methods (R(2) = 0.996; pons reference region). Conclusion: The principal-component template registration method allows for robust and accurate registration of (18)F-flutemetamol images to a standardized template space, without the need for an MR image.
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spelling pubmed-88338512022-02-25 Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template Lilja, Johan Leuzy, Antoine Chiotis, Konstantinos Savitcheva, Irina Sörensen, Jens Nordberg, Agneta J Nucl Med Physics And Instrumentation Though currently approved for visual assessment only, there is evidence to suggest that quantification of amyloid-β (Aβ) PET images may reduce interreader variability and aid in the monitoring of treatment effects in clinical trials. Quantification typically involves a regional atlas in standard space, requiring PET images to be spatially normalized. Different uptake patterns in Aβ-positive and Aβ-negative subjects, however, make spatial normalization challenging. In this study, we proposed a method to spatially normalize (18)F-flutemetamol images using a synthetic template based on principal-component images to overcome these challenges. Methods: (18)F-flutemetamol PET and corresponding MR images from a phase II trial (n = 70), including subjects ranging from Aβ-negative to Aβ-positive, were spatially normalized to standard space using an MR-driven registration method (SPM12). (18)F-flutemetamol images were then intensity-normalized using the pons as a reference region. Principal-component images were calculated from the intensity-normalized images. A linear combination of the first 2 principal-component images was then used to model a synthetic template spanning the whole range from Aβ-negative to Aβ-positive. The synthetic template was then incorporated into our registration method, by which the optimal template was calculated as part of the registration process, providing a PET-only–driven registration method. Evaluation of the method was done in 2 steps. First, coregistered gray matter masks generated using SPM12 were spatially normalized using the PET- and MR-driven methods, respectively. The spatially normalized gray matter masks were then visually inspected and quantified. Second, to quantitatively compare the 2 registration methods, additional data from an ongoing study were spatially normalized using both methods, with correlation analysis done on the resulting cortical SUV ratios. Results: All scans were successfully spatially normalized using the proposed method with no manual adjustments performed. Both visual and quantitative comparison between the PET- and MR-driven methods showed high agreement in cortical regions. (18)F-flutemetamol quantification showed strong agreement between the SUV ratios for the PET- and MR-driven methods (R(2) = 0.996; pons reference region). Conclusion: The principal-component template registration method allows for robust and accurate registration of (18)F-flutemetamol images to a standardized template space, without the need for an MR image. Society of Nuclear Medicine 2019-02 /pmc/articles/PMC8833851/ /pubmed/29903930 http://dx.doi.org/10.2967/jnumed.118.207811 Text en © 2019 by the Society of Nuclear Medicine and Molecular Imaging. https://creativecommons.org/licenses/by/4.0/Immediate Open Access: Creative Commons Attribution 4.0 International License (CC BY) allows users to share and adapt with attribution, excluding materials credited to previous publications. License: https://creativecommons.org/licenses/by/4.0/. Details: http://jnm.snmjournals.org/site/misc/permission.xhtml.
spellingShingle Physics And Instrumentation
Lilja, Johan
Leuzy, Antoine
Chiotis, Konstantinos
Savitcheva, Irina
Sörensen, Jens
Nordberg, Agneta
Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template
title Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template
title_full Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template
title_fullStr Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template
title_full_unstemmed Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template
title_short Spatial Normalization of (18)F-Flutemetamol PET Images Using an Adaptive Principal-Component Template
title_sort spatial normalization of (18)f-flutemetamol pet images using an adaptive principal-component template
topic Physics And Instrumentation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8833851/
https://www.ncbi.nlm.nih.gov/pubmed/29903930
http://dx.doi.org/10.2967/jnumed.118.207811
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