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Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks

This paper proposes a novel method for automatic quantification of amyloid PET using deep learning–based spatial normalization (SN) of PET images, which does not require MRI or CT images of the same patient. The accuracy of the method was evaluated for 3 different amyloid PET radiotracers compared w...

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Autores principales: Kang, Seung Kwan, Kim, Daewoon, Shin, Seong A, Kim, Yu Kyeong, Choi, Hongyoon, Lee, Jae Sung
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Society of Nuclear Medicine 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10071781/
https://www.ncbi.nlm.nih.gov/pubmed/36328490
http://dx.doi.org/10.2967/jnumed.122.264414
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author Kang, Seung Kwan
Kim, Daewoon
Shin, Seong A
Kim, Yu Kyeong
Choi, Hongyoon
Lee, Jae Sung
author_facet Kang, Seung Kwan
Kim, Daewoon
Shin, Seong A
Kim, Yu Kyeong
Choi, Hongyoon
Lee, Jae Sung
author_sort Kang, Seung Kwan
collection PubMed
description This paper proposes a novel method for automatic quantification of amyloid PET using deep learning–based spatial normalization (SN) of PET images, which does not require MRI or CT images of the same patient. The accuracy of the method was evaluated for 3 different amyloid PET radiotracers compared with MRI-parcellation–based PET quantification using FreeSurfer. Methods: A deep neural network model used for the SN of amyloid PET images was trained using 994 multicenter amyloid PET images (367 (18)F-flutemetamol and 627 (18)F-florbetaben) and the corresponding 3-dimensional MR images of subjects who had Alzheimer disease or mild cognitive impairment or were cognitively normal. For comparison, PET SN was also conducted using version 12 of the Statistical Parametric Mapping program (SPM-based SN). The accuracy of deep learning–based and SPM-based SN and SUV ratio quantification relative to the FreeSurfer-based estimation in individual brain spaces was evaluated using 148 other amyloid PET images (64 (18)F-flutemetamol and 84 (18)F-florbetaben). Additional external validation was performed using an unseen independent external dataset (30 (18)F-flutemetamol, 67 (18)F-florbetaben, and 39 (18)F-florbetapir). Results: Quantification results using the proposed deep learning–based method showed stronger correlations with the FreeSurfer estimates than SPM-based SN using MRI did. For example, the slope, y-intercept, and R(2) values between SPM and FreeSurfer for the global cortex were 0.869, 0.113, and 0.946, respectively. In contrast, the slope, y-intercept, and R(2) values between the proposed deep learning–based method and FreeSurfer were 1.019, −0.016, and 0.986, respectively. The external validation study also demonstrated better performance for the proposed method without MR images than for SPM with MRI. In most brain regions, the proposed method outperformed SPM SN in terms of linear regression parameters and intraclass correlation coefficients. Conclusion: We evaluated a novel deep learning–based SN method that allows quantitative analysis of amyloid brain PET images without structural MRI. The quantification results using the proposed method showed a strong correlation with MRI-parcellation–based quantification using FreeSurfer for all clinical amyloid radiotracers. Therefore, the proposed method will be useful for investigating Alzheimer disease and related brain disorders using amyloid PET scans.
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spelling pubmed-100717812023-04-19 Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks Kang, Seung Kwan Kim, Daewoon Shin, Seong A Kim, Yu Kyeong Choi, Hongyoon Lee, Jae Sung J Nucl Med Basic Science Investigation This paper proposes a novel method for automatic quantification of amyloid PET using deep learning–based spatial normalization (SN) of PET images, which does not require MRI or CT images of the same patient. The accuracy of the method was evaluated for 3 different amyloid PET radiotracers compared with MRI-parcellation–based PET quantification using FreeSurfer. Methods: A deep neural network model used for the SN of amyloid PET images was trained using 994 multicenter amyloid PET images (367 (18)F-flutemetamol and 627 (18)F-florbetaben) and the corresponding 3-dimensional MR images of subjects who had Alzheimer disease or mild cognitive impairment or were cognitively normal. For comparison, PET SN was also conducted using version 12 of the Statistical Parametric Mapping program (SPM-based SN). The accuracy of deep learning–based and SPM-based SN and SUV ratio quantification relative to the FreeSurfer-based estimation in individual brain spaces was evaluated using 148 other amyloid PET images (64 (18)F-flutemetamol and 84 (18)F-florbetaben). Additional external validation was performed using an unseen independent external dataset (30 (18)F-flutemetamol, 67 (18)F-florbetaben, and 39 (18)F-florbetapir). Results: Quantification results using the proposed deep learning–based method showed stronger correlations with the FreeSurfer estimates than SPM-based SN using MRI did. For example, the slope, y-intercept, and R(2) values between SPM and FreeSurfer for the global cortex were 0.869, 0.113, and 0.946, respectively. In contrast, the slope, y-intercept, and R(2) values between the proposed deep learning–based method and FreeSurfer were 1.019, −0.016, and 0.986, respectively. The external validation study also demonstrated better performance for the proposed method without MR images than for SPM with MRI. In most brain regions, the proposed method outperformed SPM SN in terms of linear regression parameters and intraclass correlation coefficients. Conclusion: We evaluated a novel deep learning–based SN method that allows quantitative analysis of amyloid brain PET images without structural MRI. The quantification results using the proposed method showed a strong correlation with MRI-parcellation–based quantification using FreeSurfer for all clinical amyloid radiotracers. Therefore, the proposed method will be useful for investigating Alzheimer disease and related brain disorders using amyloid PET scans. Society of Nuclear Medicine 2023-04 /pmc/articles/PMC10071781/ /pubmed/36328490 http://dx.doi.org/10.2967/jnumed.122.264414 Text en © 2023 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 Basic Science Investigation
Kang, Seung Kwan
Kim, Daewoon
Shin, Seong A
Kim, Yu Kyeong
Choi, Hongyoon
Lee, Jae Sung
Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks
title Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks
title_full Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks
title_fullStr Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks
title_full_unstemmed Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks
title_short Fast and Accurate Amyloid Brain PET Quantification Without MRI Using Deep Neural Networks
title_sort fast and accurate amyloid brain pet quantification without mri using deep neural networks
topic Basic Science Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10071781/
https://www.ncbi.nlm.nih.gov/pubmed/36328490
http://dx.doi.org/10.2967/jnumed.122.264414
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