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Synthetic PET via Domain Translation of 3-D MRI

Historically, patient datasets have been used to develop and validate various reconstruction algorithms for PET/MRI and PET/CT. To enable such algorithm development, without the need for acquiring hundreds of patient exams, in this article we demonstrate a deep learning technique to generate synthet...

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Autores principales: Rajagopal, Abhejit, Natsuaki, Yutaka, Wangerin, Kristen, Hamdi, Mahdjoub, An, Hongyu, Sunderland, John J., Laforest, Richard, Kinahan, Paul E., Larson, Peder E. Z., Hope, Thomas A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10311993/
https://www.ncbi.nlm.nih.gov/pubmed/37396797
http://dx.doi.org/10.1109/trpms.2022.3223275
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author Rajagopal, Abhejit
Natsuaki, Yutaka
Wangerin, Kristen
Hamdi, Mahdjoub
An, Hongyu
Sunderland, John J.
Laforest, Richard
Kinahan, Paul E.
Larson, Peder E. Z.
Hope, Thomas A.
author_facet Rajagopal, Abhejit
Natsuaki, Yutaka
Wangerin, Kristen
Hamdi, Mahdjoub
An, Hongyu
Sunderland, John J.
Laforest, Richard
Kinahan, Paul E.
Larson, Peder E. Z.
Hope, Thomas A.
author_sort Rajagopal, Abhejit
collection PubMed
description Historically, patient datasets have been used to develop and validate various reconstruction algorithms for PET/MRI and PET/CT. To enable such algorithm development, without the need for acquiring hundreds of patient exams, in this article we demonstrate a deep learning technique to generate synthetic but realistic whole-body PET sinograms from abundantly available whole-body MRI. Specifically, we use a dataset of 56 (18)F-FDG-PET/MRI exams to train a 3-D residual UNet to predict physiologic PET uptake from whole-body T1-weighted MRI. In training, we implemented a balanced loss function to generate realistic uptake across a large dynamic range and computed losses along tomographic lines of response to mimic the PET acquisition. The predicted PET images are forward projected to produce synthetic PET (sPET) time-of-flight (ToF) sinograms that can be used with vendor-provided PET reconstruction algorithms, including using CT-based attenuation correction (CTAC) and MR-based attenuation correction (MRAC). The resulting synthetic data recapitulates physiologic (18)F-FDG uptake, e.g., high uptake localized to the brain and bladder, as well as uptake in liver, kidneys, heart, and muscle. To simulate abnormalities with high uptake, we also insert synthetic lesions. We demonstrate that this sPET data can be used interchangeably with real PET data for the PET quantification task of comparing CTAC and MRAC methods, achieving ≤ 7.6% error in mean-SUV compared to using real data. These results together show that the proposed sPET data pipeline can be reasonably used for development, evaluation, and validation of PET/MRI reconstruction methods.
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spelling pubmed-103119932023-06-30 Synthetic PET via Domain Translation of 3-D MRI Rajagopal, Abhejit Natsuaki, Yutaka Wangerin, Kristen Hamdi, Mahdjoub An, Hongyu Sunderland, John J. Laforest, Richard Kinahan, Paul E. Larson, Peder E. Z. Hope, Thomas A. IEEE Trans Radiat Plasma Med Sci Article Historically, patient datasets have been used to develop and validate various reconstruction algorithms for PET/MRI and PET/CT. To enable such algorithm development, without the need for acquiring hundreds of patient exams, in this article we demonstrate a deep learning technique to generate synthetic but realistic whole-body PET sinograms from abundantly available whole-body MRI. Specifically, we use a dataset of 56 (18)F-FDG-PET/MRI exams to train a 3-D residual UNet to predict physiologic PET uptake from whole-body T1-weighted MRI. In training, we implemented a balanced loss function to generate realistic uptake across a large dynamic range and computed losses along tomographic lines of response to mimic the PET acquisition. The predicted PET images are forward projected to produce synthetic PET (sPET) time-of-flight (ToF) sinograms that can be used with vendor-provided PET reconstruction algorithms, including using CT-based attenuation correction (CTAC) and MR-based attenuation correction (MRAC). The resulting synthetic data recapitulates physiologic (18)F-FDG uptake, e.g., high uptake localized to the brain and bladder, as well as uptake in liver, kidneys, heart, and muscle. To simulate abnormalities with high uptake, we also insert synthetic lesions. We demonstrate that this sPET data can be used interchangeably with real PET data for the PET quantification task of comparing CTAC and MRAC methods, achieving ≤ 7.6% error in mean-SUV compared to using real data. These results together show that the proposed sPET data pipeline can be reasonably used for development, evaluation, and validation of PET/MRI reconstruction methods. 2023-04 2022-11-18 /pmc/articles/PMC10311993/ /pubmed/37396797 http://dx.doi.org/10.1109/trpms.2022.3223275 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 License. For more information, see https://creativecommons.org/licenses/by/4.0/
spellingShingle Article
Rajagopal, Abhejit
Natsuaki, Yutaka
Wangerin, Kristen
Hamdi, Mahdjoub
An, Hongyu
Sunderland, John J.
Laforest, Richard
Kinahan, Paul E.
Larson, Peder E. Z.
Hope, Thomas A.
Synthetic PET via Domain Translation of 3-D MRI
title Synthetic PET via Domain Translation of 3-D MRI
title_full Synthetic PET via Domain Translation of 3-D MRI
title_fullStr Synthetic PET via Domain Translation of 3-D MRI
title_full_unstemmed Synthetic PET via Domain Translation of 3-D MRI
title_short Synthetic PET via Domain Translation of 3-D MRI
title_sort synthetic pet via domain translation of 3-d mri
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10311993/
https://www.ncbi.nlm.nih.gov/pubmed/37396797
http://dx.doi.org/10.1109/trpms.2022.3223275
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