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Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning

Patient motion during dynamic PET imaging can induce errors in myocardial blood flow (MBF) estimation. Motion correction for dynamic cardiac PET is challenging because the rapid tracer kinetics of 82Rb leads to substantial tracer distribution change across different dynamic frames over time, which c...

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Autores principales: Shi, Luyao, Lu, Yihuan, Dvornek, Nicha, Weyman, Christopher A., Miller, Edward J., Sinusas, Albert J., Liu, Chi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8670362/
https://www.ncbi.nlm.nih.gov/pubmed/34018932
http://dx.doi.org/10.1109/TMI.2021.3082578
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author Shi, Luyao
Lu, Yihuan
Dvornek, Nicha
Weyman, Christopher A.
Miller, Edward J.
Sinusas, Albert J.
Liu, Chi
author_facet Shi, Luyao
Lu, Yihuan
Dvornek, Nicha
Weyman, Christopher A.
Miller, Edward J.
Sinusas, Albert J.
Liu, Chi
author_sort Shi, Luyao
collection PubMed
description Patient motion during dynamic PET imaging can induce errors in myocardial blood flow (MBF) estimation. Motion correction for dynamic cardiac PET is challenging because the rapid tracer kinetics of 82Rb leads to substantial tracer distribution change across different dynamic frames over time, which can cause difficulties for image registration-based motion correction, particularly for early dynamic frames. In this paper, we developed an automatic deep learning-based motion correction (DeepMC) method for dynamic cardiac PET. In this study we focused on the detection and correction of inter-frame rigid translational motion caused by voluntary body movement and pattern change of respiratory motion. A bidirectional-3D LSTM network was developed to fully utilize both local and nonlocal temporal information in the 4D dynamic image data for motion detection. The network was trained and evaluated over motion-free patient scans with simulated motion so that the motion ground-truths are available, where one million samples based on 65 patient scans were used in training, and 600 samples based on 20 patient scans were used in evaluation. The proposed method was also evaluated using additional 10 patient datasets with real motion. We demonstrated that the proposed DeepMC obtained superior performance compared to conventional registration-based methods and other convolutional neural networks (CNN), in terms of motion estimation and MBF quantification accuracy. Once trained, DeepMC is much faster than the registration-based methods and can be easily integrated into the clinical workflow. In the future work, additional investigation is needed to evaluate this approach in a clinical context with realistic patient motion.
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spelling pubmed-86703622021-12-14 Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning Shi, Luyao Lu, Yihuan Dvornek, Nicha Weyman, Christopher A. Miller, Edward J. Sinusas, Albert J. Liu, Chi IEEE Trans Med Imaging Article Patient motion during dynamic PET imaging can induce errors in myocardial blood flow (MBF) estimation. Motion correction for dynamic cardiac PET is challenging because the rapid tracer kinetics of 82Rb leads to substantial tracer distribution change across different dynamic frames over time, which can cause difficulties for image registration-based motion correction, particularly for early dynamic frames. In this paper, we developed an automatic deep learning-based motion correction (DeepMC) method for dynamic cardiac PET. In this study we focused on the detection and correction of inter-frame rigid translational motion caused by voluntary body movement and pattern change of respiratory motion. A bidirectional-3D LSTM network was developed to fully utilize both local and nonlocal temporal information in the 4D dynamic image data for motion detection. The network was trained and evaluated over motion-free patient scans with simulated motion so that the motion ground-truths are available, where one million samples based on 65 patient scans were used in training, and 600 samples based on 20 patient scans were used in evaluation. The proposed method was also evaluated using additional 10 patient datasets with real motion. We demonstrated that the proposed DeepMC obtained superior performance compared to conventional registration-based methods and other convolutional neural networks (CNN), in terms of motion estimation and MBF quantification accuracy. Once trained, DeepMC is much faster than the registration-based methods and can be easily integrated into the clinical workflow. In the future work, additional investigation is needed to evaluate this approach in a clinical context with realistic patient motion. 2021-11-30 2021-12 /pmc/articles/PMC8670362/ /pubmed/34018932 http://dx.doi.org/10.1109/TMI.2021.3082578 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
Shi, Luyao
Lu, Yihuan
Dvornek, Nicha
Weyman, Christopher A.
Miller, Edward J.
Sinusas, Albert J.
Liu, Chi
Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning
title Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning
title_full Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning
title_fullStr Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning
title_full_unstemmed Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning
title_short Automatic Inter-Frame Patient Motion Correction for Dynamic Cardiac PET Using Deep Learning
title_sort automatic inter-frame patient motion correction for dynamic cardiac pet using deep learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8670362/
https://www.ncbi.nlm.nih.gov/pubmed/34018932
http://dx.doi.org/10.1109/TMI.2021.3082578
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