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Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer
BACKGROUND: Deformable Image Registration (DIR) is an essential technique required in many applications of radiation oncology. However, conventional DIR approaches typically take several minutes to register one pair of 3D CT images and the resulting deformable vector fields (DVFs) are only specific...
Autores principales: | , , , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Cornell University
2023
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10153353/ https://www.ncbi.nlm.nih.gov/pubmed/37131881 |
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author | Ding, Yuzhen Feng, Hongying Yang, Yunze Holmes, Jason Liu, Zhengliang Liu, David Wong, William W. Yu, Nathan Y. Sio, Terence T. Schild, Steven E. Li, Baoxin Liu, Wei |
author_facet | Ding, Yuzhen Feng, Hongying Yang, Yunze Holmes, Jason Liu, Zhengliang Liu, David Wong, William W. Yu, Nathan Y. Sio, Terence T. Schild, Steven E. Li, Baoxin Liu, Wei |
author_sort | Ding, Yuzhen |
collection | PubMed |
description | BACKGROUND: Deformable Image Registration (DIR) is an essential technique required in many applications of radiation oncology. However, conventional DIR approaches typically take several minutes to register one pair of 3D CT images and the resulting deformable vector fields (DVFs) are only specific to the pair of images used, making it less appealing for clinical application. PURPOSE: In some proton therapy facilities, patient alignment relies on two 2D orthogonal kV images, taken at fixed, oblique angles, as no 3D on-the-bed imaging is available. The visibility of the tumor in kV images is limited since the patient’s 3D anatomy is projected onto a 2D plane, especially when the tumor is behind high-density structures such as bones. This can lead to large patient setup errors. A solution is to reconstruct the 3D CT image from the kV images obtained at the treatment isocenter in the treatment position. METHODS: An asymmetric autoencoder-like network built with vision-transformer blocks was developed. The data was collected from 1 head and neck patient: 2 orthogonal kV images (1024×1024 voxels), 1 3D CT with padding (512×512×512) acquired from the in-room CT-on-rails before kVs were taken and 2 digitally-reconstructed-radiograph (DRR) images (512×512) based on the CT. We resampled kV images every 8 voxels and DRR and CT every 4 voxels, thus formed a dataset consisting of 262,144 samples, in which the images have a dimension of 128 for each direction. In training, both kV and DRR images were utilized, and the encoder was encouraged to learn the jointed feature map from both kV and DRR images. In testing, only independent kV images were used. The full-size synthetic CT (sCT) was achieved by concatenating the sCTs generated by the model according to their spatial information. The image quality of the synthetic CT (sCT) was evaluated using mean absolute error (MAE) and per-voxel-absolute-CT-number-difference volume histogram (CDVH). RESULTS: The model achieved a speed of 2.1s and a MAE of <40HU. The CDVH showed that <5% of the voxels had a per-voxel-absolute-CT-number-difference larger than 185 HU. CONCLUSION: A patient-specific vision-transformer-based network was developed and shown to be accurate and efficient to reconstruct 3D CT images from kV images. |
format | Online Article Text |
id | pubmed-10153353 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Cornell University |
record_format | MEDLINE/PubMed |
spelling | pubmed-101533532023-05-03 Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer Ding, Yuzhen Feng, Hongying Yang, Yunze Holmes, Jason Liu, Zhengliang Liu, David Wong, William W. Yu, Nathan Y. Sio, Terence T. Schild, Steven E. Li, Baoxin Liu, Wei ArXiv Article BACKGROUND: Deformable Image Registration (DIR) is an essential technique required in many applications of radiation oncology. However, conventional DIR approaches typically take several minutes to register one pair of 3D CT images and the resulting deformable vector fields (DVFs) are only specific to the pair of images used, making it less appealing for clinical application. PURPOSE: In some proton therapy facilities, patient alignment relies on two 2D orthogonal kV images, taken at fixed, oblique angles, as no 3D on-the-bed imaging is available. The visibility of the tumor in kV images is limited since the patient’s 3D anatomy is projected onto a 2D plane, especially when the tumor is behind high-density structures such as bones. This can lead to large patient setup errors. A solution is to reconstruct the 3D CT image from the kV images obtained at the treatment isocenter in the treatment position. METHODS: An asymmetric autoencoder-like network built with vision-transformer blocks was developed. The data was collected from 1 head and neck patient: 2 orthogonal kV images (1024×1024 voxels), 1 3D CT with padding (512×512×512) acquired from the in-room CT-on-rails before kVs were taken and 2 digitally-reconstructed-radiograph (DRR) images (512×512) based on the CT. We resampled kV images every 8 voxels and DRR and CT every 4 voxels, thus formed a dataset consisting of 262,144 samples, in which the images have a dimension of 128 for each direction. In training, both kV and DRR images were utilized, and the encoder was encouraged to learn the jointed feature map from both kV and DRR images. In testing, only independent kV images were used. The full-size synthetic CT (sCT) was achieved by concatenating the sCTs generated by the model according to their spatial information. The image quality of the synthetic CT (sCT) was evaluated using mean absolute error (MAE) and per-voxel-absolute-CT-number-difference volume histogram (CDVH). RESULTS: The model achieved a speed of 2.1s and a MAE of <40HU. The CDVH showed that <5% of the voxels had a per-voxel-absolute-CT-number-difference larger than 185 HU. CONCLUSION: A patient-specific vision-transformer-based network was developed and shown to be accurate and efficient to reconstruct 3D CT images from kV images. Cornell University 2023-04-21 /pmc/articles/PMC10153353/ /pubmed/37131881 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use. |
spellingShingle | Article Ding, Yuzhen Feng, Hongying Yang, Yunze Holmes, Jason Liu, Zhengliang Liu, David Wong, William W. Yu, Nathan Y. Sio, Terence T. Schild, Steven E. Li, Baoxin Liu, Wei Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer |
title | Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer |
title_full | Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer |
title_fullStr | Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer |
title_full_unstemmed | Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer |
title_short | Deep-Learning-based Fast and Accurate 3D CT Deformable Image Registration in Lung Cancer |
title_sort | deep-learning-based fast and accurate 3d ct deformable image registration in lung cancer |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10153353/ https://www.ncbi.nlm.nih.gov/pubmed/37131881 |
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