Deep learning-based motion compensation for four-dimensional cone-beam computed tomography (4D-CBCT) reconstruction.

dc.contributor.author

Zhang, Zhehao

dc.contributor.author

Liu, Jiaming

dc.contributor.author

Yang, Deshan

dc.contributor.author

Kamilov, Ulugbek S

dc.contributor.author

Hugo, Geoffrey D

dc.date.accessioned

2023-04-03T13:39:05Z

dc.date.available

2023-04-03T13:39:05Z

dc.date.issued

2023-02

dc.date.updated

2023-04-03T13:39:04Z

dc.description.abstract

Background

Motion-compensated (MoCo) reconstruction shows great promise in improving four-dimensional cone-beam computed tomography (4D-CBCT) image quality. MoCo reconstruction for a 4D-CBCT could be more accurate using motion information at the CBCT imaging time than that obtained from previous 4D-CT scans. However, such data-driven approaches are hampered by the quality of initial 4D-CBCT images used for motion modeling.

Purpose

This study aims to develop a deep-learning method to generate high-quality motion models for MoCo reconstruction to improve the quality of final 4D-CBCT images.

Methods

A 3D artifact-reduction convolutional neural network (CNN) was proposed to improve conventional phase-correlated Feldkamp-Davis-Kress (PCF) reconstructions by reducing undersampling-induced streaking artifacts while maintaining motion information. The CNN-generated artifact-mitigated 4D-CBCT images (CNN enhanced) were then used to build a motion model which was used by MoCo reconstruction (CNN+MoCo). The proposed procedure was evaluated using in-vivo patient datasets, an extended cardiac-torso (XCAT) phantom, and the public SPARE challenge datasets. The quality of reconstructed images for XCAT phantom and SPARE datasets was quantitatively assessed using root-mean-square-error (RMSE) and normalized cross-correlation (NCC).

Results

The trained CNN effectively reduced the streaking artifacts of PCF CBCT images for all datasets. More detailed structures can be recovered using the proposed CNN+MoCo reconstruction procedure. XCAT phantom experiments showed that the accuracy of estimated motion model using CNN enhanced images was greatly improved over PCF. CNN+MoCo showed lower RMSE and higher NCC compared to PCF, CNN enhanced and conventional MoCo. For the SPARE datasets, the average (± standard deviation) RMSE in mm-1 for body region of PCF, CNN enhanced, conventional MoCo and CNN+MoCo were 0.0040 ± 0.0009, 0.0029 ± 0.0002, 0.0024 ± 0.0003 and 0.0021 ± 0.0003. Corresponding NCC were 0.84 ± 0.05, 0.91 ± 0.05, 0.91 ± 0.05 and 0.93 ± 0.04.

Conclusions

CNN-based artifact reduction can substantially reduce the artifacts in the initial 4D-CBCT images. The improved images could be used to enhance the motion modeling and ultimately improve the quality of the final 4D-CBCT images reconstructed using MoCo.
dc.identifier.issn

0094-2405

dc.identifier.issn

2473-4209

dc.identifier.uri

https://hdl.handle.net/10161/26984

dc.language

eng

dc.publisher

Wiley

dc.relation.ispartof

Medical physics

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10.1002/mp.16103

dc.subject

Humans

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Lung Neoplasms

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Phantoms, Imaging

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Algorithms

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Motion

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Image Processing, Computer-Assisted

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Cone-Beam Computed Tomography

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Spiral Cone-Beam Computed Tomography

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Four-Dimensional Computed Tomography

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Deep Learning

dc.title

Deep learning-based motion compensation for four-dimensional cone-beam computed tomography (4D-CBCT) reconstruction.

dc.type

Journal article

duke.contributor.orcid

Yang, Deshan|0000-0002-2568-247X

pubs.begin-page

808

pubs.end-page

820

pubs.issue

2

pubs.organisational-group

Duke

pubs.organisational-group

School of Medicine

pubs.organisational-group

Clinical Science Departments

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Institutes and Centers

pubs.organisational-group

Radiation Oncology

pubs.organisational-group

Duke Cancer Institute

pubs.publication-status

Published

pubs.volume

50

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