2021
DOI: 10.1002/mp.15214
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Deformable registration of lateral cephalogram and cone‐beam computed tomography image

Abstract: Purpose: This study aimed to design and evaluate a novel method for the registration of 2D lateral cephalograms and 3D craniofacial cone‐beam computed tomography (CBCT) images, providing patient‐specific 3D structures from a 2D lateral cephalogram without additional radiation exposure. Methods: We developed a cross‐modal deformable registration model based on a deep convolutional neural network. Our approach took advantage of a low‐dimensional deformation field encoding and an iterative feedback scheme to infe… Show more

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Cited by 5 publications
(2 citation statements)
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References 54 publications
(119 reference statements)
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“…This improvement expanded the learning scale from adjacent image layers to the whole image space, resulting also in the extraction of higher-level contextual features. Compared with the previous method, the accuracy and robustness were effectively improved, with the TRE of 0.92±0.67 mm and 1.02±0.67 mm in the original two datasets, respectively, and a test runtime of about 1.5 s. Zhang et al (2021a) proposed a CNN-based framework using iterative feedback (NRR IF ) for the deformable registration of 2D x-ray and 3D CBCT images. In this method, a low-dimensional encoding of the deformable field was performed to reduce the parametric space, and the registration was carried out from coarse to fine by iterative feedback.…”
Section: Medical Image Registration Of Head and Neck Anatomymentioning
confidence: 99%
“…This improvement expanded the learning scale from adjacent image layers to the whole image space, resulting also in the extraction of higher-level contextual features. Compared with the previous method, the accuracy and robustness were effectively improved, with the TRE of 0.92±0.67 mm and 1.02±0.67 mm in the original two datasets, respectively, and a test runtime of about 1.5 s. Zhang et al (2021a) proposed a CNN-based framework using iterative feedback (NRR IF ) for the deformable registration of 2D x-ray and 3D CBCT images. In this method, a low-dimensional encoding of the deformable field was performed to reduce the parametric space, and the registration was carried out from coarse to fine by iterative feedback.…”
Section: Medical Image Registration Of Head and Neck Anatomymentioning
confidence: 99%
“…To deal with the inter‐fractional deformation of CTV, we adapted the ITVref$IT{V}_{ref}$ to the shape of the CTV defined on positioning 3D‐MRI with deformable mesh registration (DMR). For the i ‐th fraction, DMR was first performed between CTVref$CT{V}_{ref}$ and CTV defined on the current positioning 3D‐MRI, 29 and the DVF establishing the inter‐fractional anatomy correspondence would be generated. Then, the DMR was performed between CTV ref and ITV ref , and the DVF that describes the motion pattern of the CTV was obtained.…”
Section: Methodsmentioning
confidence: 99%