4D‐CT deformable image registration using unsupervised recursive cascaded full‐resolution residual networks

Author:

Xu Lei12,Jiang Ping3,Tsui Tiffany4,Liu Junyan5,Zhang Xiping6,Yu Lequan7,Niu Tianye28ORCID

Affiliation:

1. Department of Radiation Oncology the First Affiliated Hospital of Xi'an Jiaotong University Xi'an Shaanxi China

2. Institute of Biomedical Engineering Shenzhen Bay Laboratory Shenzhen Guangdong China

3. Department of Radiation Oncology Peking University 3rd Hospital Beijing China

4. Loyola University Medical Center Maywood Illinois USA

5. Department of Radiation Oncology Stanford University School of Medicine Stanford California USA

6. Department of Radiation Oncology Ozarks Healthcare West Plains Missouri USA

7. Department of Statistics and Actuarial Science The University of Hong Kong, HKSAR Hong Kong China

8. Peking University Aerospace School of Clinical Medicine, Aerospace Center Hospital Beijing China

Abstract

AbstractA novel recursive cascaded full‐resolution residual network (RCFRR‐Net) for abdominal four‐dimensional computed tomography (4D‐CT) image registration was proposed. The entire network was end‐to‐end and trained in the unsupervised approach, which meant that the deformation vector field, which presented the ground truth, was not needed during training. The network was designed by cascading three full‐resolution residual subnetworks with different architectures. The training loss consisted of the image similarity loss and the deformation vector field regularization loss, which were calculated based on the final warped image and the fixed image, allowing all cascades to be trained jointly and perform the progressive registration cooperatively. Extensive network testing was conducted using diverse datasets, including an internal 4D‐CT dataset, a public DIRLAB 4D‐CT dataset, and a 4D cone‐beam CT (4D‐CBCT) dataset. Compared with the iteration‐based demon method and two deep learning‐based methods (VoxelMorph and recursive cascaded network), the RCFRR‐Net achieved consistent and significant gains, which demonstrated that the proposed method had superior performance and generalization capability in medical image registration. The proposed RCFRR‐Net was a promising tool for various clinical applications.

Funder

Beijing Natural Science Foundation

Publisher

Wiley

Subject

Pharmaceutical Science,Biomedical Engineering,Biotechnology

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