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Vertebrea-Based Global X-Ray to CT Registration for Thoracic Surgeries

Lilu Liu, Yanmei Jiao, Zhou An, Honghai Ma, Chunlin Zhou, Haojian Lu, Jian Hu, Rong Xiong, Yue Wang

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Abstract

X-ray to CT registration is an essential technique to provide on-site guidance for clinicians and medical robots by aligning preoperative information with intraoperative images. Current methods focus on local registration with small capture ranges and necessitate a manual initial alignment before precise registration. Some existing global methods are likely to fail in thoracic surgeries because of the respiratory motion and the nearly colinear nature of vertebrae landmarks. In this study, we propose an vertebrae-based global X-ray to CT registration method with the assist of clinical setups for thoracic surgeries. Firstly, vertebrae centroids are automatically localized by CNN- based networks in CT and X-ray for establishing 2-D/3-D correspondences. Then, inspired by clinical setup, we address the degradation of colinear landmarks of 6-DoF pose estimation by introducing a 4-DoF solver. Considering the inaccurate priori and landmark mislocalization, the solver is embedded into the Adaptive Error-Aware Estimator (AE2) to simultaneously estimate weights and aggregate candidate poses. Finally, the whole method is trained in an end-to-end manner for better per- formance. Evaluations on both the public LIDC-IDRI dataset and clinical dataset demonstrate that our method outperforms existing optimization-based and learning-based approaches in terms of registration accuracy and success rate. Our code: https://github.com/LiuLiluZJU/2P-AE2

Index terms

Computer Vision for Medical Robotics Computer Vision for Automation