Purpose:
The multi-modality imaging system offers optimal fused images for safe and precise interventions in modern
clinical practices, such as computed tomography - ultrasound (CT-US) guidance for needle insertion.
However, the limited dexterity and mobility of current imaging devices hinder their integration into
standardized workflows and the advancement toward fully autonomous intervention systems. In this paper,
we present a novel clinical setup where robotic cone beam computed tomography (CBCT) and robotic US are
pre-calibrated and dynamically co-registered, enabling new clinical applications. This setup allows
registration-free rigid registration, facilitating multi-modal guided procedures in the absence of tissue deformation.
Methods:
First, a one-time pre-calibration is performed between the systems. To ensure a safe insertion path by
highlighting critical vasculature on the 3D CBCT, SAM2 segments vessels from B-mode images, using the Doppler
signal as an autonomously generated prompt. Based on the registration, the Doppler image or segmented vessel
masks are then mapped onto the CBCT, creating an optimally fused image with comprehensive detail. To validate
the system, we used a specially designed phantom, featuring lesions covered by ribs and multiple vessels with
simulated moving flow.
Results:
The mapping error between US and CBCT resulted in an average deviation of 1.72 ± 0.62 mm. A user study
demonstrated the effectiveness of CBCT-US fusion for needle insertion guidance, showing significant improvements
in time efficiency, accuracy, and success rate. Needle intervention performance improved by approximately 50%
compared to the conventional US-guided workflow.
Conclusion:
We present the first robotic dual-modality imaging system designed to guide clinical applications. The results
show significant performance improvements compared to traditional manual interventions.
@article{li2025robotic,
title={Robotic CBCT meets robotic ultrasound},
author={Li, Feng and Bi, Yuan and Huang, Dianye and Jiang, Zhongliang and Navab, Nassir},
journal={International Journal of Computer Assisted Radiology and Surgery},
pages={1--9},
year={2025},
publisher={Springer}
}