| Literature DB >> 35368731 |
Prasad Vagdargi1, Ali Uneri2, Craig K Jones3, Pengwei Wu2, Runze Han2, Mark G Luciano4, William S Anderson4, Patrick A Helm5, Gregory D Hager1, Jeffrey H Siewerdsen6.
Abstract
Conventional neuro-navigation can be challenged in targeting deep brain structures via transventricular neuroendoscopy due to unresolved geometric error following soft-tissue deformation. Current robot-assisted endoscopy techniques are fairly limited, primarily serving to planned trajectories and provide a stable scope holder. We report the implementation of a robot-assisted ventriculoscopy (RAV) system for 3D reconstruction, registration, and augmentation of the neuroendoscopic scene with intraoperative imaging, enabling guidance even in the presence of tissue deformation and providing visualization of structures beyond the endoscopic field-of-view. Phantom studies were performed to quantitatively evaluate image sampling requirements, registration accuracy, and computational runtime for two reconstruction methods and a variety of clinically relevant ventriculoscope trajectories. A median target registration error of 1.2 mm was achieved with an update rate of 2.34 frames per second, validating the RAV concept and motivating translation to future clinical studies.Entities:
Keywords: Image-guided surgery; augmented reality; computer vision; intraoperative imaging; neurosurgery; ventriculoscopy
Year: 2021 PMID: 35368731 PMCID: PMC8967072 DOI: 10.1109/tmrb.2021.3125322
Source DB: PubMed Journal: IEEE Trans Med Robot Bionics ISSN: 2576-3202