English

Virtual Reality for Synergistic Surgical Training and Data Generation

Robotics 2021-11-17 v1

Abstract

Surgical simulators not only allow planning and training of complex procedures, but also offer the ability to generate structured data for algorithm development, which may be applied in image-guided computer assisted interventions. While there have been efforts on either developing training platforms for surgeons or data generation engines, these two features, to our knowledge, have not been offered together. We present our developments of a cost-effective and synergistic framework, named Asynchronous Multibody Framework Plus (AMBF+), which generates data for downstream algorithm development simultaneously with users practicing their surgical skills. AMBF+ offers stereoscopic display on a virtual reality (VR) device and haptic feedback for immersive surgical simulation. It can also generate diverse data such as object poses and segmentation maps. AMBF+ is designed with a flexible plugin setup which allows for unobtrusive extension for simulation of different surgical procedures. We show one use case of AMBF+ as a virtual drilling simulator for lateral skull-base surgery, where users can actively modify the patient anatomy using a virtual surgical drill. We further demonstrate how the data generated can be used for validating and training downstream computer vision algorithms

Keywords

Cite

@article{arxiv.2111.08097,
  title  = {Virtual Reality for Synergistic Surgical Training and Data Generation},
  author = {Adnan Munawar and Zhaoshuo Li and Punit Kunjam and Nimesh Nagururu and Andy S. Ding and Peter Kazanzides and Thomas Looi and Francis X. Creighton and Russell H. Taylor and Mathias Unberath},
  journal= {arXiv preprint arXiv:2111.08097},
  year   = {2021}
}

Comments

MICCAI 2021 AE-CAI "Outstanding Paper Award" Code: https://github.com/LCSR-SICKKIDS/volumetric_drilling

R2 v1 2026-06-24T07:39:39.387Z