MEDiC: Autonomous Surgical Robotic Assistance to Maximizing Exposure for Dissection and Cautery

arXiv preprint arXiv:2409.14287, 2024

Xiao Liang, Chung-Pang Wang, Nikhil Uday Shinde, Fei Liu, Florian Richter, Michael Yip

Abstract: Surgical automation has the capability to improve the consistency of patient outcomes and broaden access to advanced surgical care in underprivileged communities. Shared autonomy, where the robot automates routine subtasks while the surgeon retains partial teleoperative control, offers great potential to make an impact. In this paper we focus on one important skill within surgical shared autonomy: Automating robotic assistance to maximize visual exposure and apply tissue tension for dissection and cautery. Ensuring consistent exposure to visualize the surgical site is crucial for both efficiency and patient safety. However, achieving this is highly challenging due to the complexities of manipulating deformable volumetric tissues that are prevalent in surgery.To address these challenges we propose methodname, a framework for autonomous surgical robotic assistance to methodfullname. We integrate a differentiable physics model with perceptual feedback to achieve our two key objectives: 1) Maximizing tissue exposure and applying tension for a specified dissection site through visual-servoing conrol and 2) Selecting optimal control positions for a dissection target based on deformable Jacobian analysis. We quantitatively assess our method through repeated real robot experiments on a tissue phantom, and showcase its capabilities through dissection experiments using shared autonomy on real animal tissue.

Liang et al. (2024) MEDiC: Autonomous Surgical Robotic Assistance to Maximizing Exposure for Dissection and Cautery. arXiv preprint arXiv:2409.14287, pp 1-8.

Pub Link: https://arxiv.org/pdf/2409.14287
arXiv: https://arxiv.org/pdf/2409.14287