From the DESK (Dexterous Surgical Skill) to the Battlefield -- A Robotics Exploratory Study
Glebys T. Gonzalez, Upinder Kaur, Masudur Rahma, Vishnunandan, Venkatesh, Natalia Sanchez, Gregory Hager, Yexiang Xue, Richard Voyles, Juan, Wachs

TL;DR
This study introduces the DESK database for robotic surgical skills and demonstrates how simulation data can effectively transfer to real robots, enhancing autonomous capabilities in austere medical settings.
Contribution
The paper presents a new surgical skill dataset and a machine learning framework for transfer learning between simulated and real robotic surgical data.
Findings
Simulation data improves real robot performance.
High transfer accuracy achieved with simulated training data.
Potential for deploying autonomous surgical robots in remote areas.
Abstract
Short response time is critical for future military medical operations in austere settings or remote areas. Such effective patient care at the point of injury can greatly benefit from the integration of semi-autonomous robotic systems. To achieve autonomy, robots would require massive libraries of maneuvers. While this is possible in controlled settings, obtaining surgical data in austere settings can be difficult. Hence, in this paper, we present the Dexterous Surgical Skill (DESK) database for knowledge transfer between robots. The peg transfer task was selected as it is one of 6 main tasks of laparoscopic training. Also, we provide a ML framework to evaluate novel transfer learning methodologies on this database. The collected DESK dataset comprises a set of surgical robotic skills using the four robotic platforms: Taurus II, simulated Taurus II, YuMi, and the da Vinci Research Kit.…
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Taxonomy
TopicsSurgical Simulation and Training · Anatomy and Medical Technology · Soft Robotics and Applications
