A Modular Edge Device Network for Surgery Digitalization
Vincent Schorp, Frédéric Giraud, Gianluca Pargätzi, Michael Wäspe, Lorenzo von Ritter-Zahony, Marcel Wegmann, Nicola A. Cavalcanti, John Garcia Henao, Nicholas Bünger, Dominique Cachin, Sebastiano Caprara, Philipp Fürnstahl, Fabio Carrillo
- Year
- 2025
- Access
- Open access
Abstract
Future surgical care demands real-time, integrated data to drive informed decision-making and improve patient outcomes. The pressing need for seamless and efficient data capture in the OR motivates our development of a modular solution that bridges the gap between emerging machine learning techniques and interventional medicine. We introduce a network of edge devices, called Data Hubs (DHs), that interconnect diverse medical sensors, imaging systems, and robotic tools via optical fiber and a centralized network switch. Built on the NVIDIA Jetson Orin NX, each DH supports multiple interfaces (HDMI, USB-C, Ethernet) and encapsulates device-specific drivers within Docker containers using the Isaac ROS framework and ROS2. A centralized user interface enables straightforward configuration and real-time monitoring, while an Nvidia DGX computer provides state-of-the-art data processing and storage. We validate our approach through an ultrasound-based 3D anatomical reconstruction experiment that combines medical imaging, pose tracking, and RGB-D data acquisition.
Keywords
Related papers
Campbell-Walsh urology
Alan J. Wein editor-in-chief
2012
Principles of Robot Motion: Theory, Algorithms, and Implementations
Howie Choset, Jean‐Claude Latombe
2005
Minimally Invasive versus Abdominal Radical Hysterectomy for Cervical Cancer
Pedro T. Ramírez, Michael Frumovitz, René Pareja +16 more
2018
Guideline for Management of the Clinical T1 Renal Mass
Steven C. Campbell, Andrew C. Novick, Arie S. Belldegrun +9 more
2009