Conceptual Design and Preliminary Results of a VR-based Radiation Safety Training System for Interventional Radiologists
January 14, 2020 Β· Declared Dead Β· π Radiation Protection Dosimetry
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Authors
Yi Guo, Li Mao, Gongsen Zhang, Zhi Chen, Xi Pei, X. George Xu
arXiv ID
2001.04839
Category
physics.med-ph
Cross-listed
cs.HC
Citations
16
Venue
Radiation Protection Dosimetry
Last Checked
3 months ago
Abstract
Recent studies have reported an increased risk of developing brain and neck tumors, as well as cataracts, in practitioners in interventional radiology (IR). Occupational radiation protection in IR has been a top concern for regulatory agencies and professional societies. To help minimize occupational radiation exposure in IR, we conceptualized a virtual reality (VR) based radiation safety training system to help operators understand complex radiation fields and to avoid high radiation areas through game-like interactive simulations. The preliminary development of the system has yielded results suggesting that the training system can calculate and report the radiation exposure after each training session based on a database precalculated from computational phantoms and Monte Carlo simulations and the position information provided in real-time by the MS Hololens headset worn by trainee. In addition, real-time dose rate and cumulative dose will be displayed to the trainee by MS Hololens to help them adjust their practice. This paper presents the conceptual design of the overall hardware and software design, as well as preliminary results to combine MS HoloLens headset and complex 3D X-ray field spatial distribution data to create a mixed reality environment for safety training purpose in IR.
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