Collaborative System Design of Mixed Reality Communication for Medical Training
December 14, 2023 Β· Declared Dead Β· π Hawaii International Conference on System Sciences
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Authors
Manuel Rebol, Krzysztof Pietroszek, Claudia Ranniger, Colton Hood, Adam Rutenberg, Neal Sikka, Christian Guetl
arXiv ID
2312.09382
Category
cs.HC: Human-Computer Interaction
Citations
3
Venue
Hawaii International Conference on System Sciences
Last Checked
4 months ago
Abstract
We present the design of a mixed reality (MR) telehealth training system that aims to close the gap between in-person and distance training and re-training for medical procedures. Our system uses real-time volumetric capture as a means for communicating and relating spatial information between the non-colocated trainee and instructor. The system's design is based on a requirements elicitation study performed in situ, at a medical school simulation training center. The focus is on the lightweight real-time transmission of volumetric data - meaning the use of consumer hardware, easy and quick deployment, and low-demand computations. We evaluate the MR system design by analyzing the workload for the users during medical training. We compare in-person, video, and MR training workloads. The results indicate that the overall workload for central line placement training with MR does not increase significantly compared to video communication. Our work shows that, when designed strategically together with domain experts, an MR communication system can be used effectively for complex medical procedural training without increasing the overall workload for users significantly. Moreover, MR systems offer new opportunities for teaching due to spatial information, hand tracking, and augmented communication.
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