Options
VisCoMET: Visually Analyzing Team Collaboration in Medical Emergency Trainings
Liebers, Carina; Agarwal, Shivam; Krug, Maximilian; u. a. (2023): VisCoMET: Visually Analyzing Team Collaboration in Medical Emergency Trainings, in: Bamberg: Otto-Friedrich-Universität, S. 149–160.
Faculty/Chair:
Author:
Publisher Information:
Year of publication:
2023
Pages:
Year of first publication:
2023
Language:
English
Abstract:
Handling emergencies requires efficient and effective collaboration of medical professionals. To analyze their performance, in an application study, we have developed VisCoMET, a visual analytics approach displaying interactions of healthcare personnel in a triage training of a mass casualty incident. The application scenario stems from social interaction research, where the collaboration of teams is studied from different perspectives. We integrate recorded annotations from multiple sources, such as recorded videos of the sessions, transcribed communication, and eye-tracking information. For each session, an information-rich timeline visualizes events across these different channels, specifically highlighting interactions between the team members. We provide algorithmic support to identify frequent event patterns and to search for user-defined event sequences. Comparing different teams, an overview visualization aggregates each training session in a visual glyph as a node, connected to similar sessions through edges. An application example shows the usage of the approach in the comparative analysis of triage training sessions, where multiple teams encountered the same scene, and highlights discovered insights. The approach was evaluated through feedback from visualization and social interaction experts. The results show that the approach supports reflecting on teams' performance by exploratory analysis of collaboration behavior while particularly enabling the comparison of triage training sessions.
GND Keywords: ; ; ;
Visualisierung
Kollaboration
Notfall
Training
Keywords:
Information visualization
DDC Classification:
RVK Classification:
Peer Reviewed:
Yes:
Type:
Article
Activation date:
October 11, 2023
Permalink
https://fis.uni-bamberg.de/handle/uniba/90255