Visual TASK: A Collaborative Cognitive Aid for Acute Care Resuscitation
May 17, 2016 Β· Declared Dead Β· π International Conference on Pervasive Computing Technologies for Healthcare
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Authors
Michael J. Gonzales, Joshua M. Henry, Aaron W. Calhoun, Laurel D. Riek
arXiv ID
1605.05224
Category
cs.HC: Human-Computer Interaction
Citations
18
Venue
International Conference on Pervasive Computing Technologies for Healthcare
Last Checked
4 months ago
Abstract
Preventable medical errors are a severe problem in healthcare, causing over 400,000 deaths per year in the US in hospitals alone. In acute care, the branch of medicine encompassing the emergency department (ED) and intensive care units (ICU), error rates may be higher to due low situational awareness among clinicians performing resuscitation on patients. To support cognition, novice team leaders may rely on reference guides to direct and anticipate future steps. However, guides often act as a fixation point, diverting the leader's attention away from the team. To address this issue, we conducted a qualitative study that evaluates a collaborative cognitive aid co-designed with clinicians called Visual TASK. Our study explored the use of Visual TASK in three simulations employing a projected shared display with two different interaction modalities: the Microsoft Kinect and a touchscreen. Our results suggest that tools like the Kinect, while useful in other areas of acute care like the OR, are unsuitable for use in high-stress situations like resuscitation. We also observed that fixation may not be constrained to reference guides alone, and may extend to other objects in the room. We present our findings, and a discussion regarding future avenues in which collaborative cognitive aids may help in improving situational awareness in resuscitation.
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