Towards an AI Coach to Infer Team Mental Model Alignment in Healthcare

IEEE Conf Cogn Comput Asp Situat Manag. 2021 May:2021:39-44. doi: 10.1109/cogsima51574.2021.9475925. Epub 2021 Jul 9.

Abstract

Shared mental models are critical to team success; however, in practice, team members may have misaligned models due to a variety of factors. In safety-critical domains (e.g., aviation, healthcare), lack of shared mental models can lead to preventable errors and harm. Towards the goal of mitigating such preventable errors, here, we present a Bayesian approach to infer misalignment in team members' mental models during complex healthcare task execution. As an exemplary application, we demonstrate our approach using two simulated team-based scenarios, derived from actual teamwork in cardiac surgery. In these simulated experiments, our approach inferred model misalignment with over 75% recall, thereby providing a building block for enabling computer-assisted interventions to augment human cognition in the operating room and improve teamwork.

Keywords: Bayesian inference; artificial intelligence; cardiac surgery; patient safety; surgical data science; teamwork.