Strategies for case-based training with virtual patients: An experimental study of the impact of integrating mental model articulation and self-reflection

Appl Ergon. 2024 Jul:118:104265. doi: 10.1016/j.apergo.2024.104265. Epub 2024 Mar 12.

Abstract

Resilient system performance in high-stakes settings, which includes the ability to monitor, respond, anticipate, and learn, can be enhanced for trainees through simulation of realistic scenarios enhanced by augmented reality. Active learning strategies can enhance simulation-based training, particularly the mental model articulation principle where students are prompted to anticipate what will happen next and the reflection principle where students self-assess their performance compared to a gold standard expert model. In this paper, we compared simulation-based training for trauma care with and without active learning strategies during pauses in the simulated action for progressively deteriorating patients. The training was conducted online and real-time without a facilitator, with 42 medical students viewing training materials and then immediately taking an online quiz for three types of trauma cases: hemorrhage, airway obstruction, and tension pneumothorax. Participants were randomly assigned to either the experimental or control condition in a between-subjects design. We compared performance in the control and experimental conditions based on: A) the proportion of cues correctly recognized, B) the proportion of accurate diagnoses, C) the proportion of appropriate treatment interventions, and D) verbal briefing quality on a 1-5 scale. We found that the training intervention increased recognition of subtle cues critical for accurate diagnosis and appropriate treatment interventions; the training did not improve the accuracy of diagnoses or the quality of the verbal briefing. We conclude that incorporating active learning strategies in simulation-based training improved foundational capabilities in detecting subtle cues and intervening to rescue deteriorating patients that can increase the readiness for trainees to contribute to resilient system performance in the high-stakes setting of emergency care in hospitals.

Keywords: Augmented reality; Medical education; Problem-based learning; Resilient system performance.

Publication types

  • Randomized Controlled Trial

MeSH terms

  • Adult
  • Airway Obstruction
  • Clinical Competence*
  • Cues
  • Female
  • Hemorrhage / therapy
  • Humans
  • Male
  • Models, Psychological
  • Patient Simulation
  • Problem-Based Learning / methods
  • Self-Assessment
  • Simulation Training* / methods
  • Students, Medical / psychology
  • Virtual Reality
  • Young Adult