Co-Designing a Chatbot for Culturally Competent Clinical Communication: Experience and Reflections
- URL: http://arxiv.org/abs/2506.11393v1
- Date: Sun, 18 May 2025 17:21:46 GMT
- Title: Co-Designing a Chatbot for Culturally Competent Clinical Communication: Experience and Reflections
- Authors: Sandro Radovanović, Shuangyu Li,
- Abstract summary: We explore the use of an AI-driven robot to support culturally competent communication training for medical students.<n>The robot was designed to simulate realistic patient conversations and provide structured feedback based on the ACT Cultural Competence model.<n>We piloted the robot with a small group of third-year medical students at a UK medical school in 2024.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Clinical communication skills are essential for preparing healthcare professionals to provide equitable care across cultures. However, traditional training with simulated patients can be resource intensive and difficult to scale, especially in under-resourced settings. In this project, we explore the use of an AI-driven chatbot to support culturally competent communication training for medical students. The chatbot was designed to simulate realistic patient conversations and provide structured feedback based on the ACT Cultural Competence model. We piloted the chatbot with a small group of third-year medical students at a UK medical school in 2024. Although we did not follow a formal experimental design, our experience suggests that the chatbot offered useful opportunities for students to reflect on their communication, particularly around empathy and interpersonal understanding. More challenging areas included addressing systemic issues and historical context. Although this early version of the chatbot helped surface some interesting patterns, limitations were also clear, such as the absence of nonverbal cues and the tendency for virtual patients to be overly agreeable. In general, this reflection highlights both the potential and the current limitations of AI tools in communication training. More work is needed to better understand their impact and improve the learning experience.
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