J Educ Eval Health Prof.  2023;20(1):17. 10.3352/jeehp.2023.20.17.

Comparing ChatGPT’s ability to rate the degree of stereotypes and the consistency of stereotype attribution with those of medical students in New Zealand in developing a similarity rating test: a methodological study

Affiliations
  • 1Department of Psychological Medicine, Dunedin School of Medicine, The University of Otago, Dunedin, New Zealand
  • 2Department of Psychiatry, National Taiwan University College of Medicine, Taipei, Taiwan
  • 3Kōhatu Centre for Hauora Māori, Dunedin School of Medicine, The University of Otago, Dunedin, New Zealand

Abstract

Learning about one’s implicit bias is crucial for improving one’s cultural competency and thereby reducing health inequity. To evaluate bias among medical students following a previously developed cultural training program targeting New Zealand Māori, we developed a text-based, self-evaluation tool called the Similarity Rating Test (SRT). The development process of the SRT was resource-intensive, limiting its generalizability and applicability. Here, we explored the potential of ChatGPT, an automated chatbot, to assist in the development process of the SRT by comparing ChatGPT’s and students’ evaluations of the SRT. Despite results showing non-significant equivalence and difference between ChatGPT’s and students’ ratings, ChatGPT’s ratings were more consistent than students’ ratings. The consistency rate was higher for non-stereotypical than for stereotypical statements, regardless of rater type. Further studies are warranted to validate ChatGPT’s potential for assisting in SRT development for implementation in medical education and evaluation of ethnic stereotypes and related topics.

Keyword

Artificial intelligence; Cultural competency; Implicit bias; Medical education; New Zealand
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