MedEdMENTOR AI: Can artificial intelligence help medical education researchers select theoretical constructs?

Gregory Ow, Adam Rodman, Geoffrey V Stetson
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Abstract

BACKGROUND: Medical education scholarship often lacks a strong theoretical underpinning, with this gap most often affecting early-career researchers and researchers in the Global South. Large language models (LLMs) have shown considerable promise to augment human writing and creativity in a variety of settings. In this study, we describe the development of MedEdMENTOR - an online platform for medical education research with a library of over 250 theories - and the development and evaluation of MedEdMENTOR AI, an LLM containing knowledge from MedEdMENTOR and the first AI mentor for medical education research. METHODS: From a postpositivist paradigm, we evaluated MedEdMENTOR AI by testing it against 6 months of qualitative research published in 24 core medical educational journals. In a blinded fashion, we presented MedEdMENTOR AI with only the phenomenon of the qualitative study, and asked it to recommend 5 theories that could be used to study that phenomenon. RESULTS: For 55% (29 of 53) of studies, MedEdMENTOR AI recommended the actual theoretical constructs chosen in the respective qualitative studies. CONCLUSIONS: Our data is preliminary, but it suggests that MedEdMENTOR AI and other LLMs can be highly effective in guiding medical education scholars towards theories that may be applicable in their research. Further research is needed to assess performance on other tasks in medical education research.
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meddedmentor AI:人工智能可以帮助医学教育研究人员选择理论结构吗?
背景:医学教育奖学金往往缺乏强有力的理论基础,这一差距最常影响早期职业研究人员和全球南方的研究人员。大型语言模型(llm)已经显示出在各种环境中增强人类写作和创造力的可观前景。在这项研究中,我们描述了MedEdMENTOR的开发——一个医学教育研究的在线平台,拥有超过250个理论库——以及MedEdMENTOR AI的开发和评估,这是一个包含MedEdMENTOR知识的法学硕士,也是医学教育研究的第一个人工智能导师。方法:从后实证主义范式出发,我们通过对发表在24份核心医学教育期刊上的6个月的定性研究进行测试来评估MedEdMENTOR AI。以盲法的方式,我们只向MedEdMENTOR AI展示定性研究的现象,并要求它推荐5个可用于研究该现象的理论。结果:对于55%(53个中的29个)的研究,MedEdMENTOR AI推荐了各自定性研究中选择的实际理论结构。结论:我们的数据是初步的,但它表明MedEdMENTOR AI和其他法学硕士可以非常有效地指导医学教育学者找到可能适用于他们研究的理论。需要进一步的研究来评估医学教育研究中其他任务的表现。
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