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Applications, Challenges and Prospects of Generative Artificial Intelligence Empowering Medical Education: A scoping review (Preprint)

Тип публикацииJournal Article
Дата публикации2025-10-23
scimago Q1
white level БС1
SJR1.974
CiteScore11
Impact factor3.2
ISSN23693762
Краткое описание
Background

Nowadays, generative artificial intelligence (GAI) drives medical education toward enhanced intelligence, personalization, and interactivity. With its vast generative abilities and diverse applications, GAI redefines how educational resources are accessed, teaching methods are implemented, and assessments are conducted.

Objective

This study aimed to review the current applications of GAI in medical education; analyze its opportunities and challenges; identify its strengths and potential issues in educational methods, assessments, and resources; and capture GAI’s rapid evolution and multidimensional applications in medical education, thereby providing a theoretical foundation for future practice.

Methods

This scoping review used PubMed, Web of Science, and Scopus to analyze literature from January 2023 to October 2024, focusing on GAI applications in medical education. Following PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews) guidelines, 5991 articles were retrieved, with 1304 duplicates removed. The 2-stage screening (title or abstract and full-text review) excluded 4564 articles and a supplementary search included 8 articles, yielding 131 studies for final synthesis. We included (1) studies addressing GAI’s applications, challenges, or future directions in medical education, (2) empirical research, systematic reviews, and meta-analyses, and (3) English-language articles. We excluded commentaries, editorials, viewpoints, perspectives, short reports, or communications with low levels of evidence, non-GAI technologies, and studies centered on other fields of medical education (eg, nursing). We integrated quantitative analysis of publication trends and Human Development Index (HDI) with thematic analysis of applications, technical limitations, and ethical implications.

Results

Analysis of 131 articles revealed that 74.0% (n=97) originated from countries or regions with very high HDI, with the United States contributing the most (n=33); 14.5% (n=19) were from high HDI countries, 5.3% (n=7) from medium HDI countries, and 2.2% (n=3) from low HDI countries, with 3.8% (n=5) involving cross-HDI collaborations. ChatGPT was the most studied GAI model (n=119), followed by Gemini (n=22), Copilot (n=11), Claude (n=6), and LLaMA (n=4). Thematic analysis indicated that GAI applications in medical education mainly embody the diversification of educational methods, scientific evaluation of educational assessments, and dynamic optimization of educational resources. However, it also highlighted current limitations and potential future challenges, including insufficient scene adaptability, data quality and information bias, overreliance, and ethical controversies.

Conclusion

GAI application in medical education exhibits significant regional disparities in development, and model research statistics reflect researchers’ certain usage preferences. GAI holds potential for empowering medical education, but widespread adoption requires overcoming complex technical and ethical challenges. Grounded in symbiotic agency theory, we advocate establishing the resource-method-assessment tripartite model, developing specialized models and constructing an integrated system of general large language models incorporating specialized ones, promoting resource sharing, refining ethical governance, and building an educational ecosystem fostering human-machine symbiosis, enabling deep tech-humanism integration and advancing medical education toward greater efficiency and human-centeredness.

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Топ-30

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Nurse Education in Practice
1 публикация, 50%
Quality and Quantity
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1

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Elsevier
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Springer Nature
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Lin Y. et al. Applications, Challenges and Prospects of Generative Artificial Intelligence Empowering Medical Education: A scoping review (Preprint) // JMIR Medical Education. 2025. Vol. 11. p. e71125-e71125.
ГОСТ со всеми авторами (до 50) Скопировать
Lin Y., Luo Z., Ye Z., Zhong N., Zhao L., Zhang L., Li X., Chen Z., Chen Y. Applications, Challenges and Prospects of Generative Artificial Intelligence Empowering Medical Education: A scoping review (Preprint) // JMIR Medical Education. 2025. Vol. 11. p. e71125-e71125.
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TY - JOUR
DO - 10.2196/71125
UR - http://preprints.jmir.org/preprint/71125/accepted
TI - Applications, Challenges and Prospects of Generative Artificial Intelligence Empowering Medical Education: A scoping review (Preprint)
T2 - JMIR Medical Education
AU - Lin, Yuhang
AU - Luo, Zhiheng
AU - Ye, Zicheng
AU - Zhong, Nuoxi
AU - Zhao, Lijian
AU - Zhang, Long
AU - Li, Xiaolan
AU - Chen, Zetao
AU - Chen, Yijia
PY - 2025
DA - 2025/10/23
PB - JMIR Publications
SP - e71125-e71125
VL - 11
SN - 2369-3762
ER -
BibTex
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@article{2025_Lin,
author = {Yuhang Lin and Zhiheng Luo and Zicheng Ye and Nuoxi Zhong and Lijian Zhao and Long Zhang and Xiaolan Li and Zetao Chen and Yijia Chen},
title = {Applications, Challenges and Prospects of Generative Artificial Intelligence Empowering Medical Education: A scoping review (Preprint)},
journal = {JMIR Medical Education},
year = {2025},
volume = {11},
publisher = {JMIR Publications},
month = {oct},
url = {http://preprints.jmir.org/preprint/71125/accepted},
pages = {e71125--e71125},
doi = {10.2196/71125}
}
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