IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Yuning Zhang, Xiaolu Xie, Qi Xu
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引用次数: 0

摘要

背景:ChatGPT是OpenAI公司开发的基于生成式人工智能的聊天机器人。自2022年下半年发布以来,它已被广泛应用于各个领域。特别是ChatGPT在医学教育中的应用已经成为一个重要的趋势。为了全面了解ChatGPT在医学教育中的研究进展和趋势,我们对该领域的研究现状进行了广泛的回顾和分析。目的:采用文献计量学和可视化分析方法,探讨ChatGPT在医学教育中的研究现状和发展趋势。方法:采用CiteSpace、VOSviewer和Bibliometrix (RStudio的RTool)对2023年3月至2025年6月发表的407篇医学教育领域ChatGPT相关文献进行文献计量学分析。还对国家、机构、期刊、作者、关键词和参考文献进行了可视化。结果:文献计量学分析共纳入407项研究。这一领域的研究始于2023年,直到2025年6月,年度出版物都出现了显著的增长。美国、中国、日本、英国和加拿大发表的出版物最多。各机构之间也形成了合作网络。加州大学系统是核心研究机构,发表量占3.4%(14/407),中间中心性为0.17。《BMC Medical Education》、《Medical Teacher》、《Journal of Medical Internet Research》均在发表量和被引频次排名前十的期刊之列。最多产的作者是Yavuz Selim Kiyak,他与Isil Irem Budakoglu和Ozlem Coskun建立了稳定的合作网络。该领域的作者合作通常是有限的,大多数学术研究都是由独立的团队进行的,团队之间的交流很少。最常见的关键词是“人工智能”、“ChatGPT”和“医学教育”。关键词分析进一步揭示了“教育评价”、“考试”和“临床实践”是当前的研究热点。被引次数最多的论文是《ChatGPT在USMLE上的表现:使用大型语言模型的人工智能辅助医学教育的潜力》,被引次数最多的论文是《ChatGPT的知识和解释能力与韩国医学生参加寄生虫学考试的能力是否相当?》:一项描述性研究。两篇论文都着重于评估ChatGPT在医学考试中的表现。结论:本研究揭示了ChatGPT在医学教育中的巨大潜力。随着技术的进步,它的应用将扩展到更多的领域。为了促进ChatGPT在医学教育中的多样化和有效性,未来的研究应加强区域间的合作,提高研究质量。这些发现为研究人员确定研究视角和指导未来的研究方向提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ChatGPT in Medical Education: Bibliometric and Visual Analysis.

Background: ChatGPT is a generative artificial intelligence-based chatbot developed by OpenAI. Since its release in the second half of 2022, it has been widely applied across various fields. In particular, the application of ChatGPT in medical education has become a significant trend. To gain a comprehensive understanding of the research developments and trends regarding ChatGPT in medical education, we conducted an extensive review and analysis of the current state of research in this field.

Objective: This study used bibliometric and visualization analysis to explore the current state of research and development trends regarding ChatGPT in medical education.

Methods: A bibliometric analysis of 407 articles on ChatGPT in medical education published between March 2023 and June 2025 was conducted using CiteSpace, VOSviewer, and Bibliometrix (RTool of RStudio). Visualization of countries, institutions, journals, authors, keywords, and references was also conducted.

Results: This bibliometric analysis included a total of 407 studies. Research in this field began in 2023, showing a notable surge in annual publications until June 2025. The United States, China, Türkiye, the United Kingdom, and Canada produced the most publications. Networks of collaboration also formed among institutions. The University of California system was a core research institution, with 3.4% (14/407) of the publications and 0.17 betweenness centrality. BMC Medical Education, Medical Teacher, and the Journal of Medical Internet Research were all among the top 10 journals in terms of both publication volume and citation frequency. The most prolific author was Yavuz Selim Kiyak, who has established a stable collaboration network with Isil Irem Budakoglu and Ozlem Coskun. Author collaboration in this field is usually limited, with most academic research conducted by independent teams and little communication between teams. The most frequent keywords were "AI," "ChatGPT," and "medical education." Keyword analysis further revealed "educational assessment," "exam," and "clinical practice" as current research hot spots. The most cited paper was "Performance of ChatGPT on USMLE: Potential for AI-Assisted Medical Education Using Large Language Models," and the paper with the strongest citation burst was "Are ChatGPT's Knowledge and Interpretation Ability Comparable to Those of Medical Students in Korea for Taking a Parasitology Examination?: A Descriptive Study." Both papers focus on evaluating ChatGPT's performance in medical exams.

Conclusions: This study reveals the significant potential of ChatGPT in medical education. As the technology improves, its applications will expand into more fields. To promote the diversification and effectiveness of ChatGPT in medical education, future research should strengthen interregional collaboration and enhance research quality. These findings provide valuable insights for researchers to identify research perspectives and guide future research directions.

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来源期刊
JMIR Medical Education
JMIR Medical Education Social Sciences-Education
CiteScore
6.90
自引率
5.60%
发文量
54
审稿时长
8 weeks
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