JMIR Medical Education

Technology, innovation, and openness in medical education in the information age.

Editor-in-Chief:

Blake J. Lesselroth, MD MBI FACP FAMIA, University of Oklahoma | OU-Tulsa Schusterman Center; University of Victoria, British Columbia


Impact Factor 12.6 CiteScore 11

JMIR Medical Education (JME, ISSN 2369-3762) is an open access, PubMed-indexed, peer-reviewed journal focusing on technology, innovation, and openness in medical education.This includes e-learning and virtual training, which has gained critical relevance in the (post-)COVID world. Another focus is on how to train health professionals to use digital tools. We publish original research, reviews, viewpoint, and policy papers on innovation and technology in medical education. As an open access journal, we have a special interest in open and free tools and digital learning objects for medical education and urge authors to make their tools and learning objects freely available (we may also publish them as a Multimedia Appendix). We also invite submissions of non-conventional articles (e.g., open medical education material and software resources that are not yet evaluated but free for others to use/implement). 

In our "Students' Corner," we invite students and trainees from various health professions to submit short essays and viewpoints on all aspects of medical education, particularly suggestions on improving medical education and suggestions for new technologies, applications, and approaches. 

The journal is indexed in MEDLINEPubMed, PubMed Central, Scopus, DOAJ, and the Science Citation Index Expanded (Clarivate).

JMIR Medical Education received a Journal Impact Factor of 12.6 according to the latest release of the Journal Citation Reports from Clarivate, 2025.

JMIR Medical Education received a Scopus CiteScore of 11.0 (2024), placing it in the 97th percentile (#46 of 1620) as a Q1 journal in the field of Medical Education.

Recent Articles

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Dental Education and Training for Dentists and Dental Students

Game-based learning has emerged as an effective learning strategy for enhancing knowledge and engagement in healthcare education. However, they have not been specifically designed to support cognitive improvements for diverse learning styles in oral microbiology and immunology.

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Evaluation of Medical Education

Cancer immunotherapy represents a transformative advancement in oncology, offering new avenues for treating malignancies by harnessing the immune system. Despite its growing clinical relevance, immunotherapy remains underrepresented in undergraduate medical education, particularly in curricula integrating foundational immunology with clinical application. To address this gap, we developed and implemented a fully online elective for fourth-year medical students focused on core immunology concepts, immunotherapy mechanisms, FDA-approved treatments, immune-related adverse events, and patient-centered therapeutic decision-making.

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Undergraduate Education for Future Doctors

Physician maldistribution remains a global challenge, with Japan’s rural regions facing critical health care shortages. Regional quota programs aim to attract medical students to underserved areas; however, their effectiveness in fostering long-term commitment is uncertain. Community-oriented medical education (COME) programs aim to address this issue by developing students’ understanding and dedication to rural health care.

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Undergraduate Education for Future Healthcare Professionals

Traditional Chinese medicine (TCM) has been widely used against various diseases in China for thousands of years and showed satisfactory effectiveness. However, many surveys found that TCM receives less recognition from Western medicine (WM) doctors and students. Presently, TCM is offered as a compulsory course for WM students in Western medical schools.

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Viewpoint and Opinions on Innovation in Medical Education

This paper proposes a framework for leveraging large language models (LLMs) to generate misconceptions as a tool for collaborative learning in healthcare education. While misconceptions—particularly those generated by AI—are often viewed as detrimental to learning, we present an alternative perspective: that LLM-generated misconceptions, when addressed through structured peer discussion, can promote conceptual change and critical thinking. The paper outlines use cases across healthcare disciplines, including both clinical and basic science contexts, and a practical 10-step guidance for educators to implement the framework. It also highlights the need for medium- to long-term research to evaluate the impact of LLM-supported learning on student outcomes. This framework may support healthcare educators globally in integrating emerging AI technologies into their teaching, regardless of disciplinary focus.

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Health Professionals' Training in eHealth, Digital Medicine, Medical Informatics

The use of Artificial Intelligence (AI) to analyze healthcare data has become common in behavioral health sciences. However, the lack of training opportunities for mental health professionals limit clinicians' ability to adopt AI in clinical settings. AI education is essential for trainees, equipping them with the literacy needed to implement AI tools in practice, collaborate effectively with data scientists, and develop as interdisciplinary researchers with computing skills.

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Artificial Intelligence (AI) in Medical Education

Objective Structured Clinical Examinations (OSCEs) are used as an evaluation method in medical education, but require significant pedagogical expertise and investment, especially in emerging fields like digital health. Large language models (LLMs), such as ChatGPT (OpenAI), have shown potential in automating educational content generation. However, OSCE generation using LLMs remains underexplored.

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Student/Learners Perceptions and Experiences with Educational Technology

Foundational knowledge of anesthesia techniques is essential for medical students. Team-based learning (TBL) improves engagement. Web-based virtual environments (WBVEs) allow many learners to join the same session in real time while being guided by an instructor.

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Artificial Intelligence (AI) in Medical Education

The rapid advancement of artificial intelligence (AI) has had a substantial impact on medicine, necessitating the integration of AI education into medical school curricula. However, such integration remains limited. A key challenge is the discrepancy between medical students’ positive perceptions of AI and their actual competencies, with research in Japan identifying specific gaps in the students’ competencies in understanding regulations and discussing ethical issues.

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Artificial Intelligence (AI) in Medical Education

In the current era of artificial intelligence (AI), utilization of AI has increased in both clinical practice and medical education. Nevertheless, it is probable that perspectives on the prospects and risks of AI vary among individuals. Given the potential for attitudes toward AI to significantly influence its integration into medical practice and educational initiatives, it is essential to assess these attitudes using a validated tool. The recently developed 12-item Attitude towards Artificial Intelligence (ATTARI-12) scale has demonstrated good validity and reliability for the general populations, suggesting its potential for extensive utilization in future studies. However, to our knowledge, there is currently no validated Japanese version of the scale. The lack of a Japanese version hinders research and educational efforts aimed at understanding and improving AI integration into the Japanese healthcare and medical education system.

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Undergraduate Education for Future Healthcare Professionals

As medical and allied health curricula adapt to increasing time constraints, ethical considerations, and resource limitations, digital innovations are becoming vital supplements to donor-based anatomy instruction. While prior studies have examined the effectiveness of prosection versus dissection and the role of digital tools in anatomy learning, few resources align interactive digital modules directly with hands-on prosection experiences.

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Artificial Intelligence (AI) in Medical Education

In recent years, generative artificial intelligence and large language models (LLMs) have rapidly advanced, offering significant potential to transform medical education. Several studies have evaluated the performance of chatbots on multiple-choice medical exams.

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Preprints Open for Peer Review

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