Artificial Intelligence in Medical Education: A citation-based systematic literature review

I. Burney, N. Ahmad
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引用次数: 2

Abstract

Purpose: This review aims to describe the existing and emerging role of Artificial intelligence (AI) in medical education, as this may help set future directions. Methodology: Articles on AI in medical education describing integration of AI or machine-learning (ML) in undergraduate medical curricula or structured postgraduate residency programs were extracted from SCOPUS database. The paper followed the guidelines of Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) research methodology. Articles describing AI or ML, but not directly related to teaching and training in structured programs were excluded. Results: Of the 1020 documents published till October 15, 2020, 218 articles are included in the final analysis. A sharp increase in the number of published articles was observed 2018 onwards. Articles describing surgical skills training, case-based reasoning, physicians' role in the evolving scenario, and the attitudes of medical students towards AI in radiology were cited frequently. Of the 50 top-cited papers, 16 (32%) were ‘commentary’ articles, 13 (26%) review articles, 13 (26%) articles correlated usefulness of ML and AI with human performance, whereas 8 (16%) assessed the perceptions of students toward the integration of AI in medical practice. Conclusion: AI should be taught in medical curricula to prepare doctors for tomorrow, and at the same time, could be used for teaching, assessment, and providing feedback in various disciplines.
医学教育中的人工智能:基于引文的系统文献综述
目的:本综述旨在描述人工智能(AI)在医学教育中现有和新兴的作用,因为这可能有助于确定未来的方向。方法:从SCOPUS数据库中提取有关医学教育中人工智能的文章,这些文章描述了在本科医学课程或结构化研究生住院医师计划中集成人工智能或机器学习(ML)。本文遵循了系统评价和荟萃分析(PRISMA)研究方法的首选报告项目指南。描述人工智能或机器学习,但与结构化项目的教学和培训没有直接关系的文章被排除在外。结果:截至2020年10月15日共发表1020篇文献,最终分析纳入218篇。2018年以来,发表的文章数量急剧增加。描述外科技能培训、基于病例的推理、医生在不断变化的情景中的作用以及医学生对放射学人工智能的态度的文章被频繁引用。在50篇被引用最多的论文中,16篇(32%)是“评论”文章,13篇(26%)是评论文章,13篇(26%)是将ML和AI的有用性与人类表现相关联的文章,而8篇(16%)评估了学生对AI在医疗实践中的整合的看法。结论:人工智能应在医学课程中进行教学,为医生的未来做好准备,同时也可用于各学科的教学、评估和反馈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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