Hui Muying Lucy, Sacoransky Ethan, Chung Andrew, Kwan Benjamin Ym
Faculty of Medicine, University of British Columbia, Vancouver, BC, Canada.
School of Medicine, Faculty of Health Sciences, Queen's University, Kingston, ON, Canada.
Curr Probl Diagn Radiol. 2025 May-Jun;54(3):332-338. doi: 10.1067/j.cpradiol.2024.10.012. Epub 2024 Oct 5.
The integration of Artificial Intelligence (AI) into radiology education presents a transformative opportunity to enhance learning and practice within the field. This scoping review aims to systematically explore and map the current landscape of AI integration in radiology education.
The review process involved systematically searching four databases, including MEDLINE (Ovid), Embase (Ovid), PsychINFO (Ovid), and Scopus. Inclusion criteria focused on research that addresses the use of AI technologies in radiology education, including but not limited to, AI-assisted learning platforms, simulation tools, and automated assessment systems. This scoping review was registered on Open Science Framework using the Preferred Reporting Items for Systematic reviews and Meta-Analysis (PRISMA) extension to scoping review.
Of the 1081 search results, 9 studies met the inclusion criteria. Key findings indicate a diverse range of AI applications in radiology education, from personalized curriculum generation and diagnostic support tools to automated evaluation systems. The review highlights both the potential benefits, such as enhanced diagnostic accuracy, and the challenges, including technical limitations.
The integration of AI into radiology education, which has significant potential to enhance outcomes and professional practice, requires overcoming existing challenges and ensuring that AI complements rather than replaces traditional methods, with future research needed on longitudinal studies to evaluate its long-term impact.
将人工智能(AI)融入放射学教育为提升该领域的学习与实践提供了一个变革性机遇。本范围综述旨在系统地探索和描绘放射学教育中人工智能整合的当前状况。
综述过程包括系统检索四个数据库,即MEDLINE(Ovid)、Embase(Ovid)、PsychINFO(Ovid)和Scopus。纳入标准聚焦于涉及人工智能技术在放射学教育中应用的研究,包括但不限于人工智能辅助学习平台、模拟工具和自动评估系统。本范围综述在开放科学框架上使用系统评价和Meta分析的首选报告项目(PRISMA)扩展版进行了注册。
在1081条检索结果中,有9项研究符合纳入标准。主要发现表明,人工智能在放射学教育中有多种应用,从个性化课程生成、诊断支持工具到自动评估系统。该综述既强调了潜在益处,如提高诊断准确性,也指出了挑战,包括技术限制。
将人工智能融入放射学教育虽有显著潜力提升教育成果和专业实践,但需要克服现有挑战,并确保人工智能补充而非取代传统方法,未来还需开展纵向研究以评估其长期影响。