Janumpally Ravi K
Clinical Informatics, Baylor Scott & White Medical Center, Round Rock, USA.
Cureus. 2025 Mar 24;17(3):e81078. doi: 10.7759/cureus.81078. eCollection 2025 Mar.
The rapid evolution of artificial intelligence, particularly in the form of natural language processing (NLP) and large language models (LLMs), presents new opportunities to enhance graduate medical education (GME). NLP technologies have the potential to improve residency training programs by automating performance feedback, personalizing learning pathways, and identifying competency gaps. However, the integration of these technologies also raises challenges related to privacy, ethical considerations, and algorithmic bias. This review provides a comprehensive evaluation of the application and impact of NLP in GME. A scoping review of the literature was conducted following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines. Relevant studies from 2018 to 2024 were identified using databases such as PubMed, Scopus, Web of Science, and Google Scholar. Inclusion criteria focused on peer-reviewed studies evaluating NLP applications in residency training programs across various specialties. Data were extracted from 20 studies, and key themes were synthesized to assess the educational, technological, and ethical implications of NLP in GME. The review identified several key areas where NLP is transforming GME. These include automated performance evaluation systems, sentiment analysis of narrative feedback, personalized learning recommendations, and competency assessment algorithms. NLP technologies demonstrated significant potential in reducing administrative workload, improving assessment accuracy, and enhancing the personalization of residency training. However, studies also highlighted concerns regarding algorithmic biases and the need for transparent, ethical frameworks to ensure fair implementation. The integration of NLP in GME offers significant opportunities to streamline educational processes and enhance trainee development. Automated feedback systems can reduce subjective biases and provide more actionable insights for residents. Additionally, NLP applications can identify early indicators of residents at risk of underperformance and support timely interventions. However, the adoption of these technologies requires careful consideration of ethical and legal implications, particularly around data privacy and fairness. NLP has the potential to revolutionize GME by improving the quality and efficiency of residency training programs. While the technology offers promising benefits, further research is needed to address ethical challenges and ensure responsible implementation. Interdisciplinary collaboration between educators, informaticians, and ethicists will be critical to fully realize the potential of NLP in medical education.
人工智能的快速发展,尤其是自然语言处理(NLP)和大语言模型(LLMs)形式的发展,为加强研究生医学教育(GME)带来了新机遇。NLP技术有潜力通过自动化绩效反馈、个性化学习路径以及识别能力差距来改进住院医师培训项目。然而,这些技术的整合也引发了与隐私、伦理考量和算法偏见相关的挑战。本综述对NLP在GME中的应用及影响进行了全面评估。按照系统评价和Meta分析的首选报告项目(PRISMA)指南对文献进行了范围综述。使用诸如PubMed、Scopus、科学网和谷歌学术等数据库确定了2018年至2024年的相关研究。纳入标准侧重于评估NLP在各专业住院医师培训项目中的应用的同行评审研究。从20项研究中提取了数据,并综合关键主题以评估NLP在GME中的教育、技术和伦理影响。该综述确定了NLP正在改变GME的几个关键领域。这些领域包括自动化绩效评估系统、叙事反馈的情感分析、个性化学习推荐以及能力评估算法。NLP技术在减轻行政工作量、提高评估准确性以及增强住院医师培训的个性化方面显示出巨大潜力。然而,研究也突出了对算法偏见的担忧以及对确保公平实施的透明、伦理框架的需求。NLP融入GME为简化教育流程和促进学员发展提供了重大机遇。自动化反馈系统可以减少主观偏见,并为住院医师提供更具可操作性的见解。此外,NLP应用可以识别表现不佳风险较高的住院医师的早期指标,并支持及时干预。然而,采用这些技术需要仔细考虑伦理和法律影响,特别是围绕数据隐私和公平性方面。NLP有潜力通过提高住院医师培训项目的质量和效率来彻底改变GME。虽然该技术带来了有前景的益处,但需要进一步研究以应对伦理挑战并确保负责任的实施。教育工作者、信息学家和伦理学家之间的跨学科合作对于充分实现NLP在医学教育中的潜力至关重要。