对话
计算机科学
生成语法
生成模型
班级(哲学)
个性化学习
可扩展性
可靠性(半导体)
实证研究
教学方法
医学教育
知识管理
个性化医疗
心理学
教育技术
医学院
主动学习(机器学习)
数学教育
人工智能
计算机辅助教学
多媒体
经验证据
比例(比率)
作者
Thomas Thesen,Soo Hwan Park
标识
DOI:10.1038/s41746-025-02022-1
摘要
Medical education faces a scalability crisis, where rising class sizes strain individualized instruction, while students increasingly adopt unvalidated Generative AI (GenAI) tools for individualized learning support. This study investigated how medical students integrate constrained GenAI systems into their self-directed learning practices using Retrieval-Augmented Generation (RAG), which limits large language model responses to instructor-curated materials, thereby reducing hallucinations while maintaining pedagogical utility. We deployed a RAG-based teaching assistant in a medical school basic science course across two consecutive cohorts, examining usage patterns, conversation content, and student feedback to understand adoption and learning behaviors. Students demonstrated strategic, context-dependent usage, with engagement intensifying during high-stakes assessment periods and substantial after-hours utilization. Users primarily sought clarification on foundational concepts and valued the system's continuous availability and source-grounded responses. However, knowledge-base constraints that ensured accuracy also limited broader inquiries, creating tension between reliability and comprehensiveness that shaped how students incorporated the tool into their study routines. These findings provide empirical evidence of how medical students navigate constrained AI tools for self-directed learning, informing institutional strategies for integrating these technologies into pedagogical frameworks.
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