导师
工作量
透明度(行为)
可扩展性
计算机科学
课程
工作(物理)
基于问题的学习
比例(比率)
知识管理
主动学习(机器学习)
工程管理
芯(光纤)
软件工程
基于项目的学习
学习风格
核心知识
数学教育
工作流程
工程伦理学
抽象
劳动力
作者
Enjy Abouzeid,Inas Zakaria,Mohammed Alshobaily,Mohamed H. Shehata,Hany Atwa
标识
DOI:10.1080/0142159x.2026.2623964
摘要
Developing high-quality problem-based learning (PBL) cases remains a significant challenge in medical education. It is resource-intensive and competes with faculty responsibilities in teaching, clinical care, research, and administration. As a result, many institutions struggle to generate sufficient cases to sustain active learning. The emergence of artificial intelligence (AI) and large language models (LLMs) offers a potential solution. We introduced the PBL Case Builder, a customised ChatGPT application designed to guide educators through structured case creation. The builder enforces four input parameters: target audience, curriculum context, core topic, and desired complexity, before generating content, ensuring contextualisation, and pedagogical alignment. Cases are produced in a consistent format, including progressive triggers, mapped learning objectives, and tutor prompts, which educators can then refine. This shifts their role from author to reviewer, reducing workload while enhancing efficiency and consistency. This innovative solution demonstrates that AI-assisted case building can streamline development, promote adaptability, and improve transparency in pedagogical design. Future work should evaluate the educational impact of AI-generated versus human-generated (traditional) cases, explore student and faculty perceptions, and create peer-reviewed repositories to scale this innovation globally.
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