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医学教育中与人工智能的伦理互动。

Ethical engagement with artificial intelligence in medical education.

作者信息

Mondal Himel

机构信息

Department of PhysiologyAll India Institute of Medical Sciences, Deoghar, Jharkhand, India.

出版信息

Adv Physiol Educ. 2025 Mar 1;49(1):163-165. doi: 10.1152/advan.00188.2024. Epub 2025 Jan 3.

Abstract

The integration of large language models (LLMs) in medical education offers both opportunities and challenges. While these artificial intelligence (AI)-driven tools can enhance access to information and support critical thinking, they also pose risks like potential overreliance and ethical concerns. To ensure ethical use, students and instructors must recognize the limitations of LLMs, maintain academic integrity, and handle data cautiously, and instructors should prioritize content quality over AI detection methods. LLMs can be used as supplementary aids rather than primary educational resources, with a focus on enhancing accessibility and equity and fostering a culture of feedback. Institutions should create guidelines that align with their unique educational values, providing clear frameworks that support responsible LLM usage while addressing risks associated with AI in education. Such guidelines should reflect the institution's pedagogical mission, whether centered on clinical practice, research, or a mix of both, and should be adaptable to evolving educational technologies.

摘要

大语言模型(LLMs)融入医学教育既带来了机遇,也带来了挑战。虽然这些由人工智能(AI)驱动的工具可以增加信息获取并支持批判性思维,但它们也带来了潜在过度依赖和伦理问题等风险。为确保道德使用,学生和教师必须认识到LLMs的局限性,维护学术诚信,谨慎处理数据,并且教师应将内容质量置于AI检测方法之上。LLMs可作为辅助工具而非主要教育资源使用,重点是提高可及性和平等性,并培养反馈文化。机构应制定与其独特教育价值观相符的指导方针,提供明确框架以支持负责任地使用LLMs,同时应对与教育中AI相关的风险。此类指导方针应反映机构的教学使命,无论是以临床实践、研究或两者结合为中心,并且应适应不断发展的教育技术。

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