转化式学习
问责
工程伦理学
透明度(行为)
医疗保健
持续性
劳动力
公共关系
医学教育
社会学
政治学
医学
工程类
教育学
生物
法学
生态学
作者
Russell D’Souza,Mary Mathew,Vedprakash Mishra,Krishna Mohan Surapaneni
标识
DOI:10.1080/10872981.2024.2330250
摘要
Artificial Intelligence (AI) holds immense potential for revolutionizing medical education and healthcare. Despite its proven benefits, the full integration of AI faces hurdles, with ethical concerns standing out as a key obstacle. Thus, educators should be equipped to address the ethical issues that arise and ensure the seamless integration and sustainability of AI-based interventions. This article presents twelve essential tips for addressing the major ethical concerns in the use of AI in medical education. These include emphasizing transparency, addressing bias, validating content, prioritizing data protection, obtaining informed consent, fostering collaboration, training educators, empowering students, regularly monitoring, establishing accountability, adhering to standard guidelines, and forming an ethics committee to address the issues that arise in the implementation of AI. By adhering to these tips, medical educators and other stakeholders can foster a responsible and ethical integration of AI in medical education, ensuring its long-term success and positive impact.In the ever-evolving landscape of medical education, the integration of Artificial Intelligence (AI) stands out as a revolutionary innovation with the potential to reshape learning methodologies and advance healthcare practices.However, this transformative journey is impeded by ethical concerns that demand careful attention.This reflects a delicate balance that educators must strike between embracing innovation and ensuring responsible implementation.The twelve provided tips serve as a practical guide, highlighting the complexities involved in incorporating AI ethically.By following these guidelines, educators contribute to shaping a healthcare workforce that is not only technologically proficient but also ethically grounded.
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