Teaching Critical Thinking in the Age of AI: Safeguarding Clinical Reasoning in Healthcare Documentation

IF 3.7 3区 医学 Q1 NURSING
Brigitte Fong Yeong Woo, Jiyoun Song, Ed Middleton, Nino Fijačko, Kenrick Cato
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引用次数: 0

Abstract

Aim

To examine the implications of large language models (LLMs) in clinical documentation and explore strategies to preserve critical thinking among healthcare professionals in the age of artificial intelligence (AI).

Background

AI-powered documentation tools, particularly those using LLMs, are being rapidly adopted in healthcare to reduce administrative burden and enhance efficiency. However, concerns are emerging about their potential to undermine clinical reasoning, individualized care, and provider well-being.

Discussion

While AI offers substantial benefits, its overuse risks promoting automation complacency, exacerbating note bloat, and diminishing clinicians’ critical thinking. Clinical documentation reflects a cognitive process central to diagnosis and care planning. Safeguarding this process requires targeted education in AI literacy, active verification of AI outputs, and deliberate training in reflective practice and clinical reasoning.

Conclusion

AI must be integrated into clinical workflows with caution and transparency. Education and governance structures must prioritize critical thinking, accuracy, and ethical practice in documentation.

Implications for Nursing Practice and Health Policy

Nurses must develop AI literacy and maintain active engagement in documentation to preserve high standards of care. Policymakers should mandate AI evaluation frameworks that include clinician cognitive load and safety, and embed AI and critical thinking education into all levels of health professional training.

人工智能时代的批判性思维教学:保障医疗保健文档中的临床推理
目的研究大型语言模型(llm)在临床文献中的意义,并探讨在人工智能(AI)时代保持医疗保健专业人员批判性思维的策略。基于人工智能的文档工具,特别是那些使用法学硕士的工具,正在医疗保健领域迅速采用,以减轻管理负担并提高效率。然而,人们越来越担心它们可能会破坏临床推理、个性化护理和提供者的福祉。虽然人工智能带来了巨大的好处,但它的过度使用可能会助长自动化的自满情绪,加剧笔记膨胀,并削弱临床医生的批判性思维。临床文献反映了诊断和护理计划中心的认知过程。维护这一进程需要有针对性地开展人工智能素养教育,积极验证人工智能输出,并在反思实践和临床推理方面进行刻意培训。结论人工智能必须谨慎透明地融入临床工作流程。教育和治理结构必须优先考虑文档中的批判性思维、准确性和道德实践。对护理实践和卫生政策的影响护士必须培养人工智能知识,并积极参与文件编制,以保持高标准的护理。政策制定者应强制制定包括临床医生认知负荷和安全性在内的人工智能评估框架,并将人工智能和批判性思维教育纳入各级卫生专业培训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.90
自引率
7.30%
发文量
72
审稿时长
6-12 weeks
期刊介绍: International Nursing Review is a key resource for nurses world-wide. Articles are encouraged that reflect the ICN"s five key values: flexibility, inclusiveness, partnership, achievement and visionary leadership. Authors are encouraged to identify the relevance of local issues for the global community and to describe their work and to document their experience.
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