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肾脏病学中的大语言模型:慢性肾脏病管理中的应用与挑战

Large language models in nephrology: applications and challenges in chronic kidney disease management.

作者信息

Hu Yongzheng, Liu Jianping, Jiang Wei

机构信息

Department of Nephrology, The Affiliated Hospital of Qingdao University, Qingdao, China.

Department of medical administration, University of Health and Rehabilitation Sciences (Qingdao Municipal Hospital), Qingdao, China.

出版信息

Ren Fail. 2025 Dec;47(1):2555686. doi: 10.1080/0886022X.2025.2555686. Epub 2025 Sep 7.

DOI:10.1080/0886022X.2025.2555686
PMID:40916423
Abstract

Large language models (LLMs) represent a transformative advance in artificial intelligence, with growing potential to impact chronic kidney disease (CKD) management. CKD is a complex, highly prevalent condition requiring multifaceted care and substantial patient engagement. Recent developments in LLMs-including conversational AI, multimodal integration, and autonomous agents-offer novel opportunities to enhance patient education, streamline clinical documentation, and support decision-making across nephrology practice. Early reports suggest that LLMs can improve health literacy, facilitate adherence to complex treatment regimens, and reduce administrative burdens for clinicians. However, the rapid deployment of these technologies raises important challenges, including patient privacy, data security, model accuracy, algorithmic bias, and ethical accountability. Moreover, real-world evidence supporting the safety and effectiveness of LLMs in nephrology remains limited. Addressing these challenges will require rigorous validation, robust regulatory frameworks, and ongoing collaboration between clinicians, AI developers, and patients. As LLMs continue to evolve, future efforts should focus on the development of nephrology-specific models, prospective clinical trials, and strategies to ensure equitable and transparent implementation. If appropriately integrated, LLMs have the potential to reshape the landscape of CKD care and education, improving outcomes for patients and supporting the nephrology workforce in an era of increasing complexity.

摘要

大语言模型(LLMs)代表了人工智能领域的一项变革性进展,对慢性肾脏病(CKD)管理的影响潜力不断增大。CKD是一种复杂且高度普遍的疾病,需要多方面的护理以及患者的大量参与。大语言模型的最新进展——包括对话式人工智能、多模态整合和自主智能体——为加强患者教育、简化临床文档记录以及支持肾脏病学实践中的决策提供了新机遇。早期报告表明,大语言模型可以提高健康素养、促进对复杂治疗方案的依从性,并减轻临床医生的管理负担。然而,这些技术的快速应用带来了重要挑战,包括患者隐私、数据安全、模型准确性、算法偏差和道德责任。此外,支持大语言模型在肾脏病学中安全性和有效性的真实世界证据仍然有限。应对这些挑战将需要严格的验证、强大的监管框架,以及临床医生、人工智能开发者和患者之间的持续合作。随着大语言模型不断发展,未来的努力应聚焦于开发肾脏病学专用模型、开展前瞻性临床试验,以及确保公平和透明实施的策略。如果能得到适当整合,大语言模型有潜力重塑CKD护理和教育的格局,改善患者的治疗效果,并在日益复杂的时代为肾脏病学专业人员提供支持。

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