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中国科技核心期刊

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中华重症医学电子杂志 ›› 2025, Vol. 11 ›› Issue (04) : 412 -417. doi: 10.3877/cma.j.issn.2096-1537.2025.04.013

综述

人工智能在重症护理中的应用现状及挑战
陈管洁1, 李晓青1, 孙明珠2, 陈辉1, 谢剑锋1, 徐翠荣1,()   
  1. 1 210009 南京,江苏省重症医学重点实验室 东南大学附属中大医院重症医学科
    2 222000 连云港,连云港市第一人民医院重症医学科
  • 收稿日期:2025-05-08 出版日期:2025-11-28
  • 通信作者: 徐翠荣
  • 基金资助:
    江苏省干部保健科研项目(BJ24015); 中华护理学会科研课题(ZHKYQ202415); 东南大学附属中大医院江苏省高水平医院结对帮扶建设项目(zdlyg27); 东南大学附属中大医院护理科研基金项目(KJZC-HL-202403)

Artificial intelligence in critical care: current applications and challenges

Guanjie Chen1, Xiaoqing Li1, Mingzhu Sun2, Hui Chen1, Jianfeng Xie1, Cuirong Xu1,()   

  1. 1 Jiangsu Provincial Key Laboratory of Critical Care Medicine, Department of Critical Care Medicine, Zhongda Hospital, Southeast University, Nanjing 210009, China
    2 Department of Critical Care Medicine, Lianyungang First People's Hospital, Lianyungang 222000, China
  • Received:2025-05-08 Published:2025-11-28
  • Corresponding author: Cuirong Xu
引用本文:

陈管洁, 李晓青, 孙明珠, 陈辉, 谢剑锋, 徐翠荣. 人工智能在重症护理中的应用现状及挑战[J/OL]. 中华重症医学电子杂志, 2025, 11(04): 412-417.

Guanjie Chen, Xiaoqing Li, Mingzhu Sun, Hui Chen, Jianfeng Xie, Cuirong Xu. Artificial intelligence in critical care: current applications and challenges[J/OL]. Chinese Journal of Critical Care & Intensive Care Medicine(Electronic Edition), 2025, 11(04): 412-417.

人工智能(AI)技术作为现代信息技术的新质生产力,为优化重症护理流程、提升患者安全和护理质量提供了创新路径,同时也推动了重症护理科学化和精细化发展。本文对AI在重症护理中的应用进行综述,分析目前存在的挑战并提出应对策略,为今后AI技术在重症护理中的进一步发展提供依据。

Artificial intelligence (AI) is a new quality productive forces of modern information technology. It provides innovative approaches to optimize critical care workflows and improve patient safety and quality of care. In addition, AI promotes the development of scientific and precise critical care. This article reviews AI applications in critical care, analyzes current challenges and proposes corresponding strategies to support future advances of AI technology in critical care.

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