eISSN 2097-6046
ISSN 2096-7446
CN 10-1655/R
Responsible Institution:China Association for Science and Technology
Sponsor:Chinese Nursing Association
Special Planning——Quality Improvment in Critical Care Services

Application progress and challenges of intelligent technology in rehabilitation nursing for critically ill patients

  • MA Jiahui ,
  • LIN Hongjing ,
  • ZHANG Xueli ,
  • Qin Zeyu ,
  • JIANG Nan
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Received date: 2025-03-18

  Online published: 2025-08-12

Abstract

With the deep integration of artificial intelligence,Internet of Things and wearable devices,intelligent technology is promoting the transformation of rehabilitation mode from “passive response” to “active early warning”and “precise intervention”. This paper reviews the core applications of intelligent technology in the field of critical care rehabilitation abroad in recent years,including intelligent monitoring and dynamic assessment,remote rehabilitation and rehabilitation robot-assisted work,and discusses the problems and application prospects in clinical application. It also proposes to build a three-in-one collaborative innovation framework of “technology-clinical-ethical” to meet the needs of clinical practice.

Cite this article

MA Jiahui , LIN Hongjing , ZHANG Xueli , Qin Zeyu , JIANG Nan . Application progress and challenges of intelligent technology in rehabilitation nursing for critically ill patients[J]. Chinese Journal of Emergency and Critical Care Nursing, 2025 , 6(8) : 953 -956 . DOI: 10.3761/j.issn.2096-7446.2025.08.008

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