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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Apr 23, 2025
Date Accepted: Oct 13, 2025

The final, peer-reviewed published version of this preprint can be found here:

Large Language Models in Critical Care Medicine: Scoping Review

Shi T, Ma J, Yu Z, Xu H, Yang R, Xiong M, Xiao M, Li Y, Zhao H, Kong G

Large Language Models in Critical Care Medicine: Scoping Review

JMIR Med Inform 2025;13:e76326

DOI: 10.2196/76326

PMID: 41284992

PMCID: 12778902

Large Language Models in Critical Care Medicine: A Scoping Review

  • Tongyue Shi; 
  • Jun Ma; 
  • Zihan Yu; 
  • Haowei Xu; 
  • Rongxin Yang; 
  • Minqi Xiong; 
  • Meirong Xiao; 
  • Yilin Li; 
  • Huiying Zhao; 
  • Guilan Kong

ABSTRACT

Background:

With the rapid development of artificial intelligence, large language models (LLMs) have shown strong capabilities in natural language understanding, reasoning, and generation, attracting much research interest in applying LLMs to health and medicine. Critical care medicine (CCM) provides diagnosis and treatment for critically ill patients who often require intensive monitoring and interventions in intensive care units. Whether LLMs can be applied to CCM, and whether they can operate as ICU experts in assisting clinical decision-making rather than ''stochastic parrots'', remains uncertain.

Objective:

This scoping review aims to provide a panoramic portrait of the application of LLMs in CCM, identifying the advantages, challenges, and future potential of LLMs in this field.

Methods:

This study was conducted in accordance with the PRISMA Extension for Scoping Reviews guidelines. Literature was searched across seven databases, including PubMed, Embase, Scopus, Web of Science, CINAHL, IEEE Xplore, and ACM Digital Library, from the first available paper to August 22, 2025.

Results:

From an initial 2,342 retrieved articles, 41 were selected for final review. LLMs played an important role in CCM through the following three main channels: clinical decision support, medical documentation and reporting, and medical education and doctor-patient communication. Compared to traditional AI models, LLMs have advantages in handling unstructured data and do not require manual feature engineering. Meanwhile, applying LLMs to CCM has faced challenges, including hallucinations and poor interpretability, sensitivity to prompts, bias and alignment challenges, and privacy and ethical issues.

Conclusions:

Although LLMs are not yet ICU experts, they have the potential to become valuable tools in CCM, helping to improve patient outcomes and optimize healthcare delivery. Future research should enhance model reliability and interpretability, improve model training and deployment scalability, integrate up-to-date medical knowledge, and strengthen privacy and ethical guidelines, paving the way for LLMs to fully realize their impact in critical care.


 Citation

Please cite as:

Shi T, Ma J, Yu Z, Xu H, Yang R, Xiong M, Xiao M, Li Y, Zhao H, Kong G

Large Language Models in Critical Care Medicine: Scoping Review

JMIR Med Inform 2025;13:e76326

DOI: 10.2196/76326

PMID: 41284992

PMCID: 12778902

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