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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Feb 13, 2025
Date Accepted: Oct 8, 2025

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

Predicting Delayed Extubation After General Anesthesia in Postanesthesia Care Unit Patients Using Machine Learning: Model Development Study

Luo J, Ling S, Wang L, Ji H, Zheng J, Wang T, Chen L, Lin Z, Liu Z, Liu F

Predicting Delayed Extubation After General Anesthesia in Postanesthesia Care Unit Patients Using Machine Learning: Model Development Study

JMIR Med Inform 2025;13:e72602

DOI: 10.2196/72602

PMID: 41218185

PMCID: 12604829

Predicting Delayed Extubation After General Anesthesia in PACU Patients Using Machine Learning: Model Development

  • Jianwei Luo; 
  • Shaoman Ling; 
  • Liman Wang; 
  • Huanfan Ji; 
  • Jingcong Zheng; 
  • Tingkang Wang; 
  • Lin Chen; 
  • Ziqi Lin; 
  • Zhongqi Liu; 
  • Funing Liu

ABSTRACT

Background:

Delayed extubation after general anesthesia increases complications like longer hospital stays and higher mortality. Current risk assessments often rely on subjective judgment or simple tools, while machine learning offers potential for real-time evaluation, though research is limited and typically uses single-algorithm models.

Objective:

The aim of this study were to identify the risk factors for delayed extubation after general anesthesia in the sample and to construct a risk prediction model for delayed extubation in this population.

Methods:

Data from 4779 patients admitted to the PACU between September 2023 and May 2024 were used to develop prediction models for delayed extubation using K-Nearest Neighbor, Decision Tree, Extreme Gradient Boosting, Random Forest, LightGBM, and Neural Networks. Model performance was assessed using AUROC, Sensitivity, and Specificity.

Results:

The XGBoost model showed the highest AUROC (0.766), Sensitivity (0.911), and Specificity (0.551). Shapley Additive Explanations ranked feature importance.

Conclusions:

These machine learning models enable early identification of delayed extubation risk, supporting personalized clinical decisions and optimizing PACU resource allocation. Clinical Trial: This study was approved by the Chinese Clinical Trial Registry (ChiCTR2400090247).


 Citation

Please cite as:

Luo J, Ling S, Wang L, Ji H, Zheng J, Wang T, Chen L, Lin Z, Liu Z, Liu F

Predicting Delayed Extubation After General Anesthesia in Postanesthesia Care Unit Patients Using Machine Learning: Model Development Study

JMIR Med Inform 2025;13:e72602

DOI: 10.2196/72602

PMID: 41218185

PMCID: 12604829

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