eISSN 2097-6046
ISSN 2096-7446
CN 10-1655/R
Responsible Institution:China Association for Science and Technology
Sponsor:Chinese Nursing Association

Chinese Journal of Emergency and Critical Care Nursing ›› 2026, Vol. 7 ›› Issue (6): 755-763.doi: 10.3761/j.issn.2096-7446.2026.06.020

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A scoping review of risk prediction models for cognitive impairment after ischemic stroke

ZHAO Wanchen1(), ZHANG Hui1, FANG Yifan1, MA Cong1, GUO Na2,*()   

  1. 1 Department of NursingPeking Union Medical College Hospital,Chinese Academy of Medical SciencesBeijing 100730, China
    2 Organizational DepartmentPeking Union Medical College Hospital,Chinese Academy of Medical SciencesBeijing 100730, China
  • Received:2025-08-10 Online:2026-06-10 Published:2026-06-02
  • Contact: GUO Na E-mail:1640182890@qq.com;guonauss@163.com
  • Supported by:
    Peking Union Medical College Hospital Clinical Research Special Project(2022-PUMCH-B-031)

Abstract:

Objective To conduct a scoping review of risk prediction models for cognitive impairment after ischemic stroke both domestically and internationally,aiming to provide references for clinical nursing practice and subsequent research. Methods A comprehensive search was conducted in 9 Chinese and English databases from the establishment of the databases to March 2,2025. The incidence of cognitive impairment after ischemic stroke,the predictive factors included in the models,the modeling methods,and performance indicators were extracted and summarized. Results A total of 24 studies were included. The incidence of cognitive impairment after ischemic stroke ranged from 30.4% to 57.4%. The number of predictive factors included in each study ranged from 1 to 17,with age and education level were the most frequently included factors. The modeling methods were logistic regression and machine learning. The area under the curve(AUC) values of the included models ranged from 0.65 to 0.98. Conclusion The existing models generally have a high risk of bias and significant performance differences. In the future,the quality of models should be comprehensively enhanced through reasonable inclusion of predictive factors,proper handling of missing data,and strengthening of internal validation and external validation.

Key words: Ischemic Stroke, Stroke, Cognitive Impairment, Risk Prediction, Scoping Review, Nursing Care