Review Articles

Reviews on Imaging-based Risk Prediction Models for Ischemic Stroke

  • Cui Liuping ,
  • Liu Ran ,
  • Liu Yumei ,
  • Zhou Fubo ,
  • Tao Yunlu ,
  • Xing Yingqi
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  • aDepartment of Vascular Ultrasound, Xuanwu Hospital, Capital Medical University, Beijing, China
    bBeijing Diagnostic Center of Vascular Ultrasound, Beijing, China
    cCenter of Vascular Ultrasound, Beijing Institute of Brain Disorders, Collaborative Innovation Center for Brain Disorders, Capital Medical University, Beijing, China
Department of Vascular Ultrasound, Xuanwu Hospital, Capital Medical University, 45 Changchun Road, Xicheng District, Beijing, China e-mail: xingyq2009@sina.com

Received date: 2024-10-28

  Revised date: 2024-05-27

  Accepted date: 2024-12-02

  Online published: 2025-07-06

Abstract

Stroke significantly impacts national health due to its high incidence, disability, mortality, and recurrence rates, resulting in a substantial economic burden. Risk prediction models for ischemic stroke help identify high-risk populations for early prevention, diagnosis, and treatment. Various risk-scoring models have been developed for primary and secondary prevention of ischemic stroke, estimating the probability of cardiovascular events over a specified timeframe based on the presence of known risk factors. However, these risk-scoring models often lack precision for cardiovascular disease risk assessments across diverse baseline risk conditions. Integrating image-based biomarkers into existing risk-prediction models may enhance risk stratification accuracy. This review presents the most used models for ischemic stroke prediction and underscores the clinical utility of biomarkers in the management of ischemic stroke.

Cite this article

Cui Liuping , Liu Ran , Liu Yumei , Zhou Fubo , Tao Yunlu , Xing Yingqi . Reviews on Imaging-based Risk Prediction Models for Ischemic Stroke[J]. ADVANCED ULTRASOUND IN DIAGNOSIS AND THERAPY, 2025 , 9(2) : 117 -126 . DOI: 10.37015/AUDT.2025.240018

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