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International Journal of Frontiers in Medicine, 2024, 6(7); doi: 10.25236/IJFM.2024.060701.

Research progress on evaluation tools for predicting recurrence risk of ischemic stroke in China

Author(s)

Jie Liu1, Yuying Hao2, Rui Song2, Xin Yang1, Li Cao1

Corresponding Author:
Yuying Hao
Affiliation(s)

1Shaanxi University of Chinese Medicine, Xianyang, 712046, China

2Department of Nursing, Affiliated Hospital of Shaanxi University of Chinese Medicine, Xianyang, 712000, China

Abstract

By summarizing the overview, evaluation content, effect evaluation and limitations of existing models, this paper reviews some domestic models for ischemic stroke recurrence risk prediction, in order to provide reference for building a more simple, efficient and targeted ischemic stroke recurrence risk prediction model suitable for Chinese population, and at the same time, it can accurately identify patients with ischemic stroke recurrence in the early stage.

Keywords

Risk prediction; Ischemic stroke; Recrudescence; Review

Cite This Paper

Jie Liu, Yuying Hao, Rui Song, Xin Yang, Li Cao. Research progress on evaluation tools for predicting recurrence risk of ischemic stroke in China. International Journal of Frontiers in Medicine (2024), Vol. 6, Issue 7: 1-6. https://doi.org/10.25236/IJFM.2024.060701.

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