Su Zhen Liang, Shenyu Li, Ao Guan, Ruijia Xu, Mingxia Wei, Yingzhe Wang, Weiwei Shen, Yanfeng Jiang, Tiejun Zhang, Mei Cui
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引用次数: 0
Abstract
Objective: Given China's rapid population ageing and substantial stroke burden, understanding the epidemiology of vascular cognitive impairment (VCI) is critical. This study aimed to systematically evaluate VCI prevalence and incidence in China from 1980 to 2023, and explore demographic and geographic disparities.
Methods: A systematic review and meta-analysis of 81 observational studies (73 on prevalence, 10 on incidence) was conducted, analysing data from 784 846 participants for prevalence. Data were extracted from multiple databases, and studies were selected based on predefined inclusion criteria. Meta-analysis was performed using random-effects models due to high heterogeneity (I²>90%). Machine learning models (including gradient boosting machine, random forest) were employed to assess associations between demographic factors and VCI prevalence, with SHapley Additive exPlanations analysis for interpretability.
Results: Overall pooled prevalence was estimated at 1.54% (95% CI: 1.14% to 1.93%), varying significantly with age, education and region, peaking at 2.91% in those ≥80 years. Temporal trends revealed increasing prevalence from 1980 to 2023, while incidence was estimated at 0.29 per 100 person-years (95% CI: 0.21% to 0.41%), with regional disparities. Machine learning identified age, sex and survey period as key determinants of prevalence, aligning with meta-regression findings.
Conclusions: VCI poses a growing burden in China, particularly among older and less-educated populations. This analysis provides the most comprehensive assessment of VCI in China to date, underscoring demographic and regional variations. These findings highlight the need for targeted public health strategies, improved diagnostics and lifestyle interventions to address the growing burden of VCI, particularly amidst China's ageing population. Future longitudinal research integrating clinical data, biomarkers and potentially neuroimaging is warranted to better understand VCI progression and refine intervention efficacy.
期刊介绍:
Journal of Investigative Medicine (JIM) is the official publication of the American Federation for Medical Research. The journal is peer-reviewed and publishes high-quality original articles and reviews in the areas of basic, clinical, and translational medical research.
JIM publishes on all topics and specialty areas that are critical to the conduct of the entire spectrum of biomedical research: from the translation of clinical observations at the bedside, to basic and animal research to clinical research and the implementation of innovative medical care.