A Systematic Review and Meta-Analysis of the Predictive Power of China-PAR Against Cardiovascular Disease.

IF 1.2 Q2 MEDICINE, GENERAL & INTERNAL Clinical Medicine & Research Pub Date : 2024-03-01 DOI:10.3121/cmr.2024.1846
Qiongfang Cao, Huan Li, Xinyu Pan, Yuhan Wang, Peng Zhang, Lanying He, Jian Wang, Min Huang, Fan Xu
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Abstract

Background and Purpose: To evaluate the predictive power of the China-PAR model for cardiovascular disease (CVD).Methods: Dominate databases, including PubMed, Web of Science, CNKI, Wanfang Data Knowledge Service Platform, Chinese Biomedical Literature Service System, and VIP self-built database, were searched from January 1, 2016 to February 22, 2022. The primary outcome included observed events and predicted events by China-PAR. Meta-analysis was performed using RevMan 5.3 software. Stroke, arteriosclerotic cardiovascular disease (ASCVD), male, and female were divided into subgroup analyses. Funnel plots were used to assess publication bias.Results: A total of nine studies, which included 221,918 participants, were analyzed. Meta-analysis showed the combined observed incidence of CVD was 3.97%, and the combined predicted incidence was 9.59% by China-PAR. There was no significant difference between the observed and the predicted events. Subgroup analysis showed there was no statistical significance between the observed and the predicted events for stroke or for ASCVD. The difference between the observed and the predicted events by China-PAR was not statistically significant in either males or females.Conclusions: China-PAR model has important public health significance to further improve the primary prevention strategy of CVD.

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中国-PAR 对心血管疾病预测能力的系统回顾和荟萃分析。
背景与目的:评估中国-PAR模型对心血管疾病(CVD)的预测能力:方法:检索2016年1月1日至2022年2月22日期间的主要数据库,包括PubMed、Web of Science、CNKI、万方数据知识服务平台、中国生物医学文献服务系统和VIP自建数据库。主要结果包括观察到的事件和通过China-PAR预测的事件。使用RevMan 5.3软件进行Meta分析。对卒中、动脉硬化性心血管疾病(ASCVD)、男性和女性进行了分组分析。使用漏斗图评估发表偏倚:共分析了九项研究,包括 221 918 名参与者。元分析表明,观察到的心血管疾病综合发病率为 3.97%,中国-PAR 预测的综合发病率为 9.59%。观察到的发病率与预测的发病率之间没有明显差异。亚组分析显示,在中风或急性心血管疾病方面,观察到的发病率与预测的发病率之间没有统计学意义。在男性和女性中,China-PAR 观察到的事件与预测的事件之间的差异均无统计学意义:结论:China-PAR 模型对进一步改进心血管疾病一级预防策略具有重要的公共卫生意义。
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来源期刊
Clinical Medicine & Research
Clinical Medicine & Research MEDICINE, GENERAL & INTERNAL-
CiteScore
1.80
自引率
7.10%
发文量
25
期刊介绍: Clinical Medicine & Research is a peer reviewed publication of original scientific medical research that is relevant to a broad audience of medical researchers and healthcare professionals. Articles are published quarterly in the following topics: -Medicine -Clinical Research -Evidence-based Medicine -Preventive Medicine -Translational Medicine -Rural Health -Case Reports -Epidemiology -Basic science -History of Medicine -The Art of Medicine -Non-Clinical Aspects of Medicine & Science
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