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通向预防致命和非致命心血管疾病的途径:基于 15 年人群队列研究的交互模型。

Pathways leading to prevention of fatal and non-fatal cardiovascular disease: An interaction model on 15 years population-based cohort study.

机构信息

School of Public Health, Isfahan University of Medical Sciences, Isfahan, Iran.

Interventional Cardiology Research Center, Cardiovascular Research Institute, Isfahan University of Medical Sciences, Isfahan, Iran.

出版信息

Lipids Health Dis. 2020 Sep 5;19(1):203. doi: 10.1186/s12944-020-01375-8.

Abstract

BACKGROUND

A comprehensive study on the interaction of cardiovascular disease (CVD) risk factors is critical to prevent cardiovascular events. The main focus of this study is thus to understand direct and indirect relationships between different CVD risk factors.

METHODS

A longitudinal data on adults aged ≥35 years, who were free of CVD at baseline, were used in this study. The endpoints were CVD events, whereas their measurements were demographic, lifestyle components, socio-economics, anthropometric measures, laboratory findings, quality of life status, and psychological factors. A Bayesian structural equation modelling was used to determine the relationships among 21 relevant factors associated with total CVD, stroke, acute coronary syndrome (ACS), and fatal CVDs.

RESULTS

In this study, a total of 3161 individuals with complete information were involved in the study. A total of 407 CVD events, with an average age of 54.77(10.66) years, occurred during follow-up. The causal associations between six latent variables were identified in the causal network for fatal and non-fatal CVDs. Lipid profile, with the coefficient of 0.26 (0.01), influenced the occurrence of CVD events as the most critical factor, while it was indirectly mediated through risky behaviours and comorbidities. Lipid profile at baseline was influenced by a wide range of other protective factors, such as quality of life and healthy lifestyle components.

CONCLUSIONS

Analysing a causal network of risk factors revealed the flow of information in direct and indirect paths. It also determined predictors and demonstrated the utility of integrating multi-factor data in a complex framework to identify novel preventable pathways to reduce the risk of CVDs.

摘要

背景

全面研究心血管疾病(CVD)风险因素的相互作用对于预防心血管事件至关重要。因此,本研究的主要重点是了解不同 CVD 风险因素之间的直接和间接关系。

方法

本研究使用了一项针对≥35 岁成年人的纵向数据,这些人在基线时无 CVD。终点是 CVD 事件,而其测量指标包括人口统计学、生活方式成分、社会经济学、人体测量学指标、实验室发现、生活质量状况和心理因素。采用贝叶斯结构方程模型来确定与总 CVD、中风、急性冠状动脉综合征(ACS)和致命 CVD 相关的 21 个相关因素之间的关系。

结果

本研究共纳入了 3161 名具有完整信息的个体。在随访期间共发生了 407 例 CVD 事件,平均年龄为 54.77(10.66)岁。在致命和非致命 CVD 的因果网络中确定了六个潜在变量之间的因果关系。脂质谱以 0.26(0.01)的系数成为影响 CVD 事件发生的最关键因素,而它通过危险行为和合并症间接介导。基线时的脂质谱受到广泛的其他保护因素的影响,如生活质量和健康的生活方式成分。

结论

分析风险因素的因果网络揭示了直接和间接路径中的信息流。它还确定了预测因素,并展示了整合多因素数据到复杂框架中以识别新的可预防途径来降低 CVD 风险的效用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/108f/7487611/5dfe5bf09eec/12944_2020_1375_Fig1_HTML.jpg

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