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多种膳食成分与心血管疾病风险的联合关联:一种机器学习方法。

Joint Associations of Multiple Dietary Components With Cardiovascular Disease Risk: A Machine-Learning Approach.

出版信息

Am J Epidemiol. 2021 Jul 1;190(7):1353-1365. doi: 10.1093/aje/kwab004.

DOI:10.1093/aje/kwab004
PMID:33521815
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8245893/
Abstract

The human diet consists of a complex mixture of components. To realistically assess dietary impacts on health, new statistical tools that can better address nonlinear, collinear, and interactive relationships are necessary. Using data from 1,928 healthy participants in the Coronary Artery Risk Development in Young Adults (CARDIA) cohort (1985-2006), we explored the association between 12 dietary factors and 10-year predicted risk of atherosclerotic cardiovascular disease (ASCVD) using an innovative approach, Bayesian kernel machine regression (BKMR). Employing BKMR, we found that among women, unprocessed red meat was most strongly related to the outcome: An interquartile range increase in unprocessed red meat consumption was associated with a 0.07-unit (95% credible interval: 0.01, 0.13) increase in ASCVD risk when intakes of other dietary components were fixed at their median values (similar results were obtained when other components were fixed at their 25th and 75th percentile values). Among men, fruits had the strongest association: An interquartile range increase in fruit consumption was associated with -0.09-unit (95% credible interval (CrI): -0.16, -0.02), -0.10-unit (95% CrI: -0.16, -0.03), and -0.11-unit (95% CrI: -0.18, -0.04) lower ASCVD risk when other dietary components were fixed at their 25th, 50th (median), and 75th percentile values, respectively. Using BKMR to explore the complex structure of the total diet, we found distinct sex-specific diet-ASCVD relationships and synergistic interaction between whole grain and fruit consumption.

摘要

人类饮食由复杂的成分组成。为了真实评估饮食对健康的影响,我们需要新的统计工具,这些工具可以更好地处理非线性、共线性和交互关系。利用来自 1985 年至 2006 年期间 1928 名健康的“冠状动脉风险发展青年”(CARDIA)队列参与者的数据,我们使用一种创新的方法——贝叶斯核机器回归(BKMR),探索了 12 种饮食因素与 10 年预测的动脉粥样硬化性心血管疾病(ASCVD)风险之间的关联。通过使用 BKMR,我们发现,在女性中,未加工的红肉与结果的关系最为密切:当其他饮食成分的摄入量固定在中位数时,未加工的红肉摄入量每增加一个四分位距,ASCVD 风险就会增加 0.07 个单位(95%可信区间:0.01,0.13)(当其他成分固定在第 25 和 75 百分位值时,也得到了类似的结果)。在男性中,水果的关联最强:当其他饮食成分的摄入量固定在第 25、50(中位数)和 75 百分位值时,水果摄入量每增加一个四分位距,ASCVD 风险就会分别降低 0.09 个单位(95%可信区间(CrI):-0.16,-0.02)、0.10 个单位(95% CrI:-0.16,-0.03)和 0.11 个单位(95% CrI:-0.18,-0.04)。使用 BKMR 探索总饮食的复杂结构,我们发现了性别特异性的饮食与 ASCVD 之间的关系以及全谷物和水果消费之间的协同相互作用。

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