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使用基于双重稳健机器学习的方法评估体重指数作为水果和蔬菜摄入量与子痫前期关联的修饰因素。

Use of a Doubly Robust Machine-Learning-Based Approach to Evaluate Body Mass Index as a Modifier of the Association Between Fruit and Vegetable Intake and Preeclampsia.

出版信息

Am J Epidemiol. 2022 Jul 23;191(8):1396-1406. doi: 10.1093/aje/kwac062.

DOI:10.1093/aje/kwac062
PMID:35355047
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9614933/
Abstract

The Dietary Guidelines for Americans rely on summaries of the effect of dietary pattern on disease risk, independent of other population characteristics. We explored the modifying effect of prepregnancy body mass index (BMI; weight (kg)/height (m)2) on the relationship between fruit and vegetable density (cup-equivalents/1,000 kcal) and preeclampsia using data from a pregnancy cohort study conducted at 8 US medical centers (n = 9,412; 2010-2013). Usual daily periconceptional intake of total fruits and total vegetables was estimated from a food frequency questionnaire. We quantified the effects of diets with a high density of fruits (≥1.2 cups/1,000 kcal/day vs. <1.2 cups/1,000 kcal/day) and vegetables (≥1.3 cups/1,000 kcal/day vs. <1.3 cups/1,000 kcal/day) on preeclampsia risk, conditional on BMI, using a doubly robust estimator implemented in 2 stages. We found that the protective association of higher fruit density declined approximately linearly from a BMI of 20 to a BMI of 32, by 0.25 cases per 100 women per each BMI unit, and then flattened. The protective association of higher vegetable density strengthened in a linear fashion, by 0.3 cases per 100 women for every unit increase in BMI, up to a BMI of 30, where it plateaued. Dietary patterns with a high periconceptional density of fruits and vegetables appear more protective against preeclampsia for women with higher BMI than for leaner women.

摘要

美国膳食指南依赖于饮食模式对疾病风险影响的总结,而不考虑其他人口特征。我们利用在美国 8 家医疗中心进行的一项妊娠队列研究的数据(n=9412;2010-2013 年),探讨了孕前体重指数(BMI;体重(kg)/身高(m)2)对水果和蔬菜密度(杯当量/1000 千卡)与子痫前期关系的修饰作用。从食物频率问卷中估计了总水果和总蔬菜的日常围孕期摄入量。我们使用双重稳健估计器分两阶段量化了高水果密度(≥1.2 杯/1000 千卡/天与<1.2 杯/1000 千卡/天)和高蔬菜密度(≥1.3 杯/1000 千卡/天与<1.3 杯/1000 千卡/天)饮食对子痫前期风险的影响,条件是 BMI。我们发现,较高水果密度的保护关联从 BMI 为 20 到 BMI 为 32 呈近似线性下降,每增加一个 BMI 单位,每 100 名女性中就会减少 0.25 例病例,然后趋于平稳。较高蔬菜密度的保护关联呈线性增强,每增加一个 BMI 单位,每 100 名女性中就会增加 0.3 例病例,直到 BMI 为 30 时趋于平稳。对于 BMI 较高的女性,与 BMI 较瘦的女性相比,高围孕期水果和蔬菜密度的饮食模式似乎对子痫前期更具保护作用。

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