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基于高斯图模型分析有和无自我报告癌症诊断的韩国成年人饮食模式的差异。

Differences in Dietary Patterns Identified by the Gaussian Graphical Model in Korean Adults With and Without a Self-Reported Cancer Diagnosis.

出版信息

J Acad Nutr Diet. 2021 Aug;121(8):1484-1496.e3. doi: 10.1016/j.jand.2020.11.006. Epub 2020 Dec 5.

DOI:10.1016/j.jand.2020.11.006
PMID:33288494
Abstract

BACKGROUND

The synergistic effect of food groups on health outcomes is better captured by examining dietary patterns (DPs) than single food groups. Regarding this issue, a Gaussian graphical model (GGM) can identify pairwise correlations between food groups and adjust for the remaining items. However, the application of GGMs in the nutritional field has not been widely investigated, especially in Korean adults.

OBJECTIVE

The aim of this study was to identify the major DPs of Korean adults by using a GGM and to examine the associations between the DP scores and prevalence of self-reported cancer.

DESIGN

This cross-sectional study used baseline data from the 2007-2019 Cancer Screenee Cohort of the National Cancer Center, Korea.

PARTICIPANTS/SETTING: In total, 10,777 Korean adults who completed a questionnaire regarding their general medical history, including clinical test results, and a validated food frequency questionnaire were included.

MAIN OUTCOME MEASURES

The main outcome measure was the prevalence of self-reported cancer at baseline.

STATISTICAL ANALYSIS

DP networks were identified using a GGM. The GGM-identified networks were scored and categorized into tertiles, and their association with the prevalence of self-reported cancer was investigated using a multivariable logistic regression model.

RESULTS

The GGM identified the following 4 DP networks: principal, oil-sweet, meat, and fruit. After adjusting for covariates, the odds of moderate and high consumption of foods in the oil-sweet DP for participants who self-reported cancer were 25% and 34% lower than those for participants who did not report a cancer diagnosis (odds ratio [OR] = 0.75, 95% confidence interval [CI] = 0.62-0.90 and OR = 0.66, 95% CI = 0.53-0.81, respectively). Additionally, the odds of meat DP consumption in the self-reported cancer group was 29% lower than in participants who did not report a cancer diagnosis (OR = 0.71 and 95% CI = 0.57-0.88). In contrast, an increase in the odds of fruit DP consumption was observed for self-reported cancer participants (OR = 1.34 and 95% CI = 1.09-1.65). Similar results were observed among the female but not the male subjects.

CONCLUSIONS

GGM is a novel method that can distinguish the direct pairwise correlation of food groups and control for the indirect effect of other foods. Future large-scale longitudinal population-based studies are needed to build on these findings in general populations.

摘要

背景

与单一食物组相比,食物组的协同作用对健康结果的影响可以通过检查饮食模式(DP)更好地捕捉。关于这个问题,高斯图形模型(GGM)可以识别食物组之间的两两相关性,并调整其余项目。然而,GGM 在营养领域的应用尚未得到广泛研究,尤其是在韩国成年人中。

目的

本研究旨在使用 GGM 确定韩国成年人的主要 DP,并研究 DP 评分与自我报告癌症患病率之间的关系。

设计

这是一项使用韩国国家癌症中心 2007-2019 年癌症筛查队列的基线数据进行的横断面研究。

参与者/设置:共纳入了 10777 名完成了一般医学史问卷的韩国成年人,包括临床检查结果和经过验证的食物频率问卷。

主要观察指标

主要观察指标是基线时自我报告癌症的患病率。

统计分析

使用 GGM 识别 DP 网络。使用 GGM 识别的网络进行评分并分为三分位,并使用多变量逻辑回归模型研究它们与自我报告癌症患病率之间的关系。

结果

GGM 确定了以下 4 个 DP 网络:主要、油甜、肉和水果。调整协变量后,报告癌症的参与者中油甜 DP 中度和高度食用食物的几率分别比未报告癌症诊断的参与者低 25%和 34%(比值比[OR] = 0.75,95%置信区间[CI] = 0.62-0.90 和 OR = 0.66,95%CI = 0.53-0.81)。此外,报告癌症的参与者中肉类 DP 消费的几率比未报告癌症的参与者低 29%(OR = 0.71 和 95%CI = 0.57-0.88)。相比之下,报告癌症的参与者水果 DP 消费的几率增加(OR = 1.34 和 95%CI = 1.09-1.65)。在女性中观察到类似的结果,但在男性中没有。

结论

GGM 是一种新颖的方法,可以区分食物组的直接两两相关性,并控制其他食物的间接影响。需要在一般人群中进行更大规模的纵向人群研究来进一步验证这些发现。

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