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基于稳健轮廓聚类的西班牙裔社区健康研究/拉丁裔研究中的经验衍生饮食模式。

Empirically Derived Dietary Patterns Using Robust Profile Clustering in the Hispanic Community Health Study/Study of Latinos.

机构信息

Department of Biostatistics, Harvard TH Chan School of Public Health, Boston, MA, USA.

Department of Biostatistics, Gillings School of Global Public Health, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.

出版信息

J Nutr. 2020 Oct 12;150(10):2825-2834. doi: 10.1093/jn/nxaa208.

Abstract

BACKGROUND

Latent class models (LCMs) have been used in exploring dietary behaviors over a wide set of foods and beverages in a given population, but are prone to overgeneralize these habits in the presence of variation by subpopulations.

OBJECTIVES

This study aimed to highlight unique dietary consumption differences by both study site and ethnic background of Hispanic/Latino populations in the United States, that otherwise might be missed in a traditional LCM of the overall population. This was achieved using a new model-based clustering method, referred to as robust profile clustering (RPC).

METHODS

A total of 11,320 individuals aged 18-74 y from the Hispanic Community Health Study/Study of Latinos (2008-2011) with complete diet data were classified into 9 subpopulations, defined by study site (Bronx, Chicago, Miami, San Diego) and ethnic background. At baseline, dietary intake was ascertained using a food propensity questionnaire. Dietary patterns were derived from 132 food groups using the RPC method to identify patterns of the general Hispanic/Latino population and those specific to an identified subpopulation. Dietary patterns derived from the RPC were compared to those identified from an LCM.

RESULTS

The LCM identified 48 shared consumption behaviors of foods and beverages across the entire cohort, whereas significant consumption differences in subpopulations were identified in the RPC model for these same foods. Several foods were common within study site (e.g., chicken, orange juice, milk), ethnic background (e.g., papayas, plantain, coffee), or both (e.g., rice, tomatoes, seafood). Post hoc testing revealed an improved model fit in the RPC model [Deviance Information Criterion DICRPC = 2.3 × 104, DICLCM  = 9.5 × 106].

CONCLUSIONS

Dietary pattern behaviors of Hispanics/Latinos in the United States tend to align by ethnic background for some foods and by location for other foods. Consideration of both factors is imperative to better understand their contributions to population health and developing targeted nutrition intervention studies.

摘要

背景

潜类别模型(LCM)已被用于探索特定人群中广泛的食物和饮料的饮食行为,但在亚人群存在差异的情况下,这些习惯容易被过度概括。

目的

本研究旨在强调美国西班牙裔/拉丁裔人群的饮食消费差异,这些差异可能会被传统的总体人群 LCM 所忽略。这是通过一种新的基于模型的聚类方法,即稳健轮廓聚类(RPC)来实现的。

方法

共有 11320 名年龄在 18-74 岁的西班牙裔社区健康研究/拉丁裔研究(2008-2011 年)的个体,他们的饮食数据完整,这些个体根据研究地点(布朗克斯、芝加哥、迈阿密、圣地亚哥)和族裔背景分为 9 个亚群。在基线时,使用食物倾向问卷来确定饮食摄入量。使用 RPC 方法从 132 种食物组中得出饮食模式,以确定一般西班牙裔/拉丁裔人群的模式和特定于已识别亚群的模式。从 RPC 中得出的饮食模式与从 LCM 中得出的饮食模式进行了比较。

结果

LCM 确定了整个队列中 48 种共享的食物和饮料消费行为,而在 RPC 模型中,这些相同的食物在亚群中存在显著的消费差异。一些食物在研究地点内(如鸡肉、橙汁、牛奶)、族裔背景内(如木瓜、芭蕉、咖啡)或两者都有(如大米、西红柿、海鲜)是常见的。事后检验显示,RPC 模型中的模型拟合得到了改善[RPC 模型的偏差信息准则 DICRPC = 2.3×104,LCM 模型的 DICLCM = 9.5×106]。

结论

美国西班牙裔/拉丁裔的饮食模式行为在某些食物上倾向于按族裔背景排列,在其他食物上则按地点排列。考虑到这两个因素对于更好地了解它们对人群健康的贡献以及制定有针对性的营养干预研究至关重要。

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