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首页> 外文期刊>Journal of the American Dietetic Association >Validation of a dietary pattern approach for evaluating nutritional risk: the Framingham Nutrition Studies.
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Validation of a dietary pattern approach for evaluating nutritional risk: the Framingham Nutrition Studies.

机译:评估饮食风险的饮食模式方法的验证:Framingham Nutrition Studies。

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摘要

OBJECTIVE: To validate the use of cluster analysis for characterizing population dietary patterns. DESIGN: Cluster analysis was applied to a food frequency questionnaire to define dietary patterns. Independent estimates of nutrient intake were derived from 3-day food records. Heart disease risk factors were assessed using standardized protocols in a clinic setting. SETTING: Adult women (n = 1,828) participating in the Framingham Offspring-Spouse study. STATISTICAL ANALYSES: Age-adjusted mean nutrient intakes were determined for each cluster. Analysis of covariance was used to evaluate pairwise differences in intake across clusters. Compliance with published recommendations was determined for selected heart disease risk factors. Differences in age-adjusted compliance across clusters were evaluated using logistic regression. RESULTS: Cluster analysis identified 5 distinct dietary patterns characterized by unique food behaviors and significantly different nutrient intake profiles. Patterns rich in fruits, vegetables, grains, low-fat dairy, and lean protein foods resulted in higher nutrient density. Patterns rich in fatty foods, added fats, desserts, and sweets were less nutrient-dense. Women who consumed an Empty Calorie pattern were less likely to achieve compliance with clinical risk factor guidelines in contrast to most other groups of women. CONCLUSIONS: Cluster analysis is a valid tool for evaluating nutrition risk by considering overall patterns and food behaviors. This is important because dietary patterns appear to be linked with other health-related behaviors that confer risk for chronic disease. Therefore, insight into dietary behaviors of distinct clusters within a population can help to design intervention strategies for prevention and management of chronic health conditions including obesity and cardiovascular disease.
机译:目的:验证聚类分析在表征人群饮食结构中的作用。设计:将聚类分析应用于食物频率问卷以定义饮食模式。营养摄入量的独立估计值来自3天的食物记录。在临床环境中使用标准化方案评估了心脏病危险因素。地点:参加弗雷明汉后裔配偶研究的成年女性(n = 1,828)。统计分析:确定了每个群集的年龄调整后的平均营养摄入量。协方差分析用于评估跨集群摄入量的成对差异。确定是否符合选定的心脏病危险因素。使用logistic回归评估了跨集群的年龄调整后的依从性差异。结果:聚类分析确定了5种不同的饮食模式,这些饮食模式具有独特的饮食行为和明显不同的营养摄入特征。富含水果,蔬菜,谷物,低脂乳制品和瘦蛋白食品的模式导致更高的营养密度。富含脂肪食物,添加脂肪,甜点和甜点的食物营养密度较低。与大多数其他类型的女性相比,消耗空卡路里模式的女性不太可能达到临床危险因素指南的要求。结论:聚类分析是通过考虑总体模式和食物行为来评估营养风险的有效工具。这很重要,因为饮食习惯似乎与其他与健康相关的行为有关,这些行为会导致患上慢性病。因此,深入了解人群中不同群体的饮食行为可以帮助设计干预策略,以预防和管理包括肥胖症和心血管疾病在内的慢性健康状况。

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