UCD Institute of Food and Health, University College Dublin, Belfield, Dublin 4, Republic of Ireland.
Proc Nutr Soc. 2012 Nov;71(4):599-609. doi: 10.1017/S0029665112000729. Epub 2012 Aug 6.
Over the last three decades, dietary pattern analysis has come to the forefront of nutritional epidemiology, where the combined effects of total diet on health can be examined. Two analytical approaches are commonly used: a priori and a posteriori. Cluster analysis is a commonly used a posteriori approach, where dietary patterns are derived based on differences in mean dietary intake separating individuals into mutually exclusive, non-overlapping groups. This review examines the literature on dietary patterns derived by cluster analysis in adult population groups, focusing, in particular, on methodological considerations, reproducibility, validity and the effect of energy mis-reporting. There is a wealth of research suggesting that the human diet can be described in terms of a limited number of eating patterns in healthy population groups using cluster analysis, where studies have accounted for differences in sex, age, socio-economic status, geographical area and weight status. Furthermore, patterns have been used to explore relationships with health and chronic diseases and more recently with nutritional biomarkers, suggesting that these patterns are biologically meaningful. Overall, it is apparent that consistent trends emerge when using cluster analysis to derive dietary patterns; however, future studies should focus on the inconsistencies in methodology and the effect of energy mis-reporting.
在过去的三十年中,饮食模式分析已成为营养流行病学的前沿领域,可在此领域研究总饮食对健康的综合影响。目前常用两种分析方法:先验法和后验法。聚类分析是一种常用的后验方法,基于平均饮食摄入量的差异将个体分为相互排斥、不重叠的组,从而推导出饮食模式。本综述主要关注聚类分析在成年人群中得出的饮食模式的文献,特别关注方法学考虑、可重复性、有效性和能量报告错误的影响。大量研究表明,健康人群的饮食可以用聚类分析来描述为有限数量的饮食模式,这些研究考虑了性别、年龄、社会经济地位、地理位置和体重状况等差异。此外,这些模式还被用于探索与健康和慢性疾病的关系,最近还用于探索与营养生物标志物的关系,表明这些模式具有生物学意义。总体而言,当使用聚类分析得出饮食模式时,会出现一致的趋势;然而,未来的研究应集中在方法学的不一致性和能量报告错误的影响上。