Michels Karin B, Schulze Matthias B
Department of Epidemiology, Harvard School of Public Health, Boston, MA, USA.
Nutr Res Rev. 2005 Dec;18(2):241-8. doi: 10.1079/NRR2005107.
The role of diet in promoting health and preventing disease is difficult to elucidate due to its complex network of foods and nutrients. Besides total energy intake, dietary composition is probably the most important discriminator within and between populations. Dietary composition is reflected in dietary patterns, which have recently gained popularity. The present paper reviews the most commonly applied methods to identify dietary patterns, data-driven methods such as factor and cluster analysis, investigator-driven methods such as indices and score, and methods combining the two, namely reduced rank regression. We describe the techniques and their application, discuss strengths and limitations, and discuss the usefulness of dietary pattern analyses.
由于食物和营养素的复杂网络,饮食在促进健康和预防疾病中的作用难以阐明。除了总能量摄入外,饮食组成可能是人群内部和人群之间最重要的区分因素。饮食组成反映在饮食模式中,饮食模式最近越来越受欢迎。本文综述了识别饮食模式最常用的方法,数据驱动的方法如因子分析和聚类分析,研究者驱动的方法如指数和评分,以及将两者结合的方法,即降秩回归。我们描述了这些技术及其应用,讨论了优点和局限性,并讨论了饮食模式分析的实用性。