School of Social and Community Medicine, University of Bristol, Oakfield House, Oakfield Grove, Clifton, Bristol BS8 2BN, UK.
Br J Nutr. 2013 May 28;109(10):1881-91. doi: 10.1017/S0007114512003868. Epub 2012 Sep 6.
Principal components analysis (PCA) is a popular method for deriving dietary patterns. A number of decisions must be made throughout the analytic process, including how to quantify the input variables of the PCA. The present study aims to compare the effect of using different input variables on the patterns extracted using PCA on 3-d diet diary data collected from 7473 children, aged 10 years, in the Avon Longitudinal Study of Parents and Children. Four options were examined: weight consumed of each food group (g/d), energy-adjusted weight, percentage contribution to energy of each food group and binary intake (consumed/not consumed). Four separate PCA were performed, one for each intake measurement. Three or four dietary patterns were obtained from each analysis, with at least one component that described 'more healthy' and 'less healthy' diets and one component that described a diet with high consumption of meat, potatoes and vegetables. There were no obvious differences between the patterns derived using percentage energy as a measurement and adjusting weight for total energy intake, compared to those derived using gram weights. Using binary input variables yielded a component that loaded positively on reduced fat and reduced sugar foods. The present results suggest that food intakes quantified by gram weights or as binary variables both resulted in meaningful dietary patterns and each method has distinct advantages: weight takes into account the amount of each food consumed and binary intake appears to describe general food preferences, which are potentially easier to modify and useful in public health settings.
主成分分析(PCA)是一种用于提取饮食模式的常用方法。在分析过程中需要做出许多决策,包括如何量化 PCA 的输入变量。本研究旨在比较使用不同输入变量对从 7473 名 10 岁儿童的 3 天饮食日记数据中提取的 PCA 模式的影响,这些数据来自阿冯纵向研究父母与子女。共检查了四种选择:每种食物组的消耗重量(克/天)、能量调整重量、每种食物组对能量的贡献百分比和二元摄入(消耗/未消耗)。对每种摄入测量进行了四次单独的 PCA,从每种分析中得到了三到四个饮食模式,至少有一个成分描述了“更健康”和“不健康”的饮食,以及一个描述了高肉类、土豆和蔬菜摄入的饮食的成分。与用总能量摄入调整重量相比,用百分比能量作为测量值和调整重量得出的模式之间没有明显差异。使用二进制输入变量会产生一个对减少脂肪和减少糖的食物有积极影响的成分。本研究结果表明,用克重或二进制变量量化的食物摄入量都产生了有意义的饮食模式,每种方法都有其独特的优势:重量考虑了每种食物的摄入量,而二进制摄入量似乎描述了一般的食物偏好,这些偏好更容易改变,在公共卫生环境中也很有用。