Mason Marc A, Fanelli Kuczmarski Marie, Allegro Deanne, Zonderman Alan B, Evans Michele K
1Laboratory of Epidemiology and Population Sciences,National Institute on Aging,National Institutes of Health,Baltimore,MD USA.
2Department of Behavioral Health and Nutrition,010 Carpenter Sports Building,University of Delaware,Newark,DE 19716,USA.
Public Health Nutr. 2015 Aug;18(11):1922-31. doi: 10.1017/S1368980014002687. Epub 2014 Dec 1.
Analysing dietary data to capture how individuals typically consume foods is dependent on the coding variables used. Individual foods consumed simultaneously, like coffee with milk, are given codes to identify these combinations. Our literature review revealed a lack of discussion about using combination codes in analysis. The present study identified foods consumed at mealtimes and by race when combination codes were or were not utilized.
Duplicate analysis methods were performed on separate data sets. The original data set consisted of all foods reported; each food was coded as if it was consumed individually. The revised data set was derived from the original data set by first isolating coded foods consumed as individual items from those foods consumed simultaneously and assigning a code to designate a combination. Foods assigned a combination code, like pancakes with syrup, were aggregated and associated with a food group, defined by the major food component (i.e. pancakes), and then appended to the isolated coded foods.
Healthy Aging in Neighborhoods of Diversity across the Life Span study.
African-American and White adults with two dietary recalls (n 2177).
Differences existed in lists of foods most frequently consumed by mealtime and race when comparing results based on original and revised data sets. African Americans reported consumption of sausage/luncheon meat and poultry, while ready-to-eat cereals and cakes/doughnuts/pastries were reported by Whites on recalls.
Use of combination codes provided more accurate representation of how foods were consumed by populations. This information is beneficial when creating interventions and exploring diet-health relationships.
分析饮食数据以了解个体通常如何食用食物取决于所使用的编码变量。同时食用的单一食物,如加牛奶的咖啡,会被赋予编码以识别这些组合。我们的文献综述显示,在分析中使用组合编码缺乏相关讨论。本研究确定了在使用或不使用组合编码时,按用餐时间和种族划分所食用的食物。
对不同数据集采用重复分析方法。原始数据集包含所有报告的食物;每种食物都被编码为好像是单独食用的。修订后的数据集源自原始数据集,方法是首先将作为单一食物食用的编码食物与同时食用的食物区分开来,并为组合食物指定一个编码。被赋予组合编码的食物,如搭配糖浆的煎饼,被汇总并与一个食物类别相关联,该类别由主要食物成分(即煎饼)定义,然后附加到单独编码的食物中。
全生命周期多元社区健康老龄化研究。
有两次饮食回忆记录的非裔美国人和白人成年人(n = 2177)。
在比较基于原始数据集和修订后数据集的结果时,按用餐时间和种族划分的最常食用食物清单存在差异。非裔美国人报告食用香肠/午餐肉和家禽,而白人在回忆中报告食用即食谷物和蛋糕/甜甜圈/糕点。
使用组合编码能更准确地反映人群食用食物的方式。这些信息在制定干预措施和探索饮食与健康的关系时很有用。