Center for Clinical Research and Prevention, Section for Health Promotion and Prevention, Bispebjerg and Frederiksberg Hospital, Copenhagen, Denmark.
Epidemiology and Biostatistics, Public Health and Epidemiology Group, Aalborg University Hospital, Aalborg, Denmark.
Nutr J. 2022 Sep 27;21(1):60. doi: 10.1186/s12937-022-00809-6.
Globally, unhealthy diet is one of the leading global risks to health, thus it is central to consider aspects of the food environment that are modifiable and may enable healthy eating. Food retail data can be used to present and facilitate analyses of food environments that in turn may direct strategies towards improving dietary patterns among populations. Though food retail data are available in many countries, their completeness and accuracy differ.
We applied a systematically name-based procedure combined with a manual procedure on Danish administrative food retailer data (i.e. the Smiley register) to identify, locate and classify food outlets. Food outlets were classified into the most commonly used classifications (i.e. fast food, restaurants, convenience stores, supermarkets, fruit and vegetable stores and miscellaneous) each divided into three commonly used definitions; narrow, moderate and broad. Classifications were based on branch code, name, and/or information on the internal and external appearance of the food outlet. From ground-truthing we validated the information in the register for its sensitivity and positive predictive value.
In 361 randomly selected areas of the Capital region of Denmark we identified a total of 1887 food outlets compared with 1861 identified in the register. We obtained a sensitivity of 0.75 and a positive predictive value of 0.76. Across classifications, the positive predictive values varied with highest values for the moderate and broad definitions of fast food, convenience stores and supermarkets (ranging from 0.89 to 0.97).
Information from the Smiley Register is considered to be representative to the Danish food environment and may be used for future research.
在全球范围内,不健康的饮食是对健康的主要全球风险之一,因此,考虑可改变的食物环境方面并促进健康饮食是很重要的。食品零售数据可用于呈现和促进对食品环境的分析,从而可以为改善人群的饮食模式提供指导策略。尽管许多国家都有食品零售数据,但它们的完整性和准确性有所不同。
我们应用了一种基于名称的系统程序,并结合了丹麦行政食品零售商数据(即 Smiley 登记册)的手动程序,以识别、定位和分类食品店。食品店分为最常用的分类(即快餐店、餐馆、便利店、超市、水果店和杂货店),每个分类又分为三种常用定义:狭义、中义和广义。分类是基于分支机构代码、名称以及食品店的内部和外部外观的信息。通过实地调查,我们验证了登记册中信息的敏感性和阳性预测值。
在丹麦首都地区的 361 个随机选择的区域中,我们总共确定了 1887 个食品店,而在登记册中则确定了 1861 个。我们的敏感性为 0.75,阳性预测值为 0.76。在所有分类中,阳性预测值因快餐店、便利店和超市的中义和广义定义而有所不同(范围从 0.89 到 0.97)。
Smiley 登记册中的信息被认为代表了丹麦的食品环境,可用于未来的研究。