Popkin Barry M, Miles Donna R, Taillie Lindsey Smith, Dunford Elizabeth K
Department of Nutrition, Gillings Global School of Public Health, The University of North Carolina at Chapel Hill, USA.
Carolina Population Center, The University of North Carolina at Chapel Hill, USA.
Lancet Reg Health Am. 2024 Mar 8;32:100713. doi: 10.1016/j.lana.2024.100713. eCollection 2024 Apr.
Governments globally aim to reduce the intake of unhealthy foods. Many policies exist that aim to address foods high in saturated fat, salt and sugar (HFSS) but the identification of ultra-processed foods (UPF) have presented a greater challenge due to the lack of an appropriate policy definition. To support policymakers, we provide approaches that can support governments to identify both HFSS foods and UPFs.
Four approaches combining elements of UPF definitions (i.e., presence of additives) and HFSS definitions were compared attempting to simplify and standardize the identification of less healthy products. Nationally representative food purchase data from NielsenIQ linked with nutrition facts label data were used to examine the mean proportion of product volume purchased by US households to be targeted. Differences between approaches were examined using Student test; Bonferroni adjusted P value < 0.0001 was considered significant.
In 2020, 50% of 33,054,687 products purchased by US households were considered UPFs (65% of foods and 38% of beverages) and 43% HFSS (65% of foods and 26% of beverages), however there was not 100% agreement between the two definitions (P < 0.0001). By starting with HFSS criteria and adding elements of UPF (colors and flavors), we were able to provide a method with 100% agreement between the identification of UPFs and HFSS products.
Results demonstrated how combining HFSS criteria with UPF criteria can be used to identify less healthy foods and ensure policymakers have both a simple and accurate method to target products for policy intervention.
Bloomberg Philanthropies and the Global Food Research Program of UNC-Chapel Hill provided funds.
全球各国政府都旨在减少不健康食品的摄入量。存在许多旨在解决饱和脂肪、盐和糖含量高的食品(HFSS)的政策,但由于缺乏适当的政策定义,超加工食品(UPF)的识别面临更大挑战。为支持政策制定者,我们提供了可支持各国政府识别HFSS食品和UPF的方法。
比较了四种结合UPF定义(即添加剂的存在)和HFSS定义要素的方法,试图简化和标准化对不太健康产品的识别。使用来自尼尔森IQ的具有全国代表性的食品购买数据与营养成分标签数据相链接,以检查美国家庭购买的目标产品体积的平均比例。使用学生t检验检查方法之间的差异;经邦费罗尼校正的P值<0.0001被认为具有统计学意义。
2020年,美国家庭购买的33054687种产品中有50%被视为UPF(食品的65%和饮料的38%),43%为HFSS(食品的65%和饮料的26%),然而这两种定义之间并没有100%的一致性(P<0.0001)。通过从HFSS标准开始并添加UPF的要素(颜色和风味),我们能够提供一种在UPF和HFSS产品识别之间具有100%一致性的方法。
结果表明,如何将HFSS标准与UPF标准相结合,用于识别不太健康的食品,并确保政策制定者拥有一种简单而准确的方法来针对产品进行政策干预。
彭博慈善基金会和北卡罗来纳大学教堂山分校的全球食品研究项目提供了资金。