Natasha Clarke, Emily Pechey, Ian Shemilt, Mark Pilling, Nia W Roberts, Theresa M Marteau, Susan A Jebb, Gareth J Hollands
{"title":"Calorie (energy) labelling for changing selection and consumption of food or alcohol.","authors":"Natasha Clarke, Emily Pechey, Ian Shemilt, Mark Pilling, Nia W Roberts, Theresa M Marteau, Susan A Jebb, Gareth J Hollands","doi":"10.1002/14651858.CD014845.pub2","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Overconsumption of food and consumption of any amount of alcohol increases the risk of non-communicable diseases. Calorie (energy) labelling is advocated as a means to reduce energy intake from food and alcoholic drinks. However, there is continued uncertainty about these potential impacts, with a 2018 Cochrane review identifying only a small body of low-certainty evidence. This review updates and extends the 2018 Cochrane review to provide a timely reassessment of evidence for the effects of calorie labelling on people's selection and consumption of food or alcoholic drinks.</p><p><strong>Objectives: </strong>- To estimate the effect of calorie labelling for food (including non-alcoholic drinks) and alcoholic drinks on selection (with or without purchasing) and consumption. - To assess possible modifiers - label type, setting, and socioeconomic status - of the effect of calorie labelling on selection (with or without purchasing) and consumption of food and alcohol.</p><p><strong>Search methods: </strong>We searched CENTRAL, MEDLINE, Embase, PsycINFO, five other published or grey literature databases, trial registries, and key websites, followed by backwards and forwards citation searches. Using a semi-automated workflow, we searched for and selected records and corresponding reports of eligible studies, with these searches current to 2 August 2021. Updated searches were conducted in September 2023 but their results are not fully integrated into this version of the review.</p><p><strong>Selection criteria: </strong>Eligible studies were randomised controlled trials (RCTs) or quasi-RCTs with between-subjects (parallel group) or within-subjects (cross-over) designs, interrupted time series studies, or controlled before-after studies comparing calorie labelling with no calorie labelling, applied to food (including non-alcoholic drinks) or alcoholic drinks. Eligible studies also needed to objectively measure participants' selection (with or without purchasing) or consumption, in real-world, naturalistic laboratory, or laboratory settings.</p><p><strong>Data collection and analysis: </strong>Two review authors independently selected studies for inclusion and extracted study data. We applied the Cochrane RoB 2 tool and ROBINS-I to assess risk of bias in included studies. Where possible, we used (random-effects) meta-analyses to estimate summary effect sizes as standardised mean differences (SMDs) with 95% confidence intervals (CIs), and subgroup analyses to investigate potential effect modifiers, including study, intervention, and participant characteristics. We synthesised data from other studies in a narrative summary. We rated the certainty of evidence using GRADE.</p><p><strong>Main results: </strong>We included 25 studies (23 food, 2 alcohol and food), comprising 18 RCTs, one quasi-RCT, two interrupted time series studies, and four controlled before-after studies. Most studies were conducted in real-world field settings (16/25, with 13 of these in restaurants or cafeterias and three in supermarkets); six studies were conducted in naturalistic laboratories that attempted to mimic a real-world setting; and three studies were conducted in laboratory settings. Most studies assessed the impact of calorie labelling on menus or menu boards (18/25); six studies assessed the impact of calorie labelling directly on, or placed adjacent to, products or their packaging; and one study assessed labels on both menus and on product packaging. The most frequently assessed labelling type was simple calorie labelling (20/25), with other studies assessing calorie labelling with information about at least one other nutrient, or calories with physical activity calorie equivalent (PACE) labelling (or both). Twenty-four studies were conducted in high-income countries, with 15 in the USA, six in the UK, one in Ireland, one in France, and one in Canada. Most studies (18/25) were conducted in high socioeconomic status populations, while six studies included both low and high socioeconomic groups, and one study included only participants from low socioeconomic groups. Twenty-four studies included a measure of selection of food (with or without purchasing), most of which measured selection with purchasing (17/24), and eight studies included a measure of consumption of food. Calorie labelling of food led to a small reduction in energy selected (SMD -0.06, 95% CI -0.08 to -0.03; 16 randomised studies, 19 comparisons, 9850 participants; high-certainty evidence), with near-identical effects when including only studies at low risk of bias, and when including only studies of selection with purchasing. There may be a larger reduction in consumption (SMD -0.19, 95% CI -0.33 to -0.05; 8 randomised studies, 10 comparisons, 2134 participants; low-certainty evidence). These effect sizes suggest that, for an average meal of 600 kcal, adults exposed to calorie labelling would select 11 kcal less (equivalent to a 1.8% reduction), and consume 35 kcal less (equivalent to a 5.9% reduction). The direction of effect observed in the six non-randomised studies was broadly consistent with that observed in the 16 randomised studies. Only two studies focused on alcoholic drinks, and these studies also included a measure of selection of food (including non-alcoholic drinks). Their results were inconclusive, with inconsistent effects and wide 95% CIs encompassing both harm and benefit, and the evidence was of very low certainty.</p><p><strong>Authors' conclusions: </strong>Current evidence suggests that calorie labelling of food (including non-alcoholic drinks) on menus, products, and packaging leads to small reductions in energy selected and purchased, with potentially meaningful impacts on population health when applied at scale. The evidence assessing the impact of calorie labelling of food on consumption suggests a similar effect to that observed for selection and purchasing, although there is less evidence and it is of lower certainty. There is insufficient evidence to estimate the effect of calorie labelling of alcoholic drinks, and more high-quality studies are needed. Further research is needed to assess potential moderators of the intervention effect observed for food, particularly socioeconomic status. Wider potential effects of implementation that are not assessed by this review also merit further examination, including systemic impacts of calorie labelling on industry actions, and potential individual harms and benefits.</p>","PeriodicalId":10473,"journal":{"name":"Cochrane Database of Systematic Reviews","volume":"1 ","pages":"CD014845"},"PeriodicalIF":8.8000,"publicationDate":"2025-01-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11738108/pdf/","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Cochrane Database of Systematic Reviews","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.1002/14651858.CD014845.pub2","RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"MEDICINE, GENERAL & INTERNAL","Score":null,"Total":0}
引用次数: 0
Abstract
Background: Overconsumption of food and consumption of any amount of alcohol increases the risk of non-communicable diseases. Calorie (energy) labelling is advocated as a means to reduce energy intake from food and alcoholic drinks. However, there is continued uncertainty about these potential impacts, with a 2018 Cochrane review identifying only a small body of low-certainty evidence. This review updates and extends the 2018 Cochrane review to provide a timely reassessment of evidence for the effects of calorie labelling on people's selection and consumption of food or alcoholic drinks.
Objectives: - To estimate the effect of calorie labelling for food (including non-alcoholic drinks) and alcoholic drinks on selection (with or without purchasing) and consumption. - To assess possible modifiers - label type, setting, and socioeconomic status - of the effect of calorie labelling on selection (with or without purchasing) and consumption of food and alcohol.
Search methods: We searched CENTRAL, MEDLINE, Embase, PsycINFO, five other published or grey literature databases, trial registries, and key websites, followed by backwards and forwards citation searches. Using a semi-automated workflow, we searched for and selected records and corresponding reports of eligible studies, with these searches current to 2 August 2021. Updated searches were conducted in September 2023 but their results are not fully integrated into this version of the review.
Selection criteria: Eligible studies were randomised controlled trials (RCTs) or quasi-RCTs with between-subjects (parallel group) or within-subjects (cross-over) designs, interrupted time series studies, or controlled before-after studies comparing calorie labelling with no calorie labelling, applied to food (including non-alcoholic drinks) or alcoholic drinks. Eligible studies also needed to objectively measure participants' selection (with or without purchasing) or consumption, in real-world, naturalistic laboratory, or laboratory settings.
Data collection and analysis: Two review authors independently selected studies for inclusion and extracted study data. We applied the Cochrane RoB 2 tool and ROBINS-I to assess risk of bias in included studies. Where possible, we used (random-effects) meta-analyses to estimate summary effect sizes as standardised mean differences (SMDs) with 95% confidence intervals (CIs), and subgroup analyses to investigate potential effect modifiers, including study, intervention, and participant characteristics. We synthesised data from other studies in a narrative summary. We rated the certainty of evidence using GRADE.
Main results: We included 25 studies (23 food, 2 alcohol and food), comprising 18 RCTs, one quasi-RCT, two interrupted time series studies, and four controlled before-after studies. Most studies were conducted in real-world field settings (16/25, with 13 of these in restaurants or cafeterias and three in supermarkets); six studies were conducted in naturalistic laboratories that attempted to mimic a real-world setting; and three studies were conducted in laboratory settings. Most studies assessed the impact of calorie labelling on menus or menu boards (18/25); six studies assessed the impact of calorie labelling directly on, or placed adjacent to, products or their packaging; and one study assessed labels on both menus and on product packaging. The most frequently assessed labelling type was simple calorie labelling (20/25), with other studies assessing calorie labelling with information about at least one other nutrient, or calories with physical activity calorie equivalent (PACE) labelling (or both). Twenty-four studies were conducted in high-income countries, with 15 in the USA, six in the UK, one in Ireland, one in France, and one in Canada. Most studies (18/25) were conducted in high socioeconomic status populations, while six studies included both low and high socioeconomic groups, and one study included only participants from low socioeconomic groups. Twenty-four studies included a measure of selection of food (with or without purchasing), most of which measured selection with purchasing (17/24), and eight studies included a measure of consumption of food. Calorie labelling of food led to a small reduction in energy selected (SMD -0.06, 95% CI -0.08 to -0.03; 16 randomised studies, 19 comparisons, 9850 participants; high-certainty evidence), with near-identical effects when including only studies at low risk of bias, and when including only studies of selection with purchasing. There may be a larger reduction in consumption (SMD -0.19, 95% CI -0.33 to -0.05; 8 randomised studies, 10 comparisons, 2134 participants; low-certainty evidence). These effect sizes suggest that, for an average meal of 600 kcal, adults exposed to calorie labelling would select 11 kcal less (equivalent to a 1.8% reduction), and consume 35 kcal less (equivalent to a 5.9% reduction). The direction of effect observed in the six non-randomised studies was broadly consistent with that observed in the 16 randomised studies. Only two studies focused on alcoholic drinks, and these studies also included a measure of selection of food (including non-alcoholic drinks). Their results were inconclusive, with inconsistent effects and wide 95% CIs encompassing both harm and benefit, and the evidence was of very low certainty.
Authors' conclusions: Current evidence suggests that calorie labelling of food (including non-alcoholic drinks) on menus, products, and packaging leads to small reductions in energy selected and purchased, with potentially meaningful impacts on population health when applied at scale. The evidence assessing the impact of calorie labelling of food on consumption suggests a similar effect to that observed for selection and purchasing, although there is less evidence and it is of lower certainty. There is insufficient evidence to estimate the effect of calorie labelling of alcoholic drinks, and more high-quality studies are needed. Further research is needed to assess potential moderators of the intervention effect observed for food, particularly socioeconomic status. Wider potential effects of implementation that are not assessed by this review also merit further examination, including systemic impacts of calorie labelling on industry actions, and potential individual harms and benefits.
背景:过度食用食物和摄入任何数量的酒精都会增加非传染性疾病的风险。提倡将卡路里(能量)标签作为减少从食物和酒精饮料中摄入能量的一种手段。然而,这些潜在的影响仍然存在不确定性,2018年的Cochrane综述只发现了一小部分低确定性的证据。本综述更新并扩展了2018年Cochrane综述,及时重新评估了卡路里标签对人们选择和消费食物或酒精饮料的影响的证据。目标:-评估食品(包括非酒精饮料)和酒精饮料的卡路里标签对选择(购买或不购买)和消费的影响。-评估卡路里标签对食品和酒精的选择(有或没有购买)和消费的影响的可能修饰因素——标签类型、设置和社会经济地位。检索方法:检索了CENTRAL、MEDLINE、Embase、PsycINFO、其他5个已发表或灰色文献数据库、试验注册库和关键网站,然后进行了前后引文检索。使用半自动化的工作流程,我们检索并选择了符合条件的研究的记录和相应的报告,这些检索截止到2021年8月2日。2023年9月进行了更新搜索,但其结果并未完全纳入本版本的综述。入选标准:适用于食品(包括非酒精饮料)或酒精饮料的随机对照试验(rct)或准rct,采用受试者间(平行组)或受试者内(交叉)设计、中断时间序列研究或对照卡路里标签与无卡路里标签的前后对照研究。合格的研究还需要客观地衡量参与者在现实世界、自然主义实验室或实验室环境中的选择(有或没有购买)或消费。资料收集和分析:两位综述作者独立选择研究纳入并提取研究数据。我们应用Cochrane RoB 2工具和ROBINS-I评估纳入研究的偏倚风险。在可能的情况下,我们使用(随机效应)荟萃分析来估计95%置信区间(ci)的标准化平均差异(smd)的总效应大小,并使用亚组分析来调查潜在的效应调节因素,包括研究、干预和参与者特征。我们综合了其他研究的数据,形成了一个叙述性的摘要。我们使用GRADE对证据的确定性进行评级。主要结果:我们纳入了25项研究(23项食物研究,2项酒精和食物研究),包括18项随机对照试验,1项准随机对照试验,2项中断时间序列研究和4项前后对照研究。大多数研究是在现实世界的实地环境中进行的(16/25,其中13个在餐馆或自助餐厅,3个在超市);六项研究在自然主义实验室进行,试图模仿现实世界的环境;三个研究是在实验室环境下进行的。大多数研究评估了菜单或菜单板上的卡路里标签的影响(18/25);六项研究评估了直接贴在产品或其包装上或贴在产品或其包装旁边的卡路里标签的影响;一项研究评估了菜单和产品包装上的标签。最常被评估的标签类型是简单的卡路里标签(20/25),还有其他研究评估卡路里标签上至少有一种其他营养素的信息,或者卡路里标签上有身体活动卡路里当量(PACE)的标签(或两者都有)。24项研究在高收入国家进行,其中15项在美国,6项在英国,1项在爱尔兰,1项在法国,1项在加拿大。大多数研究(18/25)是在高社会经济地位人群中进行的,而6项研究同时包括低社会经济群体和高社会经济群体,一项研究仅包括低社会经济群体的参与者。24项研究包括对食物选择(有或没有购买)的测量,其中大多数测量了购买的选择(17/24),8项研究包括对食物消费的测量。食物的卡路里标签导致能量选择的小幅减少(SMD -0.06, 95% CI -0.08至-0.03;16项随机研究,19项比较,9850名受试者;高确定性证据),当只包括低偏倚风险的研究和只包括选择与购买的研究时,效果几乎相同。可能有更大的消耗减少(SMD -0.19, 95% CI -0.33至-0.05;8项随机研究,10项比较,2134名受试者;确定性的证据)。这些效应量表明,对于平均600千卡的一餐,接触到卡路里标签的成年人会少选择11千卡(相当于减少1.8%),并少摄入35千卡(相当于减少5.9%)。
期刊介绍:
The Cochrane Database of Systematic Reviews (CDSR) stands as the premier database for systematic reviews in healthcare. It comprises Cochrane Reviews, along with protocols for these reviews, editorials, and supplements. Owned and operated by Cochrane, a worldwide independent network of healthcare stakeholders, the CDSR (ISSN 1469-493X) encompasses a broad spectrum of health-related topics, including health services.