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Potential impacts of policies to reduce purchasing of ultra-processed foods in Mexico at different stages of the social transition: an agent-based modelling approach

Published online by Cambridge University Press:  13 December 2021

Brent A Langellier*
Affiliation:
Department of Health Management and Policy, Dornsife School of Public Health, Drexel University, 3215 Market St, Office 356, Philadelphia, PA 19104, USA
Ivana Stankov
Affiliation:
Urban Health Collaborative, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA UniSA Allied Health and Human Performance, University of South Australia, Adelaide, South Australia, Australia
Ross A Hammond
Affiliation:
Center on Social Dynamics & Policy, Brookings Institution, Washington, DC, USA Public Health and Social Policy, Washington University in St. Louis, St. Louis, MO, USA
Usama Bilal
Affiliation:
Urban Health Collaborative, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA Department of Epidemiology and Biostatistics, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA
Amy H Auchincloss
Affiliation:
Urban Health Collaborative, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA Department of Epidemiology and Biostatistics, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA
Tonatiuh Barrientos-Gutierrez
Affiliation:
Center for Population Health Research, National Institute of Public Health, Cuernavaca, México
Leticia de Oliveira Cardoso
Affiliation:
Oswaldo Cruz Foundation, Rio de Janeiro, Brazil
Ana V Diez Roux
Affiliation:
Urban Health Collaborative, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA Department of Epidemiology and Biostatistics, Dornsife School of Public Health, Drexel University, Philadelphia, PA, USA
*
* Corresponding author: Email bal95@drexel.edu
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Abstract

Objectives:

To develop a simulation framework for assessing how combinations of taxes, nutrition warning labels and advertising levels could affect purchasing of ultra-processed foods (UPF) in Latin American countries and to understand whether policies reinforce or reduce pre-existing social disparities in UPF consumption.

Design:

We developed an agent-based simulation model using international evidence regarding the effect of price, nutrition warning labels and advertising on UPF purchasing.

Setting:

We estimated policy effects in scenarios representing two stages of the ‘social transition’ in UPF purchasing: (1) a pre-transition scenario, where UPF purchasing is higher among high-income households, similar to patterns in Mexico; and (2) a post-transition scenario where UPF purchasing is highest among low-income households, similar to patterns in Chile.

Participants:

A population of 1000 individual agents with levels of age, income, educational attainment and UPF purchasing similar to adult women in Mexico.

Results:

A 20 % tax would decrease purchasing by 24 % relative to baseline in both the pre- and post-transition scenarios, an effect that is similar in magnitude to that of a nutrition warning label policy. A 50 % advertising increase or decrease had a comparatively small effect. Nutrition warning labels were most effective among those with higher levels of educational attainment. Labelling reduced inequities in the pre-transition scenario (i.e. highest UPF purchasing among the highest socio-economic group) but widened inequities in the post-transition scenario.

Conclusions:

Effective policy levers are available to reduce UPF purchasing, but policymakers should anticipate that equity impacts will differ depending on existing social patterns in UPF purchasing.

Type
Research Paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of The Nutrition Society

Ultra-processed foods (UPF) are an increasingly dominant part of the global food system(Reference Monteiro, Moubarac and Cannon1), and their availability and consumption have increased in most countries and regions(Reference Monteiro, Moubarac and Levy2Reference Cediel, Reyes and da Costa Louzada5). UPF are foods that have been developed via ‘fractioning of whole foods into substances, chemical modifications of these substances, assembly of unmodified and modified food substances, frequent use of cosmetic additives and sophisticated packaging’(Reference Monteiro, Cannon and Levy6). Engineered to maximise profit margins, convenience, shelf stability and palatability relative to unprocessed or minimally processed foods(Reference Monteiro, Cannon and Moubarac7), they tend to have more added sugar, more saturated fat, more Na, less fibre, less micronutrients and much higher energy density(Reference Monteiro, Levy and Claro8,Reference Marrón-Ponce, Flores and Cediel9) . UPF consumption is positively associated with development of obesity among youth and adults(Reference Costa, Del-Ponte and Assunção10,Reference Canella, Levy and Martins11) .

In many Latin American countries, calories from UPF contribute 20–30 % or more to total energy intake(Reference Marrón-Ponce, Sánchez-Pimienta and Louzada3,Reference Cediel, Reyes and da Costa Louzada5) . Latin American countries have been at the forefront of using policy levers to address rising UPF consumption, including UPF taxes, front-of-package nutrition warning labels and advertising restrictions(Reference Monteiro, Cannon and Levy6,Reference Monteiro, Levy and Claro8) . In 2014, Mexico implemented an 8 % tax on non-essential energy-dense foods and a peso-per-litre (roughly equivalent to 10 %) tax on sugar-sweetened beverages(Reference Colchero, Rivera-Dommarco and Popkin12,Reference Taillie, Rivera and Popkin13) . Purchasing of non-essential energy-dense foods fell 7·4 % 2 years after implementation of the tax and purchasing of taxed beverages fell 9·7 %(Reference Colchero, Rivera-Dommarco and Popkin12,Reference Taillie, Rivera and Popkin13) . Also in 2014, Chile increased an existing beverage tax from 13 % to 18 % for beverages high in sugar and reduced the tax rate from 13 % to 10 % for beverages low in sugar(Reference Caro, Ng and Taillie14). As part of a front-of-package labelling and advertising law passed in 2016, Chile was the first country in the world to mandate front-of-package nutrition labels on energy-dense foods, with other countries (including Peru and Uruguay) subsequently adopting their own labelling policies(Reference Taillie, Reyes and Colchero15,Reference Reyes, Garmendia and Olivares16) . Two years after implementation of the Chilean law, purchasing of beverages high in added sugar decreased by 23·7 %(Reference Taillie, Reyes and Colchero15). Several countries in the region have also passed policies to address high levels of UPF advertising(Reference Soares Guimarães, Mais and Marrocos Leite17Reference Correa, Reyes and Taillie19). For example, 14 % of advertisements on the major ‘free to air’ television channels in Brazil are food-related, 91 % of which are for UPF products(Reference Soares Guimarães, Mais and Marrocos Leite17).

Evaluations of these vanguard policies in Latin America suggest that policy levers can meaningfully reduce UPF consumption at the population level. A remaining question is how policies can be used without creating or exacerbating existing inequities in UPF consumption. For example, evaluation data from Chile suggest that the labelling law had larger effects among individuals with high educational attainment who had lower consumption levels even prior to the tax(Reference Taillie, Reyes and Colchero15). In contrast, the strongest impacts from the taxes implemented in Mexico were among households in the lower socio-economic strata(Reference Colchero, Popkin and Rivera20).

The equity implications of the UPF reduction policies a country implements may depend on existing social patterns in UPF consumption, which vary between countries. UPF consumption is inversely associated with socio-economic status in higher-income countries, but the reverse is true in lower- and middle-income countries(Reference Baker, Machado and Santos21). Baker and colleagues (2020) suggest that a ‘social transition’ takes place as a country’s income distribution shifts upwards(Reference Baker, Machado and Santos21). In the first stage, the highest levels of UPF consumption are among individuals in the highest socio-economic strata. As the income distribution shifts upwards, however, the highest levels of UPF consumption transition to those in the lower socio-economic groups. Different Latin American countries may be in each stage. For example, higher-income households purchase more UPF than lower-income households in Mexico(Reference Marrón-Ponce, Sánchez-Pimienta and Louzada3), but the reverse is true in Chile(Reference Taillie, Reyes and Colchero15).

Like many health behaviours, dietary choices are socially determined based on community-level social norms and social influence between peers, family members and other close social contacts(Reference Hammond, Ornstein and Fellows22,Reference Christakis and Fowler23) . Policies to reduce UPF consumption will need to reverse secular trends that have made high levels of UPF consumption normative in most Latin American countries. Social influence on dietary choices likely contributes to the production and persistence of social inequities in UPF purchasing, particularly given international research suggesting a high degree of social homophily – meaning that strong social ties are most commonly formed between individuals with similar social characteristics, including age, educational attainment and income(Reference McPherson, Smith-Lovin and Cook24Reference Marsden26). In combination, social homophily and social influence are key mechanisms that contribute to the production and persistence of inequities between groups; these inequities can either be reduced or exacerbated by policies that have differential effects across social groups(Reference Taillie, Reyes and Colchero15,Reference Colchero, Popkin and Rivera20) .

In this study, we report the results of an agent-based model developed to understand the relative effectiveness of varying combinations of UPF tax, labelling and advertising policies on UPF purchasing. We examine policy effects among a population of agents with social characteristics (age, income and educational attainment) that loosely represent female food purchasers in Mexican households. We consider policy effects in two broad scenarios: the first represents countries in which UPF purchasing is highest among high-income households (i.e. a pre-social transition in UPF purchasing similar to patterns observed in Mexico)(Reference Baker, Machado and Santos21). In the second scenario, UPF purchasing is highest among low-income households (i.e. a post-social transition scenario that represents a plausible future scenario for Mexico and is qualitatively similar to patterns observed in Chile and in high-income countries). For each policy combination, we report the population-level effects, as well as stratified effects by income and educational attainment that are helpful for understanding how policies either reduce or exacerbate differences in UPF purchasing between socio-economic strata.

Methods

Agent population and properties

We coded the model in NetLogo(Reference Wilenski27). Full details regarding model design, data sources and effect parameters are in the model sketch in Appendix 2. We simulated weekly UPF purchasing, measured in kilocalories (kcal) purchased per week, among a virtual population of 1000 individual agents with levels of age, income and educational attainment similar to those of adult women in Mexico. We selected weekly UPF purchasing in kcal because they are a widely used measure of energy intake, an important input to energy balance and weight change(Reference Hall, Sacks and Chandramohan28), and because they can be calculated across different types of UPF items (e.g. sweetened beverages, candy). We limited the population to adult women for three reasons: (1) women typically are the primary food purchasers in their household(29,Reference Lelis, Teixeira and Silva30) ; (2) adults and children have different food purchasing and consumption patterns, so focusing on adult women simplifies the parameters (e.g. distribution of UPF purchasing) and behaviour rules in the model (e.g. social signal)(Reference Marrón-Ponce, Sánchez-Pimienta and Louzada3,Reference Khandpur, Cediel and Obando4) ; and (3) research on social homophily suggests that close social ties are most common among those of the same gender – including multiple genders in the model would unnecessarily complicate the social network formation and social signal, described below(Reference McPherson, Smith-Lovin and Cook24).

Upon initialisation of the model, each agent was assigned three characteristics that are important for food behaviours and social network formation: age group (young, middle-aged and older), income and educational attainment. The age categories are intended to make a qualitative distinction between women in different life stages. We assigned one-quarter of agents to the younger and older age categories and 50 % to the middle-aged category. Based on data from the 2016 Mexican Survey of Household Income and Spending (ENIGH), the categories generally correspond to women in the following age ranges: (1) 20 to 30 years; (2) 31 to 50 years and (3) >50 years. We used data from the 2016 ENIGH to inform the initial distributions of household income and educational attainment. Specifically, 27 % of agents were assigned to the high-education category, representing at least a high school education, and 73 % to the low education category, representing less than high school. We assigned each agent a continuous household income drawn from separate log-normal distributions for those with low education (mean = 889 pesos/week, SD = 911) and high education (mean = 2044, SD = 2225). We then assigned agents with income above a threshold value (1890 pesos/week) to a high-income category and those below to the low-income category(31). We assigned both continuous and categorical income because the former is used in calculating relative UPF prices and the latter in social network formation. Agent properties and the data sources used to inform their distributions are summarised in Table A-1 in Appendix 2.

Baseline scenarios: ultra-processed food purchasing

We examined policy effects under two baseline scenarios that represent pre- v. post-stages in the social transition in UPF purchasing(Reference Baker, Machado and Santos21). For both scenarios, we used data from Marrón-Ponce et al. (2019) to inform the initial distribution of UPF purchasing(Reference Marrón-Ponce, Tolentino-Mayo and Hernández-F32). Specifically, we calibrated the mean values among low- and high-income agents to reproduce the mean weekly purchasing among all household reported by Marrón-Ponce, which was 3033 kcal/week. We calibrated the values for each income group because they were not reported by Marrón-Ponce or elsewhere. In the pre-transition scenario, the calibrated values at which we set mean UPF purchasing were 3446 kcal/week for high-income agents and 2966 kcal/week for low-income agents. This scenario is similar to existing patterns in UPF purchasing in Mexico, as reported by Marrón-Ponce. In the post-transition scenario, we set the mean calibrated UPF purchasing at 2620 kcal/week for high-income agents and at 3100 kcal/week for low-income agents. This is a counterfactual scenario for pre-transition countries, including Mexico, but is generally similar to patterns in post-transition countries, such as Chile(Reference Taillie, Reyes and Colchero15).

Social network

Agents in the model were embedded in a small world network (with average node degree of 5·47), where the connections between agents represented close friendships between women in different households. Consistent with in vivo studies of social homophily(Reference McPherson, Smith-Lovin and Cook24Reference Marsden26,Reference Verbrugge33) , agents were more likely to be connected to other agents with similar age, income and educational attainment levels. Agents had at least three and a maximum of fifty social connections. As shown in Table 1, we set the social network parameters to reproduce network characteristics similar to that reported in Chen (2019).

Table 1 Network characteristics

Characteristics of the typical network are from Chen (2019)(Reference Chen50).

Updates to ultra-processed food purchasing

Every time step, each agent in the model made a series of adjustments to her UPF purchasing level. The first adjustment represented the effects of a social signal and social norms(Reference Hammond34,Reference Hammond and Ornstein35) . The social signal can be thought of as representing processes of social learning and peer influence that occur between friends and family members(Reference Hammond34). Social norms can be thought of as individuals’ desire to adhere to group-level norms among people with similar levels of age, income and educational attainment.

For each adjustment, the agent calculated whether her own level of weekly UPF purchasing differed from the average among her social network by more than 50 kcal/week. The 50 kcal threshold represents uncertainty in people’s knowledge of the true levels of UPF purchasing of their friends. If the difference was less than the threshold, the agent made no adjustment. If the difference was greater than the threshold, she shifted towards the social signal by a fractional amount (i.e. 10 % of the difference). The same process was repeated for social norms, but each agent compared her purchasing to the average purchasing of all agents with the same levels of age (i.e. younger, middle-aged, older), income (i.e. lower and higher) and education status (i.e. lower and higher).

The second type of update that agents made was in response to UPF policy changes. We used external data to inform the magnitude of these updates. The model calculated UPF purchasing in response to price changes based on the own-price elasticity of UPF. We set the own-price elasticity of UPF to –1·2 (i.e. a 1 % increase in the price of UPF could be expected to produce a 1·2 % decline in purchasing) based on studies of price elasticities of sugar-sweetened beverages in several Latin American countries, all of which range from –1·0 to –1·4(Reference Chacon, Paraje and Barnoya36Reference Colchero, Salgado and Unar-Munguía39). Notably, this range of values is within the range of effects observed at 2 years post-implementation of the UPF taxes implemented in Mexico (i.e. a 10–12 % reduction at 2 years post-implementation of ∼10 % tax)(Reference Taillie, Rivera and Popkin13,Reference Colchero, Popkin and Rivera20,Reference Colchero, Guerrero-López and Molina40) . Based on the main evaluation study of the Chilean labelling policy(Reference Taillie, Reyes and Colchero15), we set agents’ sensitivity to labelling (i.e. the difference in purchasing caused by a switch from no label to a front-of-package label) to −22 % for low-education agents and −29 % for high-education agents. We set each agent’s sensitivity to advertising (i.e. the advertising elasticity) to 0·113 based on Hu et al. (2007)(Reference Hu, Lodish and Krieger41).This means that a 1 % increase in advertising translates to a 0·113 % increase in purchasing. In simulation scenarios with multiple policy interventions, the change in purchasing from each of the policies is summed.

Calibration

Calibration is an iterative process of making adjustments to parameter values such that model outcomes align with specified values or calibration targets. We used calibration experiments to set the values of four unknown parameters: (1) resistance to conforming to the social signal and social norms; (2) the relative importance of social similarity (e.g. same-age group) in constructing the social network; (3) the baseline level of UPF purchasing in low-income agents and (4) the baseline level of UPF purchasing in high-income agents. The first two parameters were the same in the pre- and post-social transition scenarios, and only the third and fourth differed. The calibration target we used was that the average, equilibrium state weekly household UPF purchasing at the population level must be within 5 kcal of the calibration target of 3033 kcal/week based on findings reported in Marrón-Ponce et al. (2019)(Reference Marrón-Ponce, Tolentino-Mayo and Hernández-F32). In the pre-social transition scenario, we required that low-income households had lower weekly UPF consumption than high-income households, and vice versa for the post-social transition scenario. We also required that the calibrated parameters produce unique distributions of weekly household UPF purchasing by income and that these distributions remained unique (i.e. did not fully converge) as the model ran.

Policy counterfactuals

We used the agent-based model to examine how UPF purchasing would be affected by a UPF labelling policy and UPF taxes of 8 % (actual junk food tax in Mexico), 20 % (beverage tax level considered in Mexico but not passed) and 50 % (counterfactual ‘high tax’ scenario). Several countries in the Arabian peninsula have implemented taxes of 50 % or more on sweetened beverages and excises taxes implemented in several local areas in the USA (e.g. 1·5, 1·75 and 2·0 cents per ounce in Philadelphia, Seattle and Boulder, respectively) equate to over 50 % for some products(42,Reference Cawley, Frisvold and Hill43) . These examples suggest that, though taxes in this amount have not been implemented in Latin American countries, they are of a level that could plausibly be considered by policymakers at both the local and national level. We also examined how policy effects would be impacted by increases in UPF advertising of 25 % and 50 %, representing industry responses to labelling and tax policies, as well as similar decreases in UPF advertising, representing policy restrictions on advertising. For both the pre- and post-social transition scenarios, we ran iterations of the model with no policy, with each policy implemented alone and with multiple policy combinations.

The model ran in discrete time, with each time step representing 1 week. We compared mean UPF purchasing in each scenario after 208 time steps (i.e. 4 years), not including a burn-in period of 100 time steps. The burn-in period allowed each agent to update her food purchasing until the model reached a stable state that aligned with population-level UPF purchasing trends (calibration target) reported by Marrón-Ponce et al. (2019)(Reference Marrón-Ponce, Tolentino-Mayo and Hernández-F32). We implemented policies 1 year into the simulation (i.e. after 52 time steps) and ran each scenario 200 times to account for random variation. This number of runs was determined through sensitivity analyses which suggested that only relatively small variations in weekly UPF purchasing were observed for simulations higher than 200 runs (see Appendix Fig. 2-A).

Results

In Fig. 1, we show mean UPF purchasing under different policy combinations at time steps 52 (just prior to policy implementation) and 208 (∼3 years after implementation) in both the pre- and post-social transition scenarios. In both the post- and pre-social transition scenarios, mean UPF purchasing demonstrated good fit to the average weekly UPF purchasing (i.e. 3033 kcal/week) estimated by Marrón-Ponce et al. (2019). Generally, the population-level effects of each policy were similar between the post- and pre-transition scenarios.

Fig. 1 Mean weekly purchasing of ultra-processed foods in kcal/week at time steps 52 (just prior to policy implementation) and 208 (equivalent to 3 years post-implementation), by policy scenario and stage of the social transition in UPF purchasing

Among the policies implemented alone, the 50 % tax produced the largest decrease in UPF purchasing, a decrease of about 60 % relative to the baseline in both the pre- and post-transition scenarios. The labelling policy and the 20 % tax each had similar effects when implemented alone, decreasing UPF purchasing by about 24 %. Notably, the effect of a 50 % change in advertising was much smaller than the tax or labelling policies – for example, a 50 % increase in advertising resulted in an increase in UPF purchasing by 6 %. Among policies implemented in combination, the scenario that included a 50 % tax, labelling and a 50 % reduction in advertising reduced UPF purchasing by 72 %. This scenario assumes that the amount of advertising promoting UPF purchasing would be reduced, likely through a policy change that limited or taxed industry advertising. Without any change in advertising, the 50 % tax and label policy still decreased UPF purchasing by 70 %. Even if industry responded to the tax and labelling policies by increasing advertising levels by 50 %, UPF purchasing would still be lower than the baseline scenario by 68 %.

The 8 % UPF tax, which resembles the junk food tax implemented in Mexico, decreased weekly UPF purchasing by about 10 % relative to pre-implementation levels. If Mexico were to also implement a UPF labelling policy, the model estimates a reduction in UPF purchasing by about 31 % (approximately 2000 kcal/week). Even if industry responded by increasing UPF advertising by 25 %, the reduction in UPF purchasing would be very similar (just under 30 % or approximately 2100 calories/week).

In Fig. 2, we report estimated UPF purchasing in each policy scenario at time steps 52 and 208, stratified by lower- v. higher-income strata. The left panel shows results from the pre-transition scenario in which UPF purchasing is greater in households with high income, and the right panel shows results from the post-transition scenario. Generally, the magnitude of effects of most policies is similar but not the same for each of the income strata. For example, policy scenarios in the pre-transition that include a labelling policy achieve a greater reduction among the high-income strata, which virtually eliminates the difference between income strata observed at baseline. In contrast, baseline differences between income strata in the post-transition scenario generally remain unchanged or become more pronounced after policy implementation. To facilitate these comparisons, in Fig. 3 we show the absolute difference in UPF purchasing between the low- and high-income strata at time step 208. In the pre-transition scenario, the absolute difference in UPF purchasing between the higher and lower-income strata is smaller post- v. pre-implementation of almost all policies. In the strongest policy combinations (i.e. those that include labelling and a 50 % tax), the absolute difference in UPF purchasing between those in the middle/upper v. lower-income strata is nearly eliminated. The reason is that the tax has a large effect among both groups, but the labelling policy has the largest effect among the group with the highest level of UPF purchasing.

Fig. 2 Mean weekly purchasing of ultra-processed foods in kcal/week by income strata, in a population in which UPF purchasing is greater in households with either higher income (pre-social transition, left panel) or lower income (post-social transition, left panel)

Fig. 3 Difference in weekly purchasing of ultra-processed foods between the lower and higher-income strata at time step 208, by stage of the social transition

In the post-transition scenario, the absolute difference between income strata generally stays the same or shrinks following implementation of each policy. However, the relative difference between income strata is largely unchanged or gets bigger. For example, prior to policy implementation, those in the higher-income stratum consume 138 fewer kcal/week than those in the lower stratum, which equates to a difference of 4·6 % between strata. Following implementation of the labelling policy, the difference between groups is 122 kcal/week. However, because consumption in both groups has fallen, the relative difference between strata has actually increased to about 5·4 %. In the ‘all max’ policy, the absolute difference between strata decreases to 66 kcal/week. Given the very large decrease in absolute UPF purchasing among both groups, however, this translates to a relative difference between groups of 7·8 %. In Supplemental Tables 1 and 2, we present similar results by educational attainment strata.

Discussion

We report results from an agent-based simulation model of policies to reduce UPF consumption in Latin America. Complex systems simulations – similar to the framework we presented in this study – can complement both in vivo evaluations and previous simulation studies. First, the simulation approach enabled us to consider the effects of policies that have not yet been implemented in a given country and for which there is no empirical record. Second, we considered the effects of multiple combinations of policies. An important way that the study complements in vivo studies and existing simulation research is by examining the effects of counter-advertising campaigns funded by the food and beverage industry in response to efforts to pass UPF tax and labelling policies(Reference Barquera, Campos and Rivera44,Reference Backholer, Blake and Vandevijvere45) . One of the consequences of these counter-advertising campaigns is that increases in UPF consumption caused by aggressive industry advertising may partially offset the reductions achieved by tax and labelling policies. Disentangling these effects is important for understanding the effectiveness of these policies, but difficult with in vivo methods because the policies and counter-advertising are often implemented with overlapping timing and reach. To address this, we simulated scenarios in which the food and beverage industry respond to taxes and/or labelling by increasing levels of UPF advertising. The study also differs from prior simulation studies in its examination of the equity implications of different policy combinations, which depend on pre-existing social patterns in UPF purchasing, heterogeneous policy effects and UPF-related social norms and social influence(Reference Basto-Abreu, Barrientos-Gutiérrez and Vidaña-Pérez46,Reference Liu, Osgood and Gao47) .

We explored policies among a virtual population with levels of income, education, UPF purchasing and UPF prices similar to those in Mexico, but the model is relevant and could be adapted to other Latin American countries. The model is most informative when thought of as a policy laboratory to evaluate the effects of implementing new policies or combining policies at different levels of intensity. Comparing policy options can be valuable for policymakers, as the political windows to pass major policies are often short and it may be difficult to replace or adjust ineffective policies. Similarly, policymakers often face constraints on resources and political capital. Generally, simulation studies can provide needed evidence for policies that can help policymakers choose between and justify policy choices.

Using input data from an evaluation study following the labelling law implemented in Chile and UPF price elasticities from multiple Latin American countries(Reference Taillie, Reyes and Colchero15,Reference Chacon, Paraje and Barnoya36,Reference Guerrero-López, Unar-Munguía and Colchero37,Reference Colchero, Salgado and Unar-Munguía39) , our results suggest that implementing a labelling law in a population similar to that in Mexico could reduce UPF purchasing by an amount that is roughly equivalent to that produced by a 20 % tax. The model also suggests that moderate taxation and labelling policies produce effects that would require extremely large increases in industry advertising to replicate or offset. There are two implications of this finding: First, increases in industry advertising prior to and following implementation of UPF taxes, labelling and other policies have likely not been large enough to offset policy effects(Reference Barquera, Campos and Rivera44,Reference Backholer, Blake and Vandevijvere45) but may have led to moderately attenuated estimates of policies’ effects. This is an insight generated by the model, as the effect of counter-advertising is difficult to account for in in vivo studies because advertising increases typically occur at the same time as policy implementation. A second implication is that, if faced with limited political capital, policymakers should concentrate on taxes and labelling rather than policies limiting UPF advertising towards adults. Limits on marketing towards children – which have been proposed or implemented in several countries – may be more effective.

The model is also useful for understanding how different policy combinations are likely to affect social patterns in UPF consumption. International evidence suggests that countries may undergo a social transition in which the highest levels of UPF purchasing switch from higher-income to lower-income populations as a country’s income distribution shifts upwards(Reference Baker, Machado and Santos21). Some countries in Latin America may have recently gone through this transition, while others are still in the pre-transition stage. For example, a Chilean study using data from 2010 found that UPF consumption was highest in households in higher socio-economic strata (i.e. the pre-transition pattern)(Reference Cediel, Reyes and da Costa Louzada5), but a later study found that by 2015 the highest levels of UPF consumption were among household in the lowest strata (i.e. the post-transition pattern)(Reference Taillie, Reyes and Colchero15). Our findings highlight that labelling policies – which have a larger impact among those with higher levels of education – reduce differences between social strata in pre-transition contexts (because they reduce consumption in the higher-income groups who have the highest consumption) but widen differences in post-transition contexts(Reference Taillie, Reyes and Colchero15). A promising approach may be to combine tax and labelling policies, since taxes have a larger effect on households in the lower socio-economic strata and labelling has the greatest effect on the highest socio-economic strata.

As with any simulation study, a limitation is that the insights generated are tied to the model structure and parameters. The model is agnostic as to the specific mechanisms via which UPF prices, labelling and advertising affect UPF purchasing – rather, we identified effect estimates from relevant evaluation studies and the extant literature. Use of these effect estimates is both a strength and limitation of the study: it is a strength because we do not need to specify a specific causal structure via which policies achieve their effects, which may lessen the risk of bias from misspecification. However, an assumption inherent to this approach is that the effect sizes and elasticity estimates we used are valid and relevant to the Latin American context. Generally, studies of the own-price elasticity of multiple UPF products in multiple Latin American countries produced fairly similar estimates (i.e. –1 to –1·4)(Reference Chacon, Paraje and Barnoya36Reference Colchero, Salgado and Unar-Munguía39).

Though few cities or countries have implemented mandatory UPF labelling laws, the recent evaluation study from Chile is an ideal model policy because it is likely similar to what would be passed in other Latin American countries and because the authors reported separate effect estimates by level of educational attainment. The stratified effects enabled us to assess how a labelling policy could reduce or exacerbate existing differences in UPF purchasing between social strata. Notably, the effect sizes are comparable to estimates from a meta-analysis of smaller-scale experimental studies conducted in the USA and Europe(Reference Taillie, Reyes and Colchero15). We were unable to identify a study of advertising effectiveness (i.e. the effect of exposure to advertising on food purchasing) in the Latin American context, either for food advertising or generally. We used an estimate of advertising elasticity from a meta-analysis of studies of advertising effectiveness(Reference Hu, Lodish and Krieger41). The advertising elasticity implies a level of advertising ineffectiveness that our team found surprising given that companies spend billions of dollars per year on advertising. Nonetheless, the low advertising elasticity value is consistent with other values reported in the literature, including a recent study of advertising effects across a large number of products(Reference Shapiro, Hitsch and Tuchman48). A caveat is that these studies were based on effect of television advertising, and point-of-purchase advertising, billboards, and other forms of advertising may be more effective. Given the pervasive level of UPF advertising in Latin American countries, an area for future research is evaluating the effect of different forms of UPF advertising on purchasing.

A further consideration is that the purpose of the model is to explore the effects of specific policy levers on UPF purchasing and does not include all drivers of UPF purchasing. Because we did not examine policies to change healthy food access, for example, the model is aspatial and does not consider agents’ proximity to healthy and unhealthy food retailers. Similarly, we did not consider the effects of product reformulation in response to taxes, labels and other policies(Reference Reyes, Smith Taillie and Popkin49).

In this study, we presented a framework and virtual laboratory for exploring how available public policy levers can be used – both alone and in combination – to address high levels of UPF purchasing in Latin American countries at different stages of the social transition in UPF purchasing and with different UPF prices, purchasing levels, and social characteristics. Our results using UPF price, purchasing and social data from Mexico suggest that differential effectiveness of policies can either reduce or exacerbate differences in UPF purchasing between socio-economic strata. Given evidence suggesting that countries in Latin America are at different stages of the social transition in UPF purchasing, policymakers should consider the equity implications of policy as part of the planning process.

Acknowledgements

Acknowledgements: The authors acknowledge the contribution of all SALURBAL project team members. For more information on SALURBAL and to see a full list of investigators, see https://drexel.edu/lac/salurbal/team/. Financial support: The Salud Urbana en América Latina (SALURBAL)/Urban Health in Latin America project is funded by the Wellcome Trust (205177/Z/16/Z). Conflict of interest: There are no conflicts of interest. Authorship: B.A.L. conceptualised the study, analysed input data, and drafted and edited the manuscript. I.S. conceptualised the study, coded the model, conducted formal analysis, and reviewed and edited the manuscript. R.A.H., U.B., A.H.A., T.B.-G., L.O.C. and A.V.D. conceptualised the study and reviewed and edited the manuscript. Ethics of human subject participation: The SALURBAL study protocol was approved by the Drexel University Institutional Review Board with ID #1612005035 and by appropriate site-specific IRBs.

Supplementary material

For supplementary material accompanying this paper, visit https://doi.org/10.1017/S1368980021004833

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Figure 0

Table 1 Network characteristics

Figure 1

Fig. 1 Mean weekly purchasing of ultra-processed foods in kcal/week at time steps 52 (just prior to policy implementation) and 208 (equivalent to 3 years post-implementation), by policy scenario and stage of the social transition in UPF purchasing

Figure 2

Fig. 2 Mean weekly purchasing of ultra-processed foods in kcal/week by income strata, in a population in which UPF purchasing is greater in households with either higher income (pre-social transition, left panel) or lower income (post-social transition, left panel)

Figure 3

Fig. 3 Difference in weekly purchasing of ultra-processed foods between the lower and higher-income strata at time step 208, by stage of the social transition

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