The increases in energy intake and obesity levels observed in many countries over recent decades have occurred in parallel with increased snacking behaviour(Reference de Graaf1, Reference Zizza, Siega-Riz and Popkin2). One key factor that may have contributed to the increase in snacking behaviour is greater opportunity to purchase snack foods(Reference Brug3). In urban residential environments, opportunities to purchase snack foods are influenced both by exposure to those food outlets that stock these products (known as the ‘community nutrition environment’) as well as by exposure to features within stores that impact on purchasing decisions, including the availability, variety, price, placement and promotion of snack foods (known as the ‘consumer nutrition environment’)(Reference Glanz, Sallis and Saelens4). A link between food availability and purchasing behaviour has previously been demonstrated, with Cheadle et al. reporting a strong relationship between the availability of healthy products such as low-fat milk and their consumption by individuals living nearby(Reference Cheadle, Psaty and Curry5).
Supermarkets form an important component of the nutrition environment. In Australia, 63 % of all food spending occurs in supermarkets(Reference Spencer and Kneebone6), with the two dominant supermarket chains (ranked the 20th and 23rd largest global retailers)(7) having a 68 % market share of all supermarket and liquor retail sales(Reference Spencer and Kneebone6). In relation to snack foods, previous reports suggest that almost twice as much supermarket shelf space is dedicated to unhealthy snack foods in comparison to fruits and vegetables in some US supermarkets(Reference Farley, Rice and Bodor8). Given the level of exposure to snack foods within supermarkets and the volume of sales they generate, the nutrition environment of supermarkets has the potential to significantly influence the eating behaviours of populations.
Both the consumer and community nutrition environments are known to vary by area-level disadvantage(Reference Thornton and Kavanagh9). These differences may either enhance or restrict the opportunity for local residents to eat healthily. Most previous research on supermarket food availability has focused on healthier items (e.g. fruits and vegetables), with some studies finding a relationship between level of disadvantage and variety of fruits and vegetables(Reference Ball, Timperio and Crawford10) but others failing to demonstrate this(Reference Winkler, Turrell and Patterson11). Shoppers at supermarkets in socio-economically disadvantaged neighbourhoods have been shown to purchase more snack foods than those in advantaged neighbourhoods(Reference Vinkeles Melchers, Gomez and Colagiuri12). Availability of energy-dense snack foods in supermarkets according to area-level disadvantage has been investigated in two previous studies, both from Australia. Neither study found any association between energy-dense snack food availability and area-level disadvantage(Reference Ball, Timperio and Crawford10, Reference Vinkeles Melchers, Gomez and Colagiuri12). Both studies had significant limitations, however, with one considering only the numbers of varieties of items present (measured categorically)(Reference Ball, Timperio and Crawford10) and the other considering shelf space in a limited sample of only nine supermarkets(Reference Vinkeles Melchers, Gomez and Colagiuri12).
The concept of behavioural justice(Reference Adler and Stewart13) provides a helpful framework for the examination of exposure to energy-dense snack foods and drinks by level of socio-economic disadvantage. Behavioural justice suggests that ‘no group should bear a disproportionate share of health problems resulting from inadequate resources for engaging in healthy behaviours’(Reference Adler and Stewart14). Although this definition focuses on the resources required for healthy behaviours, the same principles apply with regard to limiting environments that stimulate unhealthy behaviours. This justice model provides a conceptual link between the behaviours of the individual and the neighbourhood in which he/she exists, and focuses on the rights of the individual to an environment that does not harm his/her health. An environment dominated by easy access to energy-dense, nutrient-poor snack foods and limited access to fruits and vegetables can effectively stack the odds against achieving good nutrition and health.
A thorough examination of the way in which the supermarket energy-dense snack food and fruit and vegetable environments vary according to area-level socio-economic disadvantage has been lacking. Here, we report the findings of an audit undertaken in supermarkets from neighbourhoods of low and high levels of socio-economic disadvantage in Melbourne, Australia. The study explored differences in the availability of crisps (potato chips), chocolate, confectionery, soft drinks (both diet and regular) and mineral/soda water as well as fruits and vegetables. In addition, we tested whether the ratio of shelf space devoted to diet v. regular soft drinks was patterned by area-level socio-economic disadvantage.
Methods
Sampling
The present study was undertaken in urban neighbourhoods <30 km from the central business district (CBD) of Melbourne, Australia. Each neighbourhood within this radius (mean population 9280; mean area 7·8 km2) was ranked according to the Socio-economic Index for Areas (SEIFA) Index of Relative Social Disadvantage (IRSD) produced by the Australian Bureau of Statistics. The SEIFA IRSD is a measure of relative socio-economic position and is derived from disadvantage-related variables in the 2006 Census such as low income, low educational attainment, unemployment and dwellings without motor vehicles(15). Low scores on this index indicate neighbourhoods with relatively greater disadvantage. We extracted the neighbourhood names from the highest and lowest quintiles of SEIFA IRSD and compiled a list of supermarkets from the two largest Australian supermarket retailers within these neighbourhoods. Stores from these two chains were chosen so that store types would be roughly comparable in the most and least disadvantaged areas, and because these two chains have a 68 % market share of supermarket and liquor retail sales in Australia(Reference Spencer and Kneebone6). The location of all supermarket outlets was identified through company websites and other online directories (e.g. White Pages). We then randomly selected forty-two supermarkets to survey, stratified by level of neighbourhood disadvantage and supermarket chain. Of all the supermarkets from the two surveyed chains that are located in neighbourhoods from the top quintile of SEIFA IRSD <30 km of the Melbourne CBD (an area with a population of ∼465 000), our sample included 50 % and 82 % of them from the two chains, respectively. Of all the supermarkets from the two surveyed chains that are located in neighbourhoods from the bottom quintile of SEIFA IRSD <30 km of the Melbourne CBD (an area with a population of ∼687 000), our sample included 35 % and 42 % of them from the two chains, respectively.
Audit tool development
An audit tool to assess the number of different product varieties and product shelf space was developed based on similar measures used in previous studies(Reference Farley, Rice and Bodor8, Reference Ball, Timperio and Crawford10). Two fieldwork staff members were trained within stores in the use of the audit tool and were provided with written instructions for its use. The project proposal was assessed by a Human Research Ethics Advisor from the Office of Research Integrity at Deakin University (ethics committee approval was unnecessary because it was not human research). Consent to take measurements was obtained from store managers, with consent being gained in 35/42 supermarkets (83·3 %). Of the seven stores where consent was not gained, four were from the most disadvantaged neighbourhoods. Supermarket audits were carried out between 22 September 2010 and 19 November 2010 and between 16 January 2011 and 16 February 2011. Although the measures included in the study are likely to be static (as opposed to dynamic displays such as end-of-aisle and island displays), the measurement period nevertheless avoided the Christmas/New Year period where displays of snack foods may be higher than normal. Sampling from the most and least disadvantaged areas was undertaken equally in both survey periods.
Measures
Snack foods
Our research was limited to food and beverages types that are usually consumed outside the three main meals and would be considered high in energy, low in micronutrients and (often) high in sodium. The total aisle length (in metres) dedicated to each of soft drinks, crisps, chocolate and confectionery was measured using a measuring wheel. Shelf space of several individual soft drink varieties was measured using a tape measure (this being a measure of individual shelves, rather than aisle length). The soft drink varieties chosen were those with the greatest shelf space in a pilot supermarket and in order to survey a representative sample of product types (i.e. both regular and diet soft drinks, two-litre bottles and 24-can bulk packs). No measure of total shelf space allocated to diet and regular soft drinks was possible because of the large number of product types of each, with diet and regular varieties interspersed within the same shelves (i.e. they were not stocked in separate sections). We were, however, able to assess the ratio of shelf space allocated to diet v. regular soft drinks using shelf space measurements of the individual diet and regular soft drink varieties included in the audit (effectively used as indicators of the total shelf space dedicated to regular and diet soft drinks). Shelf space allocated to natural mineral water or water, reduced-fat crisps and children's confectionery items (where a defined section existed, measured as height and width and presented as metres squared) was also measured using a tape measure. The children's confectionery section was measured as area (in metres squared) because the separate products were small and a mix of hanging bags and other types, meaning that this section did not typically have distinct shelves. The numbers of different varieties of soft drinks (diet and regular), crisps, chocolate (bars, blocks and hanging bags separately) and confectionery were counted using a hand-held counter. The number of children's toys hanging in the confectionery aisle was also counted (using a hand-held counter) so that an assessment of the degree to which the confectionery aisle is promoted to children could be made.
Fruits and vegetables
The total length (in metres) of shelf, refrigerator and island displays dedicated to fresh fruits and vegetables was measured using a measuring wheel. The number of different varieties of fruits and vegetables was counted using a hand-held counter. Two different types of the same fruits or vegetables (e.g. Granny Smith apple and Fuji apple) were counted as different varieties.
Store size
Total store size was measured so that aisle length of snack foods could be adjusted for store size. This was calculated as total aisle length in metres, measured using a measuring wheel (for example, 11 aisles × 9 m each = 99 m total aisle length). The length and breadth of the store was not measured because of the reality that some stores were not square or rectangular in shape.
Statistical analysis
Independent-sample t tests were used to compare differences in mean shelf space or number of varieties between stores in neighbourhoods from the top and bottom quintiles of relative socio-economic disadvantage. The distribution of shelf space for each of fruits and vegetables, soft drinks, crisps, chocolate and confectionery was plotted to provide a visual impression of the difference between stores. In order to account for the total size of the store, the estimated marginal mean number of varieties and shelf space for stores from the top and bottom quintiles of socio-economic disadvantage were calculated using models that also included a term for total store size. Statistical analysis was undertaken using the statistical software package SPSS Statistics version 19 (IBM Corp., Armonk, NY, USA).
Results
Shelf space allocated to each of soft drinks (most disadvantaged v. least disadvantaged: 23·6 m v. 17·7 m), crisps (16·5 m v. 13·0 m), chocolate (12·2 m v. 10·1 m) and confectionery (6·7 m v. 5·1 m) was greater in supermarkets from socio-economically disadvantaged neighbourhoods before adjustment for store size (all P < 0·05; Fig. 1). Total shelf space allocated to each of these products was 26·4 % higher in supermarkets from the most socio-economically disadvantaged areas (58·0 m v. 45·9 m, P = 0·002). Shelf space allocated to fruits and vegetables (most disadvantaged v. least disadvantaged: 105 m v. 95 m, P = 0·41) and the ratio of shelf space allocated to fruits and vegetables to that for energy-dense foods and drinks (1·8 v. 2·0, P = 0·16) were not significantly different between stores from areas of high and low levels of socio-economic disadvantage prior to adjustment for store size.
Total store size, measured as the sum of aisle length, was greater in stores from socio-economically disadvantaged neighbourhoods (287·0 m v. 235·9 m, P = 0·025). After adjustment for the size of the store, statistically significant differences remained in shelf space allocated to confectionery (most disadvantaged v. least disadvantaged: 6·3 m v. 5·6 m, P = 0·024) and the total shelf space allocated to all energy-dense foods and drinks surveyed (55·0 m v. 48·9 m, P = 0·017; Table 1). In addition, the ratio of shelf space allocated to fruits and vegetables to that for energy-dense snack foods and soft drinks (most disadvantaged v. least disadvantaged: 1·7 v. 2·1, P = 0·025) also varied by socio-economic disadvantage after adjustment for store size. The difference in shelf space allocated to soft drinks in stores from the most and least disadvantaged areas (22·7 m v. 18·6 m, P = 0·054), although large, was of borderline statistical significance.
Assessing shelf space of two-litre diet and regular varieties of the cola brands with the largest shelf space (including Coca Cola™, Diet Coke™, Coke Zero™, Pepsi™ and Pepsi Max™), more shelf space was allocated to regular compared with diet soft drinks (5·07 m v. 4·21 m). The ratio of shelf space allocated to two-litre bottles of regular v. diet soft drinks did not vary by level of socio-economic disadvantage (P > 0·05).
Before adjustment for store size, significant differences by socio-economic disadvantage were seen for shelf space of two-litre regular Coca Cola (most disadvantaged v. least disadvantaged: 5·30 m v. 3·38 m, P = 0·001), two-litre Diet Coke (1·91 m v. 1·32 m, P = 0·003) and two-litre Pepsi Max (1·39 m v. 0·81 m, P = 0·010). Following adjustment for total store size, socio-economic differences in shelf space remained for two-litre bottles of Coca Cola (5·0 m v. 3·7 m, P = 0·030) and Pepsi Max (1·35 m v. 0·87 m, P = 0·039; Fig. 2). For 24-can packs of the same varieties, differences according to level of socio-economic disadvantage were observed only for Pepsi Max (most disadvantaged v. least disadvantaged: 2·28 m v. 1·05 m, P = 0·003), with this difference remaining after adjustment for total store size (1·98 m v. 1·26 m, P = 0·038).
Shelf space allocated to mineral or bottled water (most disadvantaged v. least disadvantaged: 2·11 m v. 2·29 m, P = 0·6), reduced-fat crisps (4·36 m v. 4·01 m, P = 0·58) and children's confectionery (2·79 m2v. 2·41 m2) did not vary according to area-level socio-economic disadvantage (P > 0·05).
Variety
The number of varieties of soft drinks, crisps, chocolate and confectionery, fruits and vegetables stocked was similar in stores from areas of high and low levels of socio-economic disadvantage (Table 2). Adjusted for store size, the number of varieties of fruits and vegetables and the number of chocolate bar varieties were greater in stores from the least socio-economically disadvantaged neighbourhoods. The number of children's toys hanging in the confectionery aisle, while almost double in stores from socio-economically disadvantaged neighbourhoods, was not significantly different after adjustment for store size.
Temporal variation and test–retest reliability
To assess temporal variation and test–retest reliability of audit measures, the full supermarket audit was conducted in two stores (one from each supermarket chain with both located in an area of the same level of disadvantage), six weeks apart. The average difference in numbers of varieties of fruits and vegetables, soft drinks, crisps, chocolate bars, chocolate blocks, chocolate hanging bags, box or gift chocolates and confectionery hanging bags between the store visits, expressed as an absolute value, was 12·8 %. The difference in shelf space allocated to each of fruits and vegetables, soft drinks, crisps, chocolate and confectionery was 4·8 % (or 0·58 m). Based on these figures, the measures of shelf space and number of varieties in the audit tool used were considered to have good test–retest reliability, with little temporal variation in shelf space, and slightly more variation in numbers of product varieties.
Discussion
These findings demonstrate differences in supermarket exposure to energy-dense snack foods and soft drinks based on neighbourhood level of socio-economic disadvantage. Shelf space of soft drinks, crisps, chocolate and confectionery was greater in supermarkets from socio-economically disadvantaged neighbourhoods, and even once overall store size was taken into account, the total aisle length of the energy-dense foods and soft drinks measured remained 12·5 % greater in stores from the most disadvantaged neighbourhoods. In addition, the ratio of shelf space dedicated to fruits and vegetables to that for energy-dense foods and soft drinks was lower in supermarkets from the most socio-economically disadvantaged areas, although this difference was apparent only after adjustment for total store size. We found no support for the hypothesis that the ratio of shelf space dedicated to regular v. diet soft drinks is patterned by area-level socio-economic disadvantage.
The numbers of varieties of soft drinks, crisps, confectionery and most types of chocolate (blocks, hanging bags, box or gift chocolate) did not vary by level of socio-economic disadvantage, suggesting that the increased shelf space of these products in socio-economically disadvantaged areas is related to greater amounts of the same products. More variety in fruits and vegetables was evident in stores from the least socio-economically disadvantaged neighbourhoods, with this possibly relating to a greater number of lower-volume, niche fruits and vegetables.
Few studies in public health have investigated within-store supermarket measures, with the available studies focusing on the number of different items available and with a primary focus on healthy items such as fruits and vegetables(Reference Winkler, Turrell and Patterson11, Reference Andreyeva, Blumenthal and Schwartz16). Exposure measures such as number of different varieties may not allow accurate matching of within-store environments to purchasing behaviours and it is clear that tools to better assess the supermarket snack food environment are required(Reference Thornton, Cameron and Crawford17). To our knowledge, no previous study has observed significant differences in shelf space allocated to energy-dense snack foods and soft drinks according to level of socio-economic disadvantage. The single previous study investigating this topic audited only nine Australian supermarkets and therefore had limited power to detect differences(Reference Vinkeles Melchers, Gomez and Colagiuri12). Another Australian study(Reference Ball, Timperio and Crawford10) examined the numbers of varieties of various snack foods (chocolates, biscuits, cakes/muffins/scones/sweet pastries, ice cream, meat pie/sausage roll/savoury pastries, pizza and sweet pastries) within stores from areas of low, mid and high socio-economic disadvantage. Consistent with the present results, that study found no evidence of variation in the number of varieties according to neighbourhood disadvantage. That study did, however, find greater availability of fruits and vegetables in less disadvantaged areas, which again mirrors the present observation(Reference Ball, Timperio and Crawford10).
The recent Australian National Preventative Health Strategy(18) has recognized that dietary behaviours are not solely related to personal choice, particularly among those experiencing socio-economic disadvantage, noting that:
Choosing to eat healthy food… requires people to be empowered to make [this choice]. This means that the healthy choice must be physically, financially and socially the easier and more desirable choice than the less healthy option. This is not always the case, particularly with decreasing social position.
Greater shelf space of energy-dense foods and drinks may reinforce a cultural norm which promotes their consumption and makes them socially an easier or more desirable choice. Recent research has suggested that healthy eating may be ‘contagious’, with social norms for both healthy and unhealthy eating behaviour being found to be predictive of greater intakes of fruits and vegetables and of fast food and soft drinks, respectively(Reference Ball, Jeffery and Abbott19). Social norms in relation to the retail shelf space of individual products have also been found to impact on purchasing decisions(Reference Montoya, Mandel and Nowlis20). The existing socio-economic gradient in the prevalence of overweight and obesity(Reference Cameron, Welborn and Zimmet21) suggests that from a public health perspective, shelf space dedicated to energy-dense foods and drinks should be no higher in disadvantaged areas.
With supermarkets accounting for the majority of the food retail market(Reference Spencer and Kneebone6), and with the two major supermarket chains in Australia sharing 68 % of market share(Reference Spencer and Kneebone6), changes to stocking practices of energy-dense foods and drinks in their stores has the potential to influence eating practices of a large percentage of the Australian population. Shelf space is not driven solely by demand, with a vast literature from the business and marketing fields on optimal methods for allocation of retail shelf space to maximize profits. Shelf space indeed drives demand(Reference Lee and Brown22) and is seen as a promotional tool by retailers, with the link between greater shelf space and increased sales having been known for decades(Reference Curhan23, Reference Frank and Massy24). Increasingly common practices such as payment for competitive shelf space by manufacturers (‘slotting fees’)(Reference Klein and Wright25) demonstrate the use of shelf space by retailers and manufacturers as a mechanism to increase profits. As we did not measure purchasing behaviour and consumption here, we could not assess the association between exposure to energy-dense, nutrient-poor snack foods and their consumption. Regardless of the causal direction of the relationship, however, the stocking practices we observed may prevent changes in entrenched social norms(Reference Montoya, Mandel and Nowlis20) and patterns of behaviour, and are contrary to the concept of behavioural justice(Reference Adler and Stewart14). Altering shelf space allocations may be a relatively low-cost option in comparison with many individual obesity-prevention interventions(Reference Vos, Carter and Barendregt26). Previous campaigns focusing on the presence of energy-dense snack foods at supermarket checkouts have shown that some supermarkets are willing to change shelf-stocking practices in response to strong public demand(27, 28).
Some aspects of the study design should be considered when interpreting our findings. Soft drinks, chocolate, confectionery and crisps are not the only energy-dense snack foods available in supermarkets and supermarkets are not the only source of such foods(Reference Farley, Baker and Futrell29). Whether stores in disadvantaged areas also dedicate more shelf space to other high-energy, nutrient-poor products such as pizzas, pies, cakes, pastries and biscuits is unknown. Due to the difficulties of measuring total shelf space dedicated to diet and regular soft drinks (as detailed in the Methods), we do not know whether the observed shelf space ratio for diet v. regular varieties of the individual soft drinks we measured would also be seen for all soft drinks within the stores sampled. The sample size, while adequate to detect the observed differences in shelf space of several product types, may have been insufficient to detect smaller differences. Finally, replication of our study in other countries or regions is required to determine whether a socio-economic gradient in energy-dense snack food availability is present in other settings.
Conclusions
Exposure to energy-dense snack foods and soft drinks in supermarkets was shown to be related to the level of relative socio-economic disadvantage. Supermarkets in relatively disadvantaged neighbourhoods expose consumers to markedly greater shelf space of energy-dense snack foods and soft drinks, even after accounting for the larger size of these supermarkets. This situation has the potential to influence social norms related to eating behaviour, and could provide customers with greater time and opportunities (while walking through supermarkets) to trigger impulse purchases of such items. In addition, this situation works against the behavioural justice imperative to provide an environment that does not stack the odds of achieving good health against individuals in socio-economically disadvantaged communities(Reference Adler and Stewart14). Changes to supermarket stocking practices of such foods and beverages in areas of relative socio-economic deprivation could represent an effective means of nutrition promotion and obesity prevention.
Acknowledgements
This study was funded by Deakin University. A.J.C. is supported by a National Health and Medical Research Council (NHMRC) Post-doctoral Training Fellowship. L.E.T. is supported by an NHMRC Capacity Building Grant (ID 425845). D.C. is supported by a VicHealth Fellowship. S.A.M. is supported by an Australian Research Council Future Fellowship (FT100100581). This work was undertaken independent of any influence of the funding agencies. No authors have conflicts of interest in relation to this manuscript. A.J.C. and L.E.T. had primary responsibility for study design and conduct, data entry, data analysis, interpretation of results and drafting of the manuscript. S.A.M. and D.C. assisted with study design, interpretation of results and provided critical revision for the final manuscript draft. All authors approved the final manuscript draft prior to submission. The authors are grateful to Kate Udorovic and Leah Salmon for assistance with data collection, to Brian Miller for data management and to Jay Wen for assistance with geospatial analyses and store selection.