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Texas nutrition environment assessment of retail food stores (TxNEA-S): development and evaluation

Published online by Cambridge University Press:  11 June 2010

Christian T Gloria*
Affiliation:
Department of Kinesiology and Health Education, College of Education, The University of Texas at Austin, 1 University Station D3700, Austin, TX 78712-0306, USA
Mary A Steinhardt
Affiliation:
Department of Kinesiology and Health Education, College of Education, The University of Texas at Austin, 1 University Station D3700, Austin, TX 78712-0306, USA
*
*Corresponding author: Email ctgloria@mail.utexas.edu
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Abstract

Objective

Current nutrition environment instruments are typically designed to measure a small number of healthy foods based on national trends. They lack the depth to accurately measure the unique dietary choices of subpopulations, such as Texas consumers whose food preferences are influenced by Hispanic/Latino culture. Thus the purposes of the present study were to: (i) develop a comprehensive observational tool to measure the availability of healthy foods from retail stores in Texas; and (ii) conduct a pilot test to examine the tool’s reliability, as well as differences in the availability of healthy foods in stores between high- and low-income neighbourhoods.

Design

Grocery and convenience stores were assessed for availability of healthy foods. Reliability was calculated using percentage agreement, and differences in availability were examined using 2 (store type) × 2 (neighbourhood income) ANOVA.

Setting

One high-income and one low-income neighbourhood in Austin, Texas.

Subjects

A sample of thirty-eight stores comprising twenty-five convenience stores and thirteen grocery stores.

Results

The low-income neighbourhood had 324 % more convenience stores and 56 % fewer grocery stores than the high-income neighbourhood. High inter-rater (mean = 0·95) and test–retest reliability (mean = 0·92) and a significant interaction (P = 0·028) between store type and neighbourhood income were found.

Conclusions

The TxNEA-S tool includes 106 healthy food items, such as fruits, vegetables, dairy, proteins and grains. The tool is reliable and face validity is affirmed by the Texas Department of Health. Grocery stores have more healthy foods than convenience stores, and high-income grocery stores offer more healthy foods than low-income grocery stores.

Type
Research paper
Copyright
Copyright © The Authors 2010

The obesity epidemic is one of the leading national health concerns due to its serious consequences and rapidly increasing prevalence in the USA(13). Currently, about 66 % of US adults and 32 % of children and adolescents are either overweight or obese(Reference Ogden, Carroll and Curtin4, Reference Ogden, Carroll and Flegal5). Similar trends are also experienced in Texas(6, Reference Eaton, Kann and Kinchen7), which was ranked as the fifth unhealthiest state in the nation(8). If current patterns continue, 75 % of Texas adults could become overweight or obese by 2040, and health-care costs would quadruple from $US 10·5 billion to over $US 39 billion(9).

Individuals can only be as healthy as the community in which they reside(Reference Booth, Sallis and Ritenbaugh10, Reference Glanz, Sallis and Saelens11). Simply educating individuals and increasing awareness regarding the importance of healthy eating cannot effectively change behaviour and promote healthier lifestyles if their neighbourhoods fail to provide healthy food options. In order to improve health, it is imperative to improve the surrounding food environment. Organizations such as the Centers for Disease Control and Prevention, the Institute of Medicine, the International Obesity Task Force and the WHO insist that environmental interventions are the most effective strategies for positively ‘shifting the curve’ and creating population-wide improvements in dietary intake and weight status(Reference Farley and Cohen1216).

A growing body of research suggests that the food environment – the presence of food outlets and the available food products therein – influences consumer eating behaviour and contributes to overweight and obesity in the USA and around the world(Reference Glanz, Sallis and Saelens11, Reference Booth, Pinkston and Carlos-Poston17Reference Morland, Roux and Wing22). Glanz et al.(Reference Glanz, Sallis and Saelens11) identified ‘nutrition environments’ as having the highest priority in research as they are the least understood yet could have the greatest impact on overweight and obesity. Research suggests that dietary intake is the main determinant of obesity and a greater predictor of weight outcome as compared with physical activity and energy expenditure(Reference Swinburn, Jolle and Kremer23, Reference Spiegelman and Flier24). Greater availability of healthy foods (e.g. fruits, vegetables, low-fat dairy) within neighbourhoods is associated with greater consumption of such healthy foods among the neighbourhood residents(Reference Koplan and Dietz13, Reference Story, Neumark-Sztainer and French25Reference Moore, Diex Roux and Nettleton31). Alternatively, a similar pattern is observed with the presence of unhealthy foods (e.g. soft drinks, potato chips); greater availability of unhealthy food products is associated with greater consumer intake of such unhealthy items, which in turn may lead to poor health and diminished quality of life(Reference Timperio, Ball and Roberts32, Reference Sallis and Glanz33).

The availability of healthy foods appears to be associated with neighbourhood income and the presence of certain stores. Low-income neighbourhoods have significantly fewer grocery stores and more convenience stores as compared with high-income neighbourhoods, and grocery stores offer greater amounts of healthy foods than convenience stores(Reference Morland, Wing and Diez Roux34Reference Franco, Diez Roux and Glass36). Experts believe that the lack of availability of healthy foods contributes to a higher incidence of overweight and obesity in lower-income populations(Reference Block, Scribner and DeSalvo37Reference Galvez, Morland and Raines40).

A number of instruments have been developed to evaluate the availability of healthy foods within nutrition environments(Reference Bodor, Rose and Farley35, Reference Franco, Diez Roux and Glass36, Reference Morland and Filomena38, Reference Liese, Weis and Pluto41Reference Block and Kouba49). Some of these measures obtained reliability scores ranging from low to good(Reference Franco, Diez Roux and Glass36, Reference Liese, Weis and Pluto41Reference Andreyeva, Blumenthal and Schwartz45), while others did not report the reliability of their tools(Reference Bodor, Rose and Farley35, Reference Morland and Filomena38, Reference Sloane, Diamant and Lewis46Reference Block and Kouba49). Furthermore, some of these instruments present limitations such as having only a small number of healthy food items to observe (five to thirty-nine items), which were typically selected according to consumer trends based on the general US population(Reference Liese, Weis and Pluto41Reference Andreyeva, Blumenthal and Schwartz45, Reference Jetter and Cassady47, Reference Block and Kouba49). The limited number of items observed by such tools consequently ignores a large range of healthy foods recommended by the Dietary Guidelines for Americans(50), such as soya milk or cheese, beans or legumes, assorted grains, and canned/frozen fruits and vegetables.

According to a panel of dietitians, nutritionists and public health professionals from the Division of Nutrition, Physical Activity, and Obesity Prevention (NPAOP) of the Texas Department of State Health Services, these nutrition environment instruments not only need an increase in the number of items observed, but they also overlook and inadequately measure the distinct differences between different subgroups and cultures of the US population. For instance, the dietary preferences of Texas residents having a strong Hispanic or Latino influence vary distinctly from the dietary preferences of residents from other states; 36 % of Texas residents are of Hispanic or Latino origin, as compared with the national average of 15 %(51). Therefore, the NPAOP collaborated with the researchers to develop the Texas Nutrition Environment Assessment of Retail Food Stores (TxNEA-S) tool, which was designed to expand the number of foods observed, as well as to more accurately capture the dietary preferences of the Texas population. With the instrument’s greater depth and emphasis towards the Texas food culture, the TxNEA-S tool could provide greater understanding of how the nutrition environment affects the diet and health of Texas residents.

Therefore the purposes of the present study were to: (i) develop a comprehensive observational tool to measure the availability of healthy foods from grocery and convenience stores located in the State of Texas; and (ii) conduct a pilot test to examine the tool’s inter-rater and test–retest reliability, as well as differences in the availability of healthy foods from grocery and convenience stores between high- and low-income neighbourhoods. It was hypothesized that grocery stores would have greater availability of healthy foods than convenience stores, and that stores from high-income neighbourhoods would have greater availability of healthy foods than stores from low-income neighbourhoods.

Methods

Development of TxNEA-S tool

The NPAOP developed the TxNEA-S tool, which was adapted from the instrument Nutrition Environment Measures Survey in Stores (NEMS-S)(Reference Glanz, Sallis and Saelens42). While the NEMS-S was an acceptable tool for observing the dietary preferences of the average US consumer, the NPAOP believed that the items of the NEMS-S tool could be strengthened to more comprehensively observe the food choices of the Texas population. Thus, the list of food items was modified and expanded to include a large number of additional products such as mangoes, collard greens, rice, beans/legumes, tortillas, yoghurts and cheeses. The list of healthy foods was determined by a team of dietitians, nutritionists and public health professionals from the eight regional offices of the Texas NPAOP(52). One food category that was not included in the TxNEA-S tool was meat products, as the NPAOP believed that Americans already consume greater than recommended amounts of such items; instead, the tool measured the less consumed yet more recommended sources of protein such as beans and legumes. Additionally, the TxNEA-S also measured the availability of canned and frozen alternatives to account for low-income neighbourhoods which have been shown to have limited or no resources for fresh products(Reference Morland and Filomena38). A total of 106 healthy foods were measured by the TxNEA-S tool from a variety of food categories recommended by the Dietary Guidelines for Americans(50) (see Appendix). The TxNEA-S tool was used for assessments of both convenience and grocery stores. A copy of the tool is available from the corresponding author.

Neighbourhood selection

The study was conducted in one low- and one high-income neighbourhood located in central Austin, Texas. Each neighbourhood was composed of two adjacent zip-code areas. Zip-code areas were used as they are larger than census tracts and thus captured more stores per neighbourhood. In addition, it was found that a single zip-code did not offer enough stores, and so neighbourhood size was doubled by the combination of two adjacent zip-code areas. The US Census(53) was used to determine median household income per zip-code area, with income divided into seven categories of median household income as illustrated by the Census geographic information mapping (see Fig. 1)(54). Two zip-code areas with the lowest median household income were selected to represent the low-income neighbourhood, and then contrasted against two zip-code areas with higher income. This neighbourhood selection method was adopted from Glanz et al.(Reference Glanz, Sallis and Saelens42), ‘to maximize the ability to contrast food outlet types between neighbourhoods with differing levels of income’. Communities within the highest range of income were excluded, considering the relatively small proportion of these residents. Therefore, to represent the high-income neighbourhood, the second and third most affluent zip-code areas were selected.

Fig. 1 Categories of median household income per zip-code area, central Austin, Texas

As shown in Fig. 1, the low-income neighbourhood consisted of two zip-code areas with median household incomes ranging from $US 23 348 to $US 25 369, which fell below the Texas ($US 39 927) and US ($US 41 994) median household incomes(53). In contrast, the median household incomes of the two zip-code areas within the high-income neighbourhood ranged from $US 54 591 to $US 62 404, which were greater than the state and national median household incomes. Two categories of income – approximately a $US 30 000 gap – separated the low- and high-income neighbourhoods. The remaining and unselected low-income zip-code area seen in the centre of Fig. 1 is a university setting with primarily student residents; therefore it was not considered for the neighbourhood sample selection. Each neighbourhood was independently located within the eastern or western section of the city, which minimized the potential overlap in residents’ access to stores in the contrasting neighbourhood. The low-income neighbourhood had a larger population (with 63 195 residents) as compared with the high-income neighbourhood’s 43 644 residents. However, despite the disparities between the low- and high-income neighbourhoods, some similarities were still accounted for to ensure a balanced design in order to conduct valid comparisons. For instance, the low- and high-income neighbourhoods were 100 % urban, residential communities and had similar land sizes (12·6 and 13·5 square miles, respectively).

Definition and selection of stores

A list of stores within the neighbourhood samples was collected from the city’s Consumer Health Services, printed Yellow Pages and online directories, and then verified through on-site visitations in January 2008. Stores that were inaccessible to the general public (e.g. within worksites, schools or private facilities) were not included. Specialty stores (e.g. bakeries or liquor stores) were also excluded considering their limited range of products.

The stores selected for the study were classified into two main categories: convenience stores and grocery stores. Convenience stores were defined as food outlets having limited options and primarily stocking items intended for immediate consumption (e.g. potato chips, snack items, soft drinks). Grocery stores were defined as food outlets offering a full range of items from all food categories, above and beyond what convenience stores offer. A consistent distinguishing feature of grocery stores was the availability of fresh/raw products which require preparation and/or cooking (e.g. fruits, vegetables and raw meat). These definitions were obtained from a NEMS-S(Reference Glanz, Sallis and Saelens42) research/training specialist via email correspondence as their published work did not discuss how convenience stores and grocery stores were operationalized (E. Davis, personal communication, April 2008).

A total of eighty-five stores were found within the selected neighbourhoods (see Table 1). For data collection, all existing grocery stores in both neighbourhoods were selected, and a smaller random sample of convenience stores was selected out of seventy-two total convenience stores due to limited resources. From the originally selected forty-store sample, one low-income convenience store went out of business and one high-income convenience store withdrew from participation, leaving a total sample of thirty-eight stores. As shown on Table 1, the low-income neighbourhood sample had thirteen convenience and four grocery stores, while the high-income neighbourhood sample had twelve convenience and nine grocery stores. The obtained sample size within each neighbourhood meets the minimum size discussed by Glanz et al.(Reference Glanz, Sallis and Saelens42) of at least fifteen stores per neighbourhood.

Table 1 Cross-tabulation of actual and sample ratios of store types within neighbourhood samples, central Austin, Texas

Phase I: rater training and TxNEA-S tool refinement

The purposes of Phase I of the study were to: (i) introduce the newly developed TxNEA-S tool to the raters; (ii) provide data collection training; (iii) conduct practice store assessments; and (iv) further refine the TxNEA-S tool according to rater feedback.

The raters were twenty-one senior undergraduate nutrition majors from the University of Texas at Austin. Rater training consisted of four 1 h classroom instruction sessions which included PowerPoint presentations, item-by-item discussions of tool content, and instructions regarding observation and data collection procedures. Classroom instructions were followed by 3 h of practice store assessments at randomly selected stores. After each training session, rater feedback was gathered to identify data collection experiences and recommendations for improvement. Training and fieldwork protocols were guided by the NEMS-S manual(Reference Glanz, Clawson and Young55).

Initial evaluations revealed that the original draft of the TxNEA-S tool was excessively lengthy and required an unfeasible amount of time to complete; therefore, the tool was revised and redesigned accordingly. For example, the measure to record item shelf-space was removed from the tool as raters found the task to be time-consuming and difficult to assess accurately. To reduce evaluation time, items of least importance were identified and removed, and the tool was formatted to require less writing. The tool was continually revised until raters believed that it was manageable and ready for pilot evaluation. Approximately ten revisions were made, which reduced the original 19-page tool to 12 pages, and decreased evaluation time from initially over 180 min to an average of 73 min for grocery stores and 19 min for convenience stores. This phase of the project lasted one academic semester.

Phase II: pilot evaluation of the TxNEA-S tool

The purpose of Phase II of the study was to pilot test the TxNEA-S tool for inter-rater and test–retest reliability, using the same raters from Phase I. The collected data would also be used for comparing the availability of healthy foods in grocery and convenience stores between low- and high-income neighbourhoods.

A subsample of the total sample size (see Table 1) was used for reliability testing due to limited resources. Grocery stores were prioritized in the selection of samples for reliability testing, considering that: (i) the same survey was used regardless of store type; and (ii) grocery stores have substantially more food options. Inter-rater reliability assessment was calculated using all thirteen grocery stores and six randomly selected convenience stores. Test–retest reliability was computed using a convenience sample of ten grocery stores. These subsamples satisfy the recommendation that subsample size for reliability testing be at least 10–20 % of the total sample size(Reference Wimmer and Dominick56).

To evaluate inter-rater reliability, two data collectors were randomly assigned to each store with instructions to simultaneously complete the TxNEA-S tool. To ensure independence between the two raters, they were instructed to begin assessments from opposite ends of the tool (one rater started on the first page of the tool, while the other started on the last page). Item-by-item agreement between the two raters was compared, and percentage agreement – the frequency of correctly matched responses divided by the total number of observations(Reference Spata57) – was calculated using Microsoft® Office Excel 2007 (Microsoft Corp., Redmond, WA, USA). To examine test–retest reliability, one of the two raters was randomly selected and directed to re-evaluate the same store within four weeks of the initial observation date. Item-by-item agreement between initial and follow-up observations was compared, and percentage agreement was calculated using the Excel software.

Finally, a 2 × 2 ANOVA was used to examine mean comparisons of the availability of healthy foods between store types (grocery and convenience stores) and neighbourhood incomes (low and high), using the SPSS statistical software package version 16 (SPSS Inc., Chicago, IL, USA). Data from the total sample size (see Table 1) were used for this analysis, and the availability score was determined by the percentage value (out of the total 106 tool items) observed as present in the store during data collection.

Results

The cross-tabulation of all grocery and convenience stores within the neighbourhood samples revealed that the low-income neighbourhood had over three times as many convenience stores and less than half as many grocery stores, as compared with the high-income neighbourhood (see Table 1). According to Fisher’s Exact Probability Test, there was a statistically significant association between the frequency of store type and neighbourhood income (P = 0·002, two-tailed).

Table 2 shows the inter-rater and test–retest reliability results. Rates of inter-rater agreement on the availability measure ranged from moderate (79 %) to very high (100 %), with a mean of 95 (sd 6) %. Test–retest reliability scores on availability yielded similarly strong findings, ranging from 80 % to 100 %, with a mean of 92 (sd 6) %.

Table 2 Inter-rater and test–retest reliability scores for the TxNEA-S tool, central Austin, Texas

TxNEA-S, Texas Nutrition Environment Assessment of Retail Food Stores.

*Low-income neighbourhood.

†High-income neighbourhood.

Figure 2 shows a histogram of the mean comparisons of the availability of healthy foods between store type and neighbourhood income. It illustrates that neighbourhood income has a positive relationship with the availability of healthy foods in grocery stores; however, neighbourhood income appears to have no association with the availability of healthy foods in convenience stores. The 2 × 2 ANOVA of store type (grocery and convenience stores) and neighbourhood income (low- and high-income) on availability of healthy foods found a significant relationship with store type (F(1,34) = 269·66, P < 0·001, ηp 2 = 0·888) and a significant relationship with neighbourhood income (F(1,34) = 5·39, P = 0·026, ηp 2 = 0·137). A statistically significant interaction was also found for store type and neighbourhood income (F(1,34) = 5·26, P = 0·028, ηp 2 = 0·134).

Fig. 2 Comparison of means and standard deviations of the availability of healthy foods between store type and neighbourhood income (, low-income neighbourhood; , high-income neighbourhood), central Austin, Texas. Note: % Availability of healthy foods score = (no. of healthy foods observed/106 total items) × 100

A limitation to this analysis was that the assumptions of homogeneity and normality were not satisfied due to one unusual case: a small grocery store from the low-income neighbourhood. Out of the four observed grocery stores from the low-income neighbourhood, three were large chain grocery stores but one was a smaller local grocery store. Based on Glanz et al.(Reference Glanz, Sallis and Saelens42), small grocery stores have one or two cash registers, while large grocery stores have three or more. The small local grocery store had substantially less availability of healthy foods as compared with the three larger stores, which pulled and skewed the group mean. This store was not removed in the analysis because it: (i) matched the operational definition of a grocery store; (ii) was not considered an outlier as it falls within three standard deviations; and (iii) was expected to appear in the sample since small local grocery stores are known to exist, particularly in low-income neighbourhoods.

When this unusual case was removed from the data set, all statistical test assumptions were satisfied but the 2 × 2 ANOVA produced somewhat dissimilar results. As expected, a significant relationship was found with store type (F(1,33) = 1525·70, P < 0·001, ηp 2 = 0·979). However, the relationship with neighbourhood income was found to be statistically non-significant (F(1,33) = 0·218, P = 0·643, ηp 2 = 0·007) and the interaction for store type and neighbourhood income was also found to be statistically non-significant (F(1,33) = 0·166, P = 0·686, ηp 2 = 0·005). Therefore, the prior reported statistically significant findings should be interpreted with this limitation in mind.

Discussion

Research suggests that nutrition environments – grocery and convenience stores, and the food products therein – influence individual dietary consumption, weight status and subsequent health outcomes(Reference Glanz, Sallis and Saelens11, Reference Booth, Pinkston and Carlos-Poston17Reference Morland, Roux and Wing22). A number of nutrition environment instruments have been developed to observe the availability of healthy foods in retail stores(Reference Bodor, Rose and Farley35, Reference Franco, Diez Roux and Glass36, Reference Morland and Filomena38, Reference Liese, Weis and Pluto41Reference Block and Kouba49), but these measures lack a comprehensive scope and the sensitivity required to effectively assess food choices from specific subgroups of the US population, such as Texas consumers whose dietary preferences are strongly influenced by Latino and Hispanic cultures. Therefore, the NPAOP collaborated with the researchers to develop the TxNEA-S tool, which was designed to effectively examine the availability of healthy foods in grocery and convenience stores in Texas.

In comparison to other instruments that produced low to good reliability scores(Reference Franco, Diez Roux and Glass36, Reference Liese, Weis and Pluto41Reference Andreyeva, Blumenthal and Schwartz45) or were not tested for reliability(Reference Bodor, Rose and Farley35, Reference Morland and Filomena38, Reference Sloane, Diamant and Lewis46Reference Block and Kouba49), the TxNEA-S tool obtained moderate to very high inter-rater and test–retest reliability scores. The high inter-rater reliability scores indicate that the availability measure has a sound design and that the rater training protocol adequately prepares data collectors for accurate store assessments. The high test–retest reliability scores suggest limited change in the availability of the observed healthy foods over a period of several weeks; however, this finding may be inapplicable to convenience stores as test–retest reliability was examined only in grocery stores.

Neighbourhood income has a significant positive relationship with the availability of healthy foods in grocery stores, as data indicated that grocery stores from high-income neighbourhoods have greater availability of healthy foods than grocery stores from low-income neighbourhoods. However, neighbourhood income appears to have no relationship with the availability of healthy foods in convenience stores. This interaction between neighbourhood income and the availability of healthy foods from grocery and convenience stores did not support the proposed hypothesis that neighbourhood income would instead have a direct relationship with store type and the available healthy foods therein, as found by previous research(Reference Glanz, Sallis and Saelens42). As shown in Fig. 2: (i) there is no difference in the availability of healthy foods between convenience stores regardless of neighbourhood income; (ii) grocery stores from low-income neighbourhoods offer greater availability of healthy foods than convenience stores from both low- and high-income neighbourhoods; and (iii) grocery stores from high-income neighbourhoods have greater availability of healthy foods as compared with grocery stores from low-income neighbourhoods as well as convenience stores from both low- and high-income neighbourhoods.

Although these findings are challenging to interpret because of the possible violations of the statistical assumptions of homogeneity and normality due to the influence of the unusual case (small local grocery store in the low-income neighbourhood) which nullified some of the initial significant findings, it is important to consider that this may be the reality of nutrition environments within low-income neighbourhoods. With increased sample size, investigators may find – and have found(Reference Glanz, Sallis and Saelens42) – higher frequencies of small grocery stores. It is recommended that the sample size in each cell has at least ten stores, as not only does this allow for conducting stronger comparisons, it also maintains the robustness of the ANOVA test even under situations when violations of assumptions are experienced.

The cross-tabulation of the actual store frequencies within the neighbourhood samples revealed a large disparity in the convenience and grocery store ratios between low- and high-income neighbourhoods (see Table 1). The data show that the low-income neighbourhood had 227 % more stores than the high-income neighbourhood. The low-income neighbourhood had 324 % more convenience stores and 56 % fewer grocery stores, as compared with the high-income neighbourhood. These findings support previous research in that grocery stores are less prevalent while convenience stores are of greater numbers in low-income neighbourhoods(Reference Morland, Wing and Diez Roux34, Reference Franco, Diez Roux and Glass36, Reference Morland and Filomena38, Reference Galvez, Morland and Raines40, Reference Powell, Slater and Mirtcheva58). Even though lower-income residents have far greater access to convenience stores, this provides no additional benefit because of the very limited availability of healthy foods in such stores, especially fruits and vegetables(Reference Morland, Wing and Diez Roux34, Reference Morland and Filomena38, Reference Galvez, Morland and Raines40). Lower-income residents may actually be negatively affected by the omnipresence of convenience stores within their neighbourhoods, considering how they are less likely to own a vehicle, and so the proximity of stores may influence what stores they are more likely to visit. According to the US Census(53), only about 59 % of low-income residents own a vehicle as compared with 80 % of high-income residents. If grocery stores in low-income neighbourhoods are over 3 miles apart while convenience stores are only 0·25 miles apart, as found in the present study, then it is likely that low-income residents are obtaining most of their food from nearby convenience stores.

Future research should continue to examine the food environment, the disparities between neighbourhoods, and how these influence health behaviours and outcomes. This pilot study is one of the initial efforts to understand the impact of grocery and convenience stores on residents in the State of Texas(Reference Jago, Baranowski and Baranowski29). Larger and more longitudinal studies are needed to further examine the availability of healthy foods in Texas and elsewhere, in order to identify disparities, aetiology of disease and opportunities for positive changes(Reference Giskes, Kamphuis and van Lenthe59).

Given that healthy food items (e.g. fruits, vegetables, low-fat dairy) are globally recognized from one location to another, the TxNEA-S tool may be adapted as needed and used at other locations within and outside the USA. If the TxNEA-S tool falls short of thoroughly assessing a specific food culture, additional modifications – such as simply adding and/or removing food items – may be necessary to maintain validity. This study and other research(Reference Block and Kouba49) serve as testaments that making such modifications can be effectively done to more accurately examine a particular culture.

Conclusions

The purpose of the current pilot study was to develop the TxNEA-S observational tool which measured the availability of healthy foods from grocery and convenience stores located in the State of Texas. With respect to the Texas native food culture, the TxNEA-S tool includes 106 healthy food items from categories recommended by the Dietary Guidelines for Americans, such as fruits, vegetables, dairy, proteins and grains. The tool has sound and reliable measures as indicated by high inter-rater and test–retest reliability scores, and the face validity of the tool was affirmed by the Texas Department of State Health Services.

Acknowledgements

This project did not receive financial support from any funding agency in the public, commercial or non-profit sectors. There were no conflicts of interest. C.T.G. coordinated the study, managed the data collection process and prepared the manuscript. M.A.S. assisted with the data analyses and edited the manuscript. We would like to thank Lindsay Rodgers, ma, rd, ld, and Celeste Windham, ms, rd, ld, from the Texas Department of State Health Services, as well as Karina Loyo, PhD, from the City of Austin Health and Human Services, for their assistance in developing the TxNEA-S tool and the study methodology. We would also like to thank Monica Meadows, PhD, rd, ld, and her class of 2008 nutrition students for their contribution towards the tool refinement and the data collection process.

Appendix

List of healthy food items observed by the TxNEA-S tool

TxNEA-S, Texas Nutrition Environment Assessment of Retail Food Stores.

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Figure 0

Fig. 1 Categories of median household income per zip-code area, central Austin, Texas

Figure 1

Table 1 Cross-tabulation of actual and sample ratios of store types within neighbourhood samples, central Austin, Texas

Figure 2

Table 2 Inter-rater and test–retest reliability scores for the TxNEA-S tool, central Austin, Texas

Figure 3

Fig. 2 Comparison of means and standard deviations of the availability of healthy foods between store type and neighbourhood income (, low-income neighbourhood; , high-income neighbourhood), central Austin, Texas. Note: % Availability of healthy foods score = (no. of healthy foods observed/106 total items) × 100