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Exploring dimensions of social capital in relation to healthy eating behaviours in the US rural south

Published online by Cambridge University Press:  16 January 2023

Cerra C Antonacci*
Affiliation:
Department of Behavioral, Social and Health Education Sciences, Emory Prevention Research Center, Rollins School of Public Health, Emory University, Atlanta, GA 30322, USA
Regine Haardörfer
Affiliation:
Department of Behavioral, Social and Health Education Sciences, Emory Prevention Research Center, Rollins School of Public Health, Emory University, Atlanta, GA 30322, USA
April K Hermstad
Affiliation:
Department of Behavioral, Social and Health Education Sciences, Emory Prevention Research Center, Rollins School of Public Health, Emory University, Atlanta, GA 30322, USA
Tilicia L Mayo-Gamble
Affiliation:
Department of Health Policy and Community Health, Georgia Southern University, Statesboro, GA, USA
Kimberly R Jacob Arriola
Affiliation:
Department of Behavioral, Social and Health Education Sciences, Emory Prevention Research Center, Rollins School of Public Health, Emory University, Atlanta, GA 30322, USA
Michelle C Kegler
Affiliation:
Department of Behavioral, Social and Health Education Sciences, Emory Prevention Research Center, Rollins School of Public Health, Emory University, Atlanta, GA 30322, USA
*
*Corresponding author: Email [email protected]
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Abstract

Objective:

This study examined relationships between dimensions of social capital (SC) (social trust, network diversity, social reciprocity and civic engagement) and fruit, vegetable, and sugar-sweetened beverage (SSB) consumption among rural adults. Potential moderators (neighbourhood rurality, food security, gender and race/ethnicity) were explored to develop a more nuanced understanding of the SC–healthy eating relationship.

Design:

Data were from a 2019 mailed population-based survey evaluating an eleven-county initiative to address health equity. Participants self-reported health behaviours, access to health-promoting resources and demographics. Logistic regression models were used to analyse relationships between predictors, outcomes and moderators.

Setting:

Five rural counties, Georgia, USA.

Participants:

1120 participants.

Results:

Among participants who lived in the country (as opposed to in town), greater network diversity was associated with consuming ≥ 3 servings of fruit (OR = 1·08; 95 % CI 1·01, 1·17, P = 0·029), yet among participants who lived in town, greater civic engagement was associated with consuming ≥ three servings of fruit (OR = 1·36; 95 % CI 1·11, 1·65, P = 0·003). Both food-secure and food-insecure participants with greater social reciprocity had lower odds of consuming 0 SSB (OR = 0·92; 95 % CI 0·86, 0·98, P = 0·014, OR = 0·92; 95 % CI 0·86, 0·99, P = 0·037, respectively). Men with greater social trust were more likely to consume 0 SSB (OR = 1·09; 95 % CI 1·01, 1·18, P = 0·038), and Whites with greater network diversity were more likely to meet daily vegetable recommendations (OR = 1·10; 95 % CI 1·01, 1·19, P = 0·028).

Conclusions:

Findings provide a basis for future qualitative research on potential mechanisms through which SC and related social factors influence healthy eating in rural communities.

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 (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of The Nutrition Society

A healthy diet provides nutrients, facilitates weight management and reduces risk for diseases such as heart disease, stroke and some cancers(1). The USDA’s 2020 Dietary Guidelines for Americans (DGA) recommends consuming at least 1·5 cups of fruit and 2 cups of vegetables per d and limiting added sugars(1). While most American adults fail to meet the recommended daily servings of fruits and vegetables(Reference Lee-Kwan, Moore and Blanck2), an even smaller proportion of Americans living in rural communities meet these recommendations(Reference Lutfiyya, Chang and Lipsky3,Reference Dean and Sharkey4) . Similarly, adults living in rural counties consume more sugar-sweetened beverages (SSB) compared with their urban and suburban counterparts(Reference Sharkey, Johnson and Dean5). These differences in healthy eating behaviours likely contribute to the fact that rural residence has been identified as an independent risk factor for heart disease, diabetes and obesity(Reference Lutfiyya, Chang and Lipsky3,Reference Lutfiyya, McCullough and Haller6) .

Several studies also highlight social capital (SC) as an important contextual factor related to health. According to Putnam(Reference Putnam7), SC is a collective good, described by features of social organisation including the ‘connections among individuals – social networks and the social reciprocity and trustworthiness that arise from them’ (p. 18). SC is a multidimensional construct characterised by interrelated dimensions such as social trust, network diversity, social reciprocity, civic engagement and voting behaviour(Reference Putnam7). While some choose to measure SC using one or more dimensions(Reference Johnson, Sharkey and Dean8Reference Ziersch, Baum and Darmawan11), others measure the whole construct by combining dimensions into one index(Reference Nummela, Sulander and Rahkonen12,Reference Nosratabadi, Khazami and Abdallah13) . SC is thought to create health-enabling resources that support health-promoting behaviours through the creation of social support networks and reinforcement of norms within a network(Reference Putnam7,Reference Kawachi and Berkman14) . For instance, in communities with high SC where residents practice healthy eating behaviours, other community residents may be encouraged to engage in those same health behaviours through the reinforcement of healthy eating norms and the social support available to them to maintain those behaviours(Reference Kawachi and Berkman14). Research has generally found that higher levels of SC are associated with healthier eating behaviours(Reference Poortinga9,Reference Chen, Zhang and Cui15) . For instance, Poortinga(Reference Poortinga9) measured several dimensions of SC (i.e. social support, civic engagement and social trust) and found that those SC dimensions were associated with consuming five or more portions of fruits and vegetables per d.

Like eating behaviours, SC also differs by place(Reference Sørensen16,Reference Hofferth and Iceland17) . Rural areas are traditionally thought to have higher levels of SC because of the smaller, more tight-knit communities that exist in rural settings(Reference Putnam7). Research has supported this contention by finding that rural communities have greater localised trust, higher rates of civic engagement and more local reciprocity compared with urban areas(Reference Sørensen16). While previous research has elucidated the relationship between SC, other health behaviours, and general health in the rural context(Reference Yip, Subramanian and Mitchell18,Reference Buck-McFadyen, Isaacs and Strachan19) , and the relationship between SC and healthy eating in urban settings(Reference Chen, Zhang and Cui15), there is currently a lack of research exploring the relationship between SC and healthy eating behaviours in the rural setting. To our knowledge, only one study has investigated this relationship in a rural setting. Johnson and colleagues examined extra-familial social support as one dimension of SC and found that SC positively associated with fruit and vegetable consumption among rural adults in Texas(Reference Johnson, Sharkey and Dean8).

The purpose of this research is to gain a deeper understanding of the relationship between SC dimensions and healthy eating behaviours among residents of rural counties. While previous research has examined many dimensions of SC(Reference Johnson, Sharkey and Dean8Reference Nummela, Sulander and Rahkonen12,Reference Chen, Zhang and Cui15,Reference Sørensen16,Reference Bailey20) , most research focuses on an average of two dimensions(Reference Gilbert, Quinn and Goodman21). We analyse four dimensions of SC to gain a more comprehensive picture of SC and explore how those dimensions relate to three eating behaviours. We hypothesise that higher social trust, network diversity, social reciprocity and civic engagement will be associated with higher fruit and vegetable consumptions and lower SSB consumption (see conceptual model in Fig. 1). Additionally, previous research has independently explored variations in SC and healthy eating behaviours by different contextual (e.g. urbanicity/rurality and food security) and demographic factors (e.g. gender and race/ethnicity)(Reference Lee-Kwan, Moore and Blanck2,Reference Sharkey, Johnson and Dean5,Reference Putnam7,Reference Grimm, Foltz and Blanck22Reference Hero24) , but there is a lack of research on the moderating roles of such variables on the SC–healthy eating relationship. We explore whether and how perceived neighbourhood rurality, food security, gender and race/ethnicity impact the SC–healthy eating relationship.

Fig. 1 Conceptual model of the relationship between dimensions of social capital and healthy eating behaviours

Studies suggest that SC increases when moving from urban to rural areas(Reference Putnam7,Reference Ziersch, Baum and Darmawan11,Reference Nummela, Sulander and Rahkonen12) . These studies, however, typically focus on urban, semi-urban and rural differentiations, on objective classifications of rurality, and county-level classifications (e.g. rural–urban continuum codes), rather than perceived rurality at the neighbourhood level (e.g. in town v. in the country), which may relate to how connected people feel to their communities. Similarly, food insecurity (i.e. the lack of access to sufficient food to live a healthy life)(Reference Dean and Sharkey4) is more pervasive in rural areas(Reference Coleman-Jensen, Rabbitt and Gregory25), likely due to food access issues (e.g. farther travel distances to grocery stores and higher food prices)(Reference Martin, Clift and Christie26) and has been found to associate with SC and eating behaviour(Reference Dean and Sharkey4,Reference Sharkey, Johnson and Dean5,Reference Nosratabadi, Khazami and Abdallah13,Reference Drisdelle, Kestens and Hamelin27,Reference Hanson and Connor28) . Food insecurity is thought to relate to SC through knowledge and product sharing, impacting both access to and availability of food(Reference Nosratabadi, Khazami and Abdallah13). Food insecurity has inversely associated with SC in studies of different populations, including rural adults(Reference Dean and Sharkey4,Reference Nosratabadi, Khazami and Abdallah13) , and has associated with lower fruit and vegetable consumption(Reference Hanson and Connor28) and greater SSB consumption among adults in rural and urban areas(Reference Sharkey, Johnson and Dean5). We hypothesise that the relationships between SC dimensions and healthy eating behaviours will be stronger for those who self-reported living in the country compared with those who self-reported living in town and for food-secure (FS) compared with food-insecure (FI) adults.

SC and healthy eating are also independently associated with gender and race/ethnicity. Compared with men, women are more likely to meet the daily recommended servings of fruits and vegetables(Reference Lee-Kwan, Moore and Blanck2) and consume fewer SSB(Reference Sharkey, Johnson and Dean5), and African American/Blacks (AA/Black) tend to consume fewer vegetables but more fruits and SSB compared with Whites(Reference Lee-Kwan, Moore and Blanck2,Reference Grimm, Foltz and Blanck22,Reference Dai, Soto and Dunn29) . SC also varies by gender, though without a clear pattern(Reference Eriksson, Dahlgren and Janlert10,Reference Pinillos-Franco and Kawachi23) , and by race/ethnicity(Reference Hero24), with one publication asserting the negative effects of SC in perpetuating inequalities in workplace hiring that favour White men over women and minorities(Reference McDonald and Day30). We hypothesise that gender will impact the relationship between SC and healthy eating differently depending on the SC dimension, and we expect the strength of the SC–healthy eating relationships will be stronger for Whites compared with AA/Blacks.

Methods

Study design and sample

The data for this study were from an evaluation of The Two Georgias Initiative (TGI), a multi-year initiative developed by Healthcare Georgia Foundation to support eleven community coalitions in rural Georgia counties (i.e. those with populations < 35 000) with the goals of achieving health equity, improving health and healthcare, building leadership capacity, and eliminating health disparities. As part of the evaluation, a population-based survey was mailed to 11 406 randomly selected households within the eleven counties where the eleven coalitions were located between December 2018 and June 2019, followed by a reminder postcard and a second mailed survey as needed. 2788 completed surveys were returned (24·4 % response rate). The survey included modules on health behaviours, access to health-promoting resources (e.g. healthy foods, healthcare and SC) and demographic characteristics. As not all coalitions collected data on all topics, only those that administered both the SC and healthy eating modules were included in this study; five of the eleven counties completed modules relevant to these analyses resulting in a subsample of 1120 adults. Per the Emory University Institutional Review Board (IRB), this study did not require IRB approval because it was non-research programme evaluation.

Measures

Healthy eating behaviours

Healthy eating behaviours were measured by daily fruit, vegetable and SSB consumption. Daily fruit and vegetable intakes were measured using a previously validated two-item measure(Reference Dean and Sharkey4,Reference Resnicow, Odom and Wang31) that asked participants to report the number of servings of fruits and vegetables they typically eat each day. The fruit and vegetable variables were dichotomised into ‘met’ or ‘did not meet’ the 2020 DGA recommendations, which suggests consuming at least 2 cups of vegetables and 1·5 cups of fruit per d(1). As the DGA recommendations are based on cups and our survey asked about servings, we converted DGA recommendations from cups into servings (i.e. ½ cup = 1 serving)(Reference Britten, Marcoe and Yamini32); following this conversion method, the number of recommended servings of fruits and vegetables were three and four servings, respectively. A measure for daily intake of 12-ounce units of SSB, including sweet tea, regular sodas, bottled fruit drinks, sports drinks and Kool-Aid, was developed for this survey and included six response options (0, 1, 2, 3, 4, 5, or more). This variable was dichotomised into consuming zero and one or more SSB per d to align with CDC’s reporting of data from the Behavioral Risk Factor Surveillance System (BRFSS)(Reference Park and Pan33).

Social capital

SC was measured with twenty-nine items (a = 0·91) assessing four dimensions of SC (i.e. social trust, network diversity, social reciprocity and civic engagement). The social trust and network diversity questions were based on the Social Capital Benchmark Survey (SCBS)(34); the social reciprocity questions were based on an instrument designed and validated by Sampson et al.(Reference Sampson, Raudenbush and Earls35,Reference Martin, Rogers and Cook36) ; most of civic engagement questions were based on the SCBS(34), while the remaining items were taken from the Community Population Survey-Civic Engagement Supplement(Reference Engbers, Thompson and Slaper37). Eight social trust items(34) were included and asked participants to report their level of trust in different groups (people in general, friends and family, people that live near you, people from a different racial/ethnic group than your own, people with different political views than your own, people from a different religion than your own, people with more or less education than you, and people with a lot more or a lot less money than you) with four response options ranging from trust them a lot (3 points), trust them some, trust them only a little and trust them not at all (0 points). Responses were summed to create a social trust index ranging from 0 to 24. To measure network diversity, participants were asked to indicate how often they talk to or spend time with the same eight groups of people in the social trust index with four response options ranging from very often (3 points), often, not very often and not at all (0 points)(34). Responses were summed to create a network diversity index ranging from 0 to 24. Three questions were included to measure social reciprocity(Reference Sampson, Raudenbush and Earls35,Reference Martin, Rogers and Cook36) : ‘People around here are willing to help their neighbors’, ‘If I had to borrow $30 in an emergency, I could borrow it from a neighbor’ and ‘If I were sick, I could count on my neighbors to shop for groceries for me’. A five-point Likert scale was used to categorise the degree to which participants agreed with the statements, ranging from strongly disagree (1 point), disagree, neutral, agree and strongly agree (5 points). Responses were summed to create a social reciprocity index ranging from 3 to 15. Finally, ten yes/no (1/0 points) questions were related to civic engagement(34,Reference Engbers, Thompson and Slaper37) and asked participants about their past 12-month involvement in various activities (e.g. attend any club or organisational meeting). Responses were summed to create a civic engagement index ranging from 0 to 10.

Demographics

Demographic variables were self-reported and included age, level of completed education, annual household income, weight in pounds, and height in inches. BMI was constructed using height and weight data. Other demographic variables included the potential moderators of degree of rurality, food security status, gender and race/ethnicity. As a covariate, the original race/ethnicity variable was used as is; however, for bivariate and multivariable analyses, the variable was dichotomised into White and AA/Black. Perceived neighbourhood rurality was measured with one item offering three answer choices (in town, in the country with neighbours close by and in the country with very few neighbours)(Reference Kegler, Alcantara and Haardörfer38) and was dichotomised into living in town or living in the country. A previously validated two-item measure was used to assess food security status(Reference Njai, Siegel and Yin39). Participants were asked to indicate never, sometimes or often as to whether two scenarios affected them in the previous 12 months: ‘I worried whether my food would run out before I got money to buy more’ and ‘The food I bought just didn’t last and I didn’t have money to get more’. Those who responded sometimes or often to at least one of the statements were classified as FI.

Analysis

Descriptive statistics were run on sample characteristics. Continuous variables were described with means and standard deviations, while categorical variables were described using frequencies and percentages. Bivariate analyses assessed associations between all four SC variables and the four moderators using ANOVA, the three healthy eating behaviours and the SC variables using ANOVA, and the healthy eating behaviours and moderators using chi-squared tests.

Separate multivariable logistic models were developed to examine associations between SC dimensions and the probability of meeting DGA recommendations for each of the healthy eating behaviours (≥ 3 servings of fruit, ≥ 4 servings of vegetables and 0 12-ounce SSB), as well as possible moderation. Potential moderators were perceived neighbourhood rurality (in town and in the country), food security status (FS and FI), gender (male and female), and race/ethnicity (White and AA/Black). Initial models included the SC dimensions and interactions between the SC dimensions and moderators. Models were then pared down to include only significant interactions. Race, gender, age, income and education were added as covariates, and the county variable was added as a covariate to all models using indicator variables to adjust for clustering of the data by county. All analyses were conducted in SAS 9.4. Statistical significance was assessed at alpha = 0·05.

Results

Study participants

Sample characteristics are presented in Table 1. Among the 1120 participants, most were older, women, White, overweight or obese, and FI, and had low educational attainments and yearly incomes. Only 11·2 % of participants met the DGA recommendation for fruit, even fewer (9·3 %) met the DGA recommendation for vegetables, and approximately one-third of participants did not consume any SSB per d.

Table 1 Sample characteristics

SSB, sugar-sweetened beverages.

* Potential moderators.

Possible ranges for social capital indexes: social trust (0–24), network diversity (0–24), social reciprocity (3–15) and civic engagement (0–10).

Bivariate associations

Regarding the bivariate associations between the SC dimensions and the moderators (Table 2), compared with people who lived in town, those who lived in the country had higher levels of social trust (Mcountry = 14·7, sd country = 4·62, Mtown = 13·6, sd town = 5·47, P = 0·023) and social reciprocity (Mcountry = 10·4, sd country = 3·28, Mtown = 9·7, sd town = 3·56, P = 0·001). FS participants, compared with those who were FI, had higher levels of all SC dimensions. Compared with women, men had higher levels of social trust (Mmen = 15·1, sd men = 4·45, Mwomen = 14·2, sd women = 5·08, P = 0·009), social reciprocity (M men = 10·7, sd men = 3·14, M women = 10·0, sd women = 3·47, P = 0·001) and civic engagement (M men = 3·6, sd men = 2·85, M women = 3·1, sd women = 2·71, P = 0·004). Similarly, Whites had higher levels of all SC dimensions compared with AA/Blacks.

Table 2 Bivariate associations between SC dimensions and potential moderators†

SC, social capital.

Associations run using PROC ANOVA.

* Significance at P < 0·05.

Table 3 displays the results of the bivariate associations between the healthy eating behaviours and SC dimensions and between the healthy eating behaviours and potential moderators. Participants who met or exceeded three servings of fruit per d had higher levels of social trust (M ≥ 3 servings = 15·3, sd ≥ 3 servings = 5·19, M < 3 servings = 14·4, sd < 3 servings = 4·86, P = 0·045), network diversity (M ≥ 3 servings = 14·8, sd ≥ 3 servings = 4·76, M < 3 servings = 13·5, sd < 3 servings = 4·8, P = 0·008) and social reciprocity (M ≥ 3 servings = 10·8, sd ≥ 3 servings = 3·17, M < 3 servings = 10·1, sd < 3 servings = 3·41, P = 0·040) compared with those who consumed fewer than three daily servings of fruit (Table 3). Compared with those who did not meet the recommendation of eating four daily servings of vegetables, participants who met the recommendation had higher levels of network diversity (M ≥ 4 servings = 14·8, sd ≥ 4 serving = 4·97, M < 4 servings = 13·5, sd < 4 servings = 4·77, P = 0·010) and civic engagement (M ≥ 4 servings = 4·0, sd ≥ 4 servings = 2·71, M < 4 servings = 3·2, sd < 4 servings = 2·77, P = 0·005). Participants who consumed zero daily servings of 12-ounce SSB experienced higher levels of all SC dimensions.

Table 3 Bivariate associations between healthy eating behaviours and SC dimensions and between healthy eating behaviours and moderators

SC, social capital. SSB, sugar-sweetened beverages.

* Significance at P < 0·05.

Associations between SC indexes and eating behaviours were run using PROC ANOVA.

Associations between moderators and eating behaviours were analysed with chi-squared in PROC FREQ.

Regarding the associations among the potential moderators and healthy eating behaviours (Table 3), there were no significant differences between perceived neighbourhood rurality and any of the healthy eating behaviours. In terms of food security status, compared with FI participants, FS participants were more likely to meet daily fruit recommendations [14·7 % of FS, 7·4 % of FI; X 2(1, 932) = 12·24, P = 0·001], meet daily vegetable recommendations [12·2 % of FS, 6·5 % of FI; X 2(1, 932) = 8·53, P = 0·004] and consume zero SSB per d [45·2 % of FS, 26·6 % of FI; X 2(1, 919) = 33·90, P < 0·0001]. Men were more likely to consume at least one SSB per d compared with women [67·6 % of men, 61·3 % of women; X 2(1, 1082) = 4·10, P = 0·043]. Lastly, in regard to race/ethnicity, a significantly greater percentage of White compared with AA/Black participants met daily fruit recommendations [12·2 % of Whites, 7·2 % of AA/Blacks; X 2(1, 1055) = 4·92, P = 0·027] and consumed zero SSB [42·2 % of Whites, 17·0 % of AA/Blacks; X 2(1, 1039) = 48·28, P < 0·0001].

Multivariable associations

Three adjusted logistic regression models were run for the healthy eating behaviours to assess the relative contributions of the four SC dimensions and to analyse significant interactions among the moderators and SC dimensions (Table 4). There were no significant main effects in any of the models, though several significant interactions emerged.

Table 4 Adjusted OR for the main effect associations between SC dimensions and healthy eating behaviours

SC, social capital. SSB, sugar-sweetened beverages; DGA, Dietary Guidelines for Americans.

Regressions were run using PROC LOGISTIC and modelled the probability of meeting DGA recommendations for fruits and vegetables, and for consuming 0 12-ounce SSB. Main effects not reported for predictors involved with significant interactions. Adjusted for age, sex, gender, race, income, level of education and county clustering.

Perceived neighbourhood rurality moderated two relationships related to fruit consumption and SC (Table 5). The relationship between fruit consumption and network diversity was moderated by perceived neighbourhood rurality but only among those who lived in the country [OR = 1·08; 95 % CI 1·01, 1·17, P = 0·029]. The relationship between fruit consumption and civic engagement was also moderated by perceived neighbourhood rurality, such that those who lived in town had 36 % higher odds of meeting the DGA recommendation for fruit (95 % CI 1·11, 1·65, P = 0·003), but no relationship was found for those who lived in the country.

Table 5 Moderation results modelling the odds of consuming ≥ 3 servings of fruit per d, ≥ 4 servings of vegetables and 0 12-ounce SSB per d

SSB, sugar-sweetened beverages; DGA, Dietary Guidelines for Americans.

* Significance at P < 0·05.

Regressions run in PROC LOGISTIC and modelled the probability of meeting DGA daily recommendations for fruits and vegetables, and for consuming 0 12-ounce SSB; Adjusted for age, sex, gender, race, income, level of education and county clustering.

Food security status moderated two relationships between healthy eating behaviours and SC (Table 5). The relationship between SSB consumption and social reciprocity was moderated by food security status. For every 1-unit increase in social reciprocity, both FS and FI participants had lower odds of consuming zero SSB (OR = 0·92; 95 % CI 0·86, 0·98, P = 0·014, and OR = 0·92; 95 % CI 0·86, 0·99, P = 0·037, respectively). The relationship between vegetable consumption and civic engagement was also moderated by food security status in the model testing of all potential interactions (P = 0·049); however, the relationship was no longer significant in the model with only significant interaction terms (P = 0·813), and no differences were found between those who were FS and those who were FI.

Gender and race/ethnicity each moderated one relationship (Table 5). Men had 9 % higher odds (95 % CI 1·01, 1·18, P = 0·038) of consuming zero SSB for every 1-unit increase in social trust; however, no relationship was found for women. Whites had 10 % higher odds of meeting the DGA recommendation for vegetables (95 % CI 1·01, 1·19, P = 0·028) for every 1-unit increase in network diversity, but the data did not support this relationship among AA/Blacks.

Discussion

The main aim of this study was to explore whether four dimensions of SC were associated with three healthy eating behaviours and to investigate whether those relationships were moderated by perceived neighbourhood rurality, food security status, gender and race/ethnicity. The percentage of respondents meeting the DGA recommended servings of fruits and vegetables (11·2 % and 9·3 %, respectively) was similar to national estimates (12·2 % and 9·3 %, respectively) and estimates for the state of Georgia (12·0 % and 8·5 %, respectively)(Reference Lee-Kwan, Moore and Blanck2). While the SC dimensions were associated with the healthy eating variables in the expected directions in bivariate analyses (see conceptual model in Fig. 1), there were no significant main effects between SC dimensions and healthy eating variables in regression models.

Contextual factors related to social capital and healthy eating

Food insecurity was especially high in our sample with 46·1 % of respondents classified as FI, compared with 26·2 % of Georgia households estimated to be FI based on data from the 2017 BRFSS(Reference Njai, Siegel and Yin39). Consistent with the large body of research on food security and healthy eating behaviours(Reference Nosratabadi, Khazami and Abdallah13,Reference Drisdelle, Kestens and Hamelin27) , our analyses highlight the strong positive relationship between being FS and having healthier eating behaviours, in the case of our data, consuming at least three servings of fruit, four servings of vegetables and zero 12-ounce servings of SSB per d. Further, and also consistent with previous research(Reference Dean and Sharkey4,Reference Nosratabadi, Khazami and Abdallah13,Reference Bailey20) , our results suggest a strong positive relationship between food security and all dimensions of SC. As SC is believed to reduce food insecurity through knowledge and product sharing, thus increasing one’s access to and availability of food(Reference Nosratabadi, Khazami and Abdallah13), it is possible that our data, though cross-sectional, are demonstrating that high levels of the different SC dimensions are protective against food insecurity through the exchange of information (e.g. food-related resources) and goods (e.g. food) among members of these rural communities. As far as food security status as a moderator, food security initially moderated two relationships, but only one remained significant in the model that included only significant interactions. Both FS and FI participants with higher amounts of social reciprocity were less likely to consume zero SSB. Of all the SC dimensions, social reciprocity (i.e. helping someone with the expectation that the same person will help you at some point in the future)(Reference Sørensen16) is most aligned with the mechanism believed to drive the inverse relationship between SC and food insecurity (i.e. knowledge and product sharing). Perhaps our finding, that regardless of food security status social reciprocity is associated with a greater likelihood of consuming at least one SSB per d, reveals that goods (regardless of their healthfulness) may be shared among community members. Our categorisation of the healthy eating variables may have made it easier to pick up on this finding for SSB than for fruit or vegetable consumptions; future research might instead examine these variables continuously.

Our findings related to perceived neighbourhood rurality are more challenging to interpret. In bivariate analyses, one’s perception of living in the country (compared with living in town) was associated with higher social trust and social reciprocity. Our findings are unique in that we explored one’s perceived neighbourhood rurality, and these simple analyses are consistent with previous findings related to objective measures of rurality, which have shown that SC increases when moving from the urban to the rural end of the population density spectrum(Reference Putnam7,Reference Sørensen16,Reference Hofferth and Iceland17) . Perceived neighbourhood rurality also moderated several relationships, though results diverged from our hypothesis. Participants who self-reported living in the country (but not those who self-reported living in town) were more likely to meet the DGA recommendation for fruit with higher levels of network diversity (i.e. time spent talking to or spending time with different groups of people). However, participants who self-reported living in town (but not those who self-reported living in the country) had higher odds of eating the recommended daily servings of fruit with higher levels of civic engagement. Previous research comparing SC’s effects in urban and rural areas has found that while SC is typically higher in rural areas(Reference Sørensen16,Reference Hofferth and Iceland17) , the positive outcomes of SC (e.g. greater fruit consumption) are more prevalent in urban areas, possibly due to more densely populated communities where neighbours have stronger awareness of each other(Reference Ziersch, Baum and Darmawan11,Reference Nummela, Sulander and Rahkonen12) . While results of this study suggest the opposite relationship is true for network diversity, our results do corroborate that rationale for the civic engagement dimension of SC where individuals who lived in town (i.e. a more densely populated area) were more likely to meet the DGA recommendation for fruit with more civic engagement. Our interest in perceived rurality has more recently been reflected in the literature as a nuanced understanding of residential environments worthy of investigation(Reference Kegler, Alcantara and Haardörfer38,Reference Bucholtz, Molfino and Kolko40,Reference Bucholtz and Kolko41) , as evidenced by the recent creation of the Urbanization Perceptions Small Area Index(Reference Bucholtz, Molfino and Kolko40) and the addition of a perceived neighbourhood question to the American Housing Survey(Reference Bucholtz and Kolko41). However, as this is the only study to our knowledge to explore perceived rurality, SC and eating behaviours, more research is needed to explicate this relationship and compare differences between perceived and observed rurality in relation to SC and healthy eating.

Demographic factors related to social capital and healthy eating

Contrary to previous evidence that suggests AA/Blacks eat more fruit compared with Whites on both a national and state level(Reference Lee-Kwan, Moore and Blanck2,Reference Grimm, Foltz and Blanck22) , we found that significantly more White participants in our sample met DGA recommendations for daily fruit intake compared with AA/Black participants. Our findings do support other research that indicates greater SSB consumption among AA/Blacks compared with Whites(Reference Dai, Soto and Dunn29). Additionally, we found significant results for the bivariate analyses exploring the relationships between race and each SC dimension, with Whites experiencing significantly higher levels of each dimension of SC. Further, and aligned with our hypothesis, we found that race/ethnicity moderated the relationship between vegetable consumption and network diversity for Whites but not AA/Blacks. While previous research has not explored how race/ethnicity moderates the SC–healthy eating relationship, our findings support past research on racial disparities related to SC. Previous theories have posited that SC is unevenly distributed to all members of a society, with Whites benefitting more from SC compared with minorities(Reference Hero24,Reference McDonald and Day30,Reference Foster-Bey42) . Specifically, higher levels of civic engagement (e.g. community association membership and voter registration)(Reference Hero24,Reference Foster-Bey42) and generalised trust(Reference Fairbrother and Martin43) have been found among Whites compared with minorities. Perhaps as people participate in more civic activities, their social networks broaden, which fosters greater levels of trust(Reference Glanville44). Additionally, McDonald and Day(Reference McDonald and Day30) discussed the way in which SC can create inequalities in the workplace, where Whites, particularly White men, are selected for high-level job openings over women and racial/ethnic minorities despite not searching for those positions, largely due to the information spread through White men’s social networks. Our findings, the first exploring the role of race within the healthy eating–SC relationship, indicate that disparities are present in this relationship where the eating behaviours of Whites benefit more from SC compared with AA/Blacks.

Gender was only associated with SSB consumption in bivariate analyses, whereby a greater percentage of women than men consumed zero SSB per d, which is unsurprising given past research(Reference Sharkey, Johnson and Dean5). Men, however, had significantly higher levels of social trust, social reciprocity and civic engagement, confirming findings by Eriksson and colleagues(Reference Eriksson, Dahlgren and Janlert10) yet contradicting those by Pinillos-Franco and Kawachi(Reference Pinillos-Franco and Kawachi23). We also found that gender moderated the relationship between SSB consumption and social trust, where men (but not women) were more likely to consume zero SSB per d with increased social trust. To our knowledge, only one study has explored the relationship between SC and SSB consumption, where a one-unit increase in SC was associated with a 3·6-ounce decrease in daily SSB consumption among a sample of rural Virginians(Reference Bailey20). Our results support those findings among men. Nevertheless, as SSB consumption is so rarely included as a healthy eating behaviour examined in relation to SC, it is unclear if the mechanisms thought to link fruit and vegetable consumption to SC (i.e. diffusion of health-promoting knowledge and resources and social control over health-related behaviours) hold true for SSB consumption as well.

Limitations and future directions

The current study had several limitations. These cross-sectional data prevent us from making causal claims, so it may be that high levels of food insecurity limit one’s ability to cultivate SC rather SC being protective against food insecurity, for instance, or there may be a third variable explaining these associations. Longitudinal and qualitative data could elucidate the causal pathways between SC and healthy eating behaviours. It may be considered a weakness that we cannot compare the amounts of the dimensions of SC in our study to previous research due to the differing conceptions and measures of SC within the field; however, we believe our findings contribute to the understanding of the complex construct of SC. Additionally, these results describe select communities in Georgia and may not generalise to other communities. Further, although these data represent five rural Georgia counties, it should be noted that respondents’ classification of their rurality (i.e. in town v. in the country) is subjective; therefore, these findings describe how respondents perceive the degree of rurality of their residence within the rural county in which they reside. Lastly, though we did find several significant relationships, the effect sizes of those relationships were relatively small.

Despite these limitations, this study expands on previous research by gaining a more comprehensive picture of SC(Reference Gilbert, Quinn and Goodman21) and its associations with healthy eating behaviours in rural areas and fills a crucial gap in the literature by exploring contextual and demographic moderators of the SC–healthy eating relationship. At a time when rural residence is so often discussed as a ‘risk factor’ for various conditions(Reference Lutfiyya, Chang and Lipsky3,Reference Lutfiyya, McCullough and Haller6) and with many people choosing to leave rural areas for cities and suburbs, it is important for interventions within rural communities to harness the abundance of SC that exists there. Community gardens are one intervention strategy that may foster SC while also increasing fruit and vegetable consumption(Reference Martin, Clift and Christie26). Participation in community gardens has the potential to (1) increase dimensions of SC, for example, creating a community-centred activity (i.e. community engagement), producing food resources for community members to share (i.e. social reciprocity), and fostering interactions with new people (i.e. network diversity) and (2) result in improved diet through the food grown, the dissemination of information related to gardening and healthy eating, and the social influence to eat healthfully(Reference Martin, Clift and Christie26). In fact, healthy eating interventions, particularly those at the interpersonal level of the Social Ecological Model(Reference McLeroy, Bibeau and Steckler45), often rely on social networks and social support as change mechanisms(Reference Smith, Lee and Towne46,Reference de la Haye, Bell and Salvy47) ; those mechanisms can be scaled up to the community level, for instance, through group-based interventions, whereby social support fosters social reciprocity and social networks enhance network diversity.

Many organisations (e.g. Robert Wood Johnson Foundation) are investing in rural community efforts to increase SC and impact health behaviours, including healthy eating. Therefore, it is important to understand how SC is related to healthy eating, in which contexts, and for whom, not only to most effectively harness SC, but to ensure that SC and its benefits are equitably distributed. Our findings reveal the complex interplay among dimensions of SC and eating behaviours and highlight the need for qualitative research to illuminate possible causal mechanisms and how they may differ depending on demographic and contextual characteristics.

Acknowledgements

Acknowledgements: N/A. Authorship: C.C.A. guided study design of the current study, conducted much of the analyses and drafted most of the paper. R.H. had input in parent study design, gave input to current study design, assisted with analyses of the current study and edited this paper. A.K.H. managed data collection of the parent study and drafted some of the methods for and edited this paper. T.L.M-G. gave input to current study design and edited the paper. K.R.J.A. had input in parent study design and edited this paper. M.C.K. guided study design of parent study, gave input to current study design, assisted with analyses of the current study and edited this paper. Ethics of human subject participation: The Emory University Institutional Review Board determined this study was non-research, given the primary purpose was programme evaluation.

Financial support:

The evaluation was funded through a grant (#3152) from the Healthcare Georgia Foundation.

Conflict of interest:

There are no conflicts of interest.

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Figure 0

Fig. 1 Conceptual model of the relationship between dimensions of social capital and healthy eating behaviours

Figure 1

Table 1 Sample characteristics

Figure 2

Table 2 Bivariate associations between SC dimensions and potential moderators†

Figure 3

Table 3 Bivariate associations between healthy eating behaviours and SC dimensions and between healthy eating behaviours and moderators

Figure 4

Table 4 Adjusted OR for the main effect associations between SC dimensions and healthy eating behaviours†

Figure 5

Table 5 Moderation results modelling the odds of consuming ≥ 3 servings of fruit per d, ≥ 4 servings of vegetables and 0 12-ounce SSB per d†