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Predictors and mediators of differences in soft drinks consumption according to gender and plans of further education among Norwegian secondary-school children

Published online by Cambridge University Press:  29 November 2011

Marit Hilsen*
Affiliation:
Department of Public Health, Sport and Nutrition, Postboks 422, University of Agder, 4604 Kristiansand, Norway Department of Nutrition, Faculty of Medicine, University of Oslo, Oslo, Norway Department of Epidemiology & Biostatistics and the EMGO Institute for Health and Care Research, VU University Medical Centre, Amsterdam, the Netherlands
Saskia J te Velde
Affiliation:
Department of Epidemiology & Biostatistics and the EMGO Institute for Health and Care Research, VU University Medical Centre, Amsterdam, the Netherlands
Elling Bere
Affiliation:
Department of Public Health, Sport and Nutrition, Postboks 422, University of Agder, 4604 Kristiansand, Norway
Johannes Brug
Affiliation:
Department of Epidemiology & Biostatistics and the EMGO Institute for Health and Care Research, VU University Medical Centre, Amsterdam, the Netherlands
*
*Corresponding author: Email [email protected]
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Abstract

Objective

To explore mediators of gender and educational differences in sugar-sweetened soft drinks consumption (SDC) and whether gender and level of future education moderate the associations of accessibility, modelling, attitudes and preferences with SDC.

Design

A cross-sectional school-based survey within the Fruits and Vegetables Makes the Marks (FVMM) project from 2005.

Setting

The questionnaires were completed by the pupils in the classroom guided by a trained project worker during one class session. The questionnaire included questions on SDC (times/week), the potential mediators and moderators. Multilevel linear regression models were used to calculate the mediating and moderating effects.

Subjects

A total of 2870 children in 9th and 10th grade (mean age 15·5 years) at thirty-three Norwegian secondary schools were included in the present study.

Results

Girls (B = −1·06) and pupils planning higher education (B = −0·69) reported lower frequency of SDC. The strongest mediators were accessibility and modelling for future educational plans differences (explaining alone respectively 69 % and 44 %) and attitudes and preferences for gender differences (explaining alone respectively 57 % and 51 %). Significant but small moderating effects were found, and all associations between the mediators and SDC were in the same direction for both genders and for those with and without plans of higher future education.

Conclusions

Preferences and modelling may contribute to gender and educational differences in SDC. The small moderating effects indicate that interventions aiming to reduce SDC can target the same mediators for boys and girls and children planning different levels of future education.

Type
Epidemiology
Copyright
Copyright © The Authors 2011 

Sugar-sweetened carbonated soft drinks consumption (SDC) has been associated with increased energy intake and body weight, lower intake of several nutrients and an increased risk of type 2 diabetes(Reference Vartanian, Schwartz and Brownell1), dental caries and potential enamel erosion(Reference Tahmassebi, Duggal and Malik-Kotru2).

The WHO recommends a maximum of 10 % of energy intake from free sugars(3). A study among 8th graders in Norway showed that 18 % of energy intake came from free sugars; for 89 % of the children more than 10 % of energy intake was from free sugars, and soft drinks contributed 30 % to total added sugar intakes(Reference Overby, Lillegaard and Johansson4). Studies in other countries also show high sugar intakes among youth and have reported an increase in SDC among children and adolescents(Reference Rampersaud, Bailey and Kauwell5) as well as an increase in availability of soft drinks(Reference Naska, Bountziouka and Trichopoulou6) in recent years.

Earlier studies further show that boys drink more soft drinks than girls(Reference Bere, Glomnes and te Velde7, Reference Grimm, Harnack and Story8), that consumption of soft drinks increases with age(Reference Rampersaud, Bailey and Kauwell5, Reference Grimm, Harnack and Story8, Reference Lien, Lytle and Klepp9) and that youth from lower socio-economic groups drink more soft drinks(Reference Bere, Glomnes and te Velde7, Reference Nilsen, Krokstad and Holmen10, Reference Vereecken, Inchley and Subramanian11). It has also been reported among younger adults that, compared with low consumers of sugar-sweetened soft drinks, the high consumption group has a lower proportion of physically active individuals and a higher proportion of regular smokers(Reference Kvaavik, Andersen and Klepp12). The Fruits and Vegetables Make the Marks (FVMM) project indicated that gender, educational plans, dieting, accessibility at home, parental and peer modelling, attitudes and preferences all were strong correlates of adolescents’ SDC(Reference Bere, Glomnes and te Velde7). Preferences(Reference Grimm, Harnack and Story8), attitudes(Reference de Bruijn, Kremers and de13Reference van der Horst, Kremers and Ferreira16) and modelling(Reference Grimm, Harnack and Story8, Reference Denney-Wilson, Crawford and Dobbins17, Reference Feunekes, de Graaf and Meyboom18) have been found to be associated with SDC among adolescents in other studies as well. Furthermore, children attending lower levels of education are more likely to drink soft drinks than higher education students(Reference Bere, Glomnes and te Velde7).

In order to reduce SDC among children and adolescents more insight is needed into what may explain the gender and educational differences in SDC. Based on health behaviour theory and the previous findings of other studies outlined above we know that the adolescents’ perceived home accessibility, example behaviour by parents and friends (modelling), attitudes and preferences of soft drinks are associated with SDC. Additionally, given the fact that such potential determinants have also been found to differ according to gender and level of education, we aimed to explore these determinants/correlates further regarding whether they also were associated with gender and future educational plans in the present sample, and if these mediated the intake differences according gender and education. The aims of the present study were therefore to explore whether accessibility, modelling, attitudes and preferences can explain the differences in SDC according to gender and the pupils’ anticipated level of secondary education. The EnRG framework(Reference Kremers, de Bruijn and Visscher19) posits that sociodemographic variables can importantly moderate determinant–behaviour relationships. Gender as well as level of education has been found to be an important moderator of health behaviour change in earlier studies, and interventions are often tailored to level of education or gender. Due to the large gender and socio-economic differences in SDC we wanted to explore whether gender and the pupils’ further educational plans moderate the association between the potential mediators and SDC in the present study. The study therefore also explored whether the associations of accessibility, modelling, attitudes and preferences with SDC differ according to gender and level of anticipated further education (Fig. 1).

Fig. 1 Model of the potential determinants, mediators and moderators of soft drinks consumption

Methods

Study sample and procedure

The data are from the third follow-up measurement (2005 survey) of the Fruits and Vegetables Make the Marks (FVMM) project. Pupils from 9th and 10th grade (mean age estimated to 15·5 years) of thirty-three lower secondary schools in Hedmark and Telemark counties participated. A total of 2870 pupils completed the school-based questionnaire with 51·1 % boys, 51·1 % 9th graders and 49·1 % pupils who planned to enrol in higher levels of further education after graduation from lower secondary school. The questionnaire was completed by the pupils in the classroom guided by a trained project worker in one school class session (45 min).

Measurements

The questions on potential determinants/mediators in the survey questionnaire were based on focus groups interviews among 9th and 10th graders and a pre-test of the questionnaire(Reference Bere, Glomnes and te Velde7). Frequency of SDC, home and school social and physical environmental and personal potential determinants of SDC were included in the questionnaire, as well as sociodemographic factors and gender.

Main outcome variable: frequency of sugar-sweetened soft drinks consumption

Two separate questions were included in the questionnaire to be able to distinguish between the pupils’ consumption of sugar-sweetened soft drinks and artificially sweetened soft drinks. Weekly frequency of SDC among the pupils was assessed with one question: ‘How often do you drink soft drinks?’ The response categories for this question had ten alternatives ranging from ‘never’, ‘less than once per week’, ‘once per week’ … to ‘every day’ and ‘several times per day’. The score of this variable ranged from 0 (never), 0·5 (less than once per week), 1 (once per week) … to 7 (every day) and 10 (several times per day). Test–retest results from a study among 6th graders(Reference Andersen, Bere and Kolbjornsen20) showed an intraclass correlation of 0·72 between two assessments 14 d apart.

Potential moderating variables: sociodemographic factors

The pupils were asked to indicate their plans for further education (future education) after graduation from secondary school: ‘university or college’, ‘technical or vocational education’, ‘no further education’ and ‘others’. This variable was dichotomized into higher education (university/college; score = 1) or not (score = 0). The pupils reported their gender (girl, score = 1; boy, score = 0).

Potential mediators

Perceived accessibility at home of soft drinks was assessed by three questions (Cronbach's α = 0·70(Reference Bere, Glomnes and te Velde7)). Modelling, i.e. descriptive norms from important others, was assessed with four items (Cronbach's α = 0·68(Reference Bere, Glomnes and te Velde7)). Attitudes was assessed by three statements (Cronbach's α = 0·65(Reference Bere, Glomnes and te Velde7)). For these mediators, mean scores were calculated if at least two items were completed, excluding thirty-nine, eighty-six and thirty-six pupils for accessibility, modelling and attitudes, respectively. Preferences was assessed by one question. The questions/statements, ranges and scores of all the potential mediators are presented in the Appendix.

Statistical analyses

First, regression models were used to estimate the overall relationship of future education and gender with SDC (path c; Fig. 2). Second, the relationship of future education plans and gender with the potential mediators (path a) was estimated. Third, the relationship between the potential mediators and SDC (path b) was calculated in a model including the mediator and the predictor. This also provided the direct relationship of future education and gender with SDC (path c′). Mediated effects were found by means of the product-of-coefficients method(Reference MacKinnon21). The standard error term was calculated by the equation(Reference Kenney, Kashy and Bolger22): se= $$-->$<> \sqrt {{{b}^2} s_{a}^{2} \, + \,{{a}^2} s_{b}^{2} \, + \,s_{a}^{2} s_{b}^{2} } <$> <!--$$ , where a and b are unstandardized regression coefficients and sa and sb are their standard errors. The se was used to construct a 95 % confidence interval for the mediated effects. Single and multiple mediator models were run and proportion mediated was calculated as $$-->$<> a\,\times \,b/c and as \mathop{\sum}{(a\,\times \,b)\,/\,c} <$> <!--$$ .

Fig. 2 Model of the mediation paths in the association between gender/future education plans and soft drinks consumption

To allow interpretation of first-order effects of the moderator (future education or gender) and predictor as average effects, the predictor (accessibility, modelling, attitudes and preferences) variables were standardized. Interaction terms were calculated between the standardized predictor variables and the potential moderator. To test whether future education and/or gender were moderators of the association of accessibility/modelling/attitudes/preferences with SDC, a three-step approach was applied. The standardized variable (Z-score) of the predictor was entered first, in the second step the moderator variable was entered, and in the third step the interaction term was included. The effect size was calculated by subtracting R 1 square from R 2 square(Reference Jaccard, Turrisi and Wan23). We used a significance level for the moderated effects of α = 0·1.

All analyses with gender as the predictor or moderator variable were adjusted for future education and grade, and all analyses regarding future education were adjusted for gender and grade. The statistical analyses were conducted using the SPSS statistical software package version 17 (SPSS Inc., Chicago, IL, USA).

Results

Sample characteristics

Pupils with higher future education plans and girls reported a lower mean SDC frequency compared with pupils without plans of higher education and boys (Table 1). Pupils not planning to enrol in higher education and boys also had higher scores on all potential mediators.

Table 1 Soft drinks consumption (times/week, mean and standard deviation) and the potential predictors and mediators by gender and future educational plans: Norwegian 9th and 10th graders (n 2870, mean age 15·5 years), Fruits and Vegetables Makes the Marks (FVMM) project, 2005

Mediation of the gender–sugar-sweetened soft drinks consumption association

The overall association between gender and SDC confirmed that girls had lower consumption frequency than boys (regression coefficient B = −1·06, 95 % CI −1·30, −0·83; Table 2, path c). Table 2 also shows the associations between gender and the potential mediators (path a), the associations between the potential mediators and SDC (path b) and the mediated effects (ab). Preferences explained alone 56·9 % of the variation while attitudes, accessibility and modelling explained alone 51·0 %, 27·3 % and 12·5 %, respectively. Combined the mediators explained 63 % of the gender variation in SDC. The direct effect of gender on SDC was still significant after adjusting for the mediators (Table 2, path c′).

Table 2 Mediated effects in the association between gender and soft drinks consumption by accessibility/modelling/attitudes/preferences: Norwegian 9th and 10th graders (n 2870, mean age 15·5 years), Fruits and Vegetables Makes the Marks (FVMM) project, 2005

Path c, total (overall) effect on soft drinks consumption; path c′, direct effect on soft drinks consumption when adjusted for the mediator; path a, association between gender and mediator; path b, association between mediator and soft drinks consumption; ab, mediated effect using the product-of-coefficient test.

All analyses are adjusted for future education plans and grade. Gender is coded 0 for boys and 1 for girls.

Mediation of the future education–sugar-sweetened soft drinks consumption association

The overall association between future education and SDC showed that pupils planning to enrol in higher education reported lower frequency of consumption (B = −0·69, 95 % CI −0·93, −0·45; Table 3, path c). Table 3 shows the associations between future education and the potential mediators (path a), the associations between the potential mediators and SDC (path b) and the mediated effects (ab). All mediated effects were significant, with modelling explaining alone 69·1 %, while accessibility, preferences and attitudes explained alone 43·7 %, 30·5 % and 29·6 %, respectively. Together, the mediators explained 80 % of the variation in SDC. The direct effect of future education on SDC was not significant after adjusting for the mediators (Table 3, path c′).

Table 3 Mediated effects in the association between future education plans and soft drinks consumption by accessibility/modelling/attitudes/preferences: Norwegian 9th and 10th graders (n 2870, mean age 15·5 years), Fruits and Vegetables Makes the Marks (FVMM) project, 2005

Path c, total (overall) effect on soft drinks consumption; path c′, direct effect on soft drinks consumption when adjusted for the mediator; path a, association between future education plans and mediator; path b, association between mediator and soft drinks consumption; ab, mediated effect using the product-of-coefficient test.

All analyses are adjusted for gender and grade. Planning higher education is coded 1 and not planning higher education is coded 0.

Gender as a moderator of the association between the potential determinants and sugar-sweetened soft drinks consumption

Significant interactions between gender and accessibility (P = 0·028), gender and modelling (P = 0·003) and gender and attitudes (P = 0·033) were found. Stratification by gender showed that the association between attitudes and SDC was stronger among girls (B = 1·25, 95 % CI 1·11, 1·39) than boys (B = 1·00, 95 % CI 0·83, 1·16). The association of accessibility with SDC was stronger for boys (B 1·57, 95 % CI 1·41, 1·73) than girls (B = 1·37, 95 % CI 1·25, 1·48). Also the association of modelling with SDC was stronger for boys (B = 1·55, 95 % CI 1·39, 1·71) compared with girls (B = 1·26, 95 % CI 1·12, 1·48). The differences in explained variances (R 2) of the potential mediators were small, ranging from 0·001 for preferences to 0·004 for modelling.

Future education as a moderator of the association between the potential determinants and sugar-sweetened soft drinks consumption

Significant interactions between future education and modelling (P = 0·038), future education and attitudes (P = 0·001) and future education and preferences (P = 0·001) were found. Stratification by educational plans showed that the association between modelling and SDC was stronger among pupils with plans of future higher education (B = 1·56, 95 % CI 1·40, 1·71) than among pupils without plans of such future education (B = 1·30, 95 % CI 1·51, 1·45). The association of attitudes with SDC was stronger among pupils without plans of higher education (B = 1·29, 95 % CI 1·12, 1·45) compared with pupils with plans of higher education (B = 0·92, 95 % CI 0·78, 1·07). Also the association of preferences with SDC was stronger for pupils without plans of higher education (B = 1·35, 95 % CI 1·16, 1·53) than for pupils with plans of higher education (B = 0·99, 95 % CI 0·86, 1·13). The effect sizes, measured by the differences in explained variances (R 2) of the potential mediators, were small, ranging from 0 for accessibility to 0·006 for attitudes. This means that the interaction effect accounts for up to 0·6 % of the variance in SDC.

Discussion

The present study supports earlier findings regarding gender and educational differences in SDC and further suggests that these differences were strongly associated with gender differences in attitudes and preferences and educational differences in accessibility and modelling. Significant, moderating effects were found. The association between attitudes and SDC was stronger for girls, while the association between accessibility (and modelling) and SDC was stronger for boys. The association between modelling and SDC was stronger for pupils with plans of higher education, while the association between preferences (and attitudes) and SDC was stronger for pupils without plans of higher education. However, although gender and future education plans statistically significantly moderated these associations the moderation effects were too minor to be practically relevant; and the associations between mediators and SDC were always in the same direction for both genders and for those with and without future education plans. A previous review reported that gender was the most convincing moderator regarding intervention studies, where in general girls responded better to interventions addressing energy balance-related behaviours than boys(Reference Kenney, Kashy and Bolger22). However, the two included studies on soft drinks consumption showed mixed results(Reference Haerens, De and Maes24, Reference Singh, Chin and Brug25), with only one showing a significant moderating intervention effect by gender(Reference Singh, Chin and Brug25). Our hypothesis that gender and education plans would moderate the association between presumed determinants of SDC and intakes was thus not supported by the data. This is of importance for interventions and policies; the results of our study do not appear to justify targeted approaches – i.e. different messages or approaches according to gender or education plans – in interventions aiming to reduce SDC in secondary-school pupils in Norway.

Disparities in SDC in relation to gender(Reference Bere, Glomnes and te Velde7, Reference Grimm, Harnack and Story8, Reference Nilsen, Krokstad and Holmen10, Reference Vereecken, Inchley and Subramanian11, Reference Denney-Wilson, Crawford and Dobbins17) and level of education as well as other indicators of socio-economic position(Reference Bere, Glomnes and te Velde7, Reference Nilsen, Krokstad and Holmen10, Reference Vereecken, Inchley and Subramanian11) have been well documented. However, no studies explored what could explain the relationship between gender/indicators of socio-economic position and SDC. Earlier, preferences and perceived accessibility at home had been reported to be the strongest mediator of respectively gender(Reference Bere, Glomnes and te Velde7) and parental education disparities in fruit and vegetable consumption among adolescents in Norway(Reference Bere, van Lenthe and Klepp26).

In the current study, modelling by family and friends was not only associated with SCD, but also with future educational plans, and identified as a significant mediator. If indeed pupils with no plans for higher future education live in families or have close friends of lower socio-economic position, it can be expected that their family and friends engage in more unhealthy behaviours, e.g. high SDC. It is well known that family and friends’ socio-economic position is related to engagement in healthy behaviours(Reference Naska, Bountziouka and Trichopoulou6, Reference Vereecken, Inchley and Subramanian11). Future intervention programmes addressing educational disparities in SDC may therefore need to take into account the pupils’ accessibility and their family and friends’ behaviours. That is, such intervention programmes should especially be focused on reducing accessibility of SDC in the home and school environments: banning of soft drinks vending machines in schools, for example, and try to provide positive role models in the home and school environment.

In addition to being associated with SDC, preferences was also associated with gender, and found to be a mediator of the gender–SDC association. Preference has also been reported as the strongest mediator of the association between gender and fruit and vegetable intake(Reference Bere, Brug and Klepp27). Preference is a strong driver of intake, and our finding suggests that success in interventions to reduce SDC will be harder among boys.

The present study has some limitations. The reliability of the specific SDC intake was assessed (test–retest reliability was relatively high; r = 0·72) and the relative validity has been assessed among 6th graders using similar frequency questions for a range of food and drink intakes indicating acceptable validity(Reference Andersen, Bere and Kolbjornsen20), but the relative validity of the specific questions used in the present study was not tested. The current study is based on cross-sectional data. In order to explore further and gain more insight to whether the potential mediators really can explain the observed variance in SDC and whether gender and educational plans are significant moderators, longitudinal analyses as well as intervention studies are needed.

Conclusions

Accessibility, parental and peer modelling, attitudes and preferences were the strongest mediators of educational and gender differences in SDC in Norwegian secondary-school students. This suggests that future interventions should address modelling and preferences in order to decrease the gender and SES disparities in SDC intake. Lack of substantial moderation indicates that interventions on reducing SDC for girls and boys, and students planning to attend higher and lower levels of education, should target the same mediators, namely accessibility, modelling, attitudes and preferences.

Acknowledgements

The project was funded by the Norwegian Research Council. The authors declare that they have no competing interests. E.B. conceived the 2005 survey of the FVMM project. M.H., S.J.t.V. and J.B. designed the present study. M.H. and S.J.t.V. analysed the data. All authors contributed to the interpretation. M.H. drafted the manuscript and S.J.t.V., J.B. and E.B. critically revised it. All authors approved of the final manuscript.

Appendix

Overview of the questions and statements used for assessing the potential mediators of soft drinks consumption and the response alternatives/scores

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Figure 0

Fig. 1 Model of the potential determinants, mediators and moderators of soft drinks consumption

Figure 1

Fig. 2 Model of the mediation paths in the association between gender/future education plans and soft drinks consumption

Figure 2

Table 1 Soft drinks consumption (times/week, mean and standard deviation) and the potential predictors and mediators by gender and future educational plans: Norwegian 9th and 10th graders (n 2870, mean age 15·5 years), Fruits and Vegetables Makes the Marks (FVMM) project, 2005

Figure 3

Table 2 Mediated effects in the association between gender and soft drinks consumption by accessibility/modelling/attitudes/preferences: Norwegian 9th and 10th graders (n 2870, mean age 15·5 years), Fruits and Vegetables Makes the Marks (FVMM) project, 2005

Figure 4

Table 3 Mediated effects in the association between future education plans and soft drinks consumption by accessibility/modelling/attitudes/preferences: Norwegian 9th and 10th graders (n 2870, mean age 15·5 years), Fruits and Vegetables Makes the Marks (FVMM) project, 2005