Hostname: page-component-586b7cd67f-l7hp2 Total loading time: 0 Render date: 2024-11-28T01:26:07.694Z Has data issue: false hasContentIssue false

Investigation into longitudinal dietary behaviours and household socio-economic indicators and their association with BMI Z-score and fat mass in South African adolescents: the Birth to Twenty (Bt20) cohort

Published online by Cambridge University Press:  17 July 2012

Alison B Feeley*
Affiliation:
MRC/WITS Developmental Pathways for Health Research Unit, School of Medicine, University of the Witwatersrand, 7 York Road, Parktown, 2193 Johannesburg, South Africa
Eustasius Musenge
Affiliation:
Epidemiology and Biostatistics Division, School of Public Health, Faculty of Health Sciences, University of the Witwatersrand, Johannesburg, South Africa
John M Pettifor
Affiliation:
MRC/WITS Developmental Pathways for Health Research Unit, School of Medicine, University of the Witwatersrand, 7 York Road, Parktown, 2193 Johannesburg, South Africa
Shane A Norris
Affiliation:
MRC/WITS Developmental Pathways for Health Research Unit, School of Medicine, University of the Witwatersrand, 7 York Road, Parktown, 2193 Johannesburg, South Africa
*
*Corresponding author: Email [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Objective

The present study aimed to assess the relationship between dietary habits, change in socio-economic status and BMI Z-score and fat mass in a cohort of South African adolescents.

Design

In the longitudinal study, data were collected at ages 13, 15 and 17 years on a birth cohort who have been followed since 1990. Black participants with complete dietary habits data (breakfast consumption during the week and at weekends, snacking while watching television, eating main meal with family, lunchbox use, number of tuck shop purchases, fast-food consumption, confectionery consumption and sweetened beverage consumption) at all three ages and body composition data at age 17 years were included in the analyses. Generalized estimating equations were used to test the associations between individual longitudinal dietary habits and obesity (denoted by BMI Z-score and fat mass) with adjustments for change in socio-economic status between birth and age 12 years.

Setting

Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa.

Subjects

Adolescents (n 1298; 49·7 % male).

Results

In males, the multivariable analyses showed that soft drink consumption was positively associated with both BMI Z-score and fat mass (P < 0·05). Furthermore, these relationships remained the same after adjustment for socio-economic indicators (P < 0·05). No associations were found in females.

Conclusions

Longitudinal soft drink consumption was associated with increased BMI Z-score and fat mass in males only. Fridge ownership at birth (a proxy for greater household disposable income in this cohort) was shown to be associated with both BMI Z-score and fat mass.

Type
Nutrition and health
Creative Commons
Creative Common License - CCCreative Common License - BY
The online version of this article is published within an Open Access environment subject to the conditions of the Creative Commons Attribution licence http://creativecommons.org/licenses/by/3.0/.
Copyright
Copyright © The Authors 2012

Since the end of the segregationist and discriminatory practices of Apartheid in 1994, South Africa has undergone profound political, social and economic transitions. Parallel to these transformations have been lifestyle changes driven by rapid rates of urbanization, from 10 % in 1990 to 56 % in 2005, especially among black South Africans(Reference Steyn, Fourie and Temple1). In addition to infectious diseases and a rise in non-communicable diseases, the South African population also has the added burden of a high prevalence of HIV/AIDS and violence-related trauma(Reference Mayosi, Flisher and Lalloo2); often this collection of health challenges has been referred to as the ‘quadruple burden of disease’.

Urbanization in low- and middle-income countries drives changes in food habits and body composition and is associated with both health gains and health risks. In South Africa, between 1940 and 1992, diet among the black population shifted from a prudent pattern (>50 % carbohydrate, <30 % total fat, ∼15 % protein) to one showing a progressive increase in fat (from 16·4 % to 26·2 %) with a concurrent decrease in carbohydrate (from 69·3 % to 61·7 %)(Reference Bourne, Lambert and Steyn3).

The worldwide prevalence of obesity has reached alarming levels (475 million), affecting people in both high-income countries and low- and middle-income countries. Furthermore, over a billion adults are overweight(4). The latest figures from South Africa show that among those aged 15 years and older the prevalence of combined overweight and obesity is 30 % among males and 55 % among females(5). Of note, black women experience the greatest burden of obesity (29 %) followed by women of mixed ancestry (27 %), whites (14 %) and Indians (25 %). Among men, whites experience the highest levels (23 %), followed by mixed ancestry (15 %), Indian (11 %) and then black men (7 %). Overweight and obesity are also on the increase among younger generations and overweight has been shown to track from childhood into adulthood(Reference Gordon-Larsen, Adair and Nelson6). In a nationally representative study of South African children aged 1–9 years, the prevalence of combined overweight and obesity (equivalent to an adult BMI of ≥ 25·0 kg/m2) was 17·1 %(Reference Steyn, Labadarios and Maunder7). It has been suggested that dietary patterns developed in childhood are maintained into adulthood, and poor dietary habits predispose individuals to obesity and related metabolic diseases later in life(Reference St-Onge, Keller and Heymsfield8).

Among the lifestyle determinants of obesity, socio-economic status (SES) has also been given attention(Reference McLaren9, Reference Monteiro, Moura and Conde10). Briefly, SES and obesity relate to each other differently depending on a country's gross national product. Among women in high-income countries a higher likelihood of obesity is found in those of lower socio-economic strata(Reference McLaren9), while in low- and middle-income countries the burden of obesity shifts towards lower SES groups as the country's gross national product increases. The shift of obesity towards women within low-SES groups seems to occur at an earlier stage of economic development than it does among men. The switch to higher rates of obesity in women of lower SES has been shown to occur when the gross national product per capita is about $US 2500(Reference Monteiro, Moura and Conde10).

There are few longitudinal data and none in South Africa assessing the association between dietary behaviours developed in childhood and adolescence and overweight and obesity. Thus, using longitudinal data from urban South African adolescents at ages 13, 15, and 17 years, part of the Birth to Twenty (Bt20) cohort, we investigated dietary habits and household SES indicators and their associations with BMI Z-score and fat mass.

Materials and methods

Study population, design and sample size

Data for the present study were obtained from a longitudinal birth cohort study, the Bt20 cohort, which started in 1989(Reference Yach, Cameron and Padayachee11). Singleton children (n 3273, 78 % black participants) born between April and June 1990 and resident for at least 6 months in the Soweto-Johannesburg municipality were enrolled into the birth cohort and have been followed up almost annually between birth and 20 years of age. Attrition over the two decades has been comparatively low (30 %), mostly occurring during the children's infancy and early childhood; approximately 2300 participants remain in contact with the study(Reference Norris, Richter and Fleetwood12). Assessments across multiple domains have been made of children, families, households, schools and communities during the course of the study. The assessments included growth, development, psychological adjustment, physiological functioning, genetics, school performance, and sexual and reproductive health(Reference Richter, Norris and Pettifor13).

Data for the current study were collected at ages 13 years (n 1564), 15 years (n 1586) and 17 years (n 1621). Only black participants with complete data at all three ages were included in the analysis (n 1298; 49·7 % male). Dietary habits data for all three ages were assessed against body composition outcomes at age 17 years (see Fig. 1).

Fig. 1 Flowchart showing measurements at the different time points for the current analysis: Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Dietary assessment and exposure variables

Participants completed interviewer-assisted questionnaires on dietary behaviours around food choices and eating practices, occurring in the home, school and community, that have been shown to be associated with poor nutritional outcomes(Reference Birch and Fisher14Reference Dwyer, Evans and Stone22). The questions determined if participants engaged in a particular eating behaviour. If they did, and when appropriate, we enquired about which foods they ate (from a predetermined list) and how often they ate them in the previous week. This is similar to an unquantified FFQ approach where the frequency of certain food items consumed over the recall period is recorded. Further information on the tool's development and piloting can be found elsewhere(Reference Feeley, Musenge and Pettifor23). We asked participants about eating behaviours in three environments of risk. (i) In the home environment, we enquired about how regularly breakfast was eaten during the week and at the weekend, how many snacks were consumed while watching television (TV) in the previous week and what snacks were eaten (e.g. crisps, bread, fruit, sweet biscuits, chocolate, popcorn, cakes, fried chips). We also enquired about how frequently participants ate their main meal with their family. (ii) In the community environment, we asked about the number (0, 1, 2, 3, 4 or >5) of fast-food items (e.g. fried chips, vetkoek (fried dough balls), pies, fried fish, boerewors (a local sausage), hot dogs, hamburger, pizza, samosa, chicken burger, filled pita), confectionery items (sweets, chocolate, doughnuts, crisps, ice cream and cake) and sweetened beverages (soft drinks and squash/cordials) consumed per week. (iii) In the school environment, we asked about the foods purchased from the tuck shopFootnote * (foods we asked about included white bread, brown bread, fruit, pap (mielie meal), fruit juice, milk, yoghurt, cheese, popcorn, peanuts, crisps, fried chips, pie, vetkoek, sweetened beverages, sweets, cake) and how many days during the previous week a lunchbox was used. Lunchbox food items we asked about included cheese, brown bread, white bread, fruit juice, fruit, sweets, crisps, sweetened beverages, yoghurt, meat, sweet biscuits, pies, milk, peanuts and pap (mielie meal). Over the period of data collection, meals were not provided by schools.

Dietary behaviours at each age (breakfast during the week, breakfast at the weekend, snacking while watching TV, eating main meal with family, lunchbox use, number of tuck shop purchases, fast-food consumption, confectionery consumption and sweetened beverage consumption) were categorized into binary variables, i.e. a poor eating habit (e.g. infrequent breakfast consumption or the purchase of a high number of items from the tuck shop etc.) = 1 and a ‘healthier’ eating habit (e.g. frequent breakfast consumption or the purchase of a low number of items from the tuck shop or a low number of fast food or confectionery items) = 0. See Appendix 1 for categorization of each dietary habit variable.

Anthropometric measurements at birth and age 17 years and body composition

Birth weight was retrieved from maternity records. Birth weight Z-scores were calculated using the WHO 2006 growth standards(Reference De Onis, Garza and Onyango24). Weight (digital scale from Dismed, USA), to the nearest 100 g, and height (stadiometer from Holtain, UK), to the nearest millimetre, were measured with participants wearing light clothing and no shoes. Body composition of the total body less the head was determined by dual-energy X-ray absorptiometry (Hologic QDR Discovery W, USA) according to standard procedures of the International Society of Clinical Densitometry (software version 11·2:3)(Reference Gordon, Bachrach and Carpenter25). For the purposes of the present study, only fat mass was used.

BMI was calculated (kg/m2) and internal gender-specific Z-scores were calculated as an alternative to using actual BMI values since BMI Z-scores provide a relative measure of adiposity adjusted for sex- and age-specific growth. Internal Z-scores were used for intra-population comparability. BMI Z-score was calculated as the difference between the participant's BMI and the mean BMI divided by the standard deviation of the cohort BMI for each gender. Fat mass (kg) was adjusted for height (the power coefficient was obtained from the regression analysis of fat mass (kg) v. height (m)) as described by Prentice et al.(Reference Prentice, Parsons and Cole26). This measure was log-transformed to improve normality. As shown by others(Reference Rogers27, Reference Labayen, Moreno and Ruiz28), birth weight Z-score was found to be associated with the outcome measures for both genders; therefore the outcome measures were adjusted for birth weight Z-score by deriving the coefficient from the regression of outcome v. birth weight Z-score.

Socio-economic indicators

SES indicators in the form of data on household durables were collected from the mother at the time of the child's birth and again when the cohort child was 12 years old. The information collected included household electricity and ownership of a TV, washing machine, landline telephone, car and fridge. Maternal education was also ascertained as an indicator of SES.

The household durables were categorized as binary variables; having a particular household durable item = 1, not having this household durable item = 0. Maternal education was categorized into those mothers who achieved a grade 10Footnote * or above = 1 and those who achieved less than this educational level = 0. Gender differences were assessed with the χ 2 test.

Confounding was assessed by performing the regression of individual household SES variables (collected at birth) v. outcome variables and individual dietary habits. If the household variable was significantly associated with the outcome and exposure variable, then it was considered a confounder and adjusted for in the regression models. The use of individual SES indicators resulted from preliminary exploratory analyses whereby a composite score (factor scores) of SES was derived. The score became non-significant when tested as a confounder. Upon doing factor analysis we noted that fridge ownership contributed the greatest amount (factor loadings) to the composite score. The rotated orthogonal Kaiser-varimax factor analysis showed that 23 % of the variability was explained by the first factor which had an eigenvalue of 1·39, with fridge ownership having the greatest loading of 0·97. Therefore it was decided to use individual household SES variables in the regression models.

For each SES variable a new variable was created to assess the change in SES between birth and age 12 years; that is, if the participant ‘acquired’ a particular household durable between the two time points or if they ‘never’ had that particular household durable over the two time points. These two variables were compared with the reference variable of ‘always’ having a particular household durable over the two time points. This variable was used in the multivariable analyses.

Ethics

Ethics clearance was obtained from Witwatersrand University Committee for Research on Human Subjects (protocol number: M080320). Primary caregivers gave written informed consent for their child to participate in the research at each assessment visit and the child provided written assent. Confidentiality has been maintained by the allocation of an identification number for each participant which was used on all questionnaires.

Statistical analysis

All statistical analyses were performed using the STATA statistical software package version 10·0 (StataCorp LP). Demographic and SES variables at birth were compared between the analytic sample (n 1298) and the remaining Bt20 cohort (n 1975).

For the analytic sample, descriptive statistics were performed for each variable, which for continuous variables were the mean and standard deviation. For categorical variables frequencies are presented and associations were assessed using the Pearson χ 2 test. Gender differences were assessed with Student's t test for Gaussian continuous variables.

Univariate and multivariable analyses

We used a generalized estimating equation (GEE) approach to fit our univariate and multivariable models; details are given in Appendix 2. For the Gaussian family-based outcomes BMI Z-score and adjusted fat mass, we used the identity and log link functions, respectively, with independent covariance structure. The binomial family was used for the socio-economic variables with independent covariance structures and a logit link function(Reference Horton and Lipsitz29). First, individual dietary habit variables were inserted individually into the statistical model; then if significantly associated (P < 0·05), multivariable analysis was carried out with the inclusion of the confounding household durable variables (previously assessed by univariate analysis).

Results

Basic characteristics and outcome variables

The analytic sample was better off at birth than the remaining Bt20 cohort in terms of having electricity (96 % v. 90 %, P < 0·001); however, the Bt20 cohort not included was better off in terms of car (32 % v. 25 %, P < 0·001) and washing machine (20 % v. 8 %, P < 0·001) ownership. No differences were found in the ownership of a TV, fridge or landline telephone or in maternal education. However, for marital status, 50 % of the Bt20 parents were either married or cohabiting compared with only 32 % of the parents of the analytic sample (P < 0·001).

Descriptive characteristics of the two gender groups of the analytic sample are described in Table 1. Females had a lower mean birth weight than males (P < 0·001). At 17 years of age, females were shorter than males (P < 0·001) with a similar weight; thus their mean BMI was greater than that of males (P < 0·001). Furthermore, mean total fat mass (less the head) was 2·4 times higher in females than in their male counterparts (P < 0·001). Combined overweight and obesity in this cohort was 8·1 % in males and 27·0 % in females (P < 0·001); this was a decrease in boys and an increase in girls, respectively, from when they were 13 years old (P = 0·038).

Table 1 Descriptive characteristics of the cohort stratified by gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

†WHO 2006 growth standards(Reference De Onis, Garza and Onyango24).

‡Using the International Obesity Taskforce cut-offs for 17·5-year-olds(Reference Cole, Bellizzi and Flegal52).

§Using the International Obesity Taskforce cut-offs for 13·5-year-olds(Reference Cole, Bellizzi and Flegal52).

n 592.

n 529.

††n 594.

‡‡n 561.

Table 2 shows dietary habits and eating practices, stratified by gender, at ages 13, 15 and 17 years. In both boys and girls, irregular breakfast (both weekday and weekend) consumption increased with age, with girls consistently skipping breakfast more often than boys (P < 0·05). Between 30 and 40 % of the cohort ate their main meal with their family infrequently (never/some days) throughout the follow-up period. Over two-thirds consumed fast foods and sweetened beverages on three or more occasions per week. Over two-thirds consumed confectionery on seven or more occasions per week, with girls consuming them more than boys at ages 15 and 17 years (P < 0·05). Generally lunchbox usage was low (5–20 %), with girls using them more regularly than boys at all ages (P < 0·05). Between 50 and 70 % of participants purchased ten or more tuck shop items per week.

Table 2 Dietary habits variables stratified by age and gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

TV, television.

Significant difference between genders: *P < 0·05, **P < 0·01, ***P < 0·001.

There were no gender differences in household SES indicators or maternal education at the birth of the cohort participants. At that time, most of the cohort families had electricity in the home (96 %) and a TV (80 %) and a fridge (76 %). A smaller proportion owned a landline telephone (<58 %), a car (<26 %) or a washing machine (8 %). Nearly half the mothers (45 %) had schooling to grade 10 or above, with only 7 % of this group having had post-school education.

Univariate models

Dietary habits and practices

Univariate GEE between body composition outcome measures at age 17 years and each longitudinal dietary habit and practice variable were assessed. All GEE models were stratified by gender, since gender differences were shown for the outcome and exposure variables.

Among males, the univariate analyses showed that longitudinal sweetened beverage consumption was positively associated with both BMI Z-score (β = 0·050, 95 % CI 0·014, 0·085; P = 0·007) and fat mass (β = 0·035, 95 % CI 0·007, 0·063; P = 0·015), while infrequent consumption of the main family meal was negatively associated with fat mass (β = −0·06, 95 % CI −0·052, −0·001; P = 0·038).

Among females, positive associations were found between irregular weekend breakfast consumption and BMI Z-score (β = 0·044, 95 % CI 0·0135, 0·075; P = 0·005) and fat mass (β = 0·030, 95 % CI 0·000, 0·060; P = 0·047). As with boys, infrequent consumption of the main family meal was negatively associated with fat mass (β = −0·026, 95 % CI −0·052, −0·001; P = 0·038).

Confounders

The regressions of household durable variables v. the exposure and outcome variables were performed separately (Table 3). Among males only, fridge ownership was positively associated with both BMI Z-score and fat mass and with one exposure variable, soft drink consumption (P < 0·05). No other SES variables were associated with either exposure or outcome variables, for either gender.

Table 3 Significant associations (regression coefficient β, 95 % confidence interval) estimated by GEE in univariate analyses regarding the SES indicators of household durables and maternal education in relation to individual dietary habits and eating practices and outcome variables (BMI Z-score and fat mass), stratified by gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

GEE, generalized estimating equations; SES, socio-economic status; TV, television.

Significance of association: *P < 0·05, **P < 0·01, ***P < 0·001.

Birth weight Z-score

Linear regression showed that birth weight Z-score was positively associated with BMI Z-score and fat mass at 17 years of age (P < 0·001) for both genders (Table 4). Therefore in the multivariable analyses each outcome variable was adjusted for birth weight Z-score.

Table 4 Association (regression coefficient β, 95 % confidence interval) of birth weight Z-score with BMI Z-score and fat mass (unadjusted and adjusted for height) at age 17 years, stratified by gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Significance of association: ***P < 0·001.

Multivariable models

Multivariable GEE were conducted separately for both outcome measures (BMI Z-score and fat mass) and for all exposures and confounders.

Only sweetened beverage consumption was positively and significantly associated with BMI Z-score in the unadjusted model. Furthermore, after adjustment for confounders (household assets, in this case fridge ownership), the association between sweetened beverage consumption and BMI Z-score remained (P < 0·05; see Table 5). For fat mass, sweetened beverage consumption was also positively and significantly associated in the unadjusted model, and after adjusting for confounding the relationship remained the same (P < 0·001; see Table 5).

Table 5 Associations (regression coefficient β, 95 % confidence interval) of BMI Z-score and fat mass with sweetened beverage consumption in unadjusted and final multivariable models among males: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Significance of association: *P < 0·05, **P < 0·01, ***P < 0·001.

Discussion

The aim of the present study was to investigate adolescent dietary behaviours and their association with BMI Z-score and fat mass. Among males only, in both the unadjusted and adjusted models we found that sweetened beverage consumption was positively associated with both BMI Z-score and fat mass (P < 0·001). These findings reflect the importance of sweetened beverage consumption in terms of the quantity and range consumed (regarding their energy content) and their relationship with obesity. In this cohort, 76 % of participants owned a fridge which differentiates them from poorer households. Other studies have shown the use of multiple individual measures of SES when assessing children's nutritional status(Reference King and Nicholas Mascie-Taylor30). Furthermore, in a sub-study of the Bt20 cohort, individual household durable variables were shown to act as a proxies for higher SES(Reference Sheppard, Norris and Pettifor31). In this cohort, males from families with higher disposable household income (denoted by fridge ownership) at birth were more predisposed to overweight (denoted by BMI Z-score and fat mass) than those from families with lower income.

Other studies have found an association between adolescent soft drink consumption and obesity, both in low- and middle-income countries and high-income countries. Cross-sectional associations have been found for soft drink consumption and obesity in Saudi boys(Reference Collison, Zaidi and Subhani32) and both Jamaican males and females(Reference Francis, Van den Broeck and Younger33). Unlike cross-sectional studies, longitudinal studies are able to account for the temporal criteria of causality in that repeated observations are possible. However, whereas some US longitudinal studies have found an association between soft drink consumption and obesity(Reference Ludwig, Peterson and Gortmaker34), others have not(Reference Berkey, Rockett and Field35). Perhaps the equivocal findings relate to the concept that soft drinks may be a marker for other dietary factors or other lifestyle factors that are associated with obesity, or due to study design and questionnaire nuances, including the definition of a soft drink.

Research into specific dietary habits associated with poor diet quality and obesity risk among adolescents has focused on breakfast skipping, snack behaviours (including the influence of TV viewing on snacking), food intake at school, eating the main meal with the family, fast-food intake and sweetened beverage consumption(Reference Snoek, van Strien and Janssens36Reference Piernas and Popkin38). While a number of cross-sectional analyses have shown positive associations between eating behaviours (breakfast skipping, fast-food intake, soft drink consumption and eating the main meal with the family) and obesity, these relationships have been attenuated and become statistically non-significant in some longitudinal analyses(Reference Malik, Schulze and Hu39, Reference Rosenheck40). On the other hand, other longitudinal studies have shown positive relationships with obesity, namely with fast food-intake and soft drink consumption and breakfast skipping, among adult populations(Reference Pereira, Kartashov and Ebbeling41) and adolescent populations(Reference Ma, Bertone and Stanek42, Reference Thompson, Ballew and Resnicow43).

The longitudinal dietary patterns of the present Bt20 cohort show that both boys and girls have increasingly irregular breakfast (weekday and weekend) consumption with age, with girls consistently skipping breakfast more often than boys, findings corroborated by other studies in developing countries(Reference Leal, Philippi and Matsudo44). Eating the main meal with the family decreased slightly when participants were 17 years old. In the USA, older adolescents eat with their families less frequently than younger adolescents; furthermore, advancing age has been associated with irregular family meal consumption and poorer diet quality(Reference Neumark-Sztainer, Hannan and Story45). Although cross-sectional analyses have shown that the family meal has a protective effect against obesity, longitudinal analyses have not confirmed this(Reference Fulkerson, Neumark-Sztainer and Hannan37).

Increased TV viewing has been shown to be associated with reduced fruit and vegetable consumption, and more snacking(Reference Snoek, van Strien and Janssens36). One study found that every additional hour of TV viewed equated to an additional intake of 653 kJ/d(Reference Van den Bulck and Van Mierlo46). In our study, the number of snacks eaten while watching TV increased with age and girls consistently consumed them more frequently than boys (P < 0·01).

US ecological data have shown that snacking (including confectionery) in adolescents has increased between 1977 and 2006, with about three snacks eaten per day which account for up to 27 % of total energy intake(Reference Piernas and Popkin38). In our cohort a higher proportion of girls consumed confectionery seven or more times weekly than boys at all ages.

It is thought that bringing food from home to school is healthier than purchasing items available at the school tuck shop but in the Bt20 cohort lunchbox usage was low (5–20 %) across all ages, with boys using them less regularly than girls (P < 0·05). However we did show that of those who took lunchboxes to school, the five most popular items were relatively healthy (brown and white bread, cheese, fruit and fruit juice)(Reference Feeley, Musenge and Pettifor23).

SES can influence dietary intake and eating behaviours through purchasing of foods. In a developing environment such as Soweto, those in higher income strata have a greater disposable income to purchase relatively expensive fast foods and snacks. However what is unique about this environment is the access to informal food vendors, which makes such energy-dense foods also available to those in poorer income strata. We have observed the sale of cheap snacks and fast foods both in poorer rural and more affluent urban environments(Reference Feeley, Pettifor and Norris47, Reference Feeley, Twine and Kahn48).

The prevalence of combined overweight and obesity was significantly higher in females than males in the present study, which is consistent with other South African research(Reference Puoane, Steyn and Bradshaw49). However, the data show that dietary patterns are not mediated by SES among this female group, which is contrary to other research undertaken in high-income countries and low- and middle-income countries(Reference McLaren9, Reference Monteiro, Moura and Conde10). Perhaps the lack of evidence of a relationship between SES and obesity among females might reflect the choice of indicators used in the research; for example, it has been demonstrated – in men at least – that the SES–obesity relationship depends on the indicator under assessment(Reference McLaren9). Another possible reason why no associations were found among females in the Bt20 cohort is because we are witnessing a change in the social patterning of overweight/obesity, as suggested by Monteiro et al.(Reference Monteiro, Moura and Conde10). For example, in some countries, for certain SES indicators the association with obesity was more often negative than positive, suggesting that the social patterning of overweight is possibly undergoing transition in middle-income countries(Reference Monteiro, Moura and Conde10) and reflecting that of developed countries. Another possibility is that the cohort did not reflect a very wide distribution of SES since most can be defined as poor as compared with high-income countries.

An alternative hypothesis suggests that the greater prevalence of obesity among females (both in this population and others in South Africa(5, Reference Puoane, Steyn and Bradshaw49)) relates to nutritional programming in utero, whereby a relationship exists between the environment during critical windows of development and the progression of disease in adult life(Reference Barker50). Studies have shown that perinatal nutritional deficits predispose adult offspring to increased fat accumulation and other metabolic outcomes. Another explanation for our lack of a finding in girls might relate to physical activity. Other South African research has reported declines in physical activity with girls exercising less often than boys(Reference Reddy, Panday and Swart51).

A limitation of the present study is that its findings cannot be extrapolated to other subgroups in South Africa because we assessed only black South African adolescents in Soweto, reflecting a particular social stratum. Another limitation is that total energy intake or energy expenditure was not investigated.

Conclusion

In summary, we showed that longitudinal sweetened beverage consumption was positively and significantly associated with both BMI Z-score and fat mass at age 17 years among males. Furthermore, fridge ownership at birth (a proxy for greater household disposable income in the Bt20 cohort) was shown to be associated with BMI Z-score and fat mass.

Acknowledgements

The Bt20 study is funded by the Wellcome Trust (UK), the Medical Research Council of South Africa, the Human Sciences Research Council, the University of the Witwatersrand and the South Africa Netherlands Partnership for Alternative Development. The present analysis was funded by a Wellcome Trust Training Fellowship to S.A.N. All authors declare that they have no conflicts of interest. A.B.F. and S.A.N. designed the research; A.B.F. conducted the research; A.B.F. and E.M. analysed the data; all authors contributed to the interpretation of the results; A.B.F., S.A.N. and J.M.P. wrote the paper; A.B.F. had primary responsibility for the final content. All authors read and approved the final manuscript.

Appendix 1

Categorization of dietary habit variables

Continuous exposure variables were categorized into binary variables:

Coding for categorical variables:

Appendix 2

The generalized estimating equation model structure

The data for our study were longitudinal since they were collected at ages 13, 15 and 17 years. As such, the observations are correlated at the individual level. We thus employed GEE, which are an extension of the generalized linear models (GLM) that can handle correlation in data. Our model, which follows from the exponential family of distributions GLM introduced, has the link form:

$$ {\rm g}({{\mu }_i})\: = {\rm g}\:(E[{{Y\!}_i}])\: = \:{{{\tf=&#x0022;Garamond-ITC-BI&#x0022; x}^{\prime}}\!\!_i}\bibeta, \eqno\rm\$$

where $$-->$<> {{{\tf=&#x0022;Garamond-ITC-BI&#x0022; x}^{\prime}\!\!}_i} <$> <!--\]$$ is a p × 1 vector of covariates for the ith subject, $$-->$<> \bibeta<$> <!--\]$$ is a p × 1 vector of regression coefficients, g(·) is the link function which can take any form of the exponential family, Yi is the outcome of the ith subject and μi is the mean of Yi (or expectation of Yi = E[Yi])(Reference Horton and Lipsitz29).

In the GEE extension of this model for repeated measures, we model the average response for observations sharing the same covariates (marginal expectation) as:

$$ {\rm g}({{\mu }_{ij}})\: = \:{\rm g}(E[{{Y}_{\!ij}}])\: = \:{{{\tf=&#x0022;Garamond-ITC-BI&#x0022; x}^{\prime}}_{\!\!ij}}\bibeta, \eqno\rm\$$

where $$-->$<>{\tf=&#x0022;Garamond-ITC-BI&#x0022; x}^{\prime}}_{\!ij}} <$> <!--\]$$ is a p × 1 vector of covariates for the ith subject (i = 1,2,…,n) at the jth outcome (j = 1,2,…,t), $$-->$<> \bibeta<$> <!--\]$$ is a p × 1 vector of regression coefficients, g(·) is the link function which can take any distributional form and Yij is the outcome of the ith subject at the jth outcome whose mean and variance are characterized as the GLM(Reference Zeger and Liang53).

The correlated observations have a certain working correlation matrix, R(α), of the forms: independent, exchangeable, unstructured, time series auto-regressive orders, user defined and many others. Assuming no missing data, the t × t covariance structure for Yi is the following, with Ai a matrix of variance functions and Φ the GLM dispersion parameter:

$$ {{{\bf {{V\!}}}}_i}\: = \:\rPhi {\bf {{A}}}_{i}^{{1/2}} {\bf {{R}}}({\bf {{\alpha }}}){\bf {{A}}}_{i}^{{1/2}} \eqno\rm\$$

In this paper we fit our models using three link functions: the identity function $$-->$<> ({\rm g}(E[{{Y}_{\!\!ij}}]a)\: = \:E[{{Y}_{\!\!\!ij}}]) <$> <!--\]$$ for BMI Z-score, the log link function $$-->$<> ({\rm g}(E[{{Y}_{\!\!ij}}])\: = \:\log (E[{{Y}_{\!\!ij}}])) <$> <!--\]$$ for fat mass adjusted for height and the logit link function $$-->$<> ({\rm g}(E[{{Y}_{\!\!ij}}])\: = \:\log (E[{{Y}_{ij}}]/(1{\rm{ - }}E[{{Y}_{\!\!ij}}]))) <$> <!--\]$$ for the binary socio-economic variables. Our families of distributions were the Gaussian and the binomial. The working correlation was the identity matrix for the independent covariance structure.

Footnotes

* Which may have been a food vendor selling foods within or outside the school grounds.

* Equivalent to grade 11 in the USA and the legal point of exiting the education system in South Africa.

References

1.Steyn, K, Fourie, J & Temple, N (2006) Chronic Diseases of Lifestyle in South Africa: 1995–2005. Technical Report. Cape Town: Medical Research Council.Google Scholar
2.Mayosi, BM, Flisher, AJ, Lalloo, UGet al. (2009) The burden of non-communicable diseases in South Africa. Lancet 374, 934947.CrossRefGoogle ScholarPubMed
3.Bourne, LT, Lambert, EV & Steyn, K (2002) Where does the black population of South Africa stand on the nutrition transition? Public Health Nutr 5, 157162.CrossRefGoogle ScholarPubMed
4.International Association for the Study of Obesity (2010) About Obesity. London: IASO.Google Scholar
5.Department of Health, Medical Research Council & OrcMacro (2007) The South African Demographic and Health Survey (SADHS) 2003. Pretoria: Department of Health.Google Scholar
6.Gordon-Larsen, P, Adair, LS, Nelson, MCet al. (2004) Five-year obesity incidence in the transition period between adolescence and adulthood: the National Longitudinal Study of Adolescent Health. Am J Clin Nutr 80, 569575.Google ScholarPubMed
7.Steyn, NP, Labadarios, D, Maunder, Eet al. (2005) Secondary anthropometric data analysis of the National Food Consumption Survey in South Africa: the double burden. Nutrition 21, 413.CrossRefGoogle ScholarPubMed
8.St-Onge, MP, Keller, KL & Heymsfield, SB (2003) Changes in childhood food consumption patterns: a cause for concern in light of increasing body weights. Am J Clin Nutr 78, 10681073.CrossRefGoogle ScholarPubMed
9.McLaren, L (2007) Socioeconomic status and obesity. Epidemiol Rev 29, 2948.CrossRefGoogle ScholarPubMed
10.Monteiro, CA, Moura, EC, Conde, WLet al. (2004) Socioeconomic status and obesity in adult populations of developing countries: a review. Bull World Health Organ 82, 940946.Google ScholarPubMed
11.Yach, D, Cameron, N, Padayachee, Net al. (1991) Birth to Ten: child health in South Africa in the 1990s. Rationale and methods of a birth cohort study. Paediatr Perinat Epidemiol 5, 211233.CrossRefGoogle ScholarPubMed
12.Norris, SA, Richter, LM & Fleetwood, SA (2007) Panel studies in developing countries: case analysis of sample attrition over the past 16 years within the Birth to Twenty cohort in Johannesburg, South Africa. J Int Dev 19, 11431150.CrossRefGoogle Scholar
13.Richter, L, Norris, S, Pettifor, Jet al. (2007) Cohort profile: Mandela's children: the 1990 Birth to Twenty study in South Africa. Int J Epidemiol 36, 504511.CrossRefGoogle ScholarPubMed
14.Birch, LL & Fisher, JO (1998) Development of eating behaviors among children and adolescents. Pediatrics 101, 539549.CrossRefGoogle ScholarPubMed
15.Birch, LL (1999) Development of food preferences. Annu Rev Nutr 19, 4162.CrossRefGoogle ScholarPubMed
16.Guthrie, JF, Lin, BH & Frazao, E (2002) Role of food prepared away from home in the American diet, 1977–78 versus 1994–96: changes and consequences. J Nutr Educ Behav 34, 140150.CrossRefGoogle ScholarPubMed
17.Neumark-Sztainer, D, Story, M, Perry, Cet al. (1999) Factors influencing food choices of adolescents: findings from focus-group discussions with adolescents. J Am Diet Assoc 99, 929937.CrossRefGoogle ScholarPubMed
18.Story, M, Neumark-Sztainer, D & French, S (2002) Individual and environmental influences on adolescent eating behaviors. J Am Diet Assoc 102, 3 Suppl., S40S51.CrossRefGoogle ScholarPubMed
19.French, SA, Story, M, Neumark-Sztainer, Det al. (2001) Fast food restaurant use among adolescents: associations with nutrient intake, food choices and behavioral and psychosocial variables. Int J Obes Relat Metab Disord 25, 18231833.CrossRefGoogle ScholarPubMed
20.Gillman, MW, Rifas-Shiman, SL, Frazier, ALet al. (2000) Family dinner and diet quality among older children and adolescents. Arch Fam Med 9, 235240.CrossRefGoogle ScholarPubMed
21.Nicklas, TA, Bao, W, Webber, LSet al. (1993) Breakfast consumption affects adequacy of total daily intake in children. J Am Diet Assoc 93, 886891.CrossRefGoogle ScholarPubMed
22.Dwyer, JT, Evans, M, Stone, EJet al. (2001) Adolescents’ eating patterns influence their nutrient intakes. J Am Diet Assoc 101, 798802.CrossRefGoogle ScholarPubMed
23.Feeley, A, Musenge, E, Pettifor, Jet al. (2012) Changes in dietary habits and eating practices in adolescents living in urban South Africa: the Birth to Twenty cohort. Nutrition 28, issue 7, e1e6.CrossRefGoogle ScholarPubMed
24.De Onis, M, Garza, C, Onyango, AWet al.; WHO Multicentre Growth Reference Study Group (2006) Comparison of the World Health Organization (WHO) child growth standards and the National Centre of Health Statistics/WHO international growth reference: implication for child health programmes. Public Health Nutr 9, 942947.CrossRefGoogle ScholarPubMed
25.Gordon, CM, Bachrach, LK, Carpenter, TOet al. (2008) Dual energy X-ray absorptiometry interpretation and reporting in children and adolescents: the 2007 ISCD Pediatric Official Positions. J Clin Densitom 11, 4358.CrossRefGoogle ScholarPubMed
26.Prentice, A, Parsons, TJ & Cole, TJ (1994) Uncritical use of bone mineral density in absorptiometry may lead to size-related artifacts in the identification of bone mineral determinants. Am J Clin Nutr 60, 837842.CrossRefGoogle ScholarPubMed
27.Rogers, I (2003) The influence of birthweight and intrauterine environment on adiposity and fat distribution in later life. Int J Obes Relat Metab Disord 27, 755777.CrossRefGoogle ScholarPubMed
28.Labayen, I, Moreno, LA, Ruiz, JRet al. (2008) Small birth weight and later body composition and fat distribution in adolescents: the Avena study. Obesity (Silver Spring) 16, 16801686.CrossRefGoogle ScholarPubMed
29.Horton, NJ & Lipsitz, SR (1999) Review of software to fit generalized estimating equation regression models. Am Stat 53, 160169.Google Scholar
30.King, SE & Nicholas Mascie-Taylor, CG (2002) Nutritional status of children from Papua New Guinea: associations with socioeconomic factors. Am J Hum Biol 14, 659668.CrossRefGoogle ScholarPubMed
31.Sheppard, ZA, Norris, SA, Pettifor, JMet al. (2009) Approaches for assessing the role of household socioeconomic status on child anthropometric measures in urban South Africa. Am J Hum Biol 21, 4854.CrossRefGoogle ScholarPubMed
32.Collison, KS, Zaidi, MZ, Subhani, SNet al. (2010) Sugar-sweetened carbonated beverage consumption correlates with BMI, waist circumference, and poor dietary choices in school children. BMC Public Health 10, 234.CrossRefGoogle ScholarPubMed
33.Francis, DK, Van den Broeck, J, Younger, Net al. (2009) Fast-food and sweetened beverage consumption: association with overweight and high waist circumference in adolescents. Public Health Nutr 12, 11061114.CrossRefGoogle ScholarPubMed
34.Ludwig, DS, Peterson, KE & Gortmaker, SL (2001) Relation between consumption of sugar-sweetened drinks and childhood obesity: a prospective, observational analysis. Lancet 357, 505508.CrossRefGoogle ScholarPubMed
35.Berkey, CS, Rockett, HR, Field, AEet al. (2004) Sugar-added beverages and adolescent weight change. Obes Res 12, 778788.CrossRefGoogle ScholarPubMed
36.Snoek, HM, van Strien, T, Janssens, JMet al. (2006) The effect of television viewing on adolescents’ snacking: individual differences explained by external, restrained and emotional eating. J Adolesc Health 39, 448451.CrossRefGoogle ScholarPubMed
37.Fulkerson, JA, Neumark-Sztainer, D, Hannan, PJet al. (2008) Family meal frequency and weight status among adolescents: cross-sectional and 5-year longitudinal associations. Obesity (Silver Spring) 16, 25292534.CrossRefGoogle ScholarPubMed
38.Piernas, C & Popkin, BM (2010) Trends in snacking among US children. Health Aff (Millwood) 29, 398404.CrossRefGoogle Scholar
39.Malik, VS, Schulze, MB & Hu, FB (2006) Intake of sugar-sweetened beverages and weight gain: a systematic review. Am J Clin Nutr 84, 274288.CrossRefGoogle ScholarPubMed
40.Rosenheck, R (2008) Fast food consumption and increased caloric intake: a systematic review of a trajectory towards weight gain and obesity risk. Obes Rev 9, 535547.CrossRefGoogle ScholarPubMed
41.Pereira, MA, Kartashov, AI, Ebbeling, CBet al. (2005) Fast-food habits, weight gain, and insulin resistance (the CARDIA study): 15-year prospective analysis. Lancet 365, 3642.CrossRefGoogle ScholarPubMed
42.Ma, Y, Bertone, ER, Stanek, EJ 3rdet al. (2003) Association between eating patterns and obesity in a free-living US adult population. Am J Epidemiol 158, 8592.CrossRefGoogle Scholar
43.Thompson, OM, Ballew, C, Resnicow, Ket al. (2004) Food purchased away from home as a predictor of change in BMI z-score among girls. Int J Obes Relat Metab Disord 28, 282289.CrossRefGoogle ScholarPubMed
44.Leal, GV, Philippi, ST, Matsudo, SMet al. (2010) Food intake and meal patterns of adolescents, Sao Paulo, Brazil. Rev Bras Epidemiol 13, 457467.CrossRefGoogle ScholarPubMed
45.Neumark-Sztainer, D, Hannan, PJ, Story, Met al. (2003) Family meal patterns: associations with sociodemographic characteristics and improved dietary intake among adolescents. J Am Diet Assoc 103, 317322.CrossRefGoogle ScholarPubMed
46.Van den Bulck, J & Van Mierlo, J (2004) Energy intake associated with television viewing in adolescents, a cross sectional study. Appetite 43, 181184.CrossRefGoogle ScholarPubMed
47.Feeley, A, Pettifor, J & Norris, S (2009) Fast-food consumption among 17-year-olds in the Birth to Twenty cohort. South Afr J Clin Nutr 22, 118123.CrossRefGoogle Scholar
48.Feeley, A, Twine, R, Kahn, Ket al. (2011) Exploratory survey of informal vendor-sold fast food in rural South Africa. South Afr J Clin Nutr 24, 199201.CrossRefGoogle Scholar
49.Puoane, T, Steyn, K, Bradshaw, Det al. (2002) Obesity in South Africa: the South African Demographic and Health Survey. Obes Res 10, 10381048.CrossRefGoogle ScholarPubMed
50.Barker, DJ (1999) Early growth and cardiovascular disease. Arch Dis Child 80, 305307.CrossRefGoogle ScholarPubMed
51.Reddy, SP, Panday, S, Swart, Det al. (2003) Uhlaba Usamila – The South African Youth Risk Behaviour Survey 2002. Cape Town: Medical Research Council.Google Scholar
52.Cole, TJ, Bellizzi, MC, Flegal, Ket al. (2000) Establishing a standard definition for child overweight and obesity worldwide: international survey. BMJ 320, 12401243.CrossRefGoogle ScholarPubMed
53.Zeger, SL & Liang, KY (1986) Longitudinal data analysis for discrete and continuous outcomes. Biometrics 42, 121130.CrossRefGoogle ScholarPubMed
Figure 0

Fig. 1 Flowchart showing measurements at the different time points for the current analysis: Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Figure 1

Table 1 Descriptive characteristics of the cohort stratified by gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Figure 2

Table 2 Dietary habits variables stratified by age and gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Figure 3

Table 3 Significant associations (regression coefficient β, 95 % confidence interval) estimated by GEE in univariate analyses regarding the SES indicators of household durables and maternal education in relation to individual dietary habits and eating practices and outcome variables (BMI Z-score and fat mass), stratified by gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Figure 4

Table 4 Association (regression coefficient β, 95 % confidence interval) of birth weight Z-score with BMI Z-score and fat mass (unadjusted and adjusted for height) at age 17 years, stratified by gender: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa

Figure 5

Table 5 Associations (regression coefficient β, 95 % confidence interval) of BMI Z-score and fat mass with sweetened beverage consumption in unadjusted and final multivariable models among males: black participants, Birth to Twenty (Bt20) study, Soweto-Johannesburg, South Africa