Skip to main content
BMJ Open logoLink to BMJ Open
. 2018 Apr 7;8(4):e019391. doi: 10.1136/bmjopen-2017-019391

Descriptive epidemiology of changes in weight and weight-related behaviours of Australian children aged 5 years: two population-based cross-sectional studies in 2010 and 2015

Louise L Hardy 1,2, Louise A Baur 1,2,3, Li Ming Wen 2,3,4, Sarah P Garnett 2,5, Seema Mihrshahi 1,2,3
PMCID: PMC5892739  PMID: 29627808

Abstract

Objective

Over the past 10–15 years there has been substantial investment in New South Wales (NSW), Australia, to reduce child obesity through interventions in children aged 0–5 years. We report changes in weight and weight-related behaviours of 5-year-old children.

Design

Cross-sectional surveys conducted in 2010 and 2015.

Setting

NSW schools (2010 n=44; 2015 n=41)

Participants

Australian children in kindergarten (2010 n=1141 and 2015 n=1150).

Outcome measures

Change in anthropometry and indicators of diet, screen time, school travel and awareness of health recommendations. Additionally, we examined 2015 differences in weight-related behaviours by sociodemographic characteristics.

Results

Prevalence of overweight/obesity was 2.1% lower (adjusted OR (AOR) 0.83, 95% CI 0.67 to 1.04) and abdominal obesity 1.7% higher (AOR 1.35, 95% CI 0.93 to 1.98) in 2015 than 2010. Significant improvements in multiple weight-related behaviours were observed among children in the highest tertile of junk food consumption (AOR 0.63, 95% CI 0.50 to 0.80), rewarded for good behaviour with sweets (AOR 0.59, 95% CI 0.47 to 0.74) and had a TV in their bedroom (AOR 0.65, 95% CI 0.43 to 0.96). In 2015, children from low socioeconomic neighbourhoods and non-English-speaking backgrounds were generally less likely to engage in healthy weight-related behaviours than children from high socioeconomic status neighbourhoods and from English-speaking backgrounds. Children in these demographic groups were less likely to eat breakfast daily, have high junk food intake and eat fast food regularly. Children from rural areas tended to have healthier weight-related behaviours than children from urban areas.

Conclusions

There were significant positive changes in 5-year-old children’s weight-related behaviours but children from low socioeconomic neighbourhoods and from non-English-speaking backgrounds were more likely to engage in unhealthy weight-related behaviours than children from high socioeconomic neighbourhoods and English-speaking backgrounds. The findings indicate that there is a need to enhance population-level efforts and ensure community programmes are targeted and tailored to meet different subpopulation needs.

Keywords: community child health, preventive medicine, public health


Strengths and limitations of this study.

  • Data come from two cross-sectional state population health surveys with high response rates, measured anthropometry and validated measures of weight-related behaviours.

  • Although there is no international consensus for dietary cut points which has led to considerable variation across studies, our cut points were based on dietary guidelines to represent a lower frequency or ‘limiting’ consumption of discretionary foods.

  • Parents completed the questionnaire and may be influenced by social desirability bias given the increasing role of social media in shaping community perceptions and public discourse on obesity.

Introduction

Children who are obese during childhood are five times more likely to be obese in adulthood compared with non-obese children.1 The evidence also shows that obesity-related behaviours including poor diet quality, decreased physical activity, increased sedentary behaviours and decreased sleep duration are established in, and tracked from, early childhood.2 Together, these findings suggest investment to promote healthy lifestyle behaviours during childhood may play a particularly strategic role in population obesity prevention.

Within a socioecological framework, the home environment exerts the most significant influence on children’s acquisition of weight-related behaviours; however, as children grow the early child care setting also has an important role in the development of young children’s weight-related behaviours. In 2014, in New South Wales (NSW), Australia, about 21% of <2-year-olds, 58% of 2–3 year-olds and 44% of 4–5 year-olds attended some form of formal child care services,3 showing that these services are pivotal in reaching large numbers of children and their parents.

Over the past 10–15 years there has been substantial investment in NSW to reduce child obesity through a succession of state plans, policies and programmes to support the healthy development of children from birth to 5 years. The overarching strategy is a whole of government framework to encourage and support opportunities for the community to be healthy through the delivery of evidence-based, interactive and relevant programmes. These initiatives include professional development programmes for the early child care sector,4 supported playgroups,5 websites (eg, www.healthykids.nsw.gov.au), health screening programmes for 4-year-olds6 and telephone-based support services for parents of children aged 0–2 years. To date, a summary of the net effects of investment in early childhood obesity prevention in NSW is yet to be examined.

There is clear evidence that the distribution of child obesity is unequal across population groups. The population distribution of child obesity is higher among children from lower socioeconomic background status, internationally7 and in Australia.8 Similarly, the prevalence of child obesity can be higher among children from culturally and linguistically diverse (CALD) communities. In 2016, almost half of the Australian population were born overseas or have at least one parent born overseas and 21% speak a language other than English at home.9 Language spoken at home is a recognised indicator of CALD background and people who speak a non-English language at home tend to be recent immigrants who may be disadvantaged in health literacy and healthcare access.10 11 These reasons underpin the importance of examining health outcomes by subpopulation groups to identify whether there are any apparent or emerging health inequalities among children from disadvantaged backgrounds.

The purpose of this study was to use cross-sectional surveillance data collected in 2010 and 2015 to examine changes in weight and weight-related behaviours of children in the first year of school. The assumption is that changes in the weight and weight-related behaviours of children entering school reflect the overall investment in early childhood by different stakeholders through multiple programmes and in different settings. We also examined weight-related behaviours by sociodemographic characteristics to identify subpopulations of children who may require greater support to change weight-related behaviours.

Methods

Data come from the 2010 and 2015 NSW Schools Physical Activity and Nutrition Survey, a representative cross-sectional population survey of weight and weight-related behaviours of children aged 5–16 years conducted every 5 years. This study examined only data from children in kindergarten aged approximately 5 years. Detailed descriptions of the survey methodology are published elsewhere.12 Briefly, the surveys are designed to be representative of school-age children in terms of type of school, residence and socioeconomic status (SES). Sample size was based on detecting a difference of 10% in the prevalence of overweight/obesity between boys and girls within each year group, with 80% power and alpha=0.05. The surveys are school based and use comparable sampling frames that are based on a two-stage probability sample (school and student). The probability of school selection was proportional to size of the school enrolment. Schools were sampled from each education sector (government, independent, Catholic) proportional to enrolment in that sector and all students from two randomly selected classes were invited to participate. The study protocols were comparable for each survey year and data were collected in schools by trained field teams during February to April of each survey year. Informed consent from each child’s parent/carer was a requirement for participation.

Measures

The questionnaire and measurement protocol were the same for both survey years. Parents completed the self-administered questionnaire for their child at home at time of consent. Sociodemographic information included the child’s sex, date of birth, language spoken most often at home and postcode of residence. Postcode of residence was used as proxy measure of SES using the Australian Bureau of Statistics’ Socio-Economic Indexes for Areas (SEIFA) Index of Relative Socio-economic Disadvantage.13 SEIFA scores from the 2011 census were used to rank students into low, middle and high SES neighbourhoods. Postcode of residence was also used to determine residential locality using the Accessibility/Remoteness Index of Australia in 2010 and the Australian Statistical Geography Standard in 2015,14 and children were categorised as living in urban or rural areas. Language spoken most often at home was used to categorise children into English-speaking or non-English-speaking backgrounds.15

Height (m), weight (kg) and waist circumference (cm) were measured over one layer of light clothing during the school visit by field staff. Body mass index (BMI) was calculated (kg/m2) and children categorised as thin, healthy weight, overweight and obese using the International Obesity Task Force age-sex adjusted cut points.16 Waist-to-height ratio (WtHR), an indicator of abdominal obesity, was calculated as waist circumference (cm) divided by height (cm) and dichotomised as <0.5 or ≥0.5.17

Indicators of dietary intake were collected using a validated short food frequency questionnaire specifically developed for population surveillance surveys.18 Parents reported the usual frequency their child consumed fruits and vegetables (Doesn’t eat fruits/vegetables, <1 serve/day, 1 serve/day, 2 serves/day, 3 serves/day, 4 serves/day, 5 serves/day, 6 or more serves/day), and fried potato products, salty snack foods, snack foods, confectionery and ice cream (never/rarely, 1–2 times/week, 3–4 times/week, 5–6 times/week, 1 time/day, 2 times/day). For the analysis, fruit and vegetable intakes were dichotomised according to daily recommended serves for children aged 5 years.19 Discretionary foods (ie, fried potato products, salty snack foods, snack foods, confectionery, ice cream) are not necessary for a healthy diet and the guidelines recommend limiting these foods.19 For the analysis, ‘limited’ was defined a priori as less than three times a week and discretionary foods were dichotomised as <3 or ≥3 times/week. Additionally, because discretionary foods are rarely eaten in isolation we examined total consumption using a junk food intake measure.20

Information on eating behaviours included the frequency of eating breakfast, eating dinner in front of the TV and eating meals or snacks from fast-food outlets (never/rarely, <1/week, 1–2 times/week, 3–4 times/week, 5–6 times/week or every day). For the analysis, breakfast was dichotomised according to dietary guidelines as daily or not daily.19 There is no consensus how often children should eat dinner in front of the TV or eat fast foods; however, other research indicates that eating dinner in front of the TV five or more times/week is associated with poor diet quality and overweight in children,21 hence eating dinner in front of the TV was dichotomised as <5 or ≥5 times/week. Eating fast foods one or more times a week is associated with increased BMI in children,22 so we dichotomised fast food as <1 (infrequent) or ≥1 time/week (frequent). Parents also reported how often they offered sweets to their child for good behaviour (rarely/never, sometimes or usually) and these were dichotomised for the analysis as rarely/never or sometimes/usually, based on dietary guidelines which recommend limiting discretionary foods.

Information about the home screen environment (TV, videos/DVDs, computer, smartphone, tablets, e-games) included whether their child had a TV in the bedroom (yes or no) and limiting their child’s screen time (rarely/never, sometimes or usually), and these were dichotomised for the analysis as rarely/never or sometimes/usually. Time spent on screen devices was collected by questionnaire23 and time dichotomised for the analysis according to screen time recommendations: <2 hours/day or ≥2 hours/day.24

Parents reported how their child usually travelled to and from school separately for each school day; options included walk, cycle, skateboard or scooter, car, bus, train or ferry/boat. Parents could report more than one travel mode for each trip. For the analysis, children’s travel modes were classified as ‘inactive travelers’ if driven to and from school 5 days/week and ‘active travelers’ if they walked, cycled and used a skateboard or scooter to travel to and from school 5 days/week. Children who used multiple transport modes to travel to and from school were classified as ‘mixed travelers’. Because active travel is considered a healthy behaviour and sitting time in car travel is considered less healthy, we only examined children who were active or inactive travellers.

Parents’ awareness of national recommendations for children’s physical activity and screen time was assessed by two questions: How many minutes of physical activity is it recommended that school-age children do each day? and Up to how many hours of television, video, DVD or computer games is it recommended that school-age children watch each day? The response options were to report the time or check ‘Don’t know’. Parents who reported the correct times were deemed to know the recommendations and parents who reported the incorrect time or ‘don’t know’ were classified as not knowing the recommendation. Information on the child’s physical activity was collected only in 2015 using a single-item question recommended for estimating physical activity in child surveys. The question was Over the past 7 days, on how many days was your child engaged in moderate to vigorous physical activity for at least 60 min? Response categories were 0–7 days, with a response of 7 days indication meeting the physical activity recommendations.

Statistical analyses

Data were analysed in June 2017 using SPSS Complex Sample Analysis (V.22 for Windows; IBM) to account for the complex sampling design. Poststratification weights were calculated to account for variations in response rates, along with cluster and stratification variables to account for the complex sampling design and weighted prevalences are presented. Missing values were not replaced (<5% of data). Categorical differences between 2010 and 2015 were first assessed using Χ2 statistic, and analysis of variance was used for continuous variables. Logistic models were used to assess change between survey periods in weight outcomes, dietary patterns and habits, screen time, school travel and parent’s awareness of national recommendations for physical activity and screen time. Covariates included sex, age, residence, SES tertile and language background.

Policy and decision makers require up-to-date evidence to guide the development of intervention and health promotion activities. Given the established evidence on sociodemographic differences among children’s weight and weight-related behaviours, we report outcomes from the most recent survey (2015) to identify whether subgroups of children may require greater or more targeted intervention. We examined differences between children from rural and urban residences, low and high SES neighbourhoods, and from non-English-speaking backgrounds and English-speaking backgrounds using logistic regression, controlling for sex. We present the ORs and their corresponding 95% CIs for each independent variable. The significance level was set at p≤0.05.

Results

The 2010 survey comprised 1141 children in kindergarten from 44 schools (response rate 62%) and the 2015 survey comprised 1150 children in kindergarten from 41 schools (response rate 70%). Table 1 shows there were no significant differences in the children’s sociodemographic characteristics between surveys. At both surveys, the majority of children were from English-speaking backgrounds and resided in urban areas. The prevalence and adjusted ORs of overweight, obesity, overweight-obesity combined and WtHR ≥0.5, stratified by sex are presented in table 2 and show there were no statistically significant changes between survey years. In 2015, approximately one in six children were overweight/obese and had WtHR ≥0.5.

Table 1.

Sociodemographic characteristics of children by survey year* (%; 95% CI)

2010 2015 P values
n 1141 1150
Response rates (%) 62.0 69.7
Age (years; SE) 5.35 (0.006) 5.39 (0.025) 0.079
Girls (%) 48.3 (47.6 to 49.0) 50.2 (46.9 to 53.5) 0.274
Residential locality
 Urban 88.5 (82.1 to 92.8) 80.0 (64.6 to 89.8) 0.168
Socioeconomic status (%)
 Low 30.8 (22.9 to 39.9) 21.5 (11.9 to 35.7) 0.097
 Middle 41.5 (28.9 to 55.4) 32.0 (20.1 to 46.9)
 High 27.7 (22.9 to 33.1) 46.5 (31.8 to 61.7)
Language background (%)
 English speaking 85.1 (81.6 to 88.0) 85.8 (79.2 to 90.5) 0.838
 Non-English speaking 14.9 (12.0 to 18.4) 14.2 (9.5 to 20.8)

*Weighted percentages.

Table 2.

Prevalence and change between 2010 and 2015 of overweight, obesity and waist-to-height ratio and adjusted OR (AOR; 95% CI)*

Survey year Change (%)
(2010–2015)
AOR
(2010=reference group)
2010 2015
All children (n)† 1141 1150
 Overweight (%) 13.9 11.1 −2.8 0.83 (0.67 to 1.04)
 Obese (%) 5.7 6.3 0.6 1.49 (0.83 to 2.68)
 Overweight/obese (%) 19.6 17.5 −2.1 0.83 (0.67 to 1.04)
 WtHR ≥0.5 14.8 16.5 1.7 1.35 (0.93 to 1.98)
Girls (n)‡ 551 577
 Overweight (%) 15.6 12.6 −3.0 0.83 (0.60 to 1.14)
 Obese (%) 6.4 6.6 0.2 1.41 (0.83 to 2.40)
 Overweight/obese (%) 22.0 19.2 −2.8 0.98 (0.73 to 1.33)
 WtHR ≥0.5 16.7 18.1 1.4 1.30 (0.83 to 2.03)
Boys (n)‡ 590 573
 Overweight (%) 12.4 9.6 −2.8 0.85 (0.51 to 1.40)
 Obese (%) 5.0 6.1 1.1 1.77 (0.77 to 4.07)
 Overweight/obese (%) 17.3 15.7 −1.6 1.11 (0.64 to 1.93)
 WtHR ≥0.5 13.1 14.8 1.7 1.51 (0.98 to 2.32)

*Weighted prevalences.

†AOR, adjusted for age, sex, residence, SES and language background.

‡AOR, adjusted for age, residence, SES and language background.

AOR, adjusted OR; SES, socioeconomic status; WtHR, waist-to-height ratio.

Bolded values are statistically significant.

Table 3 shows there were some significant positive changes in behaviours including the lower consumption of junk food, less TVs in children’s bedrooms and a higher parental awareness of children’s screen time and physical activity recommendations. Although changes were not statistically significant, the daily consumption of vegetables remained low, with less than 3% of children meeting the recommendation; 15% of children did not eat breakfast daily, one in five children regularly ate dinner in front of the TV and ate fast food one or more times a week. Parental awareness of the screen time recommendation increased between surveys, yet one-third of children did not meet the recommendation on school days and four in five did not meet the recommendation on weekend days. There were no changes in children’s school travel.

Table 3.

Prevalence of children’s weight-related behaviours, by survey year (%, 95% CI)*

Weight-related behaviours Survey year 2010 vs 2015
2010
(n=1141)
2015
(n=1150)
P values AOR (95% CI)
Dietary patterns and behaviours
 Meets recommend daily fruit serves 73.2 (69.6 to 76.5) 79.0 (75.9 to 81.8) 0.013 1.32 (1.05 to 1.65)
 Meets recommend daily vegetable serves 2.6 (2.1 to 3.3) 2.3 (1.6 to 3.4) 0.626 0.81 (0.49 to 1.34)
Junk food intake measure (JFIM: range 0–25)
   Low tertile (range 0–5) 42.1 (38.9 to 45.4) 51.6 (47.5 to 55.7) 0.002 1.58 (1.25 to 2.00)
   Middle tertile (range 6–8) 33.4 (29.5 to 37.4) 31.1 (28.3 to 34.1) 0.81 (0.63 to 1.03)
   High tertile (range 9–25) 24.5 (23.8 to 25.3) 17.3 (14.5 to 20.4) 0.63 (0.50 to 0.80)
 Eats salty snack foods ≥3/week 31.6 (30.9 to 32.3) 22.7 (18.1 to 28.1) 0.003 0.73 (0.61 to 0.87)
 Eats sweet/savoury snack foods ≥3/week 56.4 (54.9 to 58.0) 49.3 (45.5 to 53.1) 0.001 0.72 (0.55 to 0.95)
 Eats fried potato products ≥3/week 12.8 (11.0 to 14.9) 7.9 (5.5 to 11.1) 0.011 0.69 (0.43 to 1.12)
 Eats confectionery ≥3/week 33.3 (30.7 to 36.1) 26.4 (22.9 to 30.2) 0.004 0.76 (0.63 to 0.91)
 Eats ice cream/ice blocks ≥3/week 43.6 (38.8 to 48.4) 31.6 (28.3 to 35.0) <0.001 0.59 (0.46 to 0.77)
 Eats breakfast daily 87.3 (86.2 to 88.2) 84.8 (80.1 to 88.5) 0.229 0.66 (0.47 to 0.90)
 Eats dinner in front of the TV ≥5/week 17.8 (16.6 to 19.0) 18.3 (15.4 to 21.5) 0.775 1.10 (0.88 to 1.37)
 Eats fast food ≥1/week 24.0 (20.9 to 27.4) 20.4 (16.4 to 25.2) 0.206 0.92 (0.69 to 1.23)
 Parent usually rewards child’s good behaviour with sweets 12.6 (11.7 to 13.6) 7.9 (6.4 to 9.8) <0.001 0.59 (0.47 to 0.74)
Screen time
 Child has TV in bedroom 21.6 (17.8 to 25.8) 13.1 (9.8 to 17.1) 0.004 0.65 (0.43 to 0.96)
 No limits on child’s screen time 8.2 (7.4 to 9.0) 6.1 (4.5 to 8.1) 0.057 1.28 (0.90 to 1.81)
 Meets ST recommendation on weekdays 64.3 (59.5 to 68.9) 65.5 (61.2 to 69.5) 0.72 0.91 (0.69 to 1.19)
 Meets ST recommendation on weekend days 21.7 (19.5 to 24.0) 19.7 (17.5 to 22.1) 0.246 0.84 (0.69 to 1.04)
School travel (5 days/week)
 Driven to school 52.6 (41.7 to 63.2) 59.8 (53.4 to 65.8) 0.278 1.43 (0.85 to 2.40)
 Driven home from school 54.2 (43.7 to 64.3) 57.5 (51.4 to 63.5) 0.599 1.21 (0.73 to 2.01)
 Walked to school 19.9 (13.5 to 28.2) 16.0 (11.9 to 21.0) 0.372 0.76 (0.43 to 1.34)
 Walked home from school 18.6 (13.0 to 26.0) 16.6 (12.5 to 21.7) 0.622 0.83 (0.47 to 1.46)
 Mixed travel modes to school 19.7 (16.1 to 23.9) 20.1 (17.1 to 23.5) 0.886 1.03 (0.73 to 1.44)
 Mixed travel modes home from school 19.6 (16.0 to 23.8) 20.7 (17.5 to 24.3) 0.694 1.07 (0.76 to 1.52)
Parental knowledge and awareness
 Knows the ST recommendation 11.1 (9.8 to 12.5) 14.8 (12.4 to 17.6) 0.008 1.36 (1.06 to 1.73)
 Knows the PA recommendation 18.5 (17.3 to19.7) 29.9 (26.2 to 34.0) <0.001 1.72 (1.40 to 2.10)

*Weighted prevalences.

Covariates include sex, residence, SES tertile and language background.

AOR, adjusted OR; PA, physical activity; SES, socioeconomic status; ST, screen time.

Bolded values are statistically significant.

Table 4 shows the OR, adjusted for sex, for unhealthy weight-related behaviours by sociodemographic characteristics in 2015. Children residing in urban areas were less likely to meet recommended daily serves of vegetables, eat breakfast daily and to regularly eat dinner in front of the TV than children living in rural areas. Compared with children from high SES neighbourhoods, children in low SES neighbourhoods were generally more than twice as likely to have a high junk food intake, not eat breakfast daily, eat fast food one or more times a week, have a TV in the bedroom, not meet screen time recommendations on weekdays and be driven to and from school daily.

Table 4.

The adjusted OR of engaging in unhealthy weight-related behaviours in 2015 (n=1150), by sociodemographic characteristics (AOR, 95% CI)

Weight-related behaviours Residence Socioeconomic status Language background
Urban (ref)
(%)
Rural
(%)
AOR
(95% CI)*
High (ref)
(%)
Low
(%)
AOR
(95% CI)*
English speaking
(ref) (%)
NESB
(%)
AOR
(95% CI)*
Dietary patterns and behaviours
 Does not meet recommended daily vegetable serves 97.8 97.0 0.73 (0.33 to 1.61) 97.3 97.9 1.27 (0.40 to 4.01) 97.9 96.4 0.59 (0.19 to 1.83)
 Does not meet recommended daily fruit serves 22.3 15.7 0.65 (0.42 to 0.98) 21.8 20.9 0.95 (0.62 to 1.47) 19.8 24.4 1.49 (0.89 to 2.48)
 Does not meet recommended daily vegetable serves 97.8 97.0 0.73 (0.33 to 1.61) 97.3 97.9 1.27 (0.40 to 4.01) 97.9 96.4 0.59 (0.19 to 1.83)
 JFIM—highest tertile 17.9 14.8 0.79 (0.46 to 1.36) 15.5 25.2 1.84 (1.10 to 3.08) 15.9 23.5 1.62 (1.16 to 2.28)
 Does not eat breakfast daily 16.7 9.4 0.52 (0.30 to 0.91) 15.1 25.6 2.88 (1.66 to 5.01) 12.2 33.3 3.50 (2.25 to 5.44)
 Eats dinner in front of the TV ≥5/week 19.9 11.8 0.54 (0.39 to 0.74) 19.3 21.2 1.13 (0.77 to 1.65) 17.1 25.4 1.68 (1.16 to 2.44)
 Eats fast food ≥1/week 20.8 19.0 0.89 (0.52 to 1.55) 15.8 34.5 2.80 (1.65 to 4.77) 18.6 30.4 1.94 (1.28 to 2.94)
 Parent usually rewards child’s good behaviour with sweets 8.3 6.3 0.74 (0.39 to 1.40) 8.6 9.5 0.90 (0.53 to 1.52) 7.6 10.0 1.38 (0.79 to 2.41)
Screen time behaviours
 Child has TV in bedroom 12.9 13.6 1.06 (0.51 to 2.21) 8.5 19.9 2.69 (1.44 to 5.01) 13.5 11.3 0.82 (0.45 to 1.49)
 Rarely/never put limits on child’s screen time 6.0 6.5 1.10 (0.50 to 2.39) 4.5 4.2 0.92 (0.47 to 1.79) 6.1 5.8 0.89 (0.37 to 2.16)
 Does not meet ST recommendation on weekdays 34.4 35.0 1.03 (0.64 to 1.64) 30.2 47.1 2.09 (1.40 to 3.11) 34.4 36.0 1.14 (0.78 to 1.66)
 Does not meet ST recommendation on weekend days 79.8 82.2 1.17 (0.72 to 1.88) 79.3 79.8 1.04 (0.75 to 1.45) 82.0 69.3 0.52 (0.34 to 0.79)
Physical activity
 Does not meet the PA recommendation (60 min/day) 72.0 65.9 0.76 (0.54 to 1.07) 71.8 79.4 1.45 (0.87 to 2.39) 69.3 83.2 1.71 (1.26 to 2.32)
School travel (5 days/week)
 Driven to school 59.6 60.3 1.03 (0.57 to 1.87) 55.1 74.5 2.38 (1.23 to 4.61) 58.8 66.2 1.35 (0.78 to 2.36)
 Driven home 57.0 59.7 1.12 (0.61 to 2.06) 53.3 70.4 2.09 (1.12 to 3.89) 56.6 63.9 1.36 (0.81 to 2.30)
 Active transport to school 18.3 6.6 0.32 (0.17 to 0.61) 20.3 8.2 0.35 (0.18 to 0.69) 15.9 17.6 1.12 (0.60 to 2.08)
 Active transport home 19.1 6.5 0.30 (0.16 to 0.54) 21.2 9.5 0.39 (0.21 to 0.71) 16.2 19.8 1.29 (0.73 to 2.28)
Parental awareness of health recommendations
 Does not know ST recommendation 85.4 84.1 0.91 (0.56 to 1.48) 82.5 86.5 1.36 (0.86 to 2.13) 83.8 91.7 2.07 (1.08 to 3.98)
 Does not know the PA recommendation 71.1 66.2 0.80 (0.55 to 1.17) 67.2 75.8 1.53 (0.91 to 2.57) 67.2 85.0 2.67 (1.59 to 4.48)

*Adjusted for sex.

AOR, adjusted OR; JFIM, junk food intake measure; NESB, non-English-speaking background; PA, physical activity; ref, reference group; ST, screen time.

Bolded values are statistically significant.

Children from non-English-speaking backgrounds were more likely to have higher junk food consumption, not eat breakfast daily, regularly eat dinner in front of the TV and eat fast food one or more times a week than children from English-speaking backgrounds. Parents from non-English-speaking backgrounds were more than twice as likely to not know the daily recommendations for screen time and physical activity than parents from English-speaking backgrounds. Compared with children from English-speaking backgrounds, those from non-English-speaking backgrounds were less likely to not meet screen time recommendations on weekend days.

Discussion

This study shows there have been significant, positive changes in weight-related behaviours of 5-year-old children between 2010 and 2015 and, although not statistically significant, the prevalences of overweight and overweight-obesity were lower in 2015 than 2010. The higher, but not statistically significant, prevalences of obesity and WtHR ≥0.5 in 2015 may indicate that the degree of obesity is increasing. That is, the distribution of BMI is shifting to the right and the prevalence of morbid obesity among children may be increasing; a finding previously reported among Australian children.25 Although based on cross-sectional data, the sample is representative of the children of NSW and these findings are promising. Understanding the drivers for the changes we observed is difficult because of the complex interacting contexts of obesity prevention. There may well be factors that were not measured such as genetic susceptibility and environmental features such as the food and physical activity environments, which may also be influencing the prevalence. In NSW, there has been substantial investment in population obesity prevention since 200226–29 and potentially, the changes we observed in some behaviours reflect a compounding effect of continual and multiple investments over the past 10–15 years, so that the children who participated in the 2015 survey will have had greater opportunity to be exposed to obesity prevention programmes, compared with the children we measured in 2010. However, because of our cross-sectional design no causal relationships can be ascertained, so it cannot be determined whether deficiencies in the type/content of the programme or in uptake of the programme are the reason for the results.

While there were positive changes in many weight-related behaviours, the prevalence of some behaviours in 2015 remains a concern. The most notable is the very low proportion of children (2.3%) meeting the recommended intake of vegetables, indicating these children are missing the benefits of dietary vitamins, minerals and fibre.19 This finding is consistent with national surveys30 and other studies which have shown vegetable intake in Australian children is poor.31 Conversely, 79% of children met recommended intake of fruit, but adherence was lower among children living in urban areas than children living in rural areas. Potentially, national school-based fruit and vegetable programmes32 need to focus on promoting vegetables.

Children’s consumption of discretionary or ‘junk’ foods was lower in 2015 than 2010 but the consumption of these foods remains higher than dietary guidelines recommend. Our findings are consistent with national data which estimate that more than one-third of energy intake among children aged 4–8 years comes from discretionary foods.33 In 2015, the consumption of discretionary foods was higher among children living in low SES neighbourhoods and children from non-English-speaking backgrounds than their peers. A recent systematic review34 concluded that fast-food outlets were more prevalent in low than middle and high SES neighbourhoods, and in areas with high concentrations of ethnic minority groups; however, further qualitative work is required to determine if factors other than availability influence consumption. Potential promising strategies to reduce children’s junk food consumption include limiting the accessibility, availability and advertising of these foods to young children, increasing food literacy among parents, and working with the food industry to improve nutrient profiles of junk foods.35

Home-based eating practices associated with overweight/obesity in children include eating breakfast daily, eating dinner in front of the TV, eating snacks/meals from fast-food and take-away outlets and parents rewarding children’s good behaviour with sweets.36 Eating a healthy breakfast daily (eg, whole grains, fresh fruits/vegetables) has been linked to a decreased risk in obesity,37 better nutrient intakes38 and improved school attendance, which in turn may improve academic outcomes in schoolchildren,39 yet one in seven children in this study did not eat breakfast daily and those children were more likely to live in urban areas, have low SES neighbourhoods and be from non-English-speaking backgrounds.

Parental use of sweets as rewards may adversely impact on children’s diet through reinforcing a child’s preference and liking for sweet food rewards.40 We found the proportion of parents using sweets as a reward for good behaviour was significantly lower in 2015 which may influence caloric intake and the development of dental caries. Parents can inadvertently promote excess weight gain in childhood through role modelling food routines such as eating in front of the TV and regular consumption of fast foods that establish these behaviours as normal eating routines. One in five children in this study frequently ate in front of the TV and this practice was more prevalent among children living in urban areas and from non-English-speaking backgrounds. We have no information on the quality of the dinners that were eaten in front of the TV; however, other studies suggest children’s food choices deteriorated with increased frequency of eating in front of the TV.41 Qualitative research is required to understand cultural differences in this practice which can then inform health promotion efforts to encourage meals to be eaten without the TV on or other screen devices at a table. Consumption of fast food was twofold higher among children from low SES neighbourhoods and non-English-speaking cultural backgrounds, compared with their high SES and English-speaking peers. We did not collect information on the type of fast food eaten but a recent review showed that fast-food outlets are more concentrated in lower income neighbourhoods.42 Hence, efforts to reduce fast-food consumption need to consider town planning and regulations on the placement of fast-food outlets in communities.

Australia recommends limiting screen time among 5-year-old children to <2 hours/day,24 yet less than one in seven parents in this study knew this recommendation in 2015. Therefore, it is not surprising that one-third of children did not meet the recommendation on weekdays, increasing to four in five children on weekend days. Internationally, children’s adherence to the screen time recommendation is low,43 leading to debate on whether the 2-hour limit is relevant, or whether parents need assistance to adhere to the recommendation. Fewer children had a TV in the bedroom in 2015 which may reduce excessive exposure to unhealthy food advertising that targets children41; however, we were unable to ascertain if TVs were replaced with other screen devices. Ascertaining the use of LED screen devices at bedtime is important given the potential deleterious effects on children’s melatonin which is associated with harmful effects on children’s sleep and well-being.44

Ideally, children should accrue at least 60 min of moderate to vigorous physical activity daily,24 but in 2015 less than one-third of parents knew the recommendation, and awareness was low among parents from non-English-speaking backgrounds. Active school transport is an opportunity to increase children’s daily physical activity; however, three in five children were driven to/from school and the prevalence of passive school transport was twofold higher among children from low SES neighbourhoods than children from high SES neighbourhoods. We were unable to determine why children from low SES neighbourhoods were more likely to be driven to school; however, there is a range of factors which may influence young children’s active school travel, including distance, parent (and child’s) perception of heavy traffic, pedestrian infrastructure, connectivity and family time constraints.45 These factors may have greater influence on children’s active school transport in low SES neighbourhoods; however, Australia is increasingly becoming a car-dependent country which may influence school commuting.46

Key strengths of our study include the large representative sample, high response rates and validated measures of weight-related behaviours, but there are limitations to consider. This study was a secondary analysis of two population-based surveys. The sample sizes were not large enough to detect a smaller difference in the prevalence of overweight/obesity. For example, to detect 1% or 2% change that is of public health significance at a population level would require a much larger sample size. Our sampling frames were representative of NSW children in terms of type of school, residence and SES, so the findings may not necessarily be generalisable to all Australian children. Survey response rates are often considered an indicator of survey quality, yet there is no scientific consensus on a minimal threshold. Response rates >60% are considered acceptable; however, the representativeness of the sample is potentially of more importance.47 At age 5 years, children cannot reliably respond to a questionnaire, so parents are viewed as an appropriate alternative. The accuracy of proxy reporting is not known, but parents are potentially more strongly affected by social desirability bias which may have influenced our findings particularly given the rise in information about child obesity and the increasing role of social media in shaping community perceptions and public discourse on obesity.48 Similarly, the potential for non-responder bias raises the issue of whether population surveillance surveys which benefit public health should have passive rather than active consent. The lack of international consensus regarding dietary cut points has led to considerable variation across studies and our cut points were based on dietary guidelines to represent a lower frequency or ‘limiting’ consumption of discretionary foods. Finally, it was not feasible to objectively measure physical activity and while the validated single-item question we used to assess children’s physical activity is recommended for population surveys it prohibited contextual detail on type and duration of physical activities.

Conclusions

Our findings suggest there have been positive changes in the weight-related behaviours of children entering their first year of school following years of child obesity prevention investment. Establishing healthy behaviours in preschool-age children may offset the challenges of changing established unhealthy behaviours in older children and adolescents. It is not possible to attribute the findings to one intervention; rather the changes reflect the sum of the many obesity prevention activities. These 5-year-old children have had exposure to a range of obesity prevention programmes, including statewide interventions to up-skill the early childhood sector workforce in the delivery of healthy eating and physical activity activities. We showed that greater investment is required among families living in low SES neighbourhoods and areas with high concentrations of families from non-English-speaking backgrounds to reduce health inequalities in these children. Qualitative research will assist with determining the needs of families with less social and economic advantage which can then be adapted to the current intervention frameworks so that interventions are targeted and tailored to meet different subpopulation needs.

Supplementary Material

Reviewer comments
Author's manuscript

Footnotes

Contributors: LLH, LAB, SPG, LMW and SM had equal contributions to this paper. LLH led the writing and conducted the data analysis. LLH had full access to all of the data (including statistical reports and tables) in the study and can take full responsibility for the overall content.

Funding: NSW Ministry of Health

Competing interests: None declared.

Patient consent: Parental/guardian consent obtained.

Ethics approval: University of Sydney Human Research Ethics Committee, the NSW Department of Education and Training, and the NSW Catholic Education Commission.

Provenance and peer review: Not commissioned; externally peer reviewed.

Data sharing statement: The data that support the findings of this study are available from NSW Ministry of Health but restrictions apply to the availability of these data, which were used under licence for the current study, and so are not publicly available. Data are however available from the authors upon reasonable request and with permission of NSW Ministry of Health.

References

  • 1.Simmonds M, Llewellyn A, Owen CG, et al. . Predicting adult obesity from childhood obesity: a systematic review and meta-analysis. Obes Rev 2016;17:95–107. 10.1111/obr.12334 [DOI] [PubMed] [Google Scholar]
  • 2.Larson N, Ward DS, Neelon SB, et al. . What role can child-care settings play in obesity prevention? A review of the evidence and call for research efforts. J Am Diet Assoc 2011;111:1343–62. 10.1016/j.jada.2011.06.007 [DOI] [PubMed] [Google Scholar]
  • 3.Australian Bureau of Statistics. Childhood Education and Care, Australia. Canberra: Australian Bureau of Statistics, 2014. [Google Scholar]
  • 4.Farrell L, King L, Hardy LL, et al. . Munch and move in preschools. Summary report on implementation and evaluation, phase 1 (2008 –2009). Sydney: Prevention Research Collaboration, University of Sydney, 2009. [Google Scholar]
  • 5.Weber D, Rissel C, Hector D, et al. . Supported playgroups as a setting for promoting physical activity of young children: findings from a feasibility study in south-west Sydney, Australia. J Paediatr Child Health 2014;50:301–5. 10.1111/jpc.12466 [DOI] [PubMed] [Google Scholar]
  • 6.Robinson A, Denney-Wilson E, Laws R, et al. . Child obesity prevention in primary health care: investigating practice nurse roles, attitudes and current practices. J Paediatr Child Health 2013;49:E294–E99. 10.1111/jpc.12164 [DOI] [PubMed] [Google Scholar]
  • 7.Wang Y, Lim H. The global childhood obesity epidemic and the association between socio-economic status and childhood obesity. Int Rev Psychiatry 2012;24:176–88. 10.3109/09540261.2012.688195 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 8.Hardy LL, Mihrshahi S, Gale J, et al. . 30-year trends in overweight, obesity and waist-to-height ratio by socioeconomic status in Australian children, 1985 to 2015. Int J Obes 2017;41:76–82. 10.1038/ijo.2016.204 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 9.Australian Bureau of Statistics. Cultural diversity in Australia, 2016. Canberra: Australian Bureau of Statistics, 2017. [Google Scholar]
  • 10.IOM (Institute of Medicine). Race, Ethnicity, and Language Data: standardization for health care quality improvement. Washington, DC: The National Academies Press, 2009. [PubMed] [Google Scholar]
  • 11.Ou L, Chen J, Hillman K. Health services utilisation disparities between English speaking and non-English speaking background Australian infants. BMC Public Health 2010;10:182 10.1186/1471-2458-10-182 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 12.Hardy LL, Mihrshahi S, Drayton BA, et al. . Methods: NSW Schools Physical Activity and Nutrition Survey (SPANS) 2015; full report. Sydney: NSW Ministry of Health, 2017:46–58. [Google Scholar]
  • 13.Australian Bureau of Statistics. Census of Population and Housing: Socio-Economic Indexes for Areas (SEIFA), Australia - data only, 2011. 2013. Catno 2033055001 http://www.abs.gov.au/AUSSTATS/abs@.nsf/DetailsPage/2033.0.55.0012006?OpenDocument (accessed 13 Mar 2015).
  • 14.Australian Bureau of Statistics. Australian Statistical Geography Standard (ASGS)- Remoteness structure, Canberra. 2013.
  • 15.Australian Bureau of Statistics. Australian Standard Classification of Languages (ASCL). 2nd Edn Canberra: Australian Bureau of Statistics, 2011. [Google Scholar]
  • 16.Cole TJ, Lobstein T. Extended international (IOTF) body mass index cut-offs for thinness, overweight and obesity. Pediatr Obes 2012;7:284–94. 10.1111/j.2047-6310.2012.00064.x [DOI] [PubMed] [Google Scholar]
  • 17.Brambilla P, Bedogni G, Heo M, et al. . Waist circumference-to-height ratio predicts adiposity better than body mass index in children and adolescents. Int J Obes 2013;37:943–6. 10.1038/ijo.2013.32 [DOI] [PubMed] [Google Scholar]
  • 18.Flood VM, Wen LM, Hardy LL, et al. . Reliability and validity of a short FFQ for assessing the dietary habits of 2-5-year-old children, Sydney, Australia. Public Health Nutr 2014;17:498–509. 10.1017/S1368980013000414 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 19.National Health and Medical Research Council. Australian dietary guidelines. Canberra: National Health and Medical Research Council, 2013. [Google Scholar]
  • 20.Boylan S, Hardy LL, Drayton BA, et al. . Assessing junk food consumption among Australian children: trends and associated characteristics from a cross-sectional study. BMC Public Health 2017;17:299–99. 10.1186/s12889-017-4207-x [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 21.Liang T, Kuhle S, Veugelers PJ. Nutrition and body weights of Canadian children watching television and eating while watching television. Public Health Nutr 2009;12:2457 10.1017/S1368980009005564 [DOI] [PubMed] [Google Scholar]
  • 22.Braithwaite I, Stewart AW, Hancox RJ, et al. . Fast-food consumption and body mass index in children and adolescents: an international cross-sectional study. BMJ Open 2014;4:e005813 10.1136/bmjopen-2014-005813 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 23.Hardy LL, Booth ML, Okely AD. The reliability of the Adolescent Sedentary Activity Questionnaire (ASAQ). Prev Med 2007;45:71–4. 10.1016/j.ypmed.2007.03.014 [DOI] [PubMed] [Google Scholar]
  • 24.Department of Health. Australia’s Physical activity and sedentary behaviour guidelines for children (5-12 years). Canberra: Commonwealth of Australia, 2014. [Google Scholar]
  • 25.Garnett SP, Baur LA, Jones AM, et al. . Trends in the prevalence of morbid and severe obesity in Australian Children Aged 7-15 Years, 1985-2012. PLoS One 2016;11:e0154879 10.1371/journal.pone.0154879 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 26.NSW Ministry of Health. NSW Healthy eating and active living strategy: preventing overweight and obesity in New South Wales 2013-2018. Sydney: NSW Ministry of Health, 2013. [Google Scholar]
  • 27.NSW Department of Health. NSW Government plan for preventing overweight and obesity in children, young people & their families 2009 - 2011. Sydney: NSW Department of Health, 2009. [Google Scholar]
  • 28.NSW Government. NSW Making it Happen. Secondary NSW Making it Happen: premier’s priorities. 2016. https://www.nsw.gov.au/making-it-happen
  • 29.NSW Health, NSW Child Obesity Summit Committee. NSW Childhood Obesity Summit Draft Program In: ed Sydney: NSW Department of Health, 2002. [Google Scholar]
  • 30.Australian Bureau of Statistics. National Health Survey: first results, 2014–15 — Australia. Canberra: Commonwealth of Australia, 2015. [Google Scholar]
  • 31.Whitrow MJ, Moran L, Davies MJ, et al. . Core food intakes of Australian children aged 9-10 years: nutrients, daily servings and diet quality in a community cross-sectional sample. J Hum Nutr Diet 2016;29:449–57. 10.1111/jhn.12358 [DOI] [PubMed] [Google Scholar]
  • 32.Association HK. Crunch&Sip, Secondary Crunch&Sip. http://www.healthy-kids.com.au/category/8/crunch-sip
  • 33.Australian Bureau of Statistics. Australian Health Survey: nutrition first results – foods and nutrients, 2011–12 — Australia. Canberra: Commonwealth of Australia, 2015. [Google Scholar]
  • 34.Fleischhacker SE, Evenson KR, Rodriguez DA, et al. . A systematic review of fast food access studies. Obes Rev 2011;12:e460-71 10.1111/j.1467-789X.2010.00715.x [DOI] [PubMed] [Google Scholar]
  • 35.Hawkes C, Smith TG, Jewell J, et al. . Smart food policies for obesity prevention. Lancet 2015;385:2410–21. 10.1016/S0140-6736(14)61745-1 [DOI] [PubMed] [Google Scholar]
  • 36.MacFarlane A, Cleland V, Crawford D, et al. . Longitudinal examination of the family food environment and weight status among children. Int J Pediatr Obes 2009;4:343–52. 10.3109/17477160902846211 [DOI] [PubMed] [Google Scholar]
  • 37.Vik FN, Te Velde SJ, Van Lippevelde W, et al. . Regular family breakfast was associated with children’s overweight and parental education: Results from the ENERGY cross-sectional study. Prev Med 2016;91:197–203. 10.1016/j.ypmed.2016.08.013 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 38.Barr SI, DiFrancesco L, Fulgoni VL. Breakfast consumption is positively associated with nutrient adequacy in Canadian children and adolescents. Br J Nutr 2014;112:1373–83. 10.1017/S0007114514002190 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 39.Anzman-Frasca S, Djang HC, Halmo MM, et al. . Estimating impacts of a breakfast in the classroom program on school outcomes. JAMA Pediatr 2015;169:71–7. 10.1001/jamapediatrics.2014.2042 [DOI] [PubMed] [Google Scholar]
  • 40.Skouteris H, McCabe M, Swinburn B, et al. . Parental influence and obesity prevention in pre-schoolers: a systematic review of interventions. Obes Rev 2011;12:315–28. 10.1111/j.1467-789X.2010.00751.x [DOI] [PubMed] [Google Scholar]
  • 41.Boyland EJ, Halford JC. Television advertising and branding. Effects on eating behaviour and food preferences in children. Appetite 2013;62:236–41. 10.1016/j.appet.2012.01.032 [DOI] [PubMed] [Google Scholar]
  • 42.Fraser LK, Edwards KL, Cade J, et al. . The geography of fast food outlets: a review. Int J Environ Res Public Health 2010;7:2290–308. 10.3390/ijerph7052290 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 43.Arundell L, Fletcher E, Salmon J, et al. . A systematic review of the prevalence of sedentary behavior during the after-school period among children aged 5-18 years. Int J Behav Nutr Phys Act 2016;13:93 10.1186/s12966-016-0419-1 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 44.Hale L, Guan S. Screen time and sleep among school-aged children and adolescents: a systematic literature review. Sleep Med Rev 2015;21:50–8. 10.1016/j.smrv.2014.07.007 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 45.Pont K, Ziviani J, Wadley D, et al. . Environmental correlates of children’s active transportation: a systematic literature review. Health Place 2009;15:849–62. 10.1016/j.healthplace.2009.02.002 [DOI] [PubMed] [Google Scholar]
  • 46.van der Ploeg HP, Merom D, Corpuz G, et al. . Trends in Australian children traveling to school 1971-2003: burning petrol or carbohydrates? Prev Med 2008;46 10.1016/j.ypmed.2007.06.002 [DOI] [PubMed] [Google Scholar]
  • 47.Johnson TP, Wislar JS. Response rates and nonresponse errors in surveys. JAMA 2012;307:1805–6. 10.1001/jama.2012.3532 [DOI] [PubMed] [Google Scholar]
  • 48.Chou WY, Prestin A, Kunath S. Obesity in social media: a mixed methods analysis. Transl Behav Med 2014;4:314–23. 10.1007/s13142-014-0256-1 [DOI] [PMC free article] [PubMed] [Google Scholar]

Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

Reviewer comments
Author's manuscript

Articles from BMJ Open are provided here courtesy of BMJ Publishing Group

RESOURCES