Litcius/Paper detail

Lifestyle risks for chronic disease among Australian adolescents: a cross‐sectional survey

Katrina E. Champion, Cath Chapman, Lauren A. Gardner, Matthew Sunderland, Nicola C. Newton, Scarlett Smout, Louise Thornton, Leanne Hides, Nyanda McBride, Steve Allsop, Katherine L. Mills, Frances Kay‐Lambkin, Maree Teesson, Tim Slade, the Heath4Life team, Belinda Parmenter, Bonnie Spring, David R. Lubans, Emma Barrett, Lexine Stapinski, Louise Mewton

2021The Medical Journal of Australia27 citationsDOIOpen Access PDF

Abstract

Physical inactivity, poor diet, alcohol use, smoking, poor sleep, and excessive recreational screen time are lifestyle risk factors that emerge during adolescence, continue into adulthood, and often occur together.1 They are linked with obesity2 and mental health problems in the short term,3 and with increased risk of chronic disease in adulthood.4 We examined the prevalence and socio-demographic correlates of these major lifestyle risk factors in a large sample of Australian adolescents, analysing cross-sectional data from the Health4Life Study, a cluster randomised controlled trial of an e-health intervention at 71 schools in 2019.5 For the baseline assessment, year 7 students were asked to complete an online survey (July‒November 2019) about their moderate to vigorous physical activity (MVPA), sedentary recreational screen time, sleep duration, diet, and alcohol and tobacco use. The frequency of each risk behaviour was estimated by sex, remoteness, and relative socio-economic status, and the association of behaviours with socio-demographic characteristics was assessed by logistic regression. To avoid the limitations of odds ratios for frequent outcomes, we instead estimated prevalence ratios (PRs) with 95% confidence intervals (CIs),6 adjusted for all covariates and clustering within schools. Further study details are included in the published protocol.5 The study was approved by the University of Sydney (2018/882), University of Queensland (2019000037) and Curtin University human research ethics committees (HRE2019-0083), and also under the NSW State Education Research Applications Process (2019006). Parental consent was provided for 7164 of 9280 students, of whom 6779 agreed to participate; 139 students were not included in the final sample because they did not provide sufficient data or withdrew after survey completion. The sample therefore comprised 6640 students aged 11‒14 years (mean, 12.7 years; standard deviation, 0.5 years); 3311 were boys (50.6%) (Box 1). Most students reported several risk behaviours (three or more, 3330 of 5315 students who provided responses for all behaviours, 62.7%; four or more, 1358 of 5315, 25.6%); total number of risk behaviours was not influenced by socio-demographic factors (data not shown). Few students reported using alcohol (181 of 6346; 2.9% [95% CI, 2.2–3.5%]) or tobacco (97 of 6306; 1.5% [95% CI, 1.1–1.9%]) in the preceding six months. However, 5565 of 6478 students (85.9%; 95% CI, 84.0–87.8%) exceeded recommended television and electronic device screen time limits (two hours/day), 4969 of 6398 (77.7%; 95% CI, 76.1–79.2%) were not sufficiently active (less than 60 minutes MVPA/day), and 3682 of 6010 (61.3%; 95% CI, 58.9–63.6%) did not meet sleep guidelines (≤ 13 years: 9–11 hours/night; 14–17 years: 8–10 hours/night). Diet (self-reported sugar-sweetened beverage, fruit, vegetable, and discretionary food intake) was poor for 2920 of 5815 students (50.2%; 95% CI, 47.7–52.8%). The prevalence of excessive recreational screen time (PR, 1.04; 95% CI, 1.01–1.06), poor diet (PR, 1.15; 95% CI, 1.08–1.23), alcohol use (PR, 1.82; 95% CI, 1.25–2.64), and tobacco use (PR, 1.94; 95% CI, 1.21–3.12) was higher for boys than girls; that of insufficient MVPA was lower for boys (PR, 0.88; 95% CI, 0.85–0.91). Poor diet was more prevalent among children from major cities than those from regional areas (PR, 1.20; 95% CI, 1.03‒1.40); tobacco use was less prevalent among those from higher socio-economic status areas (PR, 0.33; 95% CI, 0.19–0.57 (Box 2; online Supporting Information, tables 2–5). *The data for this Box are included in the online Supporting Information, table 5. The composition of our sample was similar to that of the Australian population aged 11‒14 years with respect to sex and Australian birth, but students from higher socio-economic status areas or schools with Index of Community Socio-Educational Advantage (ICSEA) scores in the upper two quartiles, were over-represented in our sample, as were students from independent schools (Supporting Information, tables 1 and 6). Most of our survey participants did not meet national guidelines for screen time, physical activity, or sleep, and having multiple risk behaviours was common. Our findings highlight the need for preventive public health strategies targeting adolescent lifestyle factors that take sex, socio-economic status, and remoteness into account. Screening by general practitioners for the six major risk factors we have highlighted, and identifying young people with multiple risk behaviours could facilitate early intervention, and brief interventions delivered in primary care or schools may be beneficial. The Health4Life study is funded by the Paul Ramsay Foundation, and by the National Health and Medical Research Council through fellowships (Katrina Champion, APP1120641; Maree Teesson, APP1078407; Nicola Newton, APP1166377) and the Centre of Research Excellence in the Prevention and Early Intervention in Mental Illness and Substance Use (PREMISE; APP11349009). We thank the research assistants who collected data for the Health4Life study: Bridie Osman, Karrah McCann, Rhiannon Ellem, Jesse Whife, and Courtney Stewart. We also acknowledge the students and teachers at the participating schools. No relevant disclosures. Please note: The publisher is not responsible for the content or functionality of any supporting information supplied by the authors. Any queries (other than missing content) should be directed to the corresponding author for the article.

Topics & Concepts

MedicineLogistic regressionCross-sectional studyOdds ratioDemographyConfidence intervalRecreationCluster (spacecraft)GerontologyEnvironmental healthSociologyPolitical scienceLawComputer scienceInternal medicineProgramming languagePathologyObesity, Physical Activity, DietPhysical Activity and HealthMobile Health and mHealth Applications