Author:
Zhu Wanchuang,Marchant Roman,Morris Richard W.,Baur Louise A.,Simpson Stephen J.,Cripps Sally
Abstract
AbstractBackgroundWhen tackling complex public health challenges such as childhood obesity, interventions focused on immediate causes, such as poor diet and physical inactivity, have had limited success, largely because upstream root causes remain unresolved. A priority is to develop new modelling frameworks to infer the causal structure of complex chronic disease networks, allowing disease “on-ramps” to be identified and targeted.MethodsThe system surrounding childhood obesity was modelled as a Bayesian network, using data from The Longitudinal Study of Australian Children. The existence and directions of the dependencies between factors represent possible causal pathways for childhood obesity and were encoded in directed acyclic graphs (DAGs). The posterior distribution of the DAGs was estimated using the Partition Markov chain Monte Carlo.ResultsWe have implemented structure learning for each dataset at a single time point. For each wave and cohort, socio-economic status was central to the DAGs, implying that socio-economic status drives the system regarding childhood obesity. Furthermore, the causal pathway socio-economic status and/or parental high school levels → parental body mass index (BMI) → child’s BMI existed in over 99.99% of posterior DAG samples across all waves and cohorts. For children under the age of 8 years, the most influential proximate causal factors explaining child BMI were birth weight and parents’ BMI. After age 8 years, free time activity became an important driver of obesity, while the upstream factors influencing free time activity for boys compared with girls were different.ConclusionsChildhood obesity is largely a function of socio-economic status, which is manifest through numerous downstream factors. Parental high school levels entangle with socio-economic status, and hence, are on-ramp to childhood obesity. The strong and independent causal relationship between birth weight and childhood BMI suggests a biological link. Our study implies that interventions that improve the socio-economic status, including through increasing high school completion rates, may be effective in reducing childhood obesity prevalence.
Funder
Paul Ramsay Foundation
Australian National Health and Medical Research Council Program
National Health and Medical Research Council
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. Butland B, Jebb S, Kopelman P, et al. Tackling Obesities: Future Choices – Project Report. 2nd ed. London: Government Office for Science; 2007.
2. Rutter H, Savona N, Glonti K, et al. The need for a complex systems model of evidence for public health. Lancet. 2017;390:2602–4.
3. Fontana L, Partridge L. Promoting health and longevity through diet: from model organisms to humans. Cell. 2015;161:106–18.
4. Fontana L, Fasano A, Chong YS, Vineis P, Willett WC. Transdisciplinary research and clinical priorities for better health. PLoS Med. 2021;18:e1003699.
5. Swinburn BA, Kraak VI, Allender S, et al. The global syndemic of obesity, undernutrition, and climate change. Lancet. 2019;393:791–846.
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