Human Technology Institute, University of Technology, Sydney, Australia.
Data61, CSIRO, Sydney, Australia.
BMC Med. 2023 Mar 21;21(1):105. doi: 10.1186/s12916-023-02789-8.
When 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.
The 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.
We 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.
Childhood 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.
在应对儿童肥胖等复杂的公共卫生挑战时,针对饮食不良和缺乏身体活动等直接原因的干预措施收效甚微,主要原因是上游根本原因仍未得到解决。当务之急是开发新的建模框架,以推断复杂慢性疾病网络的因果结构,从而确定和针对疾病的“发病机制”。
采用来自澳大利亚儿童纵向研究的数据,将儿童肥胖症的相关系统建模为贝叶斯网络。使用有向无环图(DAG)对因素之间的依存关系的存在和方向进行编码,这些依存关系表示儿童肥胖症的潜在因果途径。使用分区马尔可夫链蒙特卡罗法来估计 DAG 的后验分布。
我们已经针对每个数据集在单个时间点实施了结构学习。对于每个波次和队列,社会经济地位是 DAG 的核心,这表明社会经济地位是导致儿童肥胖的主要因素。此外,在所有波次和队列中,社会经济地位和/或父母高中学历→父母 BMI→孩子 BMI 的因果途径存在于超过 99.99%的后验 DAG 样本中。对于 8 岁以下的儿童,解释儿童 BMI 的最主要的直接因果因素是出生体重和父母 BMI。8 岁以后,空闲时间活动成为肥胖的重要驱动因素,而影响男孩和女孩空闲时间活动的上游因素有所不同。
儿童肥胖症在很大程度上是社会经济地位的结果,而社会经济地位是通过众多下游因素表现出来的。父母高中学历与社会经济地位交织在一起,因此是导致儿童肥胖的“发病机制”。出生体重与儿童 BMI 之间的因果关系很强且独立,这表明存在生物学联系。我们的研究表明,提高社会经济地位的干预措施,包括提高高中学历完成率,可能有助于降低儿童肥胖症的患病率。