Ochoa Lizbeth Burgos, van der Meer Lindsey, Waelput Adja J M, Been Jasper V, Bertens Loes C M
Department of Obstetrics and Gynaecology, Erasmus MC, University Medical Centre Rotterdam, Rotterdam, The Netherlands.
Division of Neonatology, Department of Paediatrics, Erasmus MC - Sophia Children's Hospital, University Medical Centre Rotterdam, Rotterdam, The Netherlands.
Paediatr Perinat Epidemiol. 2023 May;37(4):341-349. doi: 10.1111/ppe.12954. Epub 2023 Jan 30.
Advances in computing power have enabled the collection, linkage and processing of big data. Big data in conjunction with robust causal inference methods can be used to answer research questions regarding the mechanisms underlying an exposure-outcome relationship. The g-formula is a flexible approach to perform causal mediation analysis that is suited for the big data context. Although this approach has many advantages, it is underused in perinatal epidemiology and didactic explanation for its implementation is still limited.
The aim of this was to provide a didactic application of the mediational g-formula by means of perinatal health inequalities research.
The analytical procedure of the mediational g-formula is illustrated by investigating whether the relationship between neighbourhood socioeconomic status (SES) and small for gestational age (SGA) is mediated by neighbourhood social environment. Data on singleton births that occurred in the Netherlands between 2010 and 2017 (n = 1,217,626) were obtained from the Netherlands Perinatal Registry and linked to sociodemographic national registry data and neighbourhood-level data. The g-formula settings corresponded to a hypothetical improvement in neighbourhood SES from disadvantaged to non-disadvantaged.
At the population level, a hypothetical improvement in neighbourhood SES resulted in a 6.3% (95% confidence interval [CI] 5.2, 7.5) relative reduction in the proportion of SGA, that is the total effect. The total effect was decomposed into the natural direct effect (5.6%, 95% CI 5.1, 6.1) and the natural indirect effect (0.7%, 95% CI 0.6, 0.9). In terms of the magnitude of mediation, it was observed the natural indirect effect accounted for 11.4% (95% CI 9.2, 13.6) of the total effect of neighbourhood SES on SGA.
The mediational g-formula is a flexible approach to perform causal mediation analysis that is suited for big data contexts in perinatal health research. Its application can contribute to providing valuable insights for the development of policy and public health interventions.
计算能力的进步使得大数据的收集、关联和处理成为可能。大数据与强大的因果推断方法相结合,可用于回答有关暴露-结局关系潜在机制的研究问题。g公式是一种灵活的因果中介分析方法,适用于大数据背景。尽管该方法有许多优点,但在围产期流行病学中使用不足,对其实施的教学解释仍然有限。
旨在通过围产期健康不平等研究,对中介g公式进行教学应用。
通过调查邻里社会经济地位(SES)与小于胎龄儿(SGA)之间的关系是否由邻里社会环境介导,来说明中介g公式的分析过程。从荷兰围产期登记处获取了2010年至2017年在荷兰发生的单胎出生数据(n = 1,217,626),并将其与社会人口统计学国家登记数据和邻里层面数据相关联。g公式设置对应于邻里SES从弱势到非弱势的假设改善。
在人群层面,邻里SES的假设改善导致SGA比例相对降低6.3%(95%置信区间[CI] 5.2,7.5),即总效应。总效应分解为自然直接效应(5.6%,95% CI 5.1,6.1)和自然间接效应(0.7%,95% CI 0.6,0.9)。就中介程度而言,观察到自然间接效应占邻里SES对SGA总效应的11.4%(95% CI 9.2,13.6)。
中介g公式是一种灵活的因果中介分析方法,适用于围产期健康研究中的大数据背景。其应用有助于为政策和公共卫生干预措施的制定提供有价值的见解。