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运用图形建模来识别出生时基于区域的贫困与子女失业之间的可调节中介因素。

Using graphic modelling to identify modifiable mediators of the association between area-based deprivation at birth and offspring unemployment.

机构信息

Institute of Health and Wellbeing, University of Glasgow, Glasgow, United Kingdom.

Institute of Health and Wellbeing, Academic Centre, Gartnavel Royal Hospital, Glasgow, United Kingdom.

出版信息

PLoS One. 2021 Mar 31;16(3):e0249258. doi: 10.1371/journal.pone.0249258. eCollection 2021.

Abstract

BACKGROUND

Deprivation can perpetuate across generations; however, the causative pathways are not well understood. Directed acyclic graphs (DAG) with mediation analysis can help elucidate and quantify complex pathways in order to identify modifiable factors at which to target interventions.

METHODS AND FINDINGS

We linked ten Scotland-wide databases (six health and four education) to produce a cohort of 217,226 pupils who attended Scottish schools between 2009 and 2013. The DAG comprised 23 potential mediators of the association between area deprivation at birth and subsequent offspring 'not in education, employment or training' status, covering maternal, antenatal, perinatal and child health, school engagement, and educational factors. Analyses were performed using modified g-computation. Deprivation at birth was associated with a 7.3% increase in offspring 'not in education, employment or training'. The principal mediators of this association were smoking during pregnancy (natural indirect effect of 0·016, 95% CI 0·013, 0·019) and school absences (natural indirect effect of 0·021, 95% CI 0·018, 0·024), explaining 22% and 30% of the total effect respectively. The proportion of the association potentially eliminated by addressing these factors was 19% (controlled direct effect when set to non-smoker 0·058; 95% CI 0·053, 0·063) for smoking during pregnancy and 38% (controlled direct effect when set to no absences 0·043; 95% CI 0·037, 0·049) for school absences.

CONCLUSIONS

Combining a DAG with mediation analysis helped disentangle a complex public health problem and quantified the modifiable factors of maternal smoking and school absence that could be targeted for intervention. This study also demonstrates the general utility of DAGs in understanding complex public health problems.

摘要

背景

剥夺现象可能会在代际之间持续存在;然而,其因果途径尚不清楚。有向无环图(DAG)与中介分析相结合,可以帮助阐明和量化复杂的途径,从而确定可干预的因素,以便针对这些因素进行干预。

方法和发现

我们链接了苏格兰的十个数据库(六个健康数据库和四个教育数据库),以产生一个 217226 名学生的队列,这些学生在 2009 年至 2013 年期间就读于苏格兰学校。该 DAG 包含 23 个出生时所处区域贫困程度与后代“未接受教育、就业或培训”状态之间关联的潜在中介因素,涵盖了母亲、产前、围产期和儿童健康、学校参与度以及教育因素。分析使用改良的 g 计算法进行。出生时的贫困与后代“未接受教育、就业或培训”的比例增加了 7.3%。这种关联的主要中介因素是孕期吸烟(自然间接效应为 0.016,95%CI 0.013-0.019)和逃学(自然间接效应为 0.021,95%CI 0.018-0.024),分别解释了总效应的 22%和 30%。通过解决这些因素,潜在消除关联的比例为 19%(当设定为非吸烟者时,对照直接效应为 0.058;95%CI 0.053-0.063),对于孕期吸烟;38%(当设定为无逃学情况时,对照直接效应为 0.043;95%CI 0.037-0.049),对于逃学情况。

结论

结合 DAG 和中介分析有助于理清一个复杂的公共卫生问题,并量化了可干预的因素,如母亲吸烟和逃学,这些因素可以作为干预的目标。本研究还展示了 DAG 在理解复杂公共卫生问题方面的普遍适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2a17/8011734/4cf069700cb6/pone.0249258.g001.jpg

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