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Constructing Causal Diagrams for Common Perinatal Outcomes: Benefits, Limitations and Motivating Examples with Maternal Antidepressant Use in Pregnancy
- Source :
- Paediatric and perinatal epidemiology, vol 30, iss 5
- Publication Year :
- 2016
- Publisher :
- eScholarship, University of California, 2016.
-
Abstract
- Background Covariate selection to reduce bias in observational data analysis has primarily relied upon statistical criteria to guide researchers. This approach may lead researchers to condition on variables that ultimately increase bias in the effect estimates. The use of directed acyclic graphs (DAGs) aids researchers in constructing thoughtful models based on hypothesised biologic mechanisms to produce the least biased effect estimates possible. Methods After providing an overview of different relations in DAGs and the prevailing mechanisms by which conditioning on variables increases or reduces bias in a model, we illustrate examples of DAGs for maternal antidepressants in pregnancy and four separate perinatal outcomes. Results By comparing and contrasting the diagrams for maternal antidepressant use in pregnancy and spontaneous abortion, major malformations, preterm birth, and postnatal growth, we illustrate the different conditioning sets required for each model. Moreover, we illustrate why it is not appropriate to condition on the same set of covariates for the same exposure and different perinatal outcomes. We further discuss potential selection biases, overadjustment of mediators on the causal path, and sufficient sets of conditioning variables. Conclusion In our efforts to construct parsimonious models that minimise confounding and selection biases, we must rely upon our scientific knowledge of the causal mechanism. By structuring data collection and analysis around hypothesised DAGs, we ultimately aim to validly estimate the causal effect of interest.
- Subjects :
- Epidemiology
Growth
Reproductive health and childbirth
Article
Paediatrics and Reproductive Medicine
03 medical and health sciences
0302 clinical medicine
Models
Pregnancy
Covariate
Econometrics
Medicine
Humans
030212 general & internal medicine
causal inference
Set (psychology)
Pediatric
Models, Statistical
030219 obstetrics & reproductive medicine
Data collection
Mechanism (biology)
business.industry
directed acyclic graphs
perinatal epidemiology
Spontaneous
Confounding
Abortion
Pregnancy Outcome
Abnormalities, Drug-Induced
Statistical
Perinatal Period - Conditions Originating in Perinatal Period
Antidepressive Agents
Abortion, Spontaneous
Mental Health
Good Health and Well Being
Drug-Induced
Causal inference
Pediatrics, Perinatology and Child Health
Public Health and Health Services
Premature Birth
Observational study
Female
Abnormalities
Construct (philosophy)
business
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- Paediatric and perinatal epidemiology, vol 30, iss 5
- Accession number :
- edsair.doi.dedup.....54195c650f18f3de25b897d1c8a30fbc