Quantification of collider‐stratification bias and the birthweight paradox
- 3 August 2009
- journal article
- research article
- Published by Wiley in Paediatric and Perinatal Epidemiology
- Vol. 23 (5) , 394-402
- https://doi.org/10.1111/j.1365-3016.2009.01053.x
Abstract
The ‘birthweight paradox’ describes the phenomenon whereby birthweight-specific mortality curves cross when stratified on other exposures, most notably cigarette smoking. The paradox has been noted widely in the literature and numerous explanations and corrections have been suggested. Recently, causal diagrams have been used to illustrate the possibility for collider-stratification bias in models adjusting for birthweight. When two variables share a common effect, stratification on the variable representing that effect induces a statistical relation between otherwise independent factors. This bias has been proposed to explain the birthweight paradox. Causal diagrams may illustrate sources of bias, but are limited to describing qualitative effects. In this paper, we provide causal diagrams that illustrate the birthweight paradox and use a simulation study to quantify the collider-stratification bias under a range of circumstances. Considered circumstances include exposures with and without direct effects on neonatal mortality, as well as with and without indirect effects acting through birthweight on neonatal mortality. The results of these simulations illustrate that when the birthweight–mortality relation is subject to substantial uncontrolled confounding, the bias on estimates of effect adjusted for birthweight may be sufficient to yield opposite causal conclusions, i.e. a factor that poses increased risk appears protective. Effects on stratum-specific birthweight–mortality curves were considered to illustrate the connection between collider-stratification bias and the crossing of the curves. The simulations demonstrate the conditions necessary to give rise to empirical evidence of the paradox.Keywords
This publication has 32 references indexed in Scilit:
- Overadjustment Bias and Unnecessary Adjustment in Epidemiologic StudiesEpidemiology, 2009
- From causal diagrams to birth weight-specific curves of infant mortalityEuropean Journal of Epidemiology, 2008
- Invited Commentary: The Perils of Birth Weight--A Lesson from Directed Acyclic GraphsAmerican Journal of Epidemiology, 2006
- Invited commentary: simple models for a complicated reality.American Journal of Epidemiology, 2006
- Lipid Adjustment in the Analysis of Environmental Contaminants and Human Health RisksEnvironmental Health Perspectives, 2005
- Improved estimation of controlled direct effects in the presence of unmeasured confounding of intermediate variablesStatistics in Medicine, 2005
- A Proportional Hazards Model with Time-dependent Covariates and Time-varying Effects for Analysis of Fetal and Infant DeathAmerican Journal of Epidemiology, 2004
- Invited Commentary: What's So Bad about Curves Crossing Anyway?American Journal of Epidemiology, 2004
- Is it time to abandon adjustment for birth weight in studies of infant mortality?Paediatric and Perinatal Epidemiology, 2003
- On the importance—and the unimportance— of birthweightInternational Journal of Epidemiology, 2001