24: Generalized Simple Graphical Rules for Assessing Selection Bias

Yichi Zhang First Author
Yale School of Public Health
 
Haidong Lu Presenting Author
Yale University
 
Tuesday, Aug 5: 2:00 PM - 3:50 PM
2271 
Contributed Posters 
Music City Center 
Selection bias is a major obstacle toward valid causal inference in epidemiology. Over the past decade, several simple graphical rules based on causal diagrams have been proposed as the sufficient identification conditions for addressing selection bias and recovering causal effects. However, these simple graphical rules are usually coupled with specific identification strategies and estimators. In this article, we show two important cases of selection bias that cannot be addressed by these simple rules and their estimators: one case where selection is a descendant of a collider of the treatment and the outcome, and the other case where selection is affected by the mediator. To address selection bias in these two cases, we construct identification formulas by the g-computation and the inverse probability weighting (IPW) methods based on single-world intervention graphs (SWIGs). They are generalized to recover the average treatment effect by adjusting for post-treatment upstream causes of selection. We propose two IPW estimators and their variance estimators to recover the average treatment effect in the presence of selection bias in these two cases.

Keywords

selection bias

causal inference

causal diagrams

SWIG 

Main Sponsor

Section on Statistics in Epidemiology