| Literature DB >> 23456754 |
Arvid Sjölander1, Paul Lichtenstein, Henrik Larsson, Yudi Pawitan.
Abstract
A popular way to control for confounding in observational studies is to identify clusters of individuals (e.g., twin pairs), such that a large set of potential confounders are constant (shared) within each cluster. By studying the exposure-outcome association within clusters, we are in effect controlling for the whole set of shared confounders. An increasingly popular analysis tool is the between-within (BW) model, which decomposes the exposure-outcome association into a 'within-cluster effect' and a 'between-cluster effect'. BW models are relatively common for nonsurvival outcomes and have been studied in the theoretical literature. Although it is straightforward to use BW models for survival outcomes, this has rarely been carried out in practice, and such models have not been studied in the theoretical literature. In this paper, we propose a gamma BW model for survival outcomes. We compare the properties of this model with the more standard stratified Cox regression model and use the proposed model to analyze data from a twin study of obesity and mortality. We find the following: (i) the gamma BW model often produces a more powerful test of the 'within-cluster effect' than stratified Cox regression; and (ii) the gamma BW model is robust against model misspecification, although there are situations where it could give biased estimates.Entities:
Keywords: between-within model; causal inference; co-twin control study; confounding; sibling comparison study
Mesh:
Year: 2013 PMID: 23456754 DOI: 10.1002/sim.5767
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373