| Literature DB >> 29076182 |
Stephen R Cole1, Jessie K Edwards1, Daniel Westreich1, Catherine R Lesko2, Bryan Lau2, Michael J Mugavero3, W Christopher Mathews4, Joseph J Eron5, Sander Greenland6.
Abstract
Marginal structural models for time-fixed treatments fit using inverse-probability weighted estimating equations are increasingly popular. Nonetheless, the resulting effect estimates are subject to finite-sample bias when data are sparse, as is typical for large-sample procedures. Here we propose a semi-Bayes estimation approach which penalizes or shrinks the estimated model parameters to improve finite-sample performance. This approach uses simple symmetric data-augmentation priors. Limited simulation experiments indicate that the proposed approach reduces finite-sample bias and improves confidence-interval coverage when the true values lie within the central "hill" of the prior distribution. We illustrate the approach with data from a nonexperimental study of HIV treatments.Entities:
Keywords: bias; causal inference; cohort study; semi-Bayes; semiparametric; survival analysis
Mesh:
Substances:
Year: 2017 PMID: 29076182 PMCID: PMC6771415 DOI: 10.1002/bimj.201600140
Source DB: PubMed Journal: Biom J ISSN: 0323-3847 Impact factor: 2.207