Meta-analysis for rare events
Citations Over TimeTop 10% of 2010 papers
Abstract
Meta-analysis provides a useful framework for combining information across related studies and has been widely utilized to combine data from clinical studies in order to evaluate treatment efficacy. More recently, meta-analysis has also been used to assess drug safety. However, because adverse events are typically rare, standard methods may not work well in this setting. Most popular methods use fixed or random effects models to combine effect estimates obtained separately for each individual study. In the context of very rare outcomes, effect estimates from individual studies may be unstable or even undefined. We propose alternative approaches based on Poisson random effects models to make inference about the relative risk between two treatment groups. Simulation studies show that the proposed methods perform well when the underlying event rates are low. The methods are illustrated using data from a recent meta-analysis (N. Engl. J. Med. 2007; 356(24):2457-2471) of 48 comparative trials involving rosiglitazone, a type 2 diabetes drug, with respect to its possible cardiovascular toxicity.
Related Papers
- → An Application Comparison of Two Poisson Models on Zero Count Data(2021)30 cited
- → A mixture model with Poisson and zero-truncated Poisson components to analyze road traffic accidents in Turkey(2020)17 cited
- → The Analysis of Count Data: Poisson Model(2004)2 cited
- → Analysis of Count Data(2000)24 cited