Nonparametric estimation of effect heterogeneity in rare events meta-analysis: Bivariate, discrete mixture model
Böhning, D; Martin, S; Sangnawakij, P; et al.Jansen, K; Böhning, W; Holling, H
Date: 18 April 2021
Journal
Lobachevskii Journal of Mathematics
Publisher
Springer/Russian Academy of Sciences/Kazan Federal University
Publisher DOI
Abstract
Abstract: Meta-analysis provides an integrated analysis and summary of the effects observed in k independent studies. The conventional analysis proceeds by first calculating a study-specific effect estimate, and then provides further analysis on the basis of the available k independent effect estimates associated with their uncertainty ...
Abstract: Meta-analysis provides an integrated analysis and summary of the effects observed in k independent studies. The conventional analysis proceeds by first calculating a study-specific effect estimate, and then provides further analysis on the basis of the available k independent effect estimates associated with their uncertainty measures. Here we consider a setting where counts of events are available from k independent studies for a treatment and a control group. We suggest to model this situation with a study-specific Poisson regression model, and allow the study-specific parameters of the Poisson model to arise from a nonparametric mixture model. This approach then allows the estimation of the heterogeneity variance of the effect measure of interest in a nonparametric manner. A case study is used to illustrate the methodology throughout the paper.
Institute of Biomedical & Clinical Science
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