Analysing the relationship between treatment effect and underlying risk inmeta-analysis: comparison and development of approaches

Citation
Sj. Sharp et Sg. Thompson, Analysing the relationship between treatment effect and underlying risk inmeta-analysis: comparison and development of approaches, STAT MED, 19(23), 2000, pp. 3251-3274
Citations number
29
Categorie Soggetti
Research/Laboratory Medicine & Medical Tecnology","Medical Research General Topics
Journal title
STATISTICS IN MEDICINE
ISSN journal
02776715 → ACNP
Volume
19
Issue
23
Year of publication
2000
Pages
3251 - 3274
Database
ISI
SICI code
0277-6715(200012)19:23<3251:ATRBTE>2.0.ZU;2-5
Abstract
Three approaches for estimating the relationship between treatment effect a nd underlying risk in a metaanalysis of clinical trials have recently been published. The aim of each is to overcome the bias inherent in conventional regressions of treatment effect on control group risk, which arises from t he measurement error in the observed control group risks in different trial s. Here we describe these published approaches, and compare them with respe ct to their underlying models and methods of implementation. The underlying model for one of them is shown to be seriously flawed, while the other two are both statistically more appropriate than the conventional approaches, and differ from each other in only two assumptions. Both may be implemented using the Gibbs sampling algorithm in BUGS, and are exemplified here using a meta-analysis of mortality and bleeding data in trials of sclerotherapy for patients with cirrhosis. One approach is developed further; for the ill ustrative example considered, it is shown to be robust to different choices of prior distributions for the model parameters, and to the assumption of a linear relationship on a log-odds scale. It can also be used to estimate the level of underlying risk (and its standard error) at which the treatmen t effect crosses from benefit to harm, and other trial-level covariates may be included in the model as confounders. The BUGS code is provided in an A ppendix, to enable applied researchers to perform the various analyses desc ribed. Copyright (C) 2000 John Wiley & Sons, Ltd.