Estimating the variance for heterogeneity in arm‐based network meta‐analysis |
| |
Authors: | Hans‐Peter Piepho Laurence V. Madden James Roger Roger Payne Emlyn R. Williams |
| |
Affiliation: | 1. Biostatistics Unit, University of Hohenheim, Stuttgart, Germany;2. Department of Plant Pathology, Ohio State University, Wooster, OH, USA;3. London School of Hygiene and Tropical Medicine, London, UK;4. VSN International, Hemel Hempstead, UK;5. Department of Computational and Systems Biology, Rothamsted Research, Harpenden, UK;6. Statistical Consulting Unit, Australian National University, Canberra, ACT, Australia |
| |
Abstract: | Network meta‐analysis can be implemented by using arm‐based or contrast‐based models. Here we focus on arm‐based models and fit them using generalized linear mixed model procedures. Full maximum likelihood (ML) estimation leads to biased trial‐by‐treatment interaction variance estimates for heterogeneity. Thus, our objective is to investigate alternative approaches to variance estimation that reduce bias compared with full ML. Specifically, we use penalized quasi‐likelihood/pseudo‐likelihood and hierarchical (h) likelihood approaches. In addition, we consider a novel model modification that yields estimators akin to the residual maximum likelihood estimator for linear mixed models. The proposed methods are compared by simulation, and 2 real datasets are used for illustration. Simulations show that penalized quasi‐likelihood/pseudo‐likelihood and h‐likelihood reduce bias and yield satisfactory coverage rates. Sum‐to‐zero restriction and baseline contrasts for random trial‐by‐treatment interaction effects, as well as a residual ML‐like adjustment, also reduce bias compared with an unconstrained model when ML is used, but coverage rates are not quite as good. Penalized quasi‐likelihood/pseudo‐likelihood and h‐likelihood are therefore recommended. |
| |
Keywords: | adjusted profile likelihood arm‐based analysis generalized linear mixed models (GLMM) hierarchical likelihood restricted pseudo‐likelihood |
|
|