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Simulation and data-generation for random-effects network meta-analysis of binary outcome.

Svenja E SeideKatrin JensenMeinhard Kieser
Published in: Statistics in medicine (2019)
The performance of statistical methods is frequently evaluated by means of simulation studies. In case of network meta-analysis of binary data, however, available data-generating models (DGMs) are restricted to either inclusion of two-armed trials or the fixed-effect model. Based on data-generation in the pairwise case, we propose a framework for the simulation of random-effect network meta-analyses including multiarm trials with binary outcome. The only one of the common DGMs used in the pairwise case, which is directly applicable to a random-effects network setting uses strongly restrictive assumptions. To overcome these limitations, we modify this approach and derive a related simulation procedure using odds ratios as effect measure. The performance of this procedure is evaluated with synthetic data and in an empirical example.
Keyphrases
  • systematic review
  • meta analyses
  • electronic health record
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  • minimally invasive
  • case control
  • virtual reality
  • artificial intelligence
  • network analysis