Bayesian network meta-regression hierarchical models using heavy-tailed multivariate random effects with covariate-dependent variances

Stat Med. 2021 Jul 10;40(15):3582-3603. doi: 10.1002/sim.8983. Epub 2021 Apr 12.

Abstract

Network meta-analysis (NMA) is gaining popularity in evidence synthesis and network meta-regression allows us to incorporate potentially important covariates into network meta-analysis. In this article, we propose a Bayesian network meta-regression hierarchical model and assume a general multivariate t distribution for the random treatment effects. The multivariate t distribution is desired for heavy-tailed random effects and converges to the multivariate normal distribution when the degrees of freedom go to infinity. Moreover, in NMA, some treatments are compared only in a single study. To overcome such sparsity, we propose a log-linear regression model for the variances of the random effects and incorporate aggregate covariates into modeling the variance components. We develop a Markov chain Monte Carlo sampling algorithm to sample from the posterior distribution via the collapsed Gibbs technique. We further use the deviance information criterion and the logarithm of the pseudo-marginal likelihood for model comparison. A simulation study is conducted and a detailed analysis from our motivating case study is carried out to further demonstrate the proposed methodology.

Keywords: arm-based model; collapsed Gibbs sampling; multivariate t distribution; surface under the cumulative ranking curve; triglycerides.

Publication types

  • Meta-Analysis
  • Research Support, N.I.H., Extramural
  • Research Support, N.I.H., Intramural

MeSH terms

  • Bayes Theorem*
  • Humans
  • Linear Models
  • Markov Chains
  • Monte Carlo Method
  • Network Meta-Analysis