Login / Signup

A closed-form estimator for meta-analysis and surrogate markers evaluation.

Alvaro Jose FlorezGeert MolenberghsGeert VerbekeAriel Alonso Abad
Published in: Journal of biopharmaceutical statistics (2018)
Estimating complex linear mixed models using an iterative full maximum likelihood estimator can be cumbersome in some cases. With small and unbalanced datasets, convergence problems are common. Also, for large datasets, iterative procedures can be computationally prohibitive. To overcome these computational issues, an unbiased two-stage closed-form estimator for the multivariate linear mixed model is proposed. It is rooted in pseudo-likelihood-based split-sample methodology and useful, for example, when evaluating normally distributed endpoints in a meta-analytic context. However, applications go well beyond this framework. Its statistical and computational performance is assessed via simulation. The method is applied to a study in schizophrenia.
Keyphrases
  • systematic review
  • image quality
  • bipolar disorder
  • rna seq
  • mental health
  • neural network
  • meta analyses
  • dual energy
  • computed tomography
  • case control
  • data analysis
  • single cell
  • virtual reality