Bayesian hierarchical joint modeling of repeatedly measured continuous and ordinal markers of disease severity: Application to Ugandan diabetes data

Stat Med. 2017 Dec 20;36(29):4677-4691. doi: 10.1002/sim.7444. Epub 2017 Aug 22.

Abstract

Modeling of correlated biomarkers jointly has been shown to improve the efficiency of parameter estimates, leading to better clinical decisions. In this paper, we employ a joint modeling approach to a unique diabetes dataset, where blood glucose (continuous) and urine glucose (ordinal) measures of disease severity for diabetes are known to be correlated. The postulated joint model assumes that the outcomes are from distributions that are in the exponential family and hence modeled as multivariate generalized linear mixed effects model associated through correlated and/or shared random effects. The Markov chain Monte Carlo Bayesian approach is used to approximate posterior distribution and draw inference on the parameters. This proposed methodology provides a flexible framework to account for the hierarchical structure of the highly unbalanced data as well as the association between the 2 outcomes. The results indicate improved efficiency of parameter estimates when blood glucose and urine glucose are modeled jointly. Moreover, the simulation studies show that estimates obtained from the joint model are consistently less biased and more efficient than those in the separate models.

Keywords: MCMC; diabetes; generalized linear mixed effects models; hierarchical modeling; joint modeling; unbalanced data.

MeSH terms

  • Adult
  • Aged
  • Bayes Theorem*
  • Biomarkers / blood
  • Biomarkers / urine
  • Blood Glucose / analysis
  • Computer Simulation
  • Diabetes Mellitus / blood
  • Diabetes Mellitus / urine
  • Female
  • Hospitals
  • Humans
  • Linear Models*
  • Male
  • Markov Chains
  • Middle Aged
  • Monte Carlo Method
  • Multivariate Analysis*
  • Registries
  • Severity of Illness Index*
  • Uganda
  • Young Adult

Substances

  • Biomarkers
  • Blood Glucose