A Bayesian latent process spatiotemporal regression model for areal count data

Spat Spatiotemporal Epidemiol. 2018 Jun:25:25-37. doi: 10.1016/j.sste.2018.01.003. Epub 2018 Feb 2.

Abstract

Model-based approaches for the analysis of areal count data are commonplace in spatiotemporal analysis. In Bayesian hierarchical models, a latent process is incorporated in the mean function to account for dependence in space and time. Typically, the latent process is modelled using a conditional autoregressive (CAR) prior. The aim of this paper is to offer an alternative approach to CAR-based priors for modelling the latent process. The proposed approach is based on a spatiotemporal generalization of a latent process Poisson regression model developed in a time series setting. Spatiotemporal dependence in the autoregressive model for the latent process is modelled through its transition matrix, with a structured covariance matrix specified for its error term. The proposed model and its parameterizations are fitted in a Bayesian framework implemented via MCMC techniques. Our findings based on real-life examples show that the proposed approach is at least as effective as CAR-based models.

Keywords: Autoregressive latent process; Bayesian inference; Conditional autoregressive prior; Markov chain Monte Carlo; Spatiotemporal areal count data.

MeSH terms

  • Bayes Theorem*
  • Georgia / epidemiology
  • Humans
  • Infant, Low Birth Weight*
  • Infant, Newborn
  • Lung Neoplasms / epidemiology*
  • Lung Neoplasms / mortality
  • Ohio / epidemiology
  • Poisson Distribution*
  • Spatio-Temporal Analysis*