A latent process model for forecasting multiple time series in environmental public health surveillance

Stat Med. 2016 Aug 15;35(18):3085-100. doi: 10.1002/sim.6904. Epub 2016 Feb 16.

Abstract

This paper outlines a latent process model for forecasting multiple health outcomes arising from a common environmental exposure. Traditionally, surveillance models in environmental health do not link health outcome measures, such as morbidity or mortality counts, to measures of exposure, such as air pollution. Moreover, different measures of health outcomes are treated as independent, while it is known that they are correlated with one another over time as they arise in part from a common underlying exposure. We propose modelling an environmental exposure as a latent process, and we describe the implementation of such a model within a hierarchical Bayesian framework and its efficient computation using integrated nested Laplace approximations. Through a simulation study, we compare distinct univariate models for each health outcome with a bivariate approach. The bivariate model outperforms the univariate models in bias and coverage of parameter estimation, in forecast accuracy and in computational efficiency. The methods are illustrated with a case study using healthcare utilization and air pollution data from British Columbia, Canada, 2003-2011, where seasonal wildfires produce high levels of air pollution, significantly impacting population health. Copyright © 2016 John Wiley & Sons, Ltd.

Keywords: Bayesian hierarchical models; INLA; air pollution; latent processes; time series.

MeSH terms

  • Air Pollutants / toxicity
  • Air Pollution
  • Bayes Theorem*
  • Canada
  • Environmental Exposure
  • Humans
  • Public Health Surveillance*

Substances

  • Air Pollutants

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