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Small Area Forecasting of Opioid-Related Mortality: Bayesian Spatiotemporal Dynamic Modeling Approach.

Cici X BauerKehe ZhangWenjun LiDana BernsonOlaf DammannMarc R LaRochelleThomas J Stopka
Published in: JMIR public health and surveillance (2023)
Our Bayesian spatiotemporal models focused on opioid-related overdose mortality data facilitated prediction approaches that can inform preemptive public health decision-making and resource allocation. While sparse data from rural and less populated locales typically pose special challenges in small area predictions, our dynamic Bayesian models, which maximized information borrowing across geographic areas and time points, were used to provide more accurate predictions for small areas. Such approaches can be replicated in other jurisdictions and at varying temporal and geographical levels. We encourage the formation of a modeling consortium for fatal opioid-related overdose predictions, where different modeling techniques could be ensembled to inform public health policy.
Keyphrases
  • public health
  • chronic pain
  • pain management
  • healthcare
  • big data
  • south africa
  • machine learning
  • coronary artery disease
  • health information
  • social media
  • drug induced