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An introduction to bayesian spatial smoothing methods for disease mapping: modeling county firearm suicide mortality rates.

Emma L GauseAustin E SchumacherAlice M EllysonSuzanne D WithersJonathan D MayerAli Rowhani-Rahbar
Published in: American journal of epidemiology (2024)
This article introduces bayesian spatial smoothing models for disease mapping-a specific application of small area estimation where the full universe of data is known-to a wider audience of public health professionals using firearm suicide as a motivating example. Besag, York, and Mollié (BYM) Poisson spatial and space-time smoothing models were fitted to firearm suicide counts for the years 2014-2018. County raw death rates in 2018 ranged from 0 to 24.81 deaths per 10 000 people. However, the highest mortality rate was highly unstable, based on only 2 deaths in a population of approximately 800, and 80.5% of contiguous US counties experienced fewer than 10 firearm suicide deaths and were thus suppressed. Spatially smoothed county firearm suicide mortality estimates ranged from 0.06 to 4.05 deaths per 10 000 people and could be reported for all counties. The space-time smoothing model produced similar estimates with narrower credible intervals as it allowed counties to gain precision from adjacent neighbors and their own counts in adjacent years. bayesian spatial smoothing methods are a useful tool for evaluating spatial health disparities in small geographies where small numbers can result in highly variable rate estimates, and new estimation techniques in R software have made fitting these models more accessible to researchers.
Keyphrases
  • cardiovascular events
  • healthcare
  • public health
  • mental health
  • machine learning
  • cardiovascular disease
  • risk assessment
  • social media
  • deep learning