TY - JOUR
T1 - A Marginalized Zero-Inflated Negative Binomial Model for Spatial Data
T2 - Modeling COVID-19 Deaths in Georgia
AU - Mutiso, Fedelis
AU - Pearce, John L.
AU - Benjamin-Neelon, Sara E.
AU - Mueller, Noel
AU - Li, Hong
AU - Neelon, Brian
N1 - Publisher Copyright:
© 2024 Wiley-VCH GmbH.
PY - 2024/7
Y1 - 2024/7
N2 - Spatial count data with an abundance of zeros arise commonly in disease mapping studies. Typically, these data are analyzed using zero-inflated models, which comprise a mixture of a point mass at zero and an ordinary count distribution, such as the Poisson or negative binomial. However, due to their mixture representation, conventional zero-inflated models are challenging to explain in practice because the parameter estimates have conditional latent-class interpretations. As an alternative, several authors have proposed marginalized zero-inflated models that simultaneously model the excess zeros and the marginal mean, leading to a parameterization that more closely aligns with ordinary count models. Motivated by a study examining predictors of COVID-19 death rates, we develop a spatiotemporal marginalized zero-inflated negative binomial model that directly models the marginal mean, thus extending marginalized zero-inflated models to the spatial setting. To capture the spatiotemporal heterogeneity in the data, we introduce region-level covariates, smooth temporal effects, and spatially correlated random effects to model both the excess zeros and the marginal mean. For estimation, we adopt a Bayesian approach that combines full-conditional Gibbs sampling and Metropolis–Hastings steps. We investigate features of the model and use the model to identify key predictors of COVID-19 deaths in the US state of Georgia during the 2021 calendar year.
AB - Spatial count data with an abundance of zeros arise commonly in disease mapping studies. Typically, these data are analyzed using zero-inflated models, which comprise a mixture of a point mass at zero and an ordinary count distribution, such as the Poisson or negative binomial. However, due to their mixture representation, conventional zero-inflated models are challenging to explain in practice because the parameter estimates have conditional latent-class interpretations. As an alternative, several authors have proposed marginalized zero-inflated models that simultaneously model the excess zeros and the marginal mean, leading to a parameterization that more closely aligns with ordinary count models. Motivated by a study examining predictors of COVID-19 death rates, we develop a spatiotemporal marginalized zero-inflated negative binomial model that directly models the marginal mean, thus extending marginalized zero-inflated models to the spatial setting. To capture the spatiotemporal heterogeneity in the data, we introduce region-level covariates, smooth temporal effects, and spatially correlated random effects to model both the excess zeros and the marginal mean. For estimation, we adopt a Bayesian approach that combines full-conditional Gibbs sampling and Metropolis–Hastings steps. We investigate features of the model and use the model to identify key predictors of COVID-19 deaths in the US state of Georgia during the 2021 calendar year.
KW - B$B$-splines
KW - conditionally autoregressive prior
KW - marginalized models
KW - Pólya-gamma distribution
KW - zero inflation
UR - http://www.scopus.com/inward/record.url?scp=85198523820&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85198523820&partnerID=8YFLogxK
U2 - 10.1002/bimj.202300182
DO - 10.1002/bimj.202300182
M3 - Article
C2 - 39001709
AN - SCOPUS:85198523820
SN - 0323-3847
VL - 66
JO - Biometrical Journal
JF - Biometrical Journal
IS - 5
M1 - e202300182
ER -