A Bayesian Multi-State Data Integration Approach for Estimating County-level Prevalence of Opioid Misuse in the United States
Zixuan Feng, Qiushi Chen, Paul Griffin, and Le Bao

TL;DR
This paper introduces a Bayesian multi-state data integration model that estimates county-level opioid misuse prevalence nationwide, combining various data sources to inform local public health responses.
Contribution
It presents a novel hierarchical Bayesian framework that integrates multiple data sources and accounts for heterogeneity, enabling nationwide county-level opioid misuse estimates.
Findings
High estimation accuracy demonstrated through cross-validation
First nationwide county-level opioid misuse estimates produced
Model effectively leverages limited and diverse data sources
Abstract
Drug overdose deaths, including from opioids, remain a significant public health threat to the United States (US). To abate the harms of opioid misuse, understanding its prevalence at the local level is crucial for stakeholders in communities to develop response strategies that effectively use limited resources. Although there exist several state-specific studies that provide county-level prevalence estimates, such estimates are not widely available across the country, as the datasets used in these studies are not always readily available in other states, which, therefore, has limited the wider applications of existing models. To fill this gap, we propose a Bayesian multi-state data integration approach that fully utilizes publicly available data sources to estimate county-level opioid misuse prevalence for all counties in the US. The hierarchical structure jointly models opioid misuse…
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Taxonomy
TopicsOpioid Use Disorder Treatment · HIV, Drug Use, Sexual Risk · Census and Population Estimation
