A latent spatial factor approach for synthesizing opioid associated deaths and treatment admissions in Ohio counties

06/13/2018
by   Staci Hepler, et al.
0

Background: Opioid misuse is a major public health issue in the United States and in particular Ohio. However, the burden of the epidemic is challenging to quantify as public health surveillance measures capture different aspects of the problem. Here we synthesize county-level death and treatment counts to compare the relative burden across counties and assess associations with social environmental covariates. Methods: We construct a generalized spatial factor model to jointly model death and treatment rates for each county. For each outcome, we specify a spatial rates parameterization for a Poisson regression model with spatially varying factor loadings. We use a conditional autoregressive model to account for spatial dependence within a Bayesian framework. Results: The estimated spatial factor was highest in the southern and southwestern counties of the state, representing a higher burden of the opioid epidemic. We found that relatively high rates of treatment contributed to the factor in the southern part of the state; whereas, relatively higher rates of death contributed in the southwest. The estimated factor was also positively associated with the proportion of residents aged 18-64 on disability and negatively associated with the proportion of residents reporting white race. Conclusions: We synthesized the information in the opioid associated death and treatment counts through a spatial factor model to estimate a latent factor representing the consensus between the two surveillance measures. We believe this framework provides a coherent approach to describe the epidemic while leveraging information from multiple surveillance measures.

READ FULL TEXT
research
01/04/2021

A Bayesian spatio-temporal abundance model for surveillance of the opioid epidemic

Opioid misuse is a national epidemic and a significant drug related thre...
research
06/16/2022

Modeling rates of disease with missing categorical data

Covariates like age, sex, and race/ethnicity provide invaluable insight ...
research
11/04/2021

A SEIR model with time-varying coefficients for analysing the SARS-CoV-2 epidemic

In this study, we propose a time-dependent Susceptible-Exposed-Infected-...
research
06/19/2021

Geographic and Racial Disparities in the Incidence of Low Birthweight in Pennsylvania

Babies born with low and very low birthweights – i.e., birthweights belo...
research
01/18/2022

A zero-inflated endemic-epidemic model with an application to measles time series in Germany

Count data with excessive zeros are often encountered when modelling inf...
research
12/22/2021

COVID-19-Associated Orphanhood and Caregiver Death in the United States

Background: Most COVID-19 deaths occur among adults, not children, and a...
research
03/30/2023

An evaluation framework for comparing epidemic intelligence systems

In the context of Epidemic Intelligence, many Event-Based Surveillance (...

Please sign up or login with your details

Forgot password? Click here to reset