TY - JOUR
T1 - Estimation of the prevalence of opioid misuse in New York State counties, 2007-2018
T2 - a bayesian spatiotemporal abundance model approach
AU - Santaella-Tenorio, Julian
AU - Hepler, Staci A.
AU - Rivera-Aguirre, Ariadne
AU - Kline, David M.
AU - Cerda, Magdalena
N1 - © The Author(s) 2024. Published by Oxford University Press on behalf of the Johns Hopkins Bloomberg School of Public Health. All rights reserved. For permissions, please e-mail: [email protected].
PY - 2024/3/6
Y1 - 2024/3/6
N2 - An important challenge to addressing the opioid overdose crisis is the lack of information on the size of the population of people who misuse opioids (PWMO) in local areas. This estimate is needed for better resource allocation, estimation of treatment and overdose outcome rates using appropriate denominators (ie, the population at risk), and proper evaluation of intervention effects. In this study, we used a bayesian hierarchical spatiotemporal integrated abundance model that integrates multiple types of county-level surveillance outcome data, state-level information on opioid misuse, and covariates to estimate the latent (hidden) numbers of PWMO and latent prevalence of opioid misuse across New York State counties (2007-2018). The model assumes that each opioid-related outcome ref lects a partial count of the number of PWMO, and it leverages these multiple sources of data to circumvent limitations of parameter estimation associated with other types of abundance models. Model estimates showed a reduction in the prevalence of PWMO during the study period, with important spatial and temporal variability. The model also provided county-level estimates of rates of treatment and opioid overdose using the numbers of PWMO as denominators. This modeling approach can identify the sizes of hidden populations to guide public health efforts in confronting the opioid overdose crisis across local areas.
AB - An important challenge to addressing the opioid overdose crisis is the lack of information on the size of the population of people who misuse opioids (PWMO) in local areas. This estimate is needed for better resource allocation, estimation of treatment and overdose outcome rates using appropriate denominators (ie, the population at risk), and proper evaluation of intervention effects. In this study, we used a bayesian hierarchical spatiotemporal integrated abundance model that integrates multiple types of county-level surveillance outcome data, state-level information on opioid misuse, and covariates to estimate the latent (hidden) numbers of PWMO and latent prevalence of opioid misuse across New York State counties (2007-2018). The model assumes that each opioid-related outcome ref lects a partial count of the number of PWMO, and it leverages these multiple sources of data to circumvent limitations of parameter estimation associated with other types of abundance models. Model estimates showed a reduction in the prevalence of PWMO during the study period, with important spatial and temporal variability. The model also provided county-level estimates of rates of treatment and opioid overdose using the numbers of PWMO as denominators. This modeling approach can identify the sizes of hidden populations to guide public health efforts in confronting the opioid overdose crisis across local areas.
KW - opioid misuse
KW - opioids
KW - population
KW - prevalence
KW - Prevalence
KW - Opiate Overdose/epidemiology
KW - Humans
KW - Opioid-Related Disorders/epidemiology
KW - New York/epidemiology
KW - Male
KW - Drug Overdose/epidemiology
KW - Models, Statistical
KW - Bayes Theorem
KW - Adult
KW - Female
KW - Spatio-Temporal Analysis
UR - http://www.scopus.com/inward/record.url?scp=85197980094&partnerID=8YFLogxK
UR - https://www.mendeley.com/catalogue/df1a19d8-72aa-38dc-a649-d7bbad003bbd/
U2 - 10.1093/aje/kwae018
DO - 10.1093/aje/kwae018
M3 - Article
C2 - 38456752
SN - 0002-9262
VL - 193
SP - 959
EP - 967
JO - American journal of epidemiology
JF - American journal of epidemiology
IS - 7
ER -