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Estimating the prevalence of problem drug use from drug-related mortality data

BACKGROUND AND AIMS: Indirect estimation methods are required for estimating the size of populations where only a proportion of individuals are observed directly, such as problem drug users (PDUs). Capture–recapture and multiplier methods are widely used, but have been criticized as subject to bias....

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Autores principales: Jones, Hayley E., Harris, Ross J., Downing, Beatrice C., Pierce, Matthias, Millar, Tim, Ades, A. E., Welton, Nicky J., Presanis, Anne M., Angelis, Daniela De, Hickman, Matthew
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7613965/
https://www.ncbi.nlm.nih.gov/pubmed/32392631
http://dx.doi.org/10.1111/add.15111
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author Jones, Hayley E.
Harris, Ross J.
Downing, Beatrice C.
Pierce, Matthias
Millar, Tim
Ades, A. E.
Welton, Nicky J.
Presanis, Anne M.
Angelis, Daniela De
Hickman, Matthew
author_facet Jones, Hayley E.
Harris, Ross J.
Downing, Beatrice C.
Pierce, Matthias
Millar, Tim
Ades, A. E.
Welton, Nicky J.
Presanis, Anne M.
Angelis, Daniela De
Hickman, Matthew
author_sort Jones, Hayley E.
collection PubMed
description BACKGROUND AND AIMS: Indirect estimation methods are required for estimating the size of populations where only a proportion of individuals are observed directly, such as problem drug users (PDUs). Capture–recapture and multiplier methods are widely used, but have been criticized as subject to bias. We propose a new approach to estimating prevalence of PDU from numbers of fatal drug-related poisonings (fDRPs) using linked databases, addressing the key limitations of simplistic ‘mortality multipliers’. METHODS: Our approach requires linkage of data on a large cohort of known PDUs to mortality registers and summary information concerning additional fDRPs observed outside this cohort. We model fDRP rates among the cohort and assume that rates in unobserved PDUs are equal to rates in the cohort during periods out of treatment. Prevalence is estimated in a Bayesian statistical framework, in which we simultaneously fit regression models to fDRP rates and prevalence, allowing both to vary by demographic factors and the former also by treatment status. RESULTS: We report a case study analysis, estimating the prevalence of opioid dependence in England in 2008/09, by gender, age group and geographical region. Overall prevalence was estimated as 0.82% (95% credible interval = 0.74–0.94%) of 15–64-year-olds, which is similar to a published estimate based on capture–recapture analysis. CONCLUSIONS: Our modelling approach estimates prevalence from drug-related mortality data, while addressing the main limitations of simplistic multipliers. This offers an alternative approach for the common situation where available data sources do not meet the strong assumptions required for valid capture–recapture estimation. In a case study analysis, prevalence estimates based on our approach were surprisingly similar to existing capture-recapture estimates but, we argue, are based on a much more objective and justifiable modelling approach.
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spelling pubmed-76139652022-12-19 Estimating the prevalence of problem drug use from drug-related mortality data Jones, Hayley E. Harris, Ross J. Downing, Beatrice C. Pierce, Matthias Millar, Tim Ades, A. E. Welton, Nicky J. Presanis, Anne M. Angelis, Daniela De Hickman, Matthew Addiction Article BACKGROUND AND AIMS: Indirect estimation methods are required for estimating the size of populations where only a proportion of individuals are observed directly, such as problem drug users (PDUs). Capture–recapture and multiplier methods are widely used, but have been criticized as subject to bias. We propose a new approach to estimating prevalence of PDU from numbers of fatal drug-related poisonings (fDRPs) using linked databases, addressing the key limitations of simplistic ‘mortality multipliers’. METHODS: Our approach requires linkage of data on a large cohort of known PDUs to mortality registers and summary information concerning additional fDRPs observed outside this cohort. We model fDRP rates among the cohort and assume that rates in unobserved PDUs are equal to rates in the cohort during periods out of treatment. Prevalence is estimated in a Bayesian statistical framework, in which we simultaneously fit regression models to fDRP rates and prevalence, allowing both to vary by demographic factors and the former also by treatment status. RESULTS: We report a case study analysis, estimating the prevalence of opioid dependence in England in 2008/09, by gender, age group and geographical region. Overall prevalence was estimated as 0.82% (95% credible interval = 0.74–0.94%) of 15–64-year-olds, which is similar to a published estimate based on capture–recapture analysis. CONCLUSIONS: Our modelling approach estimates prevalence from drug-related mortality data, while addressing the main limitations of simplistic multipliers. This offers an alternative approach for the common situation where available data sources do not meet the strong assumptions required for valid capture–recapture estimation. In a case study analysis, prevalence estimates based on our approach were surprisingly similar to existing capture-recapture estimates but, we argue, are based on a much more objective and justifiable modelling approach. 2020-12-01 2020-06-09 /pmc/articles/PMC7613965/ /pubmed/32392631 http://dx.doi.org/10.1111/add.15111 Text en https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the Creative Commons Attribution (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Article
Jones, Hayley E.
Harris, Ross J.
Downing, Beatrice C.
Pierce, Matthias
Millar, Tim
Ades, A. E.
Welton, Nicky J.
Presanis, Anne M.
Angelis, Daniela De
Hickman, Matthew
Estimating the prevalence of problem drug use from drug-related mortality data
title Estimating the prevalence of problem drug use from drug-related mortality data
title_full Estimating the prevalence of problem drug use from drug-related mortality data
title_fullStr Estimating the prevalence of problem drug use from drug-related mortality data
title_full_unstemmed Estimating the prevalence of problem drug use from drug-related mortality data
title_short Estimating the prevalence of problem drug use from drug-related mortality data
title_sort estimating the prevalence of problem drug use from drug-related mortality data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7613965/
https://www.ncbi.nlm.nih.gov/pubmed/32392631
http://dx.doi.org/10.1111/add.15111
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