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A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures

AIMS: There is currently no universally accepted measure for population-based surveillance of mood and anxiety disorders. As such, the use of multiple linked measures could provide a more accurate estimate of population prevalence. Our primary objective was to apply Bayesian methods to two commonly...

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Autores principales: Edwards, Jordan, Pananos, A. Demetri, Thind, Amardeep, Stranges, Saverio, Chiu, Maria, Anderson, Kelly K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8057492/
https://www.ncbi.nlm.nih.gov/pubmed/33413716
http://dx.doi.org/10.1017/S2045796020001080
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author Edwards, Jordan
Pananos, A. Demetri
Thind, Amardeep
Stranges, Saverio
Chiu, Maria
Anderson, Kelly K.
author_facet Edwards, Jordan
Pananos, A. Demetri
Thind, Amardeep
Stranges, Saverio
Chiu, Maria
Anderson, Kelly K.
author_sort Edwards, Jordan
collection PubMed
description AIMS: There is currently no universally accepted measure for population-based surveillance of mood and anxiety disorders. As such, the use of multiple linked measures could provide a more accurate estimate of population prevalence. Our primary objective was to apply Bayesian methods to two commonly employed population measures of mood and anxiety disorders to make inferences regarding the population prevalence and measurement properties of a combined measure. METHODS: We used data from the 2012 Canadian Community Health Survey – Mental Health linked to health administrative databases in Ontario, Canada. Structured interview diagnoses were obtained from the survey, and health administrative diagnoses were identified using a standardised algorithm. These two prevalence estimates, in addition to data on the concordance between these measures and prior estimates of their psychometric properties, were used to inform our combined estimate. The marginal posterior densities of all parameters were estimated using Hamiltonian Monte Carlo (HMC), a Markov Chain Monte Carlo technique. Summaries of posterior distributions, including the means and 95% equally tailed posterior credible intervals, were used for interpretation of the results. RESULTS: The combined prevalence mean was 8.6%, with a credible interval of 6.8–10.6%. This combined estimate sits between Bayesian-derived prevalence estimates from administrative data-derived diagnoses (mean = 7.4%) and the survey-derived diagnoses (mean = 13.9%). The results of our sensitivity analysis suggest that varying the specificity of the survey-derived measure has an appreciable impact on the combined posterior prevalence estimate. Our combined posterior prevalence estimate remained stable when varying other prior information. We detected no problematic HMC behaviour, and our posterior predictive checks suggest that our model can reliably recreate our data. CONCLUSIONS: Accurate population-based estimates of disease are the cornerstone of health service planning and resource allocation. As a greater number of linked population data sources become available, so too does the opportunity for researchers to fully capitalise on the data. The true population prevalence of mood and anxiety disorders may reside between estimates obtained from survey data and health administrative data. We have demonstrated how the use of Bayesian approaches may provide a more informed and accurate estimate of mood and anxiety disorders in the population. This work provides a blueprint for future population-based estimates of disease using linked health data.
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spelling pubmed-80574922021-04-21 A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures Edwards, Jordan Pananos, A. Demetri Thind, Amardeep Stranges, Saverio Chiu, Maria Anderson, Kelly K. Epidemiol Psychiatr Sci Original Article AIMS: There is currently no universally accepted measure for population-based surveillance of mood and anxiety disorders. As such, the use of multiple linked measures could provide a more accurate estimate of population prevalence. Our primary objective was to apply Bayesian methods to two commonly employed population measures of mood and anxiety disorders to make inferences regarding the population prevalence and measurement properties of a combined measure. METHODS: We used data from the 2012 Canadian Community Health Survey – Mental Health linked to health administrative databases in Ontario, Canada. Structured interview diagnoses were obtained from the survey, and health administrative diagnoses were identified using a standardised algorithm. These two prevalence estimates, in addition to data on the concordance between these measures and prior estimates of their psychometric properties, were used to inform our combined estimate. The marginal posterior densities of all parameters were estimated using Hamiltonian Monte Carlo (HMC), a Markov Chain Monte Carlo technique. Summaries of posterior distributions, including the means and 95% equally tailed posterior credible intervals, were used for interpretation of the results. RESULTS: The combined prevalence mean was 8.6%, with a credible interval of 6.8–10.6%. This combined estimate sits between Bayesian-derived prevalence estimates from administrative data-derived diagnoses (mean = 7.4%) and the survey-derived diagnoses (mean = 13.9%). The results of our sensitivity analysis suggest that varying the specificity of the survey-derived measure has an appreciable impact on the combined posterior prevalence estimate. Our combined posterior prevalence estimate remained stable when varying other prior information. We detected no problematic HMC behaviour, and our posterior predictive checks suggest that our model can reliably recreate our data. CONCLUSIONS: Accurate population-based estimates of disease are the cornerstone of health service planning and resource allocation. As a greater number of linked population data sources become available, so too does the opportunity for researchers to fully capitalise on the data. The true population prevalence of mood and anxiety disorders may reside between estimates obtained from survey data and health administrative data. We have demonstrated how the use of Bayesian approaches may provide a more informed and accurate estimate of mood and anxiety disorders in the population. This work provides a blueprint for future population-based estimates of disease using linked health data. Cambridge University Press 2021-01-08 /pmc/articles/PMC8057492/ /pubmed/33413716 http://dx.doi.org/10.1017/S2045796020001080 Text en © The Author(s) 2021 https://creativecommons.org/licenses/by/4.0/This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re- use, distribution and reproduction, provided the original article is properly cited.
spellingShingle Original Article
Edwards, Jordan
Pananos, A. Demetri
Thind, Amardeep
Stranges, Saverio
Chiu, Maria
Anderson, Kelly K.
A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
title A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
title_full A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
title_fullStr A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
title_full_unstemmed A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
title_short A Bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
title_sort bayesian approach to estimating the population prevalence of mood and anxiety disorders using multiple measures
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8057492/
https://www.ncbi.nlm.nih.gov/pubmed/33413716
http://dx.doi.org/10.1017/S2045796020001080
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