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Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England

BACKGROUND: Mental health policy makers require evidence-based information to optimise effective care provision based on local need, but tools are unavailable. AIMS: To develop and validate a population-level prediction model for need for early intervention in psychosis (EIP) care for first-episode...

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Autores principales: McDonald, Keltie, Ding, Tao, Ker, Hannah, Dliwayo, Thandiwe Rebecca, Osborn, David P.J., Wohland, Pia, Coid, Jeremy W., French, Paul, Jones, Peter B., Baio, Gianluca, Kirkbride, James B.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cambridge University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7611597/
https://www.ncbi.nlm.nih.gov/pubmed/34475575
http://dx.doi.org/10.1192/bjp.2021.18
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author McDonald, Keltie
Ding, Tao
Ker, Hannah
Dliwayo, Thandiwe Rebecca
Osborn, David P.J.
Wohland, Pia
Coid, Jeremy W.
French, Paul
Jones, Peter B.
Baio, Gianluca
Kirkbride, James B.
author_facet McDonald, Keltie
Ding, Tao
Ker, Hannah
Dliwayo, Thandiwe Rebecca
Osborn, David P.J.
Wohland, Pia
Coid, Jeremy W.
French, Paul
Jones, Peter B.
Baio, Gianluca
Kirkbride, James B.
author_sort McDonald, Keltie
collection PubMed
description BACKGROUND: Mental health policy makers require evidence-based information to optimise effective care provision based on local need, but tools are unavailable. AIMS: To develop and validate a population-level prediction model for need for early intervention in psychosis (EIP) care for first-episode psychosis (FEP) in England up to 2025, based on epidemiological evidence and demographic projections. METHOD: We used Bayesian Poisson regression to model small-area-level variation in FEP incidence for people aged 16–64 years. We compared six candidate models, validated against observed National Health Service FEP data in 2017. Our best-fitting model predicted annual incidence case-loads for EIP services in England up to 2025, for probable FEP, treatment in EIP services, initial assessment by EIP services and referral to EIP services for ‘suspected psychosis’. Forecasts were stratified by gender, age and ethnicity, at national and Clinical Commissioning Group levels. RESULTS: A model with age, gender, ethnicity, small-area-level deprivation, social fragmentation and regional cannabis use provided best fit to observed new FEP cases at national and Clinical Commissioning Group levels in 2017 (predicted 8112, 95% CI 7623–8597; observed 8038, difference of 74 [0.92%]). By 2025, the model forecasted 11 067 new treated cases per annum (95% CI 10 383–11 740). For every 10 new treated cases, 21 and 23 people would be assessed by and referred to EIP services for suspected psychosis, respectively. CONCLUSIONS: Our evidence-based methodology provides an accurate, validated tool to inform clinical provision of EIP services about future population need for care, based on local variation of major social determinants of psychosis.
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spelling pubmed-76115972021-10-28 Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England McDonald, Keltie Ding, Tao Ker, Hannah Dliwayo, Thandiwe Rebecca Osborn, David P.J. Wohland, Pia Coid, Jeremy W. French, Paul Jones, Peter B. Baio, Gianluca Kirkbride, James B. Br J Psychiatry Paper BACKGROUND: Mental health policy makers require evidence-based information to optimise effective care provision based on local need, but tools are unavailable. AIMS: To develop and validate a population-level prediction model for need for early intervention in psychosis (EIP) care for first-episode psychosis (FEP) in England up to 2025, based on epidemiological evidence and demographic projections. METHOD: We used Bayesian Poisson regression to model small-area-level variation in FEP incidence for people aged 16–64 years. We compared six candidate models, validated against observed National Health Service FEP data in 2017. Our best-fitting model predicted annual incidence case-loads for EIP services in England up to 2025, for probable FEP, treatment in EIP services, initial assessment by EIP services and referral to EIP services for ‘suspected psychosis’. Forecasts were stratified by gender, age and ethnicity, at national and Clinical Commissioning Group levels. RESULTS: A model with age, gender, ethnicity, small-area-level deprivation, social fragmentation and regional cannabis use provided best fit to observed new FEP cases at national and Clinical Commissioning Group levels in 2017 (predicted 8112, 95% CI 7623–8597; observed 8038, difference of 74 [0.92%]). By 2025, the model forecasted 11 067 new treated cases per annum (95% CI 10 383–11 740). For every 10 new treated cases, 21 and 23 people would be assessed by and referred to EIP services for suspected psychosis, respectively. CONCLUSIONS: Our evidence-based methodology provides an accurate, validated tool to inform clinical provision of EIP services about future population need for care, based on local variation of major social determinants of psychosis. Cambridge University Press 2021-07 /pmc/articles/PMC7611597/ /pubmed/34475575 http://dx.doi.org/10.1192/bjp.2021.18 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 in any medium, provided the original work is properly cited.
spellingShingle Paper
McDonald, Keltie
Ding, Tao
Ker, Hannah
Dliwayo, Thandiwe Rebecca
Osborn, David P.J.
Wohland, Pia
Coid, Jeremy W.
French, Paul
Jones, Peter B.
Baio, Gianluca
Kirkbride, James B.
Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England
title Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England
title_full Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England
title_fullStr Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England
title_full_unstemmed Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England
title_short Using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable Bayesian prediction methodology applied to and validated for first-episode psychosis in England
title_sort using epidemiological evidence to forecast population need for early treatment programmes in mental health: a generalisable bayesian prediction methodology applied to and validated for first-episode psychosis in england
topic Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7611597/
https://www.ncbi.nlm.nih.gov/pubmed/34475575
http://dx.doi.org/10.1192/bjp.2021.18
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