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Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review

Background: Health impact assessment (HIA) is a widely used process that aims to identify the health impacts, positive or negative, of a policy or intervention that is not necessarily placed in the health sector. Most HIAs are done prospectively and aim to forecast expected health impacts under assu...

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Autores principales: Mueller, Natalie, Anderle, Rodrigo, Brachowicz, Nicolai, Graziadei, Helton, Lloyd, Simon J., de Sampaio Morais, Gabriel, Sironi, Alberto Pietro, Gibert, Karina, Tonne, Cathryn, Nieuwenhuijsen, Mark, Rasella, Davide
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Kerman University of Medical Sciences 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10461835/
https://www.ncbi.nlm.nih.gov/pubmed/37579425
http://dx.doi.org/10.34172/ijhpm.2023.7103
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author Mueller, Natalie
Anderle, Rodrigo
Brachowicz, Nicolai
Graziadei, Helton
Lloyd, Simon J.
de Sampaio Morais, Gabriel
Sironi, Alberto Pietro
Gibert, Karina
Tonne, Cathryn
Nieuwenhuijsen, Mark
Rasella, Davide
author_facet Mueller, Natalie
Anderle, Rodrigo
Brachowicz, Nicolai
Graziadei, Helton
Lloyd, Simon J.
de Sampaio Morais, Gabriel
Sironi, Alberto Pietro
Gibert, Karina
Tonne, Cathryn
Nieuwenhuijsen, Mark
Rasella, Davide
author_sort Mueller, Natalie
collection PubMed
description Background: Health impact assessment (HIA) is a widely used process that aims to identify the health impacts, positive or negative, of a policy or intervention that is not necessarily placed in the health sector. Most HIAs are done prospectively and aim to forecast expected health impacts under assumed policy implementation. HIAs may quantitatively and/ or qualitatively assess health impacts, with this study focusing on the former. A variety of quantitative modelling methods exist that are used for forecasting health impacts, however, they differ in application area, data requirements, assumptions, risk modelling, complexities, limitations, strengths, and comprehensibility. We reviewed relevant models, so as to provide public health researchers with considerations for HIA model choice. Methods: Based on an HIA expert consultation, combined with a narrative literature review, we identified the most relevant models that can be used for health impact forecasting. We narratively and comparatively reviewed the models, according to their fields of application, their configuration and purposes, counterfactual scenarios, underlying assumptions, health risk modelling, limitations and strengths. Results: Seven relevant models for health impacts forecasting were identified, consisting of (i) comparative risk assessment (CRA), (ii) time series analysis (TSA), (iii) compartmental models (CMs), (iv) structural models (SMs), (v) agent-based models (ABMs), (vi) microsimulations (MS), and (vii) artificial intelligence (AI)/machine learning (ML). These models represent a variety in approaches and vary in the fields of HIA application, complexity and comprehensibility. We provide a set of criteria for HIA model choice. Researchers must consider that model input assumptions match the available data and parameter structures, the available resources, and that model outputs match the research question, meet expectations and are comprehensible to end-users. Conclusion: The reviewed models have specific characteristics, related to available data and parameter structures, computational implementation, interpretation and comprehensibility, which the researcher should critically consider before HIA model choice.
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spelling pubmed-104618352023-08-29 Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review Mueller, Natalie Anderle, Rodrigo Brachowicz, Nicolai Graziadei, Helton Lloyd, Simon J. de Sampaio Morais, Gabriel Sironi, Alberto Pietro Gibert, Karina Tonne, Cathryn Nieuwenhuijsen, Mark Rasella, Davide Int J Health Policy Manag Narrative Review Background: Health impact assessment (HIA) is a widely used process that aims to identify the health impacts, positive or negative, of a policy or intervention that is not necessarily placed in the health sector. Most HIAs are done prospectively and aim to forecast expected health impacts under assumed policy implementation. HIAs may quantitatively and/ or qualitatively assess health impacts, with this study focusing on the former. A variety of quantitative modelling methods exist that are used for forecasting health impacts, however, they differ in application area, data requirements, assumptions, risk modelling, complexities, limitations, strengths, and comprehensibility. We reviewed relevant models, so as to provide public health researchers with considerations for HIA model choice. Methods: Based on an HIA expert consultation, combined with a narrative literature review, we identified the most relevant models that can be used for health impact forecasting. We narratively and comparatively reviewed the models, according to their fields of application, their configuration and purposes, counterfactual scenarios, underlying assumptions, health risk modelling, limitations and strengths. Results: Seven relevant models for health impacts forecasting were identified, consisting of (i) comparative risk assessment (CRA), (ii) time series analysis (TSA), (iii) compartmental models (CMs), (iv) structural models (SMs), (v) agent-based models (ABMs), (vi) microsimulations (MS), and (vii) artificial intelligence (AI)/machine learning (ML). These models represent a variety in approaches and vary in the fields of HIA application, complexity and comprehensibility. We provide a set of criteria for HIA model choice. Researchers must consider that model input assumptions match the available data and parameter structures, the available resources, and that model outputs match the research question, meet expectations and are comprehensible to end-users. Conclusion: The reviewed models have specific characteristics, related to available data and parameter structures, computational implementation, interpretation and comprehensibility, which the researcher should critically consider before HIA model choice. Kerman University of Medical Sciences 2023-03-13 /pmc/articles/PMC10461835/ /pubmed/37579425 http://dx.doi.org/10.34172/ijhpm.2023.7103 Text en © 2023 The Author(s); Published by Kerman University of Medical Sciences https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0 (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Narrative Review
Mueller, Natalie
Anderle, Rodrigo
Brachowicz, Nicolai
Graziadei, Helton
Lloyd, Simon J.
de Sampaio Morais, Gabriel
Sironi, Alberto Pietro
Gibert, Karina
Tonne, Cathryn
Nieuwenhuijsen, Mark
Rasella, Davide
Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review
title Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review
title_full Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review
title_fullStr Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review
title_full_unstemmed Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review
title_short Model Choice for Quantitative Health Impact Assessment and Modelling: An Expert Consultation and Narrative Literature Review
title_sort model choice for quantitative health impact assessment and modelling: an expert consultation and narrative literature review
topic Narrative Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10461835/
https://www.ncbi.nlm.nih.gov/pubmed/37579425
http://dx.doi.org/10.34172/ijhpm.2023.7103
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