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Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury

OBJECTIVES: Burden of disease estimation commonly requires estimates of the population exposed to a risk factor over a time window (year(t) to year(t+n)). We present a microsimulation modelling approach for producing such estimates and apply it to calculate the population exposed to long working hou...

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Autores principales: Náfrádi, Bálint, Kiiver, Hannah, Neupane, Subas, Momen, Natalie C., Streicher, Kai N., Pega, Frank
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9803131/
https://www.ncbi.nlm.nih.gov/pubmed/36584100
http://dx.doi.org/10.1371/journal.pone.0278507
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author Náfrádi, Bálint
Kiiver, Hannah
Neupane, Subas
Momen, Natalie C.
Streicher, Kai N.
Pega, Frank
author_facet Náfrádi, Bálint
Kiiver, Hannah
Neupane, Subas
Momen, Natalie C.
Streicher, Kai N.
Pega, Frank
author_sort Náfrádi, Bálint
collection PubMed
description OBJECTIVES: Burden of disease estimation commonly requires estimates of the population exposed to a risk factor over a time window (year(t) to year(t+n)). We present a microsimulation modelling approach for producing such estimates and apply it to calculate the population exposed to long working hours for one country (Italy). METHODS: We developed a three-model approach: Model 1, a multilevel model, estimates exposure to the risk factor at the first year of the time window (year(t)). Model 2, a regression model, estimates transition probabilities between exposure categories during the time window (year(t) to year(t+n)). Model 3, a microsimulation model, estimates the exposed population over the time window, using the Monte Carlo method. The microsimulation is carried out in three steps: (a) a representative synthetic population is initiated in the first year of the time window using prevalence estimates from Model 1, (b) the exposed population is simulated over the time window using the transition probabilities from Model 2; and (c) the population is censored for deaths during the time window. RESULTS: We estimated the population exposed to long working hours (i.e. 41–48, 49–54 and ≥55 hours/week) over a 10-year time window (2002–11) in Italy. We populated all three models with official data from Labour Force Surveys, United Nations population estimates and World Health Organization life tables. Estimates were produced of populations exposed over the time window, disaggregated by sex and 5-year age group. CONCLUSIONS: Our modelling approach for estimating the population exposed to a risk factor over a time window is simple, versatile, and flexible. It however requires longitudinal exposure data and Model 3 (the microsimulation model) is stochastic. The approach can improve accuracy and transparency in exposure and burden of disease estimations. To improve the approach, a logical next step is changing Model 3 to a deterministic microsimulation method, such as modelling of microflows.
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spelling pubmed-98031312022-12-31 Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury Náfrádi, Bálint Kiiver, Hannah Neupane, Subas Momen, Natalie C. Streicher, Kai N. Pega, Frank PLoS One Research Article OBJECTIVES: Burden of disease estimation commonly requires estimates of the population exposed to a risk factor over a time window (year(t) to year(t+n)). We present a microsimulation modelling approach for producing such estimates and apply it to calculate the population exposed to long working hours for one country (Italy). METHODS: We developed a three-model approach: Model 1, a multilevel model, estimates exposure to the risk factor at the first year of the time window (year(t)). Model 2, a regression model, estimates transition probabilities between exposure categories during the time window (year(t) to year(t+n)). Model 3, a microsimulation model, estimates the exposed population over the time window, using the Monte Carlo method. The microsimulation is carried out in three steps: (a) a representative synthetic population is initiated in the first year of the time window using prevalence estimates from Model 1, (b) the exposed population is simulated over the time window using the transition probabilities from Model 2; and (c) the population is censored for deaths during the time window. RESULTS: We estimated the population exposed to long working hours (i.e. 41–48, 49–54 and ≥55 hours/week) over a 10-year time window (2002–11) in Italy. We populated all three models with official data from Labour Force Surveys, United Nations population estimates and World Health Organization life tables. Estimates were produced of populations exposed over the time window, disaggregated by sex and 5-year age group. CONCLUSIONS: Our modelling approach for estimating the population exposed to a risk factor over a time window is simple, versatile, and flexible. It however requires longitudinal exposure data and Model 3 (the microsimulation model) is stochastic. The approach can improve accuracy and transparency in exposure and burden of disease estimations. To improve the approach, a logical next step is changing Model 3 to a deterministic microsimulation method, such as modelling of microflows. Public Library of Science 2022-12-30 /pmc/articles/PMC9803131/ /pubmed/36584100 http://dx.doi.org/10.1371/journal.pone.0278507 Text en © 2022 Náfrádi et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Náfrádi, Bálint
Kiiver, Hannah
Neupane, Subas
Momen, Natalie C.
Streicher, Kai N.
Pega, Frank
Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury
title Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury
title_full Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury
title_fullStr Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury
title_full_unstemmed Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury
title_short Estimating the population exposed to a risk factor over a time window: A microsimulation modelling approach from the WHO/ILO Joint Estimates of the Work-related Burden of Disease and Injury
title_sort estimating the population exposed to a risk factor over a time window: a microsimulation modelling approach from the who/ilo joint estimates of the work-related burden of disease and injury
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9803131/
https://www.ncbi.nlm.nih.gov/pubmed/36584100
http://dx.doi.org/10.1371/journal.pone.0278507
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