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Article: Simulation modeling to enhance population health intervention research for chronic disease prevention

TitleSimulation modeling to enhance population health intervention research for chronic disease prevention
Authors
KeywordsChronic disease
Computer simulation
Early medical intervention
Health planning
Population-based planning
Public health practice
Public health systems research
Statistical models
Target population
Theoretical models
Issue Date2019
Citation
Canadian Journal of Public Health, 2019, v. 110, n. 1, p. 52-57 How to Cite?
AbstractPopulation Health Intervention Research (PHIR) is an expanding field that explores the health effects of population-level interventions conducted within and outside of the health sector. Simulation modeling—the use of mathematical models to predict health outcomes in populations given a set of specified inputs—is a useful, yet underutilized tool for PHIR. It can be employed at several phases of the research process: (1) planning and designing PHIR studies; (2) implementation; and (3) knowledge translation of findings across settings and populations. Using the example of community-wide, built environment interventions for the prevention of type 2 diabetes, we demonstrate how simulation models can be a powerful technique for chronic disease prevention research within PHIR. With increasingly available data on chronic disease risk factors and outcomes, the use of simulation modeling in PHIR for chronic disease prevention is anticipated to grow. There is a continued need to ensure models are appropriately validated and researchers should be cautious in their interpretation of model outputs given the uncertainties that are inherent with simulation modeling approaches. However, given the complexity of disease pathways and methodological challenges of PHIR studies, simulation models can be a valuable tool for researchers studying population interventions that hold the potential to improve health and reduce health inequities.
Persistent Identifierhttp://hdl.handle.net/10722/346693
ISSN
2023 Impact Factor: 2.9
2023 SCImago Journal Rankings: 1.006

 

DC FieldValueLanguage
dc.contributor.authorTanuseputro, Peter-
dc.contributor.authorArnason, Trevor-
dc.contributor.authorHennessy, Deirdre-
dc.contributor.authorSmith, Brendan-
dc.contributor.authorBennett, Carol-
dc.contributor.authorKopec, Jacek-
dc.contributor.authorPinto, Andrew D.-
dc.contributor.authorPerez, Richard-
dc.contributor.authorTuna, Meltem-
dc.contributor.authorManuel, Douglas-
dc.date.accessioned2024-09-17T04:12:38Z-
dc.date.available2024-09-17T04:12:38Z-
dc.date.issued2019-
dc.identifier.citationCanadian Journal of Public Health, 2019, v. 110, n. 1, p. 52-57-
dc.identifier.issn0008-4263-
dc.identifier.urihttp://hdl.handle.net/10722/346693-
dc.description.abstractPopulation Health Intervention Research (PHIR) is an expanding field that explores the health effects of population-level interventions conducted within and outside of the health sector. Simulation modeling—the use of mathematical models to predict health outcomes in populations given a set of specified inputs—is a useful, yet underutilized tool for PHIR. It can be employed at several phases of the research process: (1) planning and designing PHIR studies; (2) implementation; and (3) knowledge translation of findings across settings and populations. Using the example of community-wide, built environment interventions for the prevention of type 2 diabetes, we demonstrate how simulation models can be a powerful technique for chronic disease prevention research within PHIR. With increasingly available data on chronic disease risk factors and outcomes, the use of simulation modeling in PHIR for chronic disease prevention is anticipated to grow. There is a continued need to ensure models are appropriately validated and researchers should be cautious in their interpretation of model outputs given the uncertainties that are inherent with simulation modeling approaches. However, given the complexity of disease pathways and methodological challenges of PHIR studies, simulation models can be a valuable tool for researchers studying population interventions that hold the potential to improve health and reduce health inequities.-
dc.languageeng-
dc.relation.ispartofCanadian Journal of Public Health-
dc.subjectChronic disease-
dc.subjectComputer simulation-
dc.subjectEarly medical intervention-
dc.subjectHealth planning-
dc.subjectPopulation-based planning-
dc.subjectPublic health practice-
dc.subjectPublic health systems research-
dc.subjectStatistical models-
dc.subjectTarget population-
dc.subjectTheoretical models-
dc.titleSimulation modeling to enhance population health intervention research for chronic disease prevention-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.17269/s41997-018-0109-7-
dc.identifier.pmid30039263-
dc.identifier.scopuseid_2-s2.0-85060177826-
dc.identifier.volume110-
dc.identifier.issue1-
dc.identifier.spage52-
dc.identifier.epage57-
dc.identifier.eissn1920-7476-

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