2013
DOI: 10.3390/ijerph10115750
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Simulation Models for Socioeconomic Inequalities in Health: A Systematic Review

Abstract: Background: The emergence and evolution of socioeconomic inequalities in health involves multiple factors interacting with each other at different levels. Simulation models are suitable for studying such complex and dynamic systems and have the ability to test the impact of policy interventions in silico. Objective: To explore how simulation models were used in the field of socioeconomic inequalities in health. Methods: An electronic search of studies assessing socioeconomic inequalities in health using a simu… Show more

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Cited by 25 publications
(30 citation statements)
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“…39 In a systematic review of simulation models for socioeconomic inequalities, Speybroeck et al concluded that agent-based modeling, a powerful simulation modeling technique, is an appropriate tool for examining health disparities because it can simulate the complex nature of health inequalities. 40 Big Data simulation modeling has the potential to be more accurate than traditional modeling techniques, especially when ample individual and institution-level information connected and harmonized from various sources are available. 41 Big Data simulation modeling could potentially accelerate the progress in determining the relative importance of different causal factors of health disparities, which may not be feasible in observational studies.…”
Section: Big Data and Health Disparities -Zhang Et Almentioning
confidence: 99%
“…39 In a systematic review of simulation models for socioeconomic inequalities, Speybroeck et al concluded that agent-based modeling, a powerful simulation modeling technique, is an appropriate tool for examining health disparities because it can simulate the complex nature of health inequalities. 40 Big Data simulation modeling has the potential to be more accurate than traditional modeling techniques, especially when ample individual and institution-level information connected and harmonized from various sources are available. 41 Big Data simulation modeling could potentially accelerate the progress in determining the relative importance of different causal factors of health disparities, which may not be feasible in observational studies.…”
Section: Big Data and Health Disparities -Zhang Et Almentioning
confidence: 99%
“…Conversely, agent‐based models attempt to model the ways in which people interact with each other and their environments, and the changes and adaptations that occur from these interactions . Indeed, agent‐based models have been identified as likely to be the most suitable tool for studying complex health inequalities …”
Section: Where Are We Now?mentioning
confidence: 99%
“…Studies that examine mediators or contributors to health status disparities using standard regression approaches are inherently limited by possible residual confounding and may miss important connections if associations among risk factors, protective factors, and health outcomes are complex, interactive, reciprocal, or nonlinear. New methods of analysis stemming from dynamic systems approaches have the potential to complement more traditional analyses and incorporate many different aspects of the complexity inherent in the LCHD framework, but to date there has been limited application to the field of health disparities (Diez Roux 2007, 2011Speybroeck et al 2013). Dynamic systems methods include a range of computational approaches that can be used to model dynamic interactions between individuals and their environments, and complex phenomenon including feedback loops and nonlinear relations.…”
Section: Methodsmentioning
confidence: 99%