Comparing methods of targeting obesity interventions in populations: An agent-based simulation

Social networks as well as neighborhood environments have been shown to effect obesity-related behaviors including energy intake and physical activity. Accordingly, harnessing social networks to improve targeting of obesity interventions may be promising to the extent this leads to social multiplier...

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Bibliographic Details
Published inSSM - population health Vol. 3; no. C; pp. 211 - 218
Main Authors Beheshti, Rahmatollah, Jalalpour, Mehdi, Glass, Thomas A
Format Journal Article
LanguageEnglish
Published England Elsevier 01.12.2017
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Summary:Social networks as well as neighborhood environments have been shown to effect obesity-related behaviors including energy intake and physical activity. Accordingly, harnessing social networks to improve targeting of obesity interventions may be promising to the extent this leads to social multiplier effects and wider diffusion of intervention impact on populations. However, the literature evaluating network-based interventions has been inconsistent. Computational methods like agent-based models (ABM) provide researchers with tools to experiment in a simulated environment. We develop an ABM to compare conventional targeting methods (random selection, based on individual obesity risk, and vulnerable areas) with network-based targeting methods. We adapt a previously published and validated model of network diffusion of obesity-related behavior. We then build social networks among agents using a more realistic approach. We calibrate our model first against national-level data. Our results show that network-based targeting may lead to greater population impact. We also present a new targeting method that outperforms other methods in terms of intervention effectiveness at the population level.
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ISSN:2352-8273
2352-8273
DOI:10.1016/j.ssmph.2017.01.006