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Are Network-Based Interventions a Useful Antiobesity Strategy? An Application of Simulation Models for Causal Inference in Epidemiology

机译:基于网络的干预是有用的抗肥胖策略吗?因果关系模拟模型在流行病学中的应用

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摘要

Recent research suggests that social networks may present an avenue for intervention against obesity. By using a simulation model in which artificial individuals were nested in a social network, we assessed whether interventions targeting highly networked individuals could help reduce population obesity. We compared the effects of targeting antiobesity interventions at the most connected individuals in a network with those targeting individuals at random. We tested 2 interventions, the first “preventing” obesity among 10% of the population at simulation outset and the second “treating” obesity among 10% of the obese population yearly, each in 2 separate simulations. One simulation featured a literature-based parameter for the network spread of obesity, and the other featured an artificially high parameter. Interventions that targeted highly networked individuals did not outperform at-random interventions in simulations featuring the literature-based parameter. However, in simulations featuring the artificially high parameter, the targeted prevention intervention outperformed the at-random intervention, whereas the treatment intervention implemented at random outperformed the targeted treatment intervention. Results were qualitatively similar across network topologies and intervention scales. Although descriptive studies suggest that social networks influence the spread of obesity, policies targeting well-connected individuals in social networks may not improve obesity reduction. We highlight and discuss the potential applications of counterfactual simulations in epidemiology.
机译:最近的研究表明,社交网络可能为干预肥胖提供了途径。通过使用将人工个体嵌套在社交网络中的模拟模型,我们评估了针对高度网络化个体的干预措施是否可以帮助减少人群肥胖。我们比较了针对网络中关系最密切的个体的抗肥胖干预措施与针对随机对象的肥胖治疗效果。我们测试了2种干预措施,分别是模拟开始时在10%的人口中第一次“预防”肥胖症和每年在10%的人口中第二次“治疗”肥胖症,分别进行了两次模拟。一种模拟的特征是针对肥胖网络传播的基于文献的参数,另一种模拟的特征是人为地提高了参数。在以基于文献的参数为特征的模拟中,针对高度网络化个体的干预并没有优于随机干预。但是,在以人为高参数为特征的模拟中,针对性的预防干预优于随机干预,而随机实施的治疗性干预优于针对性干预。在网络拓扑和干预规模方面,结果在质量上相似。尽管描述性研究表明,社交网络会影响肥胖症的传播,但针对社交网络中关系密切的个人的政策可能无法改善肥胖症的缓解率。我们重点介绍并讨论了反事实模拟在流行病学中的潜在应用。

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