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Social network analysis and agent-based modeling in social epidemiology

机译:社会流行病学中的社交网络分析和基于主体的建模

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摘要

The past five years have seen a growth in the interest in systems approaches in epidemiologic research. These approaches may be particularly appropriate for social epidemiology. Social network analysis and agent-based models (ABMs) are two approaches that have been used in the epidemiologic literature. Social network analysis involves the characterization of social networks to yield inference about how network structures may influence risk exposures among those in the network. ABMs can promote population-level inference from explicitly programmed, micro-level rules in simulated populations over time and space. In this paper, we discuss the implementation of these models in social epidemiologic research, highlighting the strengths and weaknesses of each approach. Network analysis may be ideal for understanding social contagion, as well as the influences of social interaction on population health. However, network analysis requires network data, which may sacrifice generalizability, and causal inference from current network analytic methods is limited. ABMs are uniquely suited for the assessment of health determinants at multiple levels of influence that may couple with social interaction to produce population health. ABMs allow for the exploration of feedback and reciprocity between exposures and outcomes in the etiology of complex diseases. They may also provide the opportunity for counterfactual simulation. However, appropriate implementation of ABMs requires a balance between mechanistic rigor and model parsimony, and the precision of output from complex models is limited. Social network and agent-based approaches are promising in social epidemiology, but continued development of each approach is needed.
机译:在过去的五年中,流行病学研究对系统方法的兴趣不断增长。这些方法可能特别适合于社会流行病学。社交网络分析和基于代理的模型(ABM)是流行病学文献中使用的两种方法。社交网络分析涉及社交网络的特征,以推断出网络结构如何影响网络中的风险敞口。 ABM可以根据时间和空间从模拟人口中明确编程的微观规则中促进人口水平推断。在本文中,我们讨论了在社会流行病学研究中这些模型的实现,突出了每种方法的优缺点。网络分析对于理解社会传染以及社会互动对人口健康的影响而言可能是理想的。但是,网络分析需要网络数据,这可能会牺牲通用性,并且从当前网络分析方法得出的因果关系受到限制。反弹道导弹特别适合在多种影响水平下评估健康决定因素,这些影响因素可能与社会互动相结合,从而产生人口健康。 ABM允许在复杂疾病的病因学中探索暴露和结果之间的反馈和相互关系。它们也可能提供反事实模拟的机会。但是,ABM的适当实现需要在机械严谨性和模型简约性之间取得平衡,并且复杂模型的输出精度受到限制。社交网络和基于代理的方法在社会流行病学中很有前途,但是每种方法都需要不断发展。

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