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首页> 外文期刊>American Journal of Epidemiology >Formalizing the Role of Agent-Based Modeling in Causal Inference and Epidemiology
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Formalizing the Role of Agent-Based Modeling in Causal Inference and Epidemiology

机译:在因果推理和流行病学中正式化基于代理的建模的作用

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摘要

Calls for the adoption of complex systems approaches, including agent-based modeling, in the field of epidemiology have largely centered on the potential for such methods to examine complex disease etiologies, which are characterized by feedback behavior, interference, threshold dynamics, and multiple interacting causal effects. However, considerable theoretical and practical issues impede the capacity of agent-based methods to examine and evaluate causal effects and thus illuminate new areas for intervention. We build on this work by describing how agent-based models can be used to simulate counterfactual outcomes in the presence of complexity. We show that these models are of particular utility when the hypothesized causal mechanisms exhibit a high degree of interdependence between multiple causal effects and when interference (i.e., one person's exposure affects the outcome of others) is present and of intrinsic scientific interest. Although not without challenges, agent-based modeling (and complex systems methods broadly) represent a promising novel approach to identify and evaluate complex causal effects, and they are thus well suited to complement other modern epidemiologic methods of etiologic inquiry.
机译:在流行病学领域中,要求采用复杂的系统方法(包括基于代理的建模)的重点主要在于这种方法检查潜在的复杂疾病病因的潜力,这些疾病的特征在于反馈行为,干扰,阈值动态和多重交互作用因果关系。但是,大量的理论和实践问题阻碍了基于主体的方法检查和评估因果关系的能力,从而为干预提供了新领域。通过描述基于代理的模型如何在存在复杂性的情况下模拟反事实结果,我们以此为基础。我们证明,当假设的因果机制在多重因果效应之间表现出高度的相互依存关系,并且当存在干扰(即一个人的暴露影响他人的结果)并且具有内在科学意义时,这些模型特别有用。尽管并非没有挑战,但基于代理的建模(广泛地是复杂的系统方法)代表了一种有前途的新颖方法,可用于识别和评估复杂的因果关系,因此它们非常适合于补充其他现代流行病学方法。

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