Compartmental Model Diagrams as Causal Representations in Relation to DAGs.

Q3 Mathematics Epidemiologic Methods Pub Date : 2017-12-01 Epub Date: 2017-05-05 DOI:10.1515/em-2016-0007
S F Ackley, E R Mayeda, L Worden, W T A Enanoria, M M Glymour, T C Porco
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引用次数: 0

Abstract

Compartmental model diagrams have been used for nearly a century to depict causal relationships in infectious disease epidemiology. Causal directed acyclic graphs (DAGs) have been used more broadly in epidemiology since the 1990s to guide analyses of a variety of public health problems. Using an example from chronic disease epidemiology, the effect of type 2 diabetes on dementia incidence, we illustrate how compartmental model diagrams can represent the same concepts as causal DAGs, including causation, mediation, confounding, and collider bias. We show how to use compartmental model diagrams to explicitly depict interaction and feedback cycles. While DAGs imply a set of conditional independencies, they do not define conditional distributions parametrically. Compartmental model diagrams parametrically (or semiparametrically) describe state changes based on known biological processes or mechanisms. Compartmental model diagrams are part of a long-term tradition of causal thinking in epidemiology and can parametrically express the same concepts as DAGs, as well as explicitly depict feedback cycles and interactions. As causal inference efforts in epidemiology increasingly draw on simulations and quantitative sensitivity analyses, compartmental model diagrams may be of use to a wider audience. Recognizing simple links between these two common approaches to representing causal processes may facilitate communication between researchers from different traditions.

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作为与 DAG 相关的因果关系表示的隔室模型图。
近一个世纪以来,分区模型图一直被用于描述传染病流行病学中的因果关系。自 20 世纪 90 年代以来,有向无环图(DAG)被更广泛地用于流行病学,以指导对各种公共卫生问题的分析。我们以慢性病流行病学中 2 型糖尿病对痴呆症发病率的影响为例,说明了分区模型图如何表示与因果有向无环图相同的概念,包括因果关系、中介关系、混杂关系和碰撞偏差。我们展示了如何使用分区模型图来明确描述相互作用和反馈循环。虽然 DAG 意味着一组条件独立性,但它们并没有参数化地定义条件分布。区室模型图可以参数化(或半参数化)描述基于已知生物过程或机制的状态变化。分区模型图是流行病学因果思维长期传统的一部分,可以参数化表达与 DAG 相同的概念,并明确描述反馈循环和相互作用。随着流行病学中的因果推断越来越多地使用模拟和定量敏感性分析,分区模型图可能会被更多人使用。认识到这两种表示因果过程的常用方法之间的简单联系,可能会促进来自不同传统的研究人员之间的交流。
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来源期刊
Epidemiologic Methods
Epidemiologic Methods Mathematics-Applied Mathematics
CiteScore
2.10
自引率
0.00%
发文量
7
期刊介绍: Epidemiologic Methods (EM) seeks contributions comparable to those of the leading epidemiologic journals, but also invites papers that may be more technical or of greater length than what has traditionally been allowed by journals in epidemiology. Applications and examples with real data to illustrate methodology are strongly encouraged but not required. Topics. genetic epidemiology, infectious disease, pharmaco-epidemiology, ecologic studies, environmental exposures, screening, surveillance, social networks, comparative effectiveness, statistical modeling, causal inference, measurement error, study design, meta-analysis
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