Joffe Michael, Mindell Jennifer
Department of Epidemiology and Public Health, Imperial College, St Mary's Campus, Norfolk Pl, London W2 1PF, United Kingdom.
Am J Public Health. 2006 Mar;96(3):473-9. doi: 10.2105/AJPH.2005.063693. Epub 2006 Jan 31.
Causal diagrams are rigorous tools for controlling confounding. They also can be used to describe complex causal systems, which is done routinely in communicable disease epidemiology. The use of change diagrams has advantages over static diagrams, because change diagrams are more tractable, relate better to interventions, and have clearer interpretations. Causal diagrams are a useful basis for modeling. They make assumptions explicit, provide a framework for analysis, generate testable predictions, explore the effects of interventions, and identify data gaps. Causal diagrams can be used to integrate different types of information and to facilitate communication both among public health experts and between public health experts and experts in other fields. Causal diagrams allow the use of instrumental variables, which can help control confounding and reverse causation.
因果图是控制混杂因素的严谨工具。它们也可用于描述复杂的因果系统,这在传染病流行病学中是常规做法。使用变化图比静态图更具优势,因为变化图更易于处理,与干预措施的关联性更强,且解释更清晰。因果图是建模的有用基础。它们使假设明确,提供分析框架,生成可检验的预测,探索干预措施的效果,并识别数据缺口。因果图可用于整合不同类型的信息,并促进公共卫生专家之间以及公共卫生专家与其他领域专家之间的交流。因果图允许使用工具变量,这有助于控制混杂因素和反向因果关系。