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Causal thinking and causal language in epidemiology: its in the details

机译:流行病学中的因果思维和因果语言:在细节中

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摘要

Although epidemiology is necessarily involved with elucidating causal processes, we argue that there is little practical need, having described an epidemiological result, to then explicitly label it as causal (or not). Doing so is a convention which obscures the valuable core work of epidemiology as an important constituent of public health practice. We discuss another approach which emphasizes the public health "use value" of research findings in regard to prediction and intervention independent from explicit metaphysical causal claims. Examples are drawn from smoking and lung cancer, with particular focus on the original 1964 Surgeon General's report on smoking and the new version released in 2004. The intent is to help the epidemiologist focus on the pertinent implications of research, which, from a public health point of view, in large part entails the ability to predict and to intervene. Further discussion will center on the importance of differentiating between technical/practical uses of causal language, as might be used in structural equations or marginal structural modeling, and more foundational notions of cause. We show that statistical/epidemiological results, such as "smoking two packs a day increases risk of lung cancer by 10 times" are in themselves a kind of causal argument that are not in need of additional support from relatively ambiguous language such as "smoking causes lung cancer." We will show that the confusion stemming from the use of this latter statement is more than mere semantics. Our goal is to allow researchers to feel more confident in the power of their research to tell a convincing story without resorting to metaphysical/unsupportable notions of cause.
机译:尽管流行病学必然涉及阐明因果关系的过程,但是我们认为描述了流行病学结果后再将其明确标记为因果关系是没有实际需要的。这样做是一项公约,它掩盖了流行病学作为公共卫生实践的重要组成部分的宝贵核心工作。我们讨论另一种强调研究结果在预测和干预方面的公共卫生“使用价值”的方法,该方法独立于明确的形而上的因果主张。例子来自吸烟和肺癌,特别着重于1964年美国外科医生的原始报告以及2004年发布的新版本。其目的是帮助流行病学家关注研究的相关意义,这些意义来自公共卫生。从观点来看,很大程度上需要具有预测和干预的能力。进一步的讨论将集中在区分因果语言的技术/实际用法(可能在结构方程式或边际结构建模中使用)以及更基本的因果关系上的重要性。我们显示统计/流行病学结果,例如“每天吸烟两包,会使患肺癌的风险增加10倍”本身就是一种因果论据,不需要相对模糊的语言(例如,“吸烟原因”)的额外支持肺癌。”我们将证明,使用后一个语句引起的混淆不仅仅是语义。我们的目标是让研究人员对自己的研究能力充满信心,说出令人信服的故事,而不必诉诸于形而上学/无法支持的原因。

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