使用分数析因设计进行多重治疗的因果推断

Pub Date : 2022-10-12 DOI:10.1002/cjs.11734
Nicole E. Pashley, Marie-Abèle C. Bind
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引用次数: 6

摘要

我们考虑在潜在结果框架内使用分数因子和不完全设计设计和分析多因素实验。当有限的资源使运行全因子设计变得不可行时,这些设计特别有用。我们将基于设计的方法与标准回归方法联系起来。我们进一步激发了这些设计在多因素观察性研究中的有用性,在这些研究中,某些治疗组合可能非常罕见,以至于在相应的观察数据中没有测量结果。因此,将假设的部分析因实验概念化,而不是全析因实验,可以在这些环境中进行适当的分析。我们使用2003-2004年国家健康和营养检查调查周期的生物医学数据来说明我们的方法,以检查四种常见杀虫剂对体重指数的影响。
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Causal inference for multiple treatments using fractional factorial designs

We consider the design and analysis of multi-factor experiments using fractional factorial and incomplete designs within the potential outcome framework. These designs are particularly useful when limited resources make running a full factorial design infeasible. We connect our design-based methods to standard regression methods. We further motivate the usefulness of these designs in multi-factor observational studies, where certain treatment combinations may be so rare that there are no measured outcomes in the observed data corresponding to them. Therefore, conceptualizing a hypothetical fractional factorial experiment instead of a full factorial experiment allows for appropriate analysis in those settings. We illustrate our approach using biomedical data from the 2003–2004 cycle of the National Health and Nutrition Examination Survey to examine the effects of four common pesticides on body mass index.

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