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Bias Analysis for Uncontrolled Confounding in the Health Sciences
Annual Review of Public Health ( IF 21.4 ) Pub Date : 2017-04-06 00:00:00 , DOI: 10.1146/annurev-publhealth-032315-021644
Onyebuchi A. Arah 1
Affiliation  

Uncontrolled confounding due to unmeasured confounders biases causal inference in health science studies using observational and imperfect experimental designs. The adoption of methods for analysis of bias due to uncontrolled confounding has been slow, despite the increasing availability of such methods. Bias analysis for such uncontrolled confounding is most useful in big data studies and systematic reviews to gauge the extent to which extraneous preexposure variables that affect the exposure and the outcome can explain some or all of the reported exposure-outcome associations. We review methods that can be applied during or after data analysis to adjust for uncontrolled confounding for different outcomes, confounders, and study settings. We discuss relevant bias formulas and how to obtain the required information for applying them. Finally, we develop a new intuitive generalized bias analysis framework for simulating and adjusting for the amount of uncontrolled confounding due to not measuring and adjusting for one or more confounders.

中文翻译:


卫生科学中不受控制的混淆的偏见分析

由于无法测量的混杂因素而导致的不受控制的混杂因素,会导致使用观察性和不完善实验设计的健康科学研究中的因果推理产生偏差。尽管这种方法的可用性不断提高,但由于不受控制的混杂因素导致的偏倚分析方法的采用速度仍然很慢。在大数据研究和系统评价中,对这种不受控制的混杂因素进行的偏倚分析最有用,它可以评估影响暴露量和结果的无关的暴露前变量在多大程度上可以解释某些或所有已报道的暴露-结果关联。我们回顾了可以在数据分析期间或之后应用的方法,以针对不同的结果,混杂因素和研究设置来调整不受控制的混淆。我们讨论了相关的偏差公式以及如何获取应用它们所需的信息。最后,

更新日期:2017-04-06
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