A Comprehensive Review and Tutorial on Confounding Adjustment Methods for Estimating Treatment Effects Using Observational Data

被引:5
作者
Shi, Amy X. [1 ]
Zivich, Paul N. [2 ]
Chu, Haitao [3 ,4 ]
机构
[1] AstraZeneca, Late Stage Dev Cardiovasc Renal & Metab CVRM, Biopharmaceut R&D, Durham, NC 27703 USA
[2] Univ North Carolina Chapel Hill, Gillings Sch Global Publ Hlth, Dept Epidemiol, Chapel Hill, NC 27599 USA
[3] Pfizer Inc, Stat Res & Data Sci Ctr, New York, NY 10001 USA
[4] Univ Minnesota Twin Cities, Div Biostat & Hlth Data Sci, Minneapolis, MN 55455 USA
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 09期
关键词
confounding; propensity score methods; outcome regression; doubly robust methods; observational data; covariate adjustment; PROPENSITY SCORE METHODS; DOUBLY ROBUST ESTIMATION; CAUSAL INFERENCE; MISSING DATA; R PACKAGE; BALANCE; MODELS;
D O I
10.3390/app14093662
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Controlling for confounding bias is crucial in causal inference. Causal inference using data from observational studies (e.g., electronic health records) or imperfectly randomized trials (e.g., imperfect randomization or compliance) requires accounting for confounding variables. Many different methods are currently employed to mitigate bias due to confounding. This paper provides a comprehensive review and tutorial of common estimands and confounding adjustment approaches, including outcome regression, g-computation, propensity score, and doubly robust methods. We discuss bias and precision, advantages and disadvantages, and software implementation for each method. Moreover, approaches are illustrated empirically with a reproducible case study. We conclude that different scientific questions are better addressed by certain estimands. No estimand is uniformly more appropriate. Upon selecting an estimand, decisions on which estimator can be driven by performance and available background knowledge.
引用
收藏
页数:16
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