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The alarming problems of confounding equivalence using logistic regression models in the perspective of causal diagrams.

Authors :
Yu, Yuanyuan
Li, Hongkai
Sun, Xiaoru
Su, Ping
Wang, Tingting
Liu, Yi
Yuan, Zhongshang
Liu, Yanxun
Xue, Fuzhong
Source :
BMC Medical Research Methodology. 12/28/2017, Vol. 17, p177-177. 1p.
Publication Year :
2017

Abstract

<bold>Background: </bold>Confounders can produce spurious associations between exposure and outcome in observational studies. For majority of epidemiologists, adjusting for confounders using logistic regression model is their habitual method, though it has some problems in accuracy and precision. It is, therefore, important to highlight the problems of logistic regression and search the alternative method.<bold>Methods: </bold>Four causal diagram models were defined to summarize confounding equivalence. Both theoretical proofs and simulation studies were performed to verify whether conditioning on different confounding equivalence sets had the same bias-reducing potential and then to select the optimum adjusting strategy, in which logistic regression model and inverse probability weighting based marginal structural model (IPW-based-MSM) were compared. The "do-calculus" was used to calculate the true causal effect of exposure on outcome, then the bias and standard error were used to evaluate the performances of different strategies.<bold>Results: </bold>Adjusting for different sets of confounding equivalence, as judged by identical Markov boundaries, produced different bias-reducing potential in the logistic regression model. For the sets satisfied G-admissibility, adjusting for the set including all the confounders reduced the equivalent bias to the one containing the parent nodes of the outcome, while the bias after adjusting for the parent nodes of exposure was not equivalent to them. In addition, all causal effect estimations through logistic regression were biased, although the estimation after adjusting for the parent nodes of exposure was nearest to the true causal effect. However, conditioning on different confounding equivalence sets had the same bias-reducing potential under IPW-based-MSM. Compared with logistic regression, the IPW-based-MSM could obtain unbiased causal effect estimation when the adjusted confounders satisfied G-admissibility and the optimal strategy was to adjust for the parent nodes of outcome, which obtained the highest precision.<bold>Conclusions: </bold>All adjustment strategies through logistic regression were biased for causal effect estimation, while IPW-based-MSM could always obtain unbiased estimation when the adjusted set satisfied G-admissibility. Thus, IPW-based-MSM was recommended to adjust for confounders set. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
14712288
Volume :
17
Database :
Academic Search Index
Journal :
BMC Medical Research Methodology
Publication Type :
Academic Journal
Accession number :
127028071
Full Text :
https://doi.org/10.1186/s12874-017-0449-7