2013
DOI: 10.1002/sim.5871
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Identifying the odds ratio estimated by a two‐stage instrumental variable analysis with a logistic regression model

Abstract: Adjustment for an uncorrelated covariate in a logistic regression changes the true value of an odds ratio for a unit increase in a risk factor. Even when there is no variation due to covariates, the odds ratio for a unit increase in a risk factor also depends on the distribution of the risk factor. An instrumental variable can be used to consistently estimate a causal effect in the presence of arbitrary confounding. With a logistic outcome model, we show that the simple ratio or two-stage instrumental variable… Show more

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Cited by 70 publications
(73 citation statements)
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“…We consider the situation where the exposure, mediator and outcome are all continuous and assume that the effects of the exposure on the mediator ( X on Z ), and of the exposure and mediator on the outcome [( X , Z ) on Y ] are linear without interactions. Similar methods could be used in a case of a binary exposure, mediator and/or outcome, but we do not address the additional complications of non-collapsibility that arise in this paper 14 , 15 . We allow unmeasured confounding of the exposure–mediator, exposure–outcome and mediator–outcome relationships.…”
Section: Methodsmentioning
confidence: 99%
“…We consider the situation where the exposure, mediator and outcome are all continuous and assume that the effects of the exposure on the mediator ( X on Z ), and of the exposure and mediator on the outcome [( X , Z ) on Y ] are linear without interactions. Similar methods could be used in a case of a binary exposure, mediator and/or outcome, but we do not address the additional complications of non-collapsibility that arise in this paper 14 , 15 . We allow unmeasured confounding of the exposure–mediator, exposure–outcome and mediator–outcome relationships.…”
Section: Methodsmentioning
confidence: 99%
“…The standard error of the association estimate with the outcome is se(β^Yj). If any of the variables is binary, then these summarized association estimates may be replaced with association estimates from logistic regression; as has been shown previously, the interpretation of the causal estimate in this case is not clear due to non-collapsibility, but estimates still represent valid tests of the causal null hypothesis 12 , 13 . See Bowden et al 14 .…”
Section: Methodsmentioning
confidence: 99%
“…For each of LDL, HDL, TG, and TC, we estimated 3 primary associations: 1) lipid-polyp odds ratios (OR) with 95% confidence intervals (CI) comparing each case group to controls using polytomous logistic regression; 2) genotype-lipid associations using ordinary linear regression; and 3) genotype-polyp Mendelian randomization ORs using 2-stage linear-logistic regression [17]. We used trait-specific allele scores created by counting alleles associated with an increased mean in the GLGC GWAS, weighted by effect size from their analysis (for HDL, the score was based on alleles associated with decreased mean HDL) [18].…”
Section: Methodsmentioning
confidence: 99%