Results from classic linear regression regarding the effect of adjusting for covariates upon the precision of an estimator of exposure effect are often assumed to apply more generally to other types of regression models. In this paper we show that such an assumption is not justified in the case of logistic regression, where the effect of adjusting for covariates upon precision is quite different. For example, in classic linear regression the adjustment for a non-confounding predictive covariate results in improved precision, whereas such adjustment in logistic regression results in a loss of precision. However, when testing for a treatment effect in randomized studies, it is always more efficient to adjust for predictive covariates when l...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
When building models to investigate outcomes and variables of interest, researchers often want to ad...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
Results from classical linear regression regarding the effects of covariate adjustment, with respect...
A commonly used method for confounder selection is to determine the percent difference between the c...
In many fields of statistical application the fundamental task is to quantify the association betwee...
© 2017 American Statistical Association. In linear regression models, covariate-adjusted analysis is...
this paper is to show how the method of Rosner et al. may be extended by including a second term in ...
BACKGROUND: Confounding bias is a common concern in epidemiological research. Its presence is often ...
Abstract Background Confounders can produce spurious associations between exposure and outcome in ob...
Within Stata there are two ways of getting average predicted values for different groups after an es...
Logistic regression is commonly used to test for treatment effects in observational studies. If the ...
Abstract Background Confounding is a common issue in epidemiological research. Commonly used confoun...
In cross-sectional studies or studies based on questionnaires, errors in exposures and misclassifica...
Linear regression adjustments for pre-treatment covariates are widely used in economics to lower the...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
When building models to investigate outcomes and variables of interest, researchers often want to ad...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
Results from classical linear regression regarding the effects of covariate adjustment, with respect...
A commonly used method for confounder selection is to determine the percent difference between the c...
In many fields of statistical application the fundamental task is to quantify the association betwee...
© 2017 American Statistical Association. In linear regression models, covariate-adjusted analysis is...
this paper is to show how the method of Rosner et al. may be extended by including a second term in ...
BACKGROUND: Confounding bias is a common concern in epidemiological research. Its presence is often ...
Abstract Background Confounders can produce spurious associations between exposure and outcome in ob...
Within Stata there are two ways of getting average predicted values for different groups after an es...
Logistic regression is commonly used to test for treatment effects in observational studies. If the ...
Abstract Background Confounding is a common issue in epidemiological research. Commonly used confoun...
In cross-sectional studies or studies based on questionnaires, errors in exposures and misclassifica...
Linear regression adjustments for pre-treatment covariates are widely used in economics to lower the...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
When building models to investigate outcomes and variables of interest, researchers often want to ad...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...