Logistic regression is commonly used to test for treatment effects in observational studies. If the distribution of a continuous covariate differs between treated and control populations, logistic regression yields an invalid hypothesis test even in an uncounfounded study if the link is not logistic. This flaw is not corrected by the commonly used technique of discretizing the covariate into intervals. A valid test can be obtained by discretization followed by regression adjustment within each interval.Statistic
The identification of causal average treatment effects (ATE) in observational studies requires data ...
BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational stu...
Results from classic linear regression regarding the effect of adjusting for covariates upon the pre...
BACKGROUND: Confounding bias is a common concern in epidemiological research. Its presence is often ...
© 2017 American Statistical Association. In linear regression models, covariate-adjusted analysis is...
A commonly used method for confounder selection is to determine the percent difference between the c...
Comprehensively assessing the effect of a treatment usually includes two objectives, estimating the ...
In many fields of statistical application the fundamental task is to quantify the association betwee...
Logistic regression is one of the most frequently used statistical methods as a standard method of d...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Conditional logistic regression was developed to avoid "sparse-data " biases that can aris...
In cross-sectional studies or studies based on questionnaires, errors in exposures and misclassifica...
Simulated data sets are used to evaluate conditional and unconditional maximum likelihood estimation...
In epidemiologic research, logistic regression is often used to estimate the odds of some outcome of...
Abstract Background Confounders can produce spurious associations between exposure and outcome in ob...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational stu...
Results from classic linear regression regarding the effect of adjusting for covariates upon the pre...
BACKGROUND: Confounding bias is a common concern in epidemiological research. Its presence is often ...
© 2017 American Statistical Association. In linear regression models, covariate-adjusted analysis is...
A commonly used method for confounder selection is to determine the percent difference between the c...
Comprehensively assessing the effect of a treatment usually includes two objectives, estimating the ...
In many fields of statistical application the fundamental task is to quantify the association betwee...
Logistic regression is one of the most frequently used statistical methods as a standard method of d...
Includes bibliographical references (p. 96-98).In a variety of regression applications, measurement ...
Conditional logistic regression was developed to avoid "sparse-data " biases that can aris...
In cross-sectional studies or studies based on questionnaires, errors in exposures and misclassifica...
Simulated data sets are used to evaluate conditional and unconditional maximum likelihood estimation...
In epidemiologic research, logistic regression is often used to estimate the odds of some outcome of...
Abstract Background Confounders can produce spurious associations between exposure and outcome in ob...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
BACKGROUND AND OBJECTIVE: To review methods that seek to adjust for confounding in observational stu...
Results from classic linear regression regarding the effect of adjusting for covariates upon the pre...