In comparing two treatments via a randomized clinical trial, the analysis of covariance (ANCOVA) technique is often utilized to estimate an overall treatment effect. The ANCOVA is generally perceived as a more efficient procedure than its simple two sample estimation counterpart. Unfortunately, when the ANCOVA model is nonlinear, the resulting estimator is generally not consistent. Recently, various nonparametric alternatives to the ANCOVA, such as the augmentation methods, have been proposed to estimate the treatment effect by adjusting the covariates. However, the properties of these alternatives have not been studied in the presence of treatment allocation imbalance. In this article, we take a different approach to explore how to improve...
In a clinical controlled trial involving repeated measures of continuous outcomes such as quality of...
Fully nonparametric analysis of covariance with two and three covariates is considered. The approach...
Covariate adjustment methods are frequently used when baseline covariate information is available fo...
In comparing two treatments via a randomized clinical trial, the analysis of covari- ance technique ...
Background and Objective: For inferring a treatment effect from the difference between a treated and...
Randomized experiments (REs) are the cornerstone for treatment effect evaluation. However, due to pr...
Koch et al. recently (1998) proposed two covariate-adjusted approaches for the comparison of continu...
Covariate adjustment in the randomized trial context refers to an estimator of the average treatme...
There is considerable debate regarding whether and how covariate adjusted analyses should be used in...
Repeated measures (RM) and ANCOVA models are compared with respect to treatment effect estimation in...
We focus on estimating the average treatment effect in a randomized trial. If base-line variables ar...
<p>Analysis of covariance (ANCOVA) is commonly used in the analysis of randomized clinical trials to...
Summary. The primary goal of a randomized clinical trial is to make comparisons among two or more tr...
By employing a concomitant variable, block designs and analysis of covariance (ANCOVA) can be used t...
Analysis of covariance (ANCOVA) is a data analysis method that is often used to control extraneous s...
In a clinical controlled trial involving repeated measures of continuous outcomes such as quality of...
Fully nonparametric analysis of covariance with two and three covariates is considered. The approach...
Covariate adjustment methods are frequently used when baseline covariate information is available fo...
In comparing two treatments via a randomized clinical trial, the analysis of covari- ance technique ...
Background and Objective: For inferring a treatment effect from the difference between a treated and...
Randomized experiments (REs) are the cornerstone for treatment effect evaluation. However, due to pr...
Koch et al. recently (1998) proposed two covariate-adjusted approaches for the comparison of continu...
Covariate adjustment in the randomized trial context refers to an estimator of the average treatme...
There is considerable debate regarding whether and how covariate adjusted analyses should be used in...
Repeated measures (RM) and ANCOVA models are compared with respect to treatment effect estimation in...
We focus on estimating the average treatment effect in a randomized trial. If base-line variables ar...
<p>Analysis of covariance (ANCOVA) is commonly used in the analysis of randomized clinical trials to...
Summary. The primary goal of a randomized clinical trial is to make comparisons among two or more tr...
By employing a concomitant variable, block designs and analysis of covariance (ANCOVA) can be used t...
Analysis of covariance (ANCOVA) is a data analysis method that is often used to control extraneous s...
In a clinical controlled trial involving repeated measures of continuous outcomes such as quality of...
Fully nonparametric analysis of covariance with two and three covariates is considered. The approach...
Covariate adjustment methods are frequently used when baseline covariate information is available fo...