Much research in the social and health sciences aims to understand the causal relationship between an intervention and an outcome, and a variety of statistical methods have been developed to answer these questions. However, in many situations, such causal relationships are not readily obtained even in well-conducted randomized clinical trials due to problems with noncompliance or partial compliance. More generally, conditioning on variables such as compliance that are observed post-randomization destroys the causal interpretation of treatment effects in statistical models. Therefore it is desirable to develop statistical methods to accommodate post-randomization variables in regression while retaining the causal interpretation of the eff...
Thesis (Ph.D.)--University of Washington, 2015-12Subject noncompliance is a common problem in the an...
In behavioral medicine trials, such as smoking cessation trials, two or more active treatments are o...
Making inferences about the causal effects is essential for public health and biomedical studies. Ra...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/108032/1/sim5811.pd
We consider studies for evaluating the short-term effect of a treatment of interest on a time-to-eve...
In the presence of non-compliance, conventional analysis by intention-to-treat provides an unbiased ...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Data analysis for randomized trials including multitreatment arms is often complicated by subjects w...
The Principal Stratification method estimates a causal intervention effect by taking account of subj...
In assessing the mechanism of treatment efficacy in randomized clinical trials, investigators often ...
It is well established that a randomized controlled trial (RCT) is the gold standard design for medi...
It is well established that a randomized controlled trial (RCT) is the gold standard design for medi...
In causal inference studies, interest often lies in understanding the mechanisms through which a tre...
Principal stratification is a causal framework to analyse randomized experiments with a post-treatme...
Thesis (Ph.D.)--University of Washington, 2015-12Subject noncompliance is a common problem in the an...
In behavioral medicine trials, such as smoking cessation trials, two or more active treatments are o...
Making inferences about the causal effects is essential for public health and biomedical studies. Ra...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/108032/1/sim5811.pd
We consider studies for evaluating the short-term effect of a treatment of interest on a time-to-eve...
In the presence of non-compliance, conventional analysis by intention-to-treat provides an unbiased ...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Noncompliance is a common problem in randomized trials. When there is noncompliance, there is often ...
Data analysis for randomized trials including multitreatment arms is often complicated by subjects w...
The Principal Stratification method estimates a causal intervention effect by taking account of subj...
In assessing the mechanism of treatment efficacy in randomized clinical trials, investigators often ...
It is well established that a randomized controlled trial (RCT) is the gold standard design for medi...
It is well established that a randomized controlled trial (RCT) is the gold standard design for medi...
In causal inference studies, interest often lies in understanding the mechanisms through which a tre...
Principal stratification is a causal framework to analyse randomized experiments with a post-treatme...
Thesis (Ph.D.)--University of Washington, 2015-12Subject noncompliance is a common problem in the an...
In behavioral medicine trials, such as smoking cessation trials, two or more active treatments are o...
Making inferences about the causal effects is essential for public health and biomedical studies. Ra...