We address several questions relating to the use of standard regression and Structural Nested Mean Model (SNMM) approach (e. g., Ten Have et al. 2007) to analyze post-randomization effect modifiers of the intent-to-treat effect of a randomized intervention on a subsequent outcome, which has not been well examined. We show through simulations that the SNMM performs better with respect to bias of estimates of the intervention and interaction effects than does the corresponding standard interaction approach when the baseline intervention is randomized and the post-randomization factors are subject to confounding, and even when there is no association between the intervention and effect modifier. However, causal inference under the SNMM makes u...
Many epidemiological questions concern potential interventions to alter the pathways presumed to med...
<p>Understanding and characterizing treatment effect variation in randomized experiments has become ...
Randomized experiments are often complicated because of treatment noncompliance. This challenge prev...
The first part of my dissertation focuses on post-randomization modification of intent-to-treat effe...
The first part of my dissertation focuses on post-randomization modification of intent-to-treat effe...
Introduction. There are questions on whether the effectiveness of Beck\u27s cognitive behavioral the...
Introduction. There are questions on whether the effectiveness of Beck\u27s cognitive behavioral the...
We present a linear structural mean model SMM approach for analyzing mediation of a randomized base...
In randomized clinical trials where the effects of post-randomization factors are of interest, the s...
In randomized clinical trials where the effects of post-randomization factors are of interest, the s...
Treatments in randomized studies are often targeted to key mediating variables. Researchers want to ...
Treatments in randomized studies are often targeted to key mediating variables. Researchers want to ...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
Many epidemiological questions concern potential interventions to alter the pathways presumed to med...
Many epidemiological questions concern potential interventions to alter the pathways presumed to med...
<p>Understanding and characterizing treatment effect variation in randomized experiments has become ...
Randomized experiments are often complicated because of treatment noncompliance. This challenge prev...
The first part of my dissertation focuses on post-randomization modification of intent-to-treat effe...
The first part of my dissertation focuses on post-randomization modification of intent-to-treat effe...
Introduction. There are questions on whether the effectiveness of Beck\u27s cognitive behavioral the...
Introduction. There are questions on whether the effectiveness of Beck\u27s cognitive behavioral the...
We present a linear structural mean model SMM approach for analyzing mediation of a randomized base...
In randomized clinical trials where the effects of post-randomization factors are of interest, the s...
In randomized clinical trials where the effects of post-randomization factors are of interest, the s...
Treatments in randomized studies are often targeted to key mediating variables. Researchers want to ...
Treatments in randomized studies are often targeted to key mediating variables. Researchers want to ...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
This dissertation considers statistical methodology for causal effect moderation in both experimenta...
Many epidemiological questions concern potential interventions to alter the pathways presumed to med...
Many epidemiological questions concern potential interventions to alter the pathways presumed to med...
<p>Understanding and characterizing treatment effect variation in randomized experiments has become ...
Randomized experiments are often complicated because of treatment noncompliance. This challenge prev...