Much attention has been paid to estimating the causal effect of adherence to a randomized protocol using instrumental variables to adjust for unmeasured confounding. Researchers tend to use the instrumental variable within one of the three main frameworks: regression with an endogenous variable, principal stratification, or structural-nested modeling. We found in our literature review that even in simple settings, causal interpretations of analyses with endogenous regressors can be ambiguous or rely on a strong assumption that can be diffi- cult to interpret. Principal stratification and structural-nested modeling are alternative frameworks that render unambiguous causal interpretations based on assumptions that are, arguably, easier to int...
BACKGROUND: The published literature on cluster randomized trials focuses on outcomes that are eithe...
Introduction: The instrumental variable (IV)-based methods (e.g., two-stage least square [2SLS], two...
Protocol non-adherence is common and poses unique challenges in the interpretation of trial outcomes...
Non-adherence to assigned treatment is a common issue in cluster randomised trials. In these setting...
The Principal Stratification method estimates a causal intervention effect by taking account of subj...
Randomised trials are viewed as the gold standard for evaluating interventions. Depending on the int...
Subjects in randomized controlled trials do not always comply to the treatment condition they have b...
This paper illustrates how to estimate cumulative and non-cumulative treatment effects in a complex ...
AbstractBackgroundThere is considerable interest in adjusting for suboptimal adherence in randomized...
Analysis of clustered data from randomized trials or observational data often poses theoretical and ...
Much research in the social and health sciences aims to understand the causal relationship between a...
BACKGROUND: Treatment non-adherence in randomised trials refers to situations where some participant...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
In randomized clinical trials where the effects of post-randomization factors are of interest, the s...
Data analysis for randomized trials including multitreatment arms is often complicated by subjects w...
BACKGROUND: The published literature on cluster randomized trials focuses on outcomes that are eithe...
Introduction: The instrumental variable (IV)-based methods (e.g., two-stage least square [2SLS], two...
Protocol non-adherence is common and poses unique challenges in the interpretation of trial outcomes...
Non-adherence to assigned treatment is a common issue in cluster randomised trials. In these setting...
The Principal Stratification method estimates a causal intervention effect by taking account of subj...
Randomised trials are viewed as the gold standard for evaluating interventions. Depending on the int...
Subjects in randomized controlled trials do not always comply to the treatment condition they have b...
This paper illustrates how to estimate cumulative and non-cumulative treatment effects in a complex ...
AbstractBackgroundThere is considerable interest in adjusting for suboptimal adherence in randomized...
Analysis of clustered data from randomized trials or observational data often poses theoretical and ...
Much research in the social and health sciences aims to understand the causal relationship between a...
BACKGROUND: Treatment non-adherence in randomised trials refers to situations where some participant...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
In randomized clinical trials where the effects of post-randomization factors are of interest, the s...
Data analysis for randomized trials including multitreatment arms is often complicated by subjects w...
BACKGROUND: The published literature on cluster randomized trials focuses on outcomes that are eithe...
Introduction: The instrumental variable (IV)-based methods (e.g., two-stage least square [2SLS], two...
Protocol non-adherence is common and poses unique challenges in the interpretation of trial outcomes...