We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (RCT) to a target population described by a set of covariates from observational data. Available methods such as inverse propensity weighting are not designed to handle missing values, which are however common in both data sources. In addition to coupling the assumptions for causal effect identifiability and for the missing values mechanism and to defining appropriate estimation strategies, one difficulty is to consider the specific structure of the data with two sources and treatment and outcome only available in the RCT. We propose and compare three multiple imputation strategies (separate imputation, joint imputation with fixed effect, join...
With increasing data availability, treatment causal effects can be evaluated across different datase...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
International audienceMissing attributes are ubiquitous in causal inference, as they are in most app...
Randomized Controlled Trials (RCTs) are often considered as the gold standard to conclude on the cau...
The literature on dealing with missing covariates in nonrandomized studies advocates the use of soph...
The literature on dealing with missing covariates in nonrandomized studies advocates the use of soph...
Baseline covariates in randomized experiments are often used in the estimation of treatment effects,...
Although missing outcome data are an important problem in randomized trials and observational studie...
Missing data is a systemic problem in practical scenarios that causes noise and bias when estimating...
<p>Background: Missing values are a common problem for data analyses in observational studies, which...
With increasing data availability, treatment causal effects can be evaluated across different datase...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
We focus on the problem of generalizing a causal effect estimated on a randomized controlled trial (...
International audienceMissing attributes are ubiquitous in causal inference, as they are in most app...
Randomized Controlled Trials (RCTs) are often considered as the gold standard to conclude on the cau...
The literature on dealing with missing covariates in nonrandomized studies advocates the use of soph...
The literature on dealing with missing covariates in nonrandomized studies advocates the use of soph...
Baseline covariates in randomized experiments are often used in the estimation of treatment effects,...
Although missing outcome data are an important problem in randomized trials and observational studie...
Missing data is a systemic problem in practical scenarios that causes noise and bias when estimating...
<p>Background: Missing values are a common problem for data analyses in observational studies, which...
With increasing data availability, treatment causal effects can be evaluated across different datase...
Inverse probability of treatment weighting is a popular propensity score-based approach to estimate ...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...