Policymakers use results from randomized controlled trials to inform decisions about whether to implement treatments in target populations. Various methods - including inverse probability weighting, outcome modeling, and Targeted Maximum Likelihood Estimation - that use baseline data available in both the trial and target population have been proposed to generalize the trial treatment effect estimate to the target population. Often the target population is significantly larger than the trial sample, which can cause estimation challenges. We conduct simulations to compare the performance of these methods in this setting. We vary the size of the target population, the proportion of the target population selected into the trial, and the comple...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
We focus on estimating the average treatment effect in a randomized trial. If base-line variables ar...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
Abstract: We present a method that largely automates the search for systematic treat-ment effect het...
Our study explored the application of methods to generalize randomized controlled trial results to a...
Background: In a randomized controlled trial (RCT) with binary outcome the estimate of the marginal ...
Randomized Controlled Trials (RCTs) may suffer from limited scope. In particular, samples may be unr...
While randomized controlled trials (RCTs) are widely used as a gold standard in clinical research an...
In cluster randomized trials, the study units usually are not a simple random sample from some clear...
Abstract Background Estimating statistical power is a...
Properly planned and conducted randomized clinical trials remain susceptible to a lack of external v...
Estimating population effect size accurately and precisely plays a vital role in achieving a desired...
We consider the problem of estimating an average treatment effect for a target population from a sur...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
We focus on estimating the average treatment effect in a randomized trial. If base-line variables ar...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
BackgroundRandomized controlled trials are often used to inform policy and practice for broad popula...
Abstract: We present a method that largely automates the search for systematic treat-ment effect het...
Our study explored the application of methods to generalize randomized controlled trial results to a...
Background: In a randomized controlled trial (RCT) with binary outcome the estimate of the marginal ...
Randomized Controlled Trials (RCTs) may suffer from limited scope. In particular, samples may be unr...
While randomized controlled trials (RCTs) are widely used as a gold standard in clinical research an...
In cluster randomized trials, the study units usually are not a simple random sample from some clear...
Abstract Background Estimating statistical power is a...
Properly planned and conducted randomized clinical trials remain susceptible to a lack of external v...
Estimating population effect size accurately and precisely plays a vital role in achieving a desired...
We consider the problem of estimating an average treatment effect for a target population from a sur...
This dissertation research is to understand the statistical biases in estimating parameters in linea...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
We focus on estimating the average treatment effect in a randomized trial. If base-line variables ar...