SUMMARY In the analysis of observational data, stratifying patients on the estimated propensity scores reduces confounding from measured variables. Confidence intervals for the treatment effect are typically calculated without acknowledging uncertainty in the estimated propensity scores, and intuitively this may yield inferences, which are falsely precise. In this paper, we describe a Bayesian method that models the propensity score as a latent variable. We consider observational studies with a dichotomous treatment, dichotomous outcome, and measured confounders where the log odds ratio is the measure of effect. Markov chain Monte Carlo is used for posterior simulation. We study the impact of modelling uncertainty in the propensity scores i...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
The propensity score is the conditional probability of assignment to a particular treatment given a ...
Propensity scores analysis (PSA) involves regression adjustment for the estimated propensity scores,...
Regression adjustment for the propensity score is a statistical method that reduces confoundingfrom ...
The problem of variable selection for propensity score (PS) models is a central issue that researche...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
In observational studies evaluating the treatment effect on a given outcome, the treated and untreat...
: McCandless, Gustafson and Austin (2009) describe a Bayesian approach to regression adjustment for ...
Propensity score methods are increasingly being used to reduce or minimize the effects of confoundin...
There is increasing demand to investigate questions in observational study. The propensity score is ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Propensity scores are often used for stratification of treatment and control groups of subjects in o...
In nonrandomised studies, inferring causal effects requires appropriate methods for addressing confo...
Background/Aims: Treatment effects from observational studies may be biased since the patients were ...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
The propensity score is the conditional probability of assignment to a particular treatment given a ...
Propensity scores analysis (PSA) involves regression adjustment for the estimated propensity scores,...
Regression adjustment for the propensity score is a statistical method that reduces confoundingfrom ...
The problem of variable selection for propensity score (PS) models is a central issue that researche...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
In observational studies evaluating the treatment effect on a given outcome, the treated and untreat...
: McCandless, Gustafson and Austin (2009) describe a Bayesian approach to regression adjustment for ...
Propensity score methods are increasingly being used to reduce or minimize the effects of confoundin...
There is increasing demand to investigate questions in observational study. The propensity score is ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Propensity scores are often used for stratification of treatment and control groups of subjects in o...
In nonrandomised studies, inferring causal effects requires appropriate methods for addressing confo...
Background/Aims: Treatment effects from observational studies may be biased since the patients were ...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
The propensity score is the conditional probability of assignment to a particular treatment given a ...