Randomization of treatment assignment in experiments generates treatment groups with approximately balanced baseline covariates. However, in observational studies, where treatment assignment is not random, patients in the active treatment and control groups often differ on crucial covariates that are related to outcomes. These covariate imbalances can lead to biased treatment effect estimates. The propensity score is the probability that a patient with particular baseline characteristics is assigned to active treatment rather than control. Though propensity scores are unknown in observational studies, by matching or subclassifying patients on estimated propensity scores, we can design observational studies that parallel randomized experimen...
Summary. The propensity score plays a central role in a variety of causal inference settings. In par...
For observational studies, the propensity score is the probability of treatment for a given set of b...
The most basic approach to causal inference measures the response of a system or population to diffe...
The propensity score is the conditional probability of assignment to a particular treatment given a ...
The assessment of treatment effects from observational studies may be biased with patients not rando...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
Background/Aims: Treatment effects from observational studies may be biased since the patients were ...
The assessment of treatment effects from observational studies may be biased with patients not rando...
Inferences about intended effects of treatments are ideally investigated using randomized control tr...
National audienceINTRODUCTION: In observational studies, a significant difference in the outcomes be...
A propensity score is the conditional probability that a participant will be assigned to a treatment...
The propensity score is the conditional probability of exposure to a treatment given observed covari...
Experimental studies or randomized clinical trail in health care setting are usually the preferred t...
The propensity score is the conditional probability of exposure to a treatment given observed covari...
Summary. The propensity score plays a central role in a variety of causal inference settings. In par...
For observational studies, the propensity score is the probability of treatment for a given set of b...
The most basic approach to causal inference measures the response of a system or population to diffe...
The propensity score is the conditional probability of assignment to a particular treatment given a ...
The assessment of treatment effects from observational studies may be biased with patients not rando...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
Background/Aims: Treatment effects from observational studies may be biased since the patients were ...
The assessment of treatment effects from observational studies may be biased with patients not rando...
Inferences about intended effects of treatments are ideally investigated using randomized control tr...
National audienceINTRODUCTION: In observational studies, a significant difference in the outcomes be...
A propensity score is the conditional probability that a participant will be assigned to a treatment...
The propensity score is the conditional probability of exposure to a treatment given observed covari...
Experimental studies or randomized clinical trail in health care setting are usually the preferred t...
The propensity score is the conditional probability of exposure to a treatment given observed covari...
Summary. The propensity score plays a central role in a variety of causal inference settings. In par...
For observational studies, the propensity score is the probability of treatment for a given set of b...
The most basic approach to causal inference measures the response of a system or population to diffe...