Clinicians often face difficult decisions despite the lack of evidence from randomized trials. Thus, clinical evidence is often shaped by non-randomized studies exploiting multivariable approaches to limit the extent of confounding. Since their introduction, propensity scores have been used more and more frequently to estimate relevant clinical effects adjusting for established confounders, especially in small datasets. However, debate persists on their real usefulness in comparison to standard multivariable approaches such as logistic regression and Cox proportional hazard analysis. This holds even truer in light of key quantitative developments such as bootstrap and Bayesian methods. This qualitative review aims to provide a concise and p...
Propensity score (PS) techniques are useful if the number of potential confounding pretreatment vari...
Propensity score methodology is being increasingly used to try and make inferences about treatments ...
Propensity scores are widely used in cohort studies to improve performance of regression models when...
Clinicians often face difficult decisions despite the lack of evidence from randomized trials. Thus,...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
Real-world epidemiology gives us the unique opportunity to observe large numbers of people, and the ...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
Propensity score methods are increasingly being used to reduce or minimize the effects of confoundin...
For observational studies, the propensity score is the probability of treatment for a given set of b...
Estimation of the effect of a binary exposure on an outcome in the presence of confounding is often ...
Randomized clinical trials (RCT) are accepted as the gold-standard approaches to measure effects of ...
Inferences about intended effects of treatments are ideally investigated using randomized control tr...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Propensity score analysis has been used to minimize the selection bias in observational studies to i...
<p>Propensity score (PS) methodology is a common approach to control for confounding in nonexperimen...
Propensity score (PS) techniques are useful if the number of potential confounding pretreatment vari...
Propensity score methodology is being increasingly used to try and make inferences about treatments ...
Propensity scores are widely used in cohort studies to improve performance of regression models when...
Clinicians often face difficult decisions despite the lack of evidence from randomized trials. Thus,...
The principal aim of analysis of any sample of data is to draw causal inferences about the effects o...
Real-world epidemiology gives us the unique opportunity to observe large numbers of people, and the ...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
Propensity score methods are increasingly being used to reduce or minimize the effects of confoundin...
For observational studies, the propensity score is the probability of treatment for a given set of b...
Estimation of the effect of a binary exposure on an outcome in the presence of confounding is often ...
Randomized clinical trials (RCT) are accepted as the gold-standard approaches to measure effects of ...
Inferences about intended effects of treatments are ideally investigated using randomized control tr...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Propensity score analysis has been used to minimize the selection bias in observational studies to i...
<p>Propensity score (PS) methodology is a common approach to control for confounding in nonexperimen...
Propensity score (PS) techniques are useful if the number of potential confounding pretreatment vari...
Propensity score methodology is being increasingly used to try and make inferences about treatments ...
Propensity scores are widely used in cohort studies to improve performance of regression models when...