Real-world epidemiology gives us the unique opportunity to observe large numbers of people, and the actions and events that characterize their encounters with healthcare providers. However, the heterogeneity and sheer diversity of the population and healthcare systems makes it impossible for researchers to compare “like with like” when attempting to draw causal inferences about interventions and outcomes. The critical issue in epidemiological datasets relates to high risk of bias due to confounders that stem from baseline differences between groups. Propensity score (PS) techniques are statistical approaches that have been used to tackle potential imbalance in the comparison groups. The PS is the estimated probability (based on measured bas...
In most observational studies, treatments or other "exposures" (in an epidemiologic sense) do not oc...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
Summary. The propensity score plays a central role in a variety of causal inference settings. In par...
<p>Propensity score (PS) methodology is a common approach to control for confounding in nonexperimen...
Propensity score (PS) methodology is a common approach to control for confounding in nonexperimental...
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, ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
For observational studies, the propensity score is the probability of treatment for a given set of b...
In most observational studies, treatments or other "exposures" (in an epidemiologic sense) do not oc...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
In observational studies, treatment assignment is a nonrandom process and treatment groups may not b...
In observational studies, treatment assignment is a nonrandom process and treatment groups may not b...
In most observational studies, treatments or other "exposures" (in an epidemiologic sense) do not oc...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
Summary. The propensity score plays a central role in a variety of causal inference settings. In par...
<p>Propensity score (PS) methodology is a common approach to control for confounding in nonexperimen...
Propensity score (PS) methodology is a common approach to control for confounding in nonexperimental...
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, ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
Real-world data are increasingly available to investigate real-world' safety and efficacy. However, ...
For observational studies, the propensity score is the probability of treatment for a given set of b...
In most observational studies, treatments or other "exposures" (in an epidemiologic sense) do not oc...
Confounding can cause substantial bias in nonexperimental studies that aim to estimate causal effect...
In observational studies, treatment assignment is a nonrandom process and treatment groups may not b...
In observational studies, treatment assignment is a nonrandom process and treatment groups may not b...
In most observational studies, treatments or other "exposures" (in an epidemiologic sense) do not oc...
Randomization of treatment assignment in experiments generates treatment groups with approximately b...
Summary. The propensity score plays a central role in a variety of causal inference settings. In par...