When assessing causal effects, determining the target population to which the results are intended to generalize is a critical decision. Randomized and observational studies each have strengths and limitations for estimating causal effects in a target population. Estimates from randomized data may have internal validity but are often not representative of the target population. Observational data may better reflect the target population, and hence be more likely to have external validity, but are subject to potential bias due to unmeasured confounding. While much of the causal inference literature has focused on addressing internal validity bias, both internal and external validity are necessary for unbiased estimates in a target population...
Two important considerations in clinical research studies are proper evaluations of internal and ext...
Generalizing empirical findings to new environments, settings, or populations is essential in most s...
This paper provides a general framework for testing instrument validity in heterogeneous causal effe...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
Great care is generally taken in epidemiologic studies to ensure the internal validity of causal eff...
In the empirical sciences, experiments are invariably conducted with the intent of being used elsewh...
In recent years, increasing attention has been paid to problems of external validity, specifically t...
We welcome the discussion by Huitfeldt and Stensrud on our recent article on generalizing study resu...
The g-formula and agent-based models (ABMs) are 2 approaches used to estimate causal effects. In the...
In evidence synthesis, effect modifiers are typically described as variables that induce treatment e...
The extent to which survey experiments conducted with nonrepresentative convenience samples are gene...
Abstract. The generalizability of empirical findings to new environ-ments, settings or populations, ...
While randomized controlled trials (RCTs) are widely used as a gold standard in clinical research an...
Longitudinal cohort studies provide the opportunity to examine causal effects of complex exposures o...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Two important considerations in clinical research studies are proper evaluations of internal and ext...
Generalizing empirical findings to new environments, settings, or populations is essential in most s...
This paper provides a general framework for testing instrument validity in heterogeneous causal effe...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
Great care is generally taken in epidemiologic studies to ensure the internal validity of causal eff...
In the empirical sciences, experiments are invariably conducted with the intent of being used elsewh...
In recent years, increasing attention has been paid to problems of external validity, specifically t...
We welcome the discussion by Huitfeldt and Stensrud on our recent article on generalizing study resu...
The g-formula and agent-based models (ABMs) are 2 approaches used to estimate causal effects. In the...
In evidence synthesis, effect modifiers are typically described as variables that induce treatment e...
The extent to which survey experiments conducted with nonrepresentative convenience samples are gene...
Abstract. The generalizability of empirical findings to new environ-ments, settings or populations, ...
While randomized controlled trials (RCTs) are widely used as a gold standard in clinical research an...
Longitudinal cohort studies provide the opportunity to examine causal effects of complex exposures o...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Two important considerations in clinical research studies are proper evaluations of internal and ext...
Generalizing empirical findings to new environments, settings, or populations is essential in most s...
This paper provides a general framework for testing instrument validity in heterogeneous causal effe...