Meta-analysis of observational studies is an exciting new area of innovation in statistical science. Unlike randomized controlled trials, which are the gold standard for proving causation, observational studies are prone to biases including confounding. In this article, we describe a novel Bayesian procedure to control for a confounder that is missing across the sequence of studies in a meta-analysis. We motivate the discussion with the example of a meta-analysis of cohort, case-control and cross-sectional studies examining the relationship between oral contraceptives and endometriosis. An important unmeasured confounder is dysmennoreah, which is an indication for oral contraceptive use. To adjust for unmeasured confounding, we combine rand...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Biostatistical studies of medical data are extremely important in distinguishing relationships betwe...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Random-effects meta-analyses of observational studies can produce biased estimates if the synthesize...
Abstract Background Different confounder adjustment strategies were used to estimate odds ratios (OR...
Unmeasured confounding may bias the analysis of observational studies. Existing methods of adjustme...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Thesis (Master's)--University of Washington, 2016-06Observational studies often suffer from the prob...
We introduce a Bayesian approach which estimates and adjusts for selection bias in a set of studies ...
Meta-analysis (MA) combines multiple studies to estimate a quantity of interest. Some existing MA mo...
Reducing bias from missing confounders is a challenging problem in the analysis of observational dat...
Adjusting for several unmeasured confounders is a challenging problem in the analysis of observation...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Biostatistical studies of medical data are extremely important in distinguishing relationships betwe...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Random-effects meta-analyses of observational studies can produce biased estimates if the synthesize...
Abstract Background Different confounder adjustment strategies were used to estimate odds ratios (OR...
Unmeasured confounding may bias the analysis of observational studies. Existing methods of adjustme...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Thesis (Master's)--University of Washington, 2016-06Observational studies often suffer from the prob...
We introduce a Bayesian approach which estimates and adjusts for selection bias in a set of studies ...
Meta-analysis (MA) combines multiple studies to estimate a quantity of interest. Some existing MA mo...
Reducing bias from missing confounders is a challenging problem in the analysis of observational dat...
Adjusting for several unmeasured confounders is a challenging problem in the analysis of observation...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Biostatistical studies of medical data are extremely important in distinguishing relationships betwe...
The identification of causal average treatment effects (ATE) in observational studies requires data ...