Reducing bias from missing confounders is a challenging problem in the analysis of observational data. Information about missing variables is sometimes available from external validation data, such as surveys or secondary samples drawn from the same source population. In principle, the validation data permits us to recover information about the missing data, but the di�culty is in eliciting a valid model for nuisance distribution of the missing confounders. Motivated by a British study of the e�ects of trihalomethane exposure on risk of full-term low birthweight, we describe a exible Bayesian procedure for adjusting for a vector of missing confounders using external validation data. We summarize the missing confounders with a scalar summar...
Often, data on important confounders are not available in cohort studies. Sensitivity analyses based...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Confounding can be a major source of bias in nonexperimental research. The authors recently introduc...
Adjusting for several unmeasured confounders is a challenging problem in the analysis of observation...
www.fhs.sfu.ca/portal memberdata/lmccandless Reducing bias from missing confounders is a challenging...
Unmeasured confounding may bias the analysis of observational studies. Existing methods of adjustme...
Bias caused by missing or incomplete information on confounding factors constitutes an important cha...
Causal inference in observational studies can be challenging when confounders are subject to missing...
Thesis (Master's)--University of Washington, 2016-06Observational studies often suffer from the prob...
Meta-analysis of observational studies is an exciting new area of innovation in statistical science....
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Inferring the causal effect of a treatment on an outcome in an observational study requires adjustin...
In this thesis, we explore causal inference in observational studies with particular emphasis on the...
Inferring the causal effect of a treatment on an outcome in an observational study requires adjustin...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Often, data on important confounders are not available in cohort studies. Sensitivity analyses based...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Confounding can be a major source of bias in nonexperimental research. The authors recently introduc...
Adjusting for several unmeasured confounders is a challenging problem in the analysis of observation...
www.fhs.sfu.ca/portal memberdata/lmccandless Reducing bias from missing confounders is a challenging...
Unmeasured confounding may bias the analysis of observational studies. Existing methods of adjustme...
Bias caused by missing or incomplete information on confounding factors constitutes an important cha...
Causal inference in observational studies can be challenging when confounders are subject to missing...
Thesis (Master's)--University of Washington, 2016-06Observational studies often suffer from the prob...
Meta-analysis of observational studies is an exciting new area of innovation in statistical science....
One difficulty in performing meta-analyses of observational cohort studies is that the availability ...
Inferring the causal effect of a treatment on an outcome in an observational study requires adjustin...
In this thesis, we explore causal inference in observational studies with particular emphasis on the...
Inferring the causal effect of a treatment on an outcome in an observational study requires adjustin...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Often, data on important confounders are not available in cohort studies. Sensitivity analyses based...
Quantitative treatment of uncontrolled bias in observational research is a neglected matter. In the...
Confounding can be a major source of bias in nonexperimental research. The authors recently introduc...