It is common to present multiple adjusted effect estimates from a single model in a single table. For example, a table might show odds ratios for one or more exposures and also for several confounders from a single logistic regression. This can lead to mistaken interpretations of these estimates. We use causal diagrams to display the sources of the problems. Presentation of exposure and confounder effect estimates from a single model may lead to several interpretative difficulties, inviting confusion of direct-effect estimates with total-effect estimates for covariates in the model. These effect estimates may also be confounded even though the effect estimate for the main exposure is not confounded. Interpretation of these effect estimates ...
The main purpose of this study is to give empirical illustrations of three possible misspecification...
Observational studies can play a useful role in assessing the comparative effectiveness of competing...
To estimate causal effects, analysts performing observational studies in health settings utilize sev...
In our paper (1), we considered the extent and patterns of bias in estimates of exposure-outcome ass...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
Abstract Background Confounders can produce spurious associations between exposure and outcome in ob...
Concern over the impact of flawed measurement continues to nag epidemiology. Early studies indicated...
Standard variable-selection procedures, primarily developed for the construction of outcome predicti...
Biological and epidemiological phenomena are often measured with error or imperfectly captured in da...
Measurement error in explanatory variables and unmeasured confounders can cause considerable problem...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
Abstract Background Confounding is a common issue in epidemiological research. Commonly used confoun...
After screening out inappropriate or doubtful covariates on the basis of background knowledge, one m...
Basic causality is that a cause is present or absent and that the effect follows with a success or n...
The main purpose of this study is to give empirical illustrations of three possible misspecification...
Observational studies can play a useful role in assessing the comparative effectiveness of competing...
To estimate causal effects, analysts performing observational studies in health settings utilize sev...
In our paper (1), we considered the extent and patterns of bias in estimates of exposure-outcome ass...
We consider the problem of assessing whether an exposure affects a dichotomous outcome other than by...
Abstract Background Confounders can produce spurious associations between exposure and outcome in ob...
Concern over the impact of flawed measurement continues to nag epidemiology. Early studies indicated...
Standard variable-selection procedures, primarily developed for the construction of outcome predicti...
Biological and epidemiological phenomena are often measured with error or imperfectly captured in da...
Measurement error in explanatory variables and unmeasured confounders can cause considerable problem...
Covariate adjustment is integral to the validity of observational studies assessing causal effects. ...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
Abstract Background Confounding is a common issue in epidemiological research. Commonly used confoun...
After screening out inappropriate or doubtful covariates on the basis of background knowledge, one m...
Basic causality is that a cause is present or absent and that the effect follows with a success or n...
The main purpose of this study is to give empirical illustrations of three possible misspecification...
Observational studies can play a useful role in assessing the comparative effectiveness of competing...
To estimate causal effects, analysts performing observational studies in health settings utilize sev...