Assessing Techniques for Quantifying the Impact of Bias Due to an Unmeasured Confounder: An Applied Example.
Julie BarberioThomas P AhernRichard F MacLehoseLindsay J CollinDeirdre P Cronin-FentonPer DamkierHenrik Toft SorensenTimothy L LashPublished in: Clinical epidemiology (2021)
The impact of bias due to simulated unmeasured confounding was negligible, in part, because the unmeasured variable was not independent of controlled variables. When a suspected confounder cannot be measured in the study data, our exercise suggests that QBA is the most informative method for assessing the impact. E-values may best be reserved for situations where uncontrolled confounding emanates from an unknown confounder.