Journal of Causal Inference (Dec 2022)

Bias attenuation results for dichotomization of a continuous confounder

  • Gabriel Erin E.,
  • Peña Jose M.,
  • Sjölander Arvid

DOI
https://doi.org/10.1515/jci-2022-0047
Journal volume & issue
Vol. 10, no. 1
pp. 515 – 526

Abstract

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It is well-known that dichotomization can cause bias and loss of efficiency in estimation. One can easily construct examples where adjusting for a dichotomized confounder causes bias in causal estimation. There are additional examples in the literature where adjusting for a dichotomized confounder can be more biased than not adjusting at all. The message is clear, do not dichotomize. What is unclear is if there are scenarios where adjusting for the dichotomized confounder always leads to lower bias than not adjusting. We propose several sets of conditions that characterize scenarios where one should always adjust for the dichotomized confounder to reduce bias. We then highlight scenarios where the decision to adjust should be made more cautiously. To our knowledge, this is the first formal presentation of conditions that give information about when one should and potentially should not adjust for a dichotomized confounder.

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