A new criterion for confounder selection
A new criterion for confounder selection
We propose a new criterion for confounder selection when the underlying causal structure is unknown and only limited knowledge is available. We assume all covariates being considered are pretreatment variables and that for each covariate it is known (i) whether the covariate is a cause of treatment, and (ii) whether the covariate is a cause of the outcome. The causal relationships the covariates have with one another is assumed unknown. We propose that control be made for any covariate that is either a cause of treatment or of the outcome or both. We show that irrespective of the actual underlying causal structure, if any subset of the observed covariates suffices to control for confounding then the set of covariates chosen by our criterion will also suffice. We show that other, commonly used, criteria for confounding control do not have this property. We use formal theory concerning causal diagrams to prove our result but the application of the result does not rely on familiarity with causal diagrams. An investigator simply need ask, “Is the covariate a cause of the treatment?” and “Is the covariate a cause of the outcome?” If the answer to either question is “yes” then the covariate is included for confounder control. We discuss some additional covariate selection results that preserve unconfoundedness and that may be of interest when used with our criterion.
1406-1413
VanderWeele, Tyler J.
7ba69431-209e-4b4b-919e-aa109daa569d
Shpitser, Ilya
4d295b9b-39e8-417f-b38d-fbb5d7df6992
VanderWeele, Tyler J.
7ba69431-209e-4b4b-919e-aa109daa569d
Shpitser, Ilya
4d295b9b-39e8-417f-b38d-fbb5d7df6992
Abstract
We propose a new criterion for confounder selection when the underlying causal structure is unknown and only limited knowledge is available. We assume all covariates being considered are pretreatment variables and that for each covariate it is known (i) whether the covariate is a cause of treatment, and (ii) whether the covariate is a cause of the outcome. The causal relationships the covariates have with one another is assumed unknown. We propose that control be made for any covariate that is either a cause of treatment or of the outcome or both. We show that irrespective of the actual underlying causal structure, if any subset of the observed covariates suffices to control for confounding then the set of covariates chosen by our criterion will also suffice. We show that other, commonly used, criteria for confounding control do not have this property. We use formal theory concerning causal diagrams to prove our result but the application of the result does not rely on familiarity with causal diagrams. An investigator simply need ask, “Is the covariate a cause of the treatment?” and “Is the covariate a cause of the outcome?” If the answer to either question is “yes” then the covariate is included for confounder control. We discuss some additional covariate selection results that preserve unconfoundedness and that may be of interest when used with our criterion.
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e-pub ahead of print date: 31 May 2011
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Local EPrints ID: 350586
URI: http://eprints.soton.ac.uk/id/eprint/350586
PURE UUID: 2956d158-fa76-43dd-98c9-21ee7b02e90a
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Date deposited: 08 Apr 2013 11:02
Last modified: 14 Mar 2024 13:29
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Author:
Tyler J. VanderWeele
Author:
Ilya Shpitser
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