Addressing unmeasured confounders in cohort studies: Instrumental variable method for a time‐fixed exposure on an outcome trajectory

Instrumental variable methods, which handle unmeasured confounding by targeting the part of the exposure explained by an exogenous variable not subject to confounding, have gained much interest in observational studies. We consider the very frequent setting of estimating the unconfounded effect of a...

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Published inBiometrical journal Vol. 66; no. 1; pp. e2200358 - n/a
Main Authors Le Bourdonnec, Kateline, Samieri, Cécilia, Tzourio, Christophe, Mura, Thibault, Mishra, Aniket, Trégouët, David‐Alexandre, Proust‐Lima, Cécile
Format Journal Article
LanguageEnglish
Published Germany Wiley - VCH Verlag GmbH & Co. KGaA 01.01.2024
Wiley-VCH Verlag
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ISSN0323-3847
1521-4036
1521-4036
DOI10.1002/bimj.202200358

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Summary:Instrumental variable methods, which handle unmeasured confounding by targeting the part of the exposure explained by an exogenous variable not subject to confounding, have gained much interest in observational studies. We consider the very frequent setting of estimating the unconfounded effect of an exposure measured at baseline on the subsequent trajectory of an outcome repeatedly measured over time. We didactically explain how to apply the instrumental variable method in such setting by adapting the two‐stage classical methodology with (1) the prediction of the exposure according to the instrumental variable, (2) its inclusion into a mixed model to quantify the exposure association with the subsequent outcome trajectory, and (3) the computation of the estimated total variance. A simulation study illustrates the consequences of unmeasured confounding in classical analyses and the usefulness of the instrumental variable approach. The methodology is then applied to 6224 participants of the 3C cohort to estimate the association of type‐2 diabetes with subsequent cognitive trajectory, using 42 genetic polymorphisms as instrumental variables. This contribution shows how to handle endogeneity when interested in repeated outcomes, along with a R implementation. However, it should still be used with caution as it relies on instrumental variable assumptions hardly testable in practice.
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ISSN:0323-3847
1521-4036
1521-4036
DOI:10.1002/bimj.202200358