Volume 82, Issue 1 p. 199-214
Original Article

Robust inference on population indirect causal effects: the generalized front door criterion

Isabel R. Fulcher,

Corresponding Author

Isabel R. Fulcher

Harvard T.H. Chan School of Public Health, Boston, USA

Address for correspondence: Isabel R. Fulcher, Department of Biostatistics, Harvard T.H. Chan School of Public Health, 677 Huntington Avenue, Boston, MA 02115, USA. E-mail: Isabel_Fulcher@hms.harvard.eduSearch for more papers by this author
Ilya Shpitser,

Ilya Shpitser

Johns Hopkins University, Baltimore, USA

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Stella Marealle,

Stella Marealle

D-tree International, Zanzibar, Tanzania

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Eric J. Tchetgen Tchetgen,

Eric J. Tchetgen Tchetgen

University of Pennsylvania, Philadelphia, USA

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First published: 08 November 2019
Citations: 3

Summary

Standard methods for inference about direct and indirect effects require stringent no-unmeasured-confounding assumptions which often fail to hold in practice, particularly in observational studies. The goal of the paper is to introduce a new form of indirect effect, the population intervention indirect effect, that can be non-parametrically identified in the presence of an unmeasured common cause of exposure and outcome. This new type of indirect effect captures the extent to which the effect of exposure is mediated by an intermediate variable under an intervention that holds the component of exposure directly influencing the outcome at its observed value. The population intervention indirect effect is in fact the indirect component of the population intervention effect, introduced by Hubbard and Van der Laan. Interestingly, our identification criterion generalizes Judea Pearl's front door criterion as it does not require no direct effect of exposure not mediated by the intermediate variable. For inference, we develop both parametric and semiparametric methods, including a novel doubly robust semiparametric locally efficient estimator, that perform very well in simulation studies. Finally, the methods proposed are used to measure the effectiveness of monetary saving recommendations among women enrolled in a maternal health programme in Tanzania.