Efficient and flexible estimation of natural mediation effects under intermediate confounding and monotonicity constraints

05/09/2022
by   Kara E Rudolph, et al.
0

Natural direct and indirect effects are mediational estimands that decompose the average treatment effect and describe how outcomes would be affected by contrasting levels of a treatment through changes induced in mediator values (in the case of the indirect effect) or not through induced changes in the mediator values (in the case of the direct effect). Natural direct and indirect effects are not generally point-identifiable in the presence of a treatment-induced confounder, however they may still be identified if one is willing to assume monotonicity between a treatment and the treatment-induced confounder. We argue that this assumption may be reasonable in the relatively common encouragement-design trial setting where intervention is randomized treatment assignment and the treatment-induced confounder is whether or not treatment was actually taken/adhered to. We develop efficiency theory for the natural direct and indirect effects under this monotonicity assumption, and use it to propose a nonparametric, multiply robust estimator. We demonstrate the finite sample properties of this estimator using a simulation study, and apply it to data from the Moving to Opportunity Study to estimate the natural direct and indirect effects of being randomly assigned to receive a Section 8 housing voucher – the most common form of federal housing assistance – on risk developing any mood or externalizing disorder among adolescent boys, possibly operating through various school and community characteristics.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/12/2019

Causal organic direct and indirect effects: closer to Baron and Kenny

Baron and Kenny (1986, 80,433 Google Scholar citations) proposed estimat...
research
07/03/2023

Doubly Robust Estimation of Direct and Indirect Quantile Treatment Effects with Machine Learning

We suggest double/debiased machine learning estimators of direct and ind...
research
10/06/2021

Inverse Probability Weighting-based Mediation Analysis for Microbiome Data

Mediation analysis is an important tool to study casual associations in ...
research
01/21/2021

When the ends don't justify the means: Learning a treatment strategy to prevent harmful indirect effects

There is a growing literature on finding so-called optimal treatment rul...
research
03/08/2019

Transporting stochastic direct and indirect effects to new populations

Transported mediation effects may contribute to understanding how and wh...
research
12/07/2021

A causal approach to functional mediation analysis with application to a smoking cessation intervention

The increase in the use of mobile and wearable devices now allow dense a...
research
07/01/2020

Robust Inference for Mediated Effects in Partially Linear Models

We consider mediated effects of an exposure, X on an outcome, Y, via a s...

Please sign up or login with your details

Forgot password? Click here to reset