Semi-Parametric Identification and Estimation of Interaction and Effect Modification in Mixed Exposures using Stochastic Interventions

05/03/2023
by   David B. McCoy, et al.
0

In many fields, including environmental epidemiology, researchers strive to understand the joint impact of a mixture of exposures. This involves analyzing a vector of exposures rather than a single exposure, with the most significant exposure sets being unknown. Examining every possible interaction or effect modification in a high-dimensional vector of candidates can be challenging or even impossible. To address this challenge, we propose a method for the automatic identification and estimation of exposure sets in a mixture with explanatory power, baseline covariates that modify the impact of an exposure and sets of exposures that have synergistic non-additive relationships. We define these parameters in a realistic nonparametric statistical model and use machine learning methods to identify variables sets and estimate nuisance parameters for our target parameters to avoid model misspecification. We establish a prespecified target parameter applied to variable sets when identified and use cross-validation to train efficient estimators employing targeted maximum likelihood estimation for our target parameter. Our approach applies a shift intervention targeting individual variable importance, interaction, and effect modification based on the data-adaptively determined sets of variables. Our methodology is implemented in the open-source SuperNOVA package in R. We demonstrate the utility of our method through simulations, showing that our estimator is efficient and asymptotically linear under conditions requiring fast convergence of certain regression functions. We apply our method to the National Institute of Environmental Health Science mixtures workshop data, revealing correct identification of antagonistic and agonistic interactions built into the data. Additionally, we investigate the association between exposure to persistent organic pollutants and longer leukocyte telomere length.

READ FULL TEXT
research
02/15/2023

Cross-Validated Decision Trees with Targeted Maximum Likelihood Estimation for Nonparametric Causal Mixtures Analysis

Exposure to mixtures of chemicals, such as drugs, pollutants, and nutrie...
research
06/15/2020

Targeted Maximum Likelihood Estimation of Community-based Causal Effect of Community-Level Stochastic Interventions

Unlike the commonly used parametric regression models such as mixed mode...
research
07/05/2023

Unveiling Causal Mediation Pathways in High-Dimensional Mixed Exposures: A Data-Adaptive Target Parameter Strategy

Mediation analysis in causal inference typically concentrates on one bin...
research
09/27/2021

Parameterising the effect of a continuous exposure using average derivative effects

The (weighted) average treatment effect is commonly used to quantify the...
research
05/27/2022

Average Adjusted Association: Efficient Estimation with High Dimensional Confounders

The log odds ratio is a common parameter to measure association between ...
research
07/02/2020

Epidemiology of exposure to mixtures: we cant be casual about causality when using or testing methods

Background: There is increasing interest in approaches for analyzing the...
research
11/03/2018

Canonical Least Favorable Submodels:A New TMLE Procedure for Multidimensional Parameters

This paper is a fundamental addition to the world of targeted maximum li...

Please sign up or login with your details

Forgot password? Click here to reset