Estimating the Marginal Effect of a Continuous Exposure on an Ordinal Outcome using Data Subject to Covariate-Driven Treatment and Visit Processes

12/21/2021
by   Janie Coulombe, et al.
0

In the statistical literature, a number of methods have been proposed to ensure valid inference about marginal effects of variables on a longitudinal outcome in settings with irregular monitoring times. However, the potential biases due to covariate-driven monitoring times and confounding have rarely been considered simultaneously, and never in a setting with an ordinal outcome and a continuous exposure. In this work, we propose and demonstrate a methodology for causal inference in such a setting, relying on a proportional odds model to study the effect of the exposure on the outcome. Irregular observation times are considered via a proportional rate model, and a generalization of inverse probability of treatment weights is used to account for the continuous exposure. We motivate our methodology by the estimation of the marginal (causal) effect of the time spent on video or computer games on suicide attempts in the Add Health study, a longitudinal study in the United States. Although in the Add Health data, observation times are pre-specified, our proposed approach is applicable even in more general settings such as when analyzing data from electronic health records where observations are highly irregular. In simulation studies, we let observation times vary across individuals and demonstrate that not accounting for biasing imbalances due to the monitoring and the exposure schemes can bias the estimate for the marginal odds ratio of exposure.

READ FULL TEXT
research
04/18/2023

Quadruply robust estimation of marginal structural models in observational studies subject to covariate-driven observations

Electronic health records and other sources of observational data are in...
research
06/28/2021

Estimation of the marginal effect of antidepressants on body mass index under confounding and endogenous covariate-driven monitoring times

In studying the marginal effect of antidepressants on body mass index us...
research
02/19/2022

Estimating Individualized Treatment Rules in Longitudinal Studies with Covariate-Driven Observation Times

The sequential treatment decisions made by physicians to treat chronic d...
research
10/24/2018

Outcome-wide longitudinal designs for causal inference: a new template for empirical studies

In this paper we propose a new template for empirical studies intended t...
research
07/28/2018

Residual Balancing Weights for Marginal Structural Models: with Application to Analyses of Time-varying Treatments and Causal Mediation

Treatment-induced confounding arises in analyses of time-varying treatme...
research
08/01/2018

Mixed effects models for healthcare longitudinal data with an informative visiting process: a Monte Carlo simulation study

Electronic health records are being increasingly used in medical researc...

Please sign up or login with your details

Forgot password? Click here to reset