A nonparametric framework for treatment effect modifier discovery in high dimensions

04/11/2023
by   Philippe Boileau, et al.
0

Heterogeneous treatment effects are driven by treatment effect modifiers, pre-treatment covariates that modify the effect of a treatment on an outcome. Current approaches for uncovering these variables are limited to low-dimensional data, data with weakly correlated covariates, or data generated according to parametric processes. We resolve these issues by developing a framework for defining model-agnostic treatment effect modifier variable importance parameters applicable to high-dimensional data with arbitrary correlation structure, deriving one-step, estimating equation and targeted maximum likelihood estimators of these parameters, and establishing these estimators' asymptotic properties. This framework is showcased by defining variable importance parameters for data-generating processes with continuous, binary, and time-to-event outcomes with binary treatments, and deriving accompanying multiply-robust and asymptotically linear estimators. Simulation experiments demonstrate that these estimators' asymptotic guarantees are approximately achieved in realistic sample sizes for observational and randomized studies alike. This framework is applied to gene expression data collected for a clinical trial assessing the effect of a monoclonal antibody therapy on disease-free survival in breast cancer patients. Genes predicted to have the greatest potential for treatment effect modification have previously been linked to breast cancer. An open-source R package implementing this methodology, unihtee, is made available on GitHub at https://github.com/insightsengineering/unihtee.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/05/2022

BITES: Balanced Individual Treatment Effect for Survival data

Estimating the effects of interventions on patient outcome is one of the...
research
10/20/2019

Targeted Estimation of Heterogeneous Treatment Effect in Observational Survival Analysis

The aim of clinical effectiveness research using repositories of electro...
research
06/29/2019

Estimating Treatment Effect under Additive Hazards Models with High-dimensional Covariates

Estimating causal effects for survival outcomes in the high-dimensional ...
research
06/05/2023

Asymptotic properties of resampling-based processes for the average treatment effect in observational studies with competing risks

In observational studies with time-to-event outcomes, the g-formula can ...
research
04/12/2022

Variable importance measures for heterogeneous causal effects

The conditional average treatment effect (CATE) of a binary exposure on ...
research
12/18/2022

Unconfounded Meta-analytical Frameworks for Multivariate Outcomes in Multigroup Observational Studies using Concordant Weights

While meta-analyzing retrospective cancer patient cohorts, an investigat...

Please sign up or login with your details

Forgot password? Click here to reset