On the role of surrogates in conformal inference of individual causal effects

Chenyin Gao Co-Author
North Carolina State University
 
Peter Gilbert Co-Author
Fred Hutchinson Cancer Research Center
 
Larry Han Co-Author
Northeastern University
 
Larry Han Speaker
Northeastern University
 
Wednesday, Aug 6: 11:15 AM - 11:35 AM
Topic-Contributed Paper Session 
Music City Center 
Learning the Individual Treatment Effect (ITE) is essential for personalized decision-making, yet causal inference has traditionally focused on aggregated treatment effects. While integrating conformal prediction with causal inference can provide valid uncertainty quantification for ITEs, the resulting prediction intervals are often excessively wide, limiting their practical utility. To address this limitation, we introduce Surrogate-assisted Conformal Inference for Efficient iNdividual Causal Effects (SCIENCE), a framework designed to construct more efficient prediction intervals for ITEs. SCIENCE accommodates the covariate shifts between source data and target data and applies to various data configurations, including semi-supervised and surrogate-assisted semi-supervised learning. Leveraging semi-parametric efficiency theory, SCIENCE produces rate double-robust prediction intervals under mild rate convergence conditions, permitting the use of flexible non-parametric models to estimate nuisance functions. We quantify efficiency gains by comparing semi-parametric efficiency bounds with and without the surrogates. Simulation studies demonstrate that our surrogate-assisted intervals offer substantial efficiency improvements over existing methods while maintaining valid group-conditional coverage. Applied to the phase 3 Moderna COVE COVID-19 vaccine trial, SCIENCE illustrates how multiple surrogate markers can be leveraged to generate more efficient prediction intervals.

Keywords

Conformal inference

Individual treatment effects

Surrogate outcomes

Semi-supervised inference

Personalized medicine