Proximal Learning for Trials With External Controls: A Case Study in HIV Prevention

Yilin Song Speaker
 
Yinxiang Wu Co-Author
University of Washington
 
Raphael Landovitz Co-Author
David Geffen School of Medicine, University of California, Los Angeles
 
Susan Buchbinder Co-Author
Bridge HIV, San Francisco Department of Public Health
 
Srilatha Edupuganti Co-Author
Department of Medicine, Emory University
 
Lydia Soto-Torres Co-Author
Division of AIDS, National Institute of Allergy and Infectious Diseases
 
Kendrick Li Co-Author
St. Jude Children's Research Hospital
 
Xu Shi Co-Author
 
Fei Gao Co-Author
Fred Hutchinson Cancer Research Center
 
Deborah Donnell Co-Author
Vaccine and Infectious Disease Division, Fred Hutchinson Cancer Research Center
 
Holly Janes Co-Author
Fred Hutchinson Cancer Research Center
 
Ting Ye Co-Author
University of Washington
 
Tuesday, Aug 4: 4:25 PM - 4:45 PM
Topic-Contributed Paper Session 
Thomas M. Menino Convention & Exhibition Center 
With the advent of effective pre-exposure prophylaxis agents, active-controlled HIV prevention trials have become a common study design. Nevertheless, estimating absolute efficacy relative to a placebo remains important. We introduce a novel application of proximal causal inference methods to estimate the counterfactual cumulative HIV incidence under placebo for participants in an active-controlled trial of cabotegravir, using external control data from a placebo-controlled trial with similar eligibility criteria. We leverage baseline sexually transmitted infection status and geographic region as negative control outcome and exposure variables, respectively. We address two key challenges: unmeasured differences in HIV risk between trials and statistical difficulties arising from low HIV incidence rates in both studies. To overcome these challenges, we develop two proximal inference approaches: (1) a semiparametric inverse probability of censoring weighting estimator, and (2) a two-stage regression-based strategy tailored to low-event-rate settings. Our theoretical and numerical investigations demonstrate these methods yield reliable estimates of the counterfactual one-year cumulative HIV incidence under placebo, and provide robust evidence of the superior efficacy of cabotegravir compared with placebo. These findings highlight the potential of proximal inference methods to estimate placebo-controlled effects in both single-arm and active-controlled trials by leveraging external controls.

Keywords

active-controlled trials

single-arm trials

censoring

data integration

causal inference