Estimating causal excursion effects in mobile health with zero-inflated count outcomes

Tianchen Qian Co-Author
University of California, Irvine
 
Lauren Bell Co-Author
Medical Research Council Biostatistics Unit, University of Cambridge
 
Bibhas Chakraborty Co-Author
Duke-NUS Medical School, National University of Singapore
 
Xueqing Liu First Author
 
Xueqing Liu Presenting Author
 
Monday, Aug 5: 8:50 AM - 9:05 AM
2348 
Contributed Papers 
Oregon Convention Center 
In mobile health, tailoring interventions for real-time delivery is of paramount importance. Micro-randomized trials have emerged as the ``gold-standard'' methodology for developing such interventions. Analyzing data from these trials provides insights into the efficacy of interventions and the potential moderation by specific covariates. The ``causal excursion effect", a novel class of causal estimand, addresses these inquiries. Yet, existing research mainly focuses on continuous or binary data, leaving count data largely unexplored. The current work is motivated by the Drink Less micro-randomized trial from the UK, which focuses on a zero-inflated proximal outcome, i.e., the number of screen views in the subsequent hour following the intervention decision point. To be specific, we revisit the concept of causal excursion effect, specifically for zero-inflated count outcomes, and introduce novel estimation approaches that incorporate nonparametric techniques. Bidirectional asymptotics are established for the proposed estimators. Simulation studies are conducted to evaluate the performance of the proposed methods. We also implement these methods to the Drink Less trial data.

Keywords

Count outcome

Causal excursion effect

Micro-randomized trial

Mobile health

Structural nested mean model 

Main Sponsor

IMS