Modeling Time-Varying Effects of Mobile Health Interventions Using Longitudinal Functional Data

Tianchen Qian Co-Author
University of California, Irvine
 
Jiaxin Yu First Author
 
Jiaxin Yu Presenting Author
 
Tuesday, Aug 5: 3:35 PM - 3:50 PM
1470 
Contributed Papers 
Music City Center 
To optimize mobile health interventions and advance domain knowledge on intervention design, it is critical to understand how the intervention effect varies over time and with contextual information. This study aims to assess how a push notification suggesting physical activity influences individuals' step counts using data from the HeartSteps micro-randomized trial (MRT). The statistical challenges include the time-varying treatments and longitudinal functional step count measurements. We propose the first semiparametric causal excursion effect model with varying coefficients to model the time-varying effects within a decision point and across decision points in an MRT. The proposed model incorporates double time indices to accommodate the longitudinal functional outcome, enabling the assessment of time-varying effect moderation by contextual variables. We propose a two-stage causal effect estimator that is robust against a misspecified high-dimensional outcome regression nuisance model. We establish asymptotic theory and conduct simulation studies to validate the proposed estimator. Our analysis provides new insights into individuals' change in response profiles.

Keywords

causal inference

varying coefficient model

functional data analysis

splines

longitudinal data

micro-randomized trial 

Main Sponsor

Section on Nonparametric Statistics