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Activity Number: 56 - Causal Inference
Type: Contributed
Date/Time: Sunday, August 8, 2021 : 3:30 PM to 5:20 PM
Sponsor: Section on Statistics in Epidemiology
Abstract #318702
Title: Statistical Methods to Understand the Role of Engagement in Studies of Mobile Health Interventions
Author(s): Andrew Justin Spieker* and Robert Greevy and Lyndsay Nelson and Lindsay Mayberry
Companies: Vanderbilt University Medical Center and Vanderbilt University Medical Center and Vanderbilt University Medical Center and Vanderbilt University Medical Center
Keywords: Instrumental variables; Randomized controlled trial; Unmeasured confounding; Sensitivity analysis; Mobile health
Abstract:

Estimation of local average treatment effects typically relies upon the exclusion restriction assumption in cases where we are unwilling to rule out unmeasured confounding. Under this assumption, treatment effects are mediated through the post-randomization variable being conditioned upon, and directly attributable to neither the randomization itself nor its latent descendants. Recently, there has been interest in mobile health interventions to provide healthcare support. Mobile health interventions designed to support self-management often involve both one-way and interactive messages. In practice, it is highly likely that any benefit from the intervention is achieved both through receipt of the intervention content and through engagement with/response to it. Application of an instrumental variable analysis in order to understand the role of engagement requires the traditional exclusion restriction assumption to be relaxed. We propose a conceptually intuitive sensitivity analysis procedure to bound local average treatment effects. Simulation studies reveal this approach to have desirable finite-sample behavior under correct specification of sensitivity parameters.


Authors who are presenting talks have a * after their name.

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