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Citation

Alexandria, Shaina J.; Hudgens, Michael G.; & Aiello, Allison E. (2023). Assessing Intervention Effects in a Randomized Trial within a Social Network. Biometrics, 79(2), 1409-1419. PMCID: PMC9133268

Abstract

Studies of social networks provide unique opportunities to assess the causal effects of interventions that may impact more of the population than just those intervened on directly. Such effects are sometimes called peer or spillover effects, and may exist in the presence of interference, that is, when one individual's treatment affects another individual's outcome. Randomization-based inference (RI) methods provide a theoretical basis for causal inference in randomized studies, even in the presence of interference. In this article, we consider RI of the intervention effect in the eX-FLU trial, a randomized study designed to assess the effect of a social distancing intervention on influenza-like-illness transmission in a connected network of college students. The approach considered enables inference about the effect of the social distancing intervention on the per-contact probability of influenza-like-illness transmission in the observed network. The methods allow for interference between connected individuals and for heterogeneous treatment effects. The proposed methods are evaluated empirically via simulation studies, and then applied to data from the eX-FLU trial.

URL

http://dx.doi.org/10.1111/biom.13606

Reference Type

Journal Article

Year Published

2023

Journal Title

Biometrics

Author(s)

Alexandria, Shaina J.
Hudgens, Michael G.
Aiello, Allison E.

Article Type

Regular

PMCID

PMC9133268

Data Set/Study

eX-FLU trial

Continent/Country

United States

State

Nonspecific

ORCiD

Aiello - 0000-0001-7029-2537