September 2024 Exposure effects on count outcomes with observational data, with application to incarcerated women
Bonnie E. Shook-Sa, Michael G. Hudgens, Andrea K. Knittel, Andrew Edmonds, Catalina Ramirez, Stephen R. Cole, Mardge Cohen, Adebola Adedimeji, Tonya Taylor, Katherine G. Michel, Andrea Kovacs, Jennifer Cohen, Jessica Donohue, Antonina Foster, Margaret A. Fischl, Dustin Long, Adaora A. Adimora
Author Affiliations +
Ann. Appl. Stat. 18(3): 2147-2165 (September 2024). DOI: 10.1214/24-AOAS1874

Abstract

Causal inference methods can be applied to estimate the effect of a point exposure or treatment on an outcome of interest using data from observational studies. For example, in the Women’s Interagency HIV Study, it is of interest to understand the effects of incarceration on the number of sexual partners and the number of cigarettes smoked after incarceration. In settings like this where the outcome is a count, the estimand is often the causal mean ratio, that is, the ratio of the counterfactual mean count under exposure to the counterfactual mean count under no exposure. This paper considers estimators of the causal mean ratio based on inverse probability of treatment weights, the parametric g-formula, and doubly robust estimation, each of which can account for overdispersion, zero-inflation, and heaping in the measured outcome. Methods are compared in simulations and are applied to data from the Women’s Interagency HIV Study.

Funding Statement

This research was supported by NIH grants R01 AI085073 and R01 AI157758 and in part through Developmental funding from the University of North Carolina at Chapel Hill Center For AIDS Research (CFAR), an NIH funded program P30 AI050410.

Acknowledgments

The authors thank John Preisser, Shaina Alexandria, Bryan Blette, Kayla Kilpatrick, Jaffer Zaidi, Samuel Rosin, and Paul Zivich for their helpful suggestions. Data in this manuscript were collected by MACS and WIHS, now the MACS/WIHS Combined Cohort Study (MWCCS), which is supported by the National Institutes of Health. Full acknowledgement is provided in the Supplementary Material (Shook-Sa et al. (2024)) and at https://statepi.jhsph.edu/mwccs/acknowledgements. The authors gratefully acknowledge the contributions of the study participants and dedication of the staff at the MWCCS sites.

Citation

Download Citation

Bonnie E. Shook-Sa. Michael G. Hudgens. Andrea K. Knittel. Andrew Edmonds. Catalina Ramirez. Stephen R. Cole. Mardge Cohen. Adebola Adedimeji. Tonya Taylor. Katherine G. Michel. Andrea Kovacs. Jennifer Cohen. Jessica Donohue. Antonina Foster. Margaret A. Fischl. Dustin Long. Adaora A. Adimora. "Exposure effects on count outcomes with observational data, with application to incarcerated women." Ann. Appl. Stat. 18 (3) 2147 - 2165, September 2024. https://doi.org/10.1214/24-AOAS1874

Information

Received: 1 November 2023; Revised: 1 January 2024; Published: September 2024
First available in Project Euclid: 5 August 2024

Digital Object Identifier: 10.1214/24-AOAS1874

Keywords: Data heaping , Doubly robust estimation , inverse probability weighting , overdispersion , parametric g-formula , zero-inflation

Rights: Copyright © 2024 Institute of Mathematical Statistics

Vol.18 • No. 3 • September 2024
Back to Top