Causal exposure-response curve estimation with surrogate confounders: a study of air pollution and children's health in Medicaid claims data
Jenny J. Lee, Xiao Wu, Francesca Dominici, and Rachel C. Nethery

TL;DR
This study develops MedMatch, a novel causal inference method leveraging surrogate confounders to estimate the exposure-response relationship between air pollution and children's respiratory health using Medicaid data.
Contribution
MedMatch is a new approach that adapts propensity score matching to handle surrogate confounders and clustered data in causal ERF estimation.
Findings
Positive association between PM2.5 and respiratory hospitalizations.
Steeper ERF at lower PM2.5 levels, leveling off at higher concentrations.
MedMatch outperforms traditional methods in simulations.
Abstract
In this paper, we undertake a case study to estimate a causal exposure-response function (ERF) for long-term exposure to fine particulate matter (PM) and respiratory hospitalizations in socioeconomically disadvantaged children using nationwide Medicaid claims data. These data present specific challenges. First, family income-based Medicaid eligibility criteria for children differ by state, creating socioeconomically distinct populations and leading to clustered data. Second, Medicaid enrollees' socioeconomic status, a confounder and an effect modifier of the exposure-response relationships under study, is not measured. However, two surrogates are available: median household income of each enrollee's zip code and state-level Medicaid family income eligibility thresholds for children. We introduce a customized approach for causal ERF estimation called MedMatch, building on…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Air Quality and Health Impacts · Economic and Environmental Valuation
