Several epidemiological studies have provided evidence that long-term
exposure to fine particulate matter (PM2.5) increases mortality risk.
Furthermore, some population characteristics (e.g., age, race, and
socioeconomic status) might play a crucial role in understanding vulnerability
to air pollution. To inform policy, it is necessary to identify groups of the
population that are more or less vulnerable to air pollution. In causal
inference literature, the Group Average Treatment Effect (GATE) is a
distinctive facet of the conditional average treatment effect. This widely
employed metric serves to characterize the heterogeneity of a treatment effect
based on some population characteristics. In this work, we introduce a novel
Confounder-Dependent Bayesian Mixture Model (CDBMM) to characterize causal
effect heterogeneity. More specifically, our method leverages the flexibility
of the dependent Dirichlet process to model the distribution of the potential
outcomes conditionally to the covariates and the treatment levels, thus
enabling us to: (i) identify heterogeneous and mutually exclusive population
groups defined by similar GATEs in a data-driven way, and (ii) estimate and
characterize the causal effects within each of the identified groups. Through
simulations, we demonstrate the effectiveness of our method in uncovering key
insights about treatment effects heterogeneity. We apply our method to claims
data from Medicare enrollees in Texas. We found six mutually exclusive groups
where the causal effects of PM2.5 on mortality are heterogeneous