Mediation analysis is an increasingly popular statistical method for
explaining causal pathways to inform intervention. While methods have
increased, there is still a dearth of robust mediation methods for count
outcomes with excess zeroes. Current mediation methods addressing this issue
are computationally intensive, biased, or challenging to interpret. To overcome
these limitations, we propose a new mediation methodology for zero-inflated
count outcomes using the marginalized zero-inflated Poisson (MZIP) model and
the counterfactual approach to mediation. This novel work gives
population-average mediation effects whose variance can be estimated rapidly
via delta method. This methodology is extended to cases with exposure-mediator
interactions. We apply this novel methodology to explore if diabetes diagnosis
can explain BMI differences in healthcare utilization and test model
performance via simulations comparing the proposed MZIP method to existing
zero-inflated and Poisson methods. We find that our proposed method minimizes
bias and computation time compared to alternative approaches while allowing for
straight-forward interpretations.Comment: 34 pages, 2 figures, 4 tables, 49 pages of Supplemental material, 2
supplemental figure