Public health decisions must be made about when and how to implement
interventions to control an infectious disease epidemic. These decisions should
be informed by data on the epidemic as well as current understanding about the
transmission dynamics. Such decisions can be posed as statistical questions
about scientifically motivated dynamic models. Thus, we encounter the
methodological task of building credible, data-informed decisions based on
stochastic, partially observed, nonlinear dynamic models. This necessitates
addressing the tradeoff between biological fidelity and model simplicity, and
the reality of misspecification for models at all levels of complexity. As a
case study, we consider the 2010-2019 cholera epidemic in Haiti. We study three
dynamic models developed by expert teams to advise on vaccination policies. We
assess previous methods used for fitting and evaluating these models, and we
develop data analysis strategies leading to improved statistical fit.
Specifically, we present approaches to diagnosis of model misspecification,
development of alternative models, and computational improvements in
optimization, in the context of likelihood-based inference on nonlinear dynamic
systems. Our workflow is reproducible and extendable, facilitating future
investigations of this disease system.Comment: To be submitted to the Annals of Applied Statistic