A Review of Multi‐Compartment Infectious Disease Models

Lu Tang(University of Pittsburgh), Yiwang Zhou(University of Michigan), Lili Wang(University of Michigan), Soumik Purkayastha(University of Michigan), Leyao Zhang(University of Michigan), Jie He(University of Michigan), Fei Wang(CarGurus (United States)), Peter X.‐K. Song(University of Michigan)
International Statistical Review
August 1, 2020
Cited by 151Open Access
Full Text

Abstract

Multi-compartment models have been playing a central role in modelling infectious disease dynamics since the early 20th century. They are a class of mathematical models widely used for describing the mechanism of an evolving epidemic. Integrated with certain sampling schemes, such mechanistic models can be applied to analyse public health surveillance data, such as assessing the effectiveness of preventive measures (e.g. social distancing and quarantine) and forecasting disease spread patterns. This review begins with a nationwide macromechanistic model and related statistical analyses, including model specification, estimation, inference and prediction. Then, it presents a community-level micromodel that enables high-resolution analyses of regional surveillance data to provide current and future risk information useful for local government and residents to make decisions on reopenings of local business and personal travels. r software and scripts are provided whenever appropriate to illustrate the numerical detail of algorithms and calculations. The coronavirus disease 2019 pandemic surveillance data from the state of Michigan are used for the illustration throughout this paper.


Related Papers

No related papers found

Powered by citation graph analysis