Litcius/Paper detail

A practical guide to mathematical methods for estimating infectious disease outbreak risks

Emma Southall, Z. Ogi-Gittins, Alexander R. Kaye, William S. Hart, Francesca A. Lovell-Read, Robin N. Thompson

2023Journal of Theoretical Biology37 citationsDOIOpen Access PDF

Abstract

Mathematical models are increasingly used throughout infectious disease outbreaks to guide control measures. In this review article, we focus on the initial stages of an outbreak, when a pathogen has just been observed in a new location (e.g., a town, region or country). We provide a beginner's guide to two methods for estimating the risk that introduced cases lead to sustained local transmission (i.e., the probability of a major outbreak), as opposed to the outbreak fading out with only a small number of cases. We discuss how these simple methods can be extended for epidemiological models with any level of complexity, facilitating their wider use, and describe how estimates of the probability of a major outbreak can be used to guide pathogen surveillance and control strategies. We also give an overview of previous applications of these approaches. This guide is intended to help quantitative researchers develop their own epidemiological models and use them to estimate the risks associated with pathogens arriving in new host populations. The development of these models is crucial for future outbreak preparedness. This manuscript was submitted as part of a theme issue on "Modelling COVID-19 and Preparedness for Future Pandemics".

Topics & Concepts

OutbreakPreparednessInfectious disease (medical specialty)PandemicTransmission (telecommunications)Risk analysis (engineering)Computer scienceOperations researchCoronavirus disease 2019 (COVID-19)DiseaseGeographyBiologyMedicineMathematicsVirologyTelecommunicationsPathologyLawPolitical scienceCOVID-19 epidemiological studiesViral Infections and Outbreaks ResearchZoonotic diseases and public health