posted on 2021-12-02, 08:51authored byJames P. Gleeson, Thomas Brendan Murphy, Joseph D. O'Brien, Nial Friel, Norma BargaryNorma Bargary, David J.P. O'Sullivan
We describe the population-based susceptible-exposed-infected-removed (SEIR) model developed by the Irish Epidemiological Modelling Advisory Group (IEMAG), which advises the Irish government on COVID-19 responses. The model assumes a time-varying effective contact rate (equivalently, a time-varying reproduction number) to model the effect of non-pharmaceutical interventions. A crucial technical challenge in applying such models is their accurate calibration to observed data, e.g. to the daily number of confirmed new cases, as the history of the disease strongly affects predictions of future scenarios. We demonstrate an approach based on inversion of the SEIR equations in conjunction
with statistical modelling and spline-fitting of the data to produce a robust methodology for
calibration of a wide class of models of this type. This article is part of the theme issue ‘Data science approaches to infectious disease surveillance’.
Funding
Dynamics of the metabolic state in the context of a systematic approach to the study of the processes of growth and development of higher plants and fungi
Development of theoretical and experimental criteria for predicting the wear resistance of austenitic steels and nanostructured coatings based on a hard alloy under conditions of erosion-corrosion wear