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A sequential Monte Carlo approach to estimate a time-varying reproduction number in infectious disease models: the Covid-19 case

Geir Storvik, Alfonso Diz-Lois Palomares, Solveig Engebretsen, Gunnar Rø, Kenth Engø‐Monsen, Anja Bråthen Kristoffersen, Birgitte Freiesleben de Blasio, Arnoldo Frigessi

2023Journal of the Royal Statistical Society Series A (Statistics in Society)25 citationsDOIOpen Access PDF

Abstract

Abstract The Covid-19 pandemic has required most countries to implement complex sequences of non-pharmaceutical interventions, with the aim of controlling the transmission of the virus in the population. To be able to take rapid decisions, a detailed understanding of the current situation is necessary. Estimates of time-varying, instantaneous reproduction numbers represent a way to quantify the viral transmission in real time. They are often defined through a mathematical compartmental model of the epidemic, like a stochastic SEIR model, whose parameters must be estimated from multiple time series of epidemiological data. Because of very high dimensional parameter spaces (partly due to the stochasticity in the spread models) and incomplete and delayed data, inference is very challenging. We propose a state-space formalization of the model and a sequential Monte Carlo approach which allow to estimate a daily-varying reproduction number for the Covid-19 epidemic in Norway with sufficient precision, on the basis of daily hospitalization and positive test incidences. The method was in regular use in Norway during the pandemics and appears to be a powerful instrument for epidemic monitoring and management.

Topics & Concepts

PandemicMonte Carlo methodBasic reproduction numberCoronavirus disease 2019 (COVID-19)InferenceEpidemic modelPopulationTransmission (telecommunications)Computer scienceEconometricsStatisticsMathematicsInfectious disease (medical specialty)Artificial intelligenceDiseaseMedicineTelecommunicationsEnvironmental healthPathologyCOVID-19 epidemiological studiesData-Driven Disease SurveillanceInfluenza Virus Research Studies