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Using Proper Mean Generation Intervals in Modeling of COVID-19

Xiujuan Tang, Salihu S. Musa, Shi Zhao, Shujiang Mei, Daihai He

2021Frontiers in Public Health29 citationsDOIOpen Access PDF

Abstract

In susceptible–exposed–infectious–recovered (SEIR) epidemic models, with the exponentially distributed duration of exposed/infectious statuses, the mean generation interval (GI, time lag between infections of a primary case and its secondary case) equals the mean latent period (LP) plus the mean infectious period (IP). It was widely reported that the GI for COVID-19 is as short as 5 days. However, many works in top journals used longer LP or IP with the sum (i.e., GI), e.g., >7 days. This discrepancy will lead to overestimated basic reproductive number and exaggerated expectation of infection attack rate (AR) and control efficacy. We argue that it is important to use suitable epidemiological parameter values for proper estimation/prediction. Furthermore, we propose an epidemic model to assess the transmission dynamics of COVID-19 for Belgium, Israel, and the United Arab Emirates (UAE). We estimated a time-varying reproductive number [ R 0 ( t )] based on the COVID-19 deaths data and we found that Belgium has the highest AR followed by Israel and the UAE.

Topics & Concepts

Basic reproduction numberCoronavirus disease 2019 (COVID-19)Severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2)Estimation2019-20 coronavirus outbreakEpidemic modelStatisticsTransmission (telecommunications)Generation timeConfidence intervalTime lagEpidemiologyInterval (graph theory)Distributed lagMedicineDemographyInfectious disease (medical specialty)MathematicsVirologyLagComputer scienceOutbreakEnvironmental healthInternal medicineTelecommunicationsDiseasePopulationCombinatoricsEconomicsComputer networkSociologyManagementCOVID-19 epidemiological studiesCOVID-19 Pandemic ImpactsData-Driven Disease Surveillance
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