Bayesian mechanistic model of COVID-19 transmission dynamics for the estimation of the impact of nonpharmacological measures
Resumen del trabajo presentado en la BIFI International Conference: The Science of Covid-19: From molecular drug design to data-driven epidemiological models, celebrada en Zaragoza (España), del 7 al 9 de junio de 2022
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Main Authors: | Blecua, Javier, Fernández-Recio, Juan |
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Format: | comunicación de congreso biblioteca |
Published: |
2022-06-07
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Subjects: | COVID-19 modelling, Non-pharmacological measures, Mechanistic model, Bayesian analysis, |
Online Access: | http://hdl.handle.net/10261/303747 |
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