Cargando…

Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization

Among the different indicators that quantify the spread of an epidemic such as the on-going COVID-19, stands first the reproduction number which measures how many people can be contaminated by an infected person. In order to permit the monitoring of the evolution of this number, a new estimation pro...

Descripción completa

Detalles Bibliográficos
Autores principales: Abry, Patrice, Pustelnik, Nelly, Roux, Stéphane, Jensen, Pablo, Flandrin, Patrick, Gribonval, Rémi, Lucas, Charles-Gérard, Guichard, Éric, Borgnat, Pierre, Garnier, Nicolas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7444593/
https://www.ncbi.nlm.nih.gov/pubmed/32817697
http://dx.doi.org/10.1371/journal.pone.0237901
_version_ 1783573839364489216
author Abry, Patrice
Pustelnik, Nelly
Roux, Stéphane
Jensen, Pablo
Flandrin, Patrick
Gribonval, Rémi
Lucas, Charles-Gérard
Guichard, Éric
Borgnat, Pierre
Garnier, Nicolas
author_facet Abry, Patrice
Pustelnik, Nelly
Roux, Stéphane
Jensen, Pablo
Flandrin, Patrick
Gribonval, Rémi
Lucas, Charles-Gérard
Guichard, Éric
Borgnat, Pierre
Garnier, Nicolas
author_sort Abry, Patrice
collection PubMed
description Among the different indicators that quantify the spread of an epidemic such as the on-going COVID-19, stands first the reproduction number which measures how many people can be contaminated by an infected person. In order to permit the monitoring of the evolution of this number, a new estimation procedure is proposed here, assuming a well-accepted model for current incidence data, based on past observations. The novelty of the proposed approach is twofold: 1) the estimation of the reproduction number is achieved by convex optimization within a proximal-based inverse problem formulation, with constraints aimed at promoting piecewise smoothness; 2) the approach is developed in a multivariate setting, allowing for the simultaneous handling of multiple time series attached to different geographical regions, together with a spatial (graph-based) regularization of their evolutions in time. The effectiveness of the approach is first supported by simulations, and two main applications to real COVID-19 data are then discussed. The first one refers to the comparative evolution of the reproduction number for a number of countries, while the second one focuses on French departments and their joint analysis, leading to dynamic maps revealing the temporal co-evolution of their reproduction numbers.
format Online
Article
Text
id pubmed-7444593
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-74445932020-08-27 Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization Abry, Patrice Pustelnik, Nelly Roux, Stéphane Jensen, Pablo Flandrin, Patrick Gribonval, Rémi Lucas, Charles-Gérard Guichard, Éric Borgnat, Pierre Garnier, Nicolas PLoS One Research Article Among the different indicators that quantify the spread of an epidemic such as the on-going COVID-19, stands first the reproduction number which measures how many people can be contaminated by an infected person. In order to permit the monitoring of the evolution of this number, a new estimation procedure is proposed here, assuming a well-accepted model for current incidence data, based on past observations. The novelty of the proposed approach is twofold: 1) the estimation of the reproduction number is achieved by convex optimization within a proximal-based inverse problem formulation, with constraints aimed at promoting piecewise smoothness; 2) the approach is developed in a multivariate setting, allowing for the simultaneous handling of multiple time series attached to different geographical regions, together with a spatial (graph-based) regularization of their evolutions in time. The effectiveness of the approach is first supported by simulations, and two main applications to real COVID-19 data are then discussed. The first one refers to the comparative evolution of the reproduction number for a number of countries, while the second one focuses on French departments and their joint analysis, leading to dynamic maps revealing the temporal co-evolution of their reproduction numbers. Public Library of Science 2020-08-20 /pmc/articles/PMC7444593/ /pubmed/32817697 http://dx.doi.org/10.1371/journal.pone.0237901 Text en © 2020 Abry et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Abry, Patrice
Pustelnik, Nelly
Roux, Stéphane
Jensen, Pablo
Flandrin, Patrick
Gribonval, Rémi
Lucas, Charles-Gérard
Guichard, Éric
Borgnat, Pierre
Garnier, Nicolas
Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization
title Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization
title_full Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization
title_fullStr Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization
title_full_unstemmed Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization
title_short Spatial and temporal regularization to estimate COVID-19 reproduction number R(t): Promoting piecewise smoothness via convex optimization
title_sort spatial and temporal regularization to estimate covid-19 reproduction number r(t): promoting piecewise smoothness via convex optimization
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7444593/
https://www.ncbi.nlm.nih.gov/pubmed/32817697
http://dx.doi.org/10.1371/journal.pone.0237901
work_keys_str_mv AT abrypatrice spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT pustelniknelly spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT rouxstephane spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT jensenpablo spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT flandrinpatrick spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT gribonvalremi spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT lucascharlesgerard spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT guicharderic spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT borgnatpierre spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization
AT garniernicolas spatialandtemporalregularizationtoestimatecovid19reproductionnumberrtpromotingpiecewisesmoothnessviaconvexoptimization