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Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project

BACKGROUND: During the COVID-19 pandemic, large-scale diagnostic testing and contact tracing have proven insufficient to promptly monitor the spread of infections. AIM: To develop and retrospectively evaluate a system identifying aberrations in the use of selected healthcare services to timely detec...

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Autores principales: Merlo, Ivan, Crea, Mariano, Berta, Paolo, Ieva, Francesca, Carle, Flavia, Rea, Federico, Porcu, Gloria, Savaré, Laura, De Maio, Raul, Villa, Marco, Cereda, Danilo, Leoni, Olivia, Bortolan, Francesco, Sechi, Giuseppe Maria, Bella, Antonino, Pezzotti, Patrizio, Brusaferro, Silvio, Blangiardo, Gian Carlo, Fedeli, Massimo, Corrao, Giovanni
Formato: Online Artículo Texto
Lenguaje:English
Publicado: European Centre for Disease Prevention and Control (ECDC) 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9817206/
https://www.ncbi.nlm.nih.gov/pubmed/36695448
http://dx.doi.org/10.2807/1560-7917.ES.2023.28.1.2200366
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author Merlo, Ivan
Crea, Mariano
Berta, Paolo
Ieva, Francesca
Carle, Flavia
Rea, Federico
Porcu, Gloria
Savaré, Laura
De Maio, Raul
Villa, Marco
Cereda, Danilo
Leoni, Olivia
Bortolan, Francesco
Sechi, Giuseppe Maria
Bella, Antonino
Pezzotti, Patrizio
Brusaferro, Silvio
Blangiardo, Gian Carlo
Fedeli, Massimo
Corrao, Giovanni
author_facet Merlo, Ivan
Crea, Mariano
Berta, Paolo
Ieva, Francesca
Carle, Flavia
Rea, Federico
Porcu, Gloria
Savaré, Laura
De Maio, Raul
Villa, Marco
Cereda, Danilo
Leoni, Olivia
Bortolan, Francesco
Sechi, Giuseppe Maria
Bella, Antonino
Pezzotti, Patrizio
Brusaferro, Silvio
Blangiardo, Gian Carlo
Fedeli, Massimo
Corrao, Giovanni
author_sort Merlo, Ivan
collection PubMed
description BACKGROUND: During the COVID-19 pandemic, large-scale diagnostic testing and contact tracing have proven insufficient to promptly monitor the spread of infections. AIM: To develop and retrospectively evaluate a system identifying aberrations in the use of selected healthcare services to timely detect COVID-19 outbreaks in small areas. METHODS: Data were retrieved from the healthcare utilisation (HCU) databases of the Lombardy Region, Italy. We identified eight services suggesting a respiratory infection (syndromic proxies). Count time series reporting the weekly occurrence of each proxy from 2015 to 2020 were generated considering small administrative areas (i.e. census units of Cremona and Mantua provinces). The ability to uncover aberrations during 2020 was tested for two algorithms: the improved Farrington algorithm and the generalised likelihood ratio-based procedure for negative binomial counts. To evaluate these algorithms’ performance in detecting outbreaks earlier than the standard surveillance, confirmed outbreaks, defined according to the weekly number of confirmed COVID-19 cases, were used as reference. Performances were assessed separately for the first and second semester of the year. Proxies positively impacting performance were identified. RESULTS: We estimated that 70% of outbreaks could be detected early using the proposed approach, with a corresponding false positive rate of ca 20%. Performance did not substantially differ either between algorithms or semesters. The best proxies included emergency calls for respiratory or infectious disease causes and emergency room visits. CONCLUSION: Implementing HCU-based monitoring systems in small areas deserves further investigations as it could facilitate the containment of COVID-19 and other unknown infectious diseases in the future.
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spelling pubmed-98172062023-01-20 Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project Merlo, Ivan Crea, Mariano Berta, Paolo Ieva, Francesca Carle, Flavia Rea, Federico Porcu, Gloria Savaré, Laura De Maio, Raul Villa, Marco Cereda, Danilo Leoni, Olivia Bortolan, Francesco Sechi, Giuseppe Maria Bella, Antonino Pezzotti, Patrizio Brusaferro, Silvio Blangiardo, Gian Carlo Fedeli, Massimo Corrao, Giovanni Euro Surveill Research BACKGROUND: During the COVID-19 pandemic, large-scale diagnostic testing and contact tracing have proven insufficient to promptly monitor the spread of infections. AIM: To develop and retrospectively evaluate a system identifying aberrations in the use of selected healthcare services to timely detect COVID-19 outbreaks in small areas. METHODS: Data were retrieved from the healthcare utilisation (HCU) databases of the Lombardy Region, Italy. We identified eight services suggesting a respiratory infection (syndromic proxies). Count time series reporting the weekly occurrence of each proxy from 2015 to 2020 were generated considering small administrative areas (i.e. census units of Cremona and Mantua provinces). The ability to uncover aberrations during 2020 was tested for two algorithms: the improved Farrington algorithm and the generalised likelihood ratio-based procedure for negative binomial counts. To evaluate these algorithms’ performance in detecting outbreaks earlier than the standard surveillance, confirmed outbreaks, defined according to the weekly number of confirmed COVID-19 cases, were used as reference. Performances were assessed separately for the first and second semester of the year. Proxies positively impacting performance were identified. RESULTS: We estimated that 70% of outbreaks could be detected early using the proposed approach, with a corresponding false positive rate of ca 20%. Performance did not substantially differ either between algorithms or semesters. The best proxies included emergency calls for respiratory or infectious disease causes and emergency room visits. CONCLUSION: Implementing HCU-based monitoring systems in small areas deserves further investigations as it could facilitate the containment of COVID-19 and other unknown infectious diseases in the future. European Centre for Disease Prevention and Control (ECDC) 2023-01-05 /pmc/articles/PMC9817206/ /pubmed/36695448 http://dx.doi.org/10.2807/1560-7917.ES.2023.28.1.2200366 Text en This article is copyright of the authors or their affiliated institutions, 2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution (CC BY 4.0) Licence. You may share and adapt the material, but must give appropriate credit to the source, provide a link to the licence, and indicate if changes were made.
spellingShingle Research
Merlo, Ivan
Crea, Mariano
Berta, Paolo
Ieva, Francesca
Carle, Flavia
Rea, Federico
Porcu, Gloria
Savaré, Laura
De Maio, Raul
Villa, Marco
Cereda, Danilo
Leoni, Olivia
Bortolan, Francesco
Sechi, Giuseppe Maria
Bella, Antonino
Pezzotti, Patrizio
Brusaferro, Silvio
Blangiardo, Gian Carlo
Fedeli, Massimo
Corrao, Giovanni
Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project
title Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project
title_full Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project
title_fullStr Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project
title_full_unstemmed Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project
title_short Detecting early signals of COVID-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the Italian Alert_CoV project
title_sort detecting early signals of covid-19 outbreaks in 2020 in small areas by monitoring healthcare utilisation databases: first lessons learned from the italian alert_cov project
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9817206/
https://www.ncbi.nlm.nih.gov/pubmed/36695448
http://dx.doi.org/10.2807/1560-7917.ES.2023.28.1.2200366
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