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A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci

BACKGROUND: During the pandemic, restrictions set by the Italian Government were primarily based on the regional level of key parameters including hospitalization and incidence rates. We aimed to build a specific plot to monitor trends and trigger early alerts, with daily updates publicly available...

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Autores principales: Carinci, F, Veltro, G, Rocchi, L, Mipatrini, D, Mantoan, D, Siccardi, G
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9593943/
http://dx.doi.org/10.1093/eurpub/ckac129.344
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author Carinci, F
Veltro, G
Rocchi, L
Mipatrini, D
Mantoan, D
Siccardi, G
author_facet Carinci, F
Veltro, G
Rocchi, L
Mipatrini, D
Mantoan, D
Siccardi, G
author_sort Carinci, F
collection PubMed
description BACKGROUND: During the pandemic, restrictions set by the Italian Government were primarily based on the regional level of key parameters including hospitalization and incidence rates. We aimed to build a specific plot to monitor trends and trigger early alerts, with daily updates publicly available on a National Portal. METHODS: A multidisciplinary team conceived and implemented a new composite plot, developing ad hoc R scripts on top of a specialised database, built in collaboration with the Ministry of Health. We calculated the doubling time Td as log(2)/log(1+r/100), where r is the daily change of target parameters and Td ranges between (0,+-infinity), and not determined for constant or missing values. We calculated Td daily, as either doubling (growth) or halving (decrease) time. To visualize trends, we assembled two different types of graphs: a bivariate plot showing the path of each point (Td, target parameter) over time, and a line plot of Td over time. The Y axis was inverted for doubling times, as lower Td indicate higher alert in this case. The two graphs were arranged in lines, using cutoffs for excessive high values for doubling times and low values for halving times. A third line was included to display trends of the target parameter over time. RESULTS: The plot was successfully realized and published on the Portal for all regions in February 2021 (https://www.agenas.gov.it/covid19/web/index.php?r=english%2Fdoubling&q=ITA&t=0). Since July 2021, we used the doubling plot to monitor the three main parameters adopted to set restrictions for Covid-19: a) occupancy rates in intensive care; b) occupancy rates in medical wards; c) weekly incidence rates. The plot highlighted growth trends and early alerts, particularly in the initial phases of growth. CONCLUSIONS: The doubling plot can provide useful information to trigger early responses for pandemic control in decentralised governance. R code is available open source from AGENAS for free use. KEY MESSAGES: • The doubling plot was conceived and implemented on a National Portal to trigger early alerts of Covid-19 progression in Italian Regions and Autonomous Provinces. • The plot could be rapidly adapted to legislative parameters and can be useful in different situations to monitor epidemic growth and support public health policies.
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spelling pubmed-95939432022-11-04 A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci Carinci, F Veltro, G Rocchi, L Mipatrini, D Mantoan, D Siccardi, G Eur J Public Health Parallel Programme BACKGROUND: During the pandemic, restrictions set by the Italian Government were primarily based on the regional level of key parameters including hospitalization and incidence rates. We aimed to build a specific plot to monitor trends and trigger early alerts, with daily updates publicly available on a National Portal. METHODS: A multidisciplinary team conceived and implemented a new composite plot, developing ad hoc R scripts on top of a specialised database, built in collaboration with the Ministry of Health. We calculated the doubling time Td as log(2)/log(1+r/100), where r is the daily change of target parameters and Td ranges between (0,+-infinity), and not determined for constant or missing values. We calculated Td daily, as either doubling (growth) or halving (decrease) time. To visualize trends, we assembled two different types of graphs: a bivariate plot showing the path of each point (Td, target parameter) over time, and a line plot of Td over time. The Y axis was inverted for doubling times, as lower Td indicate higher alert in this case. The two graphs were arranged in lines, using cutoffs for excessive high values for doubling times and low values for halving times. A third line was included to display trends of the target parameter over time. RESULTS: The plot was successfully realized and published on the Portal for all regions in February 2021 (https://www.agenas.gov.it/covid19/web/index.php?r=english%2Fdoubling&q=ITA&t=0). Since July 2021, we used the doubling plot to monitor the three main parameters adopted to set restrictions for Covid-19: a) occupancy rates in intensive care; b) occupancy rates in medical wards; c) weekly incidence rates. The plot highlighted growth trends and early alerts, particularly in the initial phases of growth. CONCLUSIONS: The doubling plot can provide useful information to trigger early responses for pandemic control in decentralised governance. R code is available open source from AGENAS for free use. KEY MESSAGES: • The doubling plot was conceived and implemented on a National Portal to trigger early alerts of Covid-19 progression in Italian Regions and Autonomous Provinces. • The plot could be rapidly adapted to legislative parameters and can be useful in different situations to monitor epidemic growth and support public health policies. Oxford University Press 2022-10-25 /pmc/articles/PMC9593943/ http://dx.doi.org/10.1093/eurpub/ckac129.344 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of the European Public Health Association. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Parallel Programme
Carinci, F
Veltro, G
Rocchi, L
Mipatrini, D
Mantoan, D
Siccardi, G
A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci
title A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci
title_full A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci
title_fullStr A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci
title_full_unstemmed A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci
title_short A novel plot for the early alert of epidemic growth using regional targets: the doubling plot: Fabrizio Carinci
title_sort novel plot for the early alert of epidemic growth using regional targets: the doubling plot: fabrizio carinci
topic Parallel Programme
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9593943/
http://dx.doi.org/10.1093/eurpub/ckac129.344
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