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About:
How to evaluate the success of the COVID-19 measures implemented by the Norwegian government by analyzing changes in doubling time
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covidontheweb.inria.fr
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Academic Article
research paper
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type
Academic Article
research paper
schema:ScholarlyArticle
isDefinedBy
Covid-on-the-Web dataset
title
How to evaluate the success of the COVID-19 measures implemented by the Norwegian government by analyzing changes in doubling time
source
MedRxiv
abstract
Doubling Time (DT) is typically calculated for growth curves that show exponential growth, such as the cumulative number of COVID-19 cases day by day. DT represents the time it takes before the number of COVID-19 cases, in a certain country or area, doubles. Throughout the ongoing COVID-19 outbreak, DT values are continually changing. These changes are influenced by the measures that are recommended by the health authorities and implemented by governments. After the governmental shutdowns of Nordic Countries that were announced around the 12th of March 2020, I followed the development of the DT in the region. Governments put in place measure never before experienced during peace time; home working, closed schools and kindergartens, travel bans and social distancing. But does it work? The initial set of results following the shutdown are encouraging, demonstrating a trend towards slower growth; however, this could be reversed if the measures that are in place now are abandoned too early. Premature optimism can be very costly. This paper explains how to monitor growth in real time and evaluate whether the implemented measures are successful.
has issue date
2020-03-30
(
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bibo:doi
10.1101/2020.03.29.20045187
has license
medrxiv
sha1sum (hex)
1909b2f4dad9d9b814d17a984ac4d5a405dbece0
schema:url
https://doi.org/10.1101/2020.03.29.20045187
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How to evaluate the success of the COVID-19 measures implemented by the Norwegian government by analyzing changes in doubling time
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covid:1909b2f4dad9d9b814d17a984ac4d5a405dbece0#body_text
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named entity 'OUTBREAK'
named entity 'AUTHORITIES'
named entity 'PREMATURE'
named entity 'FOLLOWED'
named entity 'COUNTRY'
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