The epidemic volatility index, a novel early warning tool for identifying new waves in an epidemic

Polychronis Kostoulas*, Eletherios Meletis, Konstantinos Pateras, Paolo Eusebi, Theodoros Kostoulas, Luis Furuya-Kanamori, Niko Speybroeck, Matthew Denwood, Suhail A.R. Doi, Christian L. Althaus, Carsten Kirkeby, Pejman Rohani, Navneet K. Dhand, José L. Peñalvo, Lehana Thabane, Slimane BenMiled, Hamid Sharifi, Stephen D. Walter

*Corresponding author af dette arbejde

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningpeer review

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Abstract

Early warning tools are crucial for the timely application of intervention strategies and the mitigation of the adverse health, social and economic effects associated with outbreaks of epidemic potential such as COVID-19. This paper introduces, the Epidemic Volatility Index (EVI), a new, conceptually simple, early warning tool for oncoming epidemic waves. EVI is based on the volatility of newly reported cases per unit of time, ideally per day, and issues an early warning when the volatility change rate exceeds a threshold. Data on the daily confirmed cases of COVID-19 are used to demonstrate the use of EVI. Results from the COVID-19 epidemic in Italy and New York State are presented here, based on the number of confirmed cases of COVID-19, from January 22, 2020, until April 13, 2021. Live daily updated predictions for all world countries and each of the United States of America are publicly available online. For Italy, the overall sensitivity for EVI was 0.82 (95% Confidence Intervals: 0.75; 0.89) and the specificity was 0.91 (0.88; 0.94). For New York, the corresponding values were 0.55 (0.47; 0.64) and 0.88 (0.84; 0.91). Consecutive issuance of early warnings is a strong indicator of main epidemic waves in any country or state. EVI’s application to data from the current COVID-19 pandemic revealed a consistent and stable performance in terms of detecting new waves. The application of EVI to other epidemics and syndromic surveillance tasks in combination with existing early warning systems will enhance our ability to act swiftly and thereby enhance containment of outbreaks.

OriginalsprogEngelsk
Artikelnummer23775
TidsskriftScientific Reports
Vol/bind11
Udgave nummer1
ISSN2045-2322
DOI
StatusUdgivet - 2021

Bibliografisk note

Funding Information:
This work was funded by COST Action CA18208: HARMONY—Novel tools for test evaluation and disease prevalence estimation (https://harmony-net.eu/).

Publisher Copyright:
© 2021, The Author(s).

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