The Epidemic Volatility Index: an early warning tool for epidemics

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This paper introduces the Epidemic Volatility Index (EVI), an early warning tool for epidemics based on the volatility of newly reported cases, demonstrating its effectiveness with COVID-19 data.

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Abstract

Background: . This paper presents, for the first time, the Epidemic Volatility Index (EVI), a conceptually simple, early warning tool for emerging epidemic waves.   Methods: . EVI is based on the volatility of the newly reported cases per unit of time, ideally per day, and issues an early warning when the rate of the volatility change exceeds a threshold. Results: . Results from the COVID-19 epidemic in Italy and New York are presented here, while daily updated predictions for all world countries and each of the United States are available online. Interpretation . EVI's application to data from the current COVID-19 pandemic revealed a consistent and stable performance in terms of detecting oncoming 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 fast and optimize containment of outbreaks.

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last seen: 2026-05-19T01:45:01.086888+00:00