On the uncertainty of real-time predictions of epidemic growths: a COVID-19 case study for China and Italy
Date Issued
2020
Author(s)
Abstract
While COVID-19 is rapidly propagating around the globe, the need for
providing real-time forecasts of the epidemics pushes fits of dynamical and
statistical models to available data beyond their capabilities. Here we focus
on statistical predictions of COVID-19 infections performed by fitting
asymptotic distributions to actual data. By taking as a case-study the epidemic
evolution of total COVID-19 infections in Chinese provinces and Italian
regions, we find that predictions are characterized by large uncertainties at
the early stages of the epidemic growth. Those uncertainties significantly
reduce after the epidemics peak is reached. Differences in the uncertainty of
the forecasts at a regional level can be used to highlight the delay in the
spread of the virus. Our results warn that long term extrapolation of epidemics
counts must be handled with extreme care as they crucially depend not only on
the quality of data, but also on the stage of the epidemics, due to the
intrinsically non-linear nature of the underlying dynamics. These results
suggest that real-time epidemiological projections should include wide
uncertainty ranges and urge for the needs of compiling high-quality datasets of
infections counts, including asymptomatic patients.
Volume
90
Start page
105372
Issn Identifier
1007-5704
Ads BibCode
2020CNSNS..9005372A
Rights
open.access
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