Estimating the epidemic growth dynamics within the first week

Heliyon. 2021 Nov;7(11):e08422. doi: 10.1016/j.heliyon.2021.e08422. Epub 2021 Nov 18.

Abstract

Information about the early growth of infectious outbreaks is indispensable to estimate the epidemic spreading. A large number of mathematical tools have been developed to this end, facing as much large number of different dynamic evolutions, ranging from sub-linear to super-exponential growth. Of course, the crucial point is that we do not have enough data during the initial outbreak phase to make reliable inferences. Here we propose a straightforward methodology to estimate the epidemic growth dynamic from the cumulative infected data of just a week, provided a surveillance system is available over the whole territory. The methodology, based on the Newcomb-Benford Law, is applied to the Italian covid 19 case-study. Results show that it is possible to discriminate the epidemic dynamics using the first seven data points collected in fifty Italian cities. Moreover, the most probable approximating function of the growth within a six-week epidemic scenario is identified.

Keywords: Big data; Complex network; Dynamical systems; Epidemic spreading; Graph theory; Infective diseases.