Correction of Italian under-reporting in the first COVID-19 wave via age-specific deconvolution of hospital admissions

Author:

Milanesi SimoneORCID,De Nicolao Giuseppe

Abstract

When the COVID-19 pandemic first emerged in early 2020, healthcare and bureaucratic systems worldwide were caught off guard and largely unprepared to deal with the scale and severity of the outbreak. In Italy, this led to a severe underreporting of infections during the first wave of the spread. The lack of accurate data is critical as it hampers the retrospective assessment of nonpharmacological interventions, the comparison with the following waves, and the estimation and validation of epidemiological models. In particular, during the first wave, reported cases of new infections were strikingly low if compared with their effects in terms of deaths, hospitalizations and intensive care admissions. In this paper, we observe that the hospital admissions during the second wave were very well explained by the convolution of the reported daily infections with an exponential kernel. By formulating the estimation of the actual infections during the first wave as an inverse problem, its solution by a regularization approach is proposed and validated. In this way, it was possible to compute corrected time series of daily infections for each age class. The new estimates are consistent with the serological survey published in June 2020 by the National Institute of Statistics (ISTAT) and can be used to speculate on the total number of infections occurring in Italy during 2020, which appears to be about double the number officially recorded.

Funder

NextGenerationEU

Ministero dell’Istruzione, dell’Università e della Ricerca

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

Reference30 articles.

1. https://covid19.infn.it

2. Evaluating the massive underreporting and undertesting of COVID-19 cases in multiple global epicenters;H. Lau;Pulmonology,2021

3. Istituto nazionale di statistica (ISTAT). Tavole di Dati, id: 25653, Tavola 1 (12 Aprile 2021) https://www.istat.it/it/archivio/256536

4. Modelling the COVID-19 epidemic and implementation of population-wide interventions in Italy;G. Giordano;Nature medicine,2020

5. Substantial underestimation of SARS-CoV-2 infection in the United States;S. Wu;Nature communications,2020

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