Background: The time-varying reproduction number R is a critical variable for situational awareness during infectious disease outbreaks; however, delays between infection and reporting of cases hinder its accurate estimation in real-time. A number of nowcasting methods, leveraging available information on data consolidation delays, have been proposed to mitigate this problem. Methods: In this work, we retrospectively validate the use of a nowcasting algorithm during 18 months of the COVID-19 pandemic in Italy by quantitatively assessing its performance against standard methods for the estimation of R. Results: Nowcasting significantly reduced the median lag in the estimation of R from 13 to 8 days, while concurrently enhancing accuracy. Furthermore, it allowed the detection of periods of epidemic growth with a lead of between 6 and 23 days. Conclusions: Nowcasting augments epidemic awareness, empowering better informed public health responses.
Increasing situational awareness through nowcasting of the reproduction number / Bizzotto, Andrea; Guzzetta, Giorgio; Marziano, Valentina; Del Manso, Martina; Mateo Urdiales, Alberto; Petrone, Daniele; Cannone, Andrea; Sacco, Chiara; Poletti, Piero; Manica, Mattia; Zardini, Agnese; Trentini, Filippo; Fabiani, Massimo; Bella, Antonino; Riccardo, Flavia; Pezzotti, Patrizio; Ajelli, Marco; Merler, Stefano. - In: FRONTIERS IN PUBLIC HEALTH. - ISSN 2296-2565. - 12:(2024), pp. 1-8. [10.3389/fpubh.2024.1430920]
Increasing situational awareness through nowcasting of the reproduction number
Del Manso, Martina;Mateo Urdiales, Alberto;Petrone, Daniele;Cannone, Andrea;Sacco, Chiara;Manica, Mattia;Fabiani, Massimo;Riccardo, Flavia;
2024
Abstract
Background: The time-varying reproduction number R is a critical variable for situational awareness during infectious disease outbreaks; however, delays between infection and reporting of cases hinder its accurate estimation in real-time. A number of nowcasting methods, leveraging available information on data consolidation delays, have been proposed to mitigate this problem. Methods: In this work, we retrospectively validate the use of a nowcasting algorithm during 18 months of the COVID-19 pandemic in Italy by quantitatively assessing its performance against standard methods for the estimation of R. Results: Nowcasting significantly reduced the median lag in the estimation of R from 13 to 8 days, while concurrently enhancing accuracy. Furthermore, it allowed the detection of periods of epidemic growth with a lead of between 6 and 23 days. Conclusions: Nowcasting augments epidemic awareness, empowering better informed public health responses.File | Dimensione | Formato | |
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