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SUIHTER: a new mathematical model for COVID-19. Application to the analysis of the second epidemic outbreak in Italy.

N ParoliniLuca DedèP F AntoniettiGiovanni ArdenghiAndrea ManzoniE MiglioAndrea PuglieseM VeraniAlfio M Quarteroni
Published in: Proceedings. Mathematical, physical, and engineering sciences (2021)
The COVID-19 epidemic is the latest in a long list of pandemics that have affected humankind in the last century. In this paper, we propose a novel mathematical epidemiological model named SUIHTER from the names of the seven compartments that it comprises: susceptible uninfected individuals ( S ), undetected (both asymptomatic and symptomatic) infected ( U ), isolated infected ( I ), hospitalized ( H ), threatened ( T ), extinct ( E ) and recovered ( R ). A suitable parameter calibration that is based on the combined use of the least-squares method and the Markov chain Monte Carlo method is proposed with the aim of reproducing the past history of the epidemic in Italy, which surfaced in late February and is still ongoing to date, and of validating SUIHTER in terms of its predicting capabilities. A distinctive feature of the new model is that it allows a one-to-one calibration strategy between the model compartments and the data that are made available daily by the Italian Civil Protection Department. The new model is then applied to the analysis of the Italian epidemic with emphasis on the second outbreak, which emerged in autumn 2020. In particular, we show that the epidemiological model SUIHTER can be suitably used in a predictive manner to perform scenario analysis at a national level.
Keyphrases
  • coronavirus disease
  • sars cov
  • physical activity
  • hiv infected
  • deep learning
  • electronic health record
  • respiratory syndrome coronavirus