Deep learning framework for epidemiological forecasting: A study on COVID-19 cases and deaths in the Amazon state of Pará, Brazil.

Journal: PloS one
Published Date:

Abstract

Modeling time series has been a particularly challenging aspect due to the need for constant adjustments in a rapidly changing environment, data uncertainty, dependencies between variables, volatile fluctuations, and the need to identify ideal hyperparameters. The present study presents a Framework capable of making projections from time series related to cases and deaths by COVID-19 in the Amazonian state of Pará, in Brazil. For the first time, deep learning models such as TCN, TRANSFORMER, TFT, N-BEATS, and N-HiTS were assessed for this purpose. The ARIMA statistical model was also used in post-processing for residual adjustment and short-term smoothing of the generated forecasts. The Framework generates probabilistic forecasts, with multivariate support, considering the following variables: daily cases per day of the first symptom, cases published daily, the occurrence of deaths, deaths published daily, and percentage of daily vaccination. The generated predictions are statistically evaluated by determining the best model for 7-day moving average projections using evaluating metrics such as MSE, RMSE, MAPE, sMAPE, r2, Coefficient of Variation, and residual analysis. As a result, the generated projections showed an average error of 5.4% for Cases Publication, 8.0% for Cases Symptoms, 11.12% for Deaths Publication, and 4.6% for Deaths Occurrence, with the N-HiTS and N-BEATS models obtaining better results. In general terms, the use of deep learning models to predict cases and deaths from COVID-19 has proven to be a valuable practice for analyzing the spread of the virus, which allows health managers to better understand and respond to this kind of pandemic outbreak.

Authors

  • Gilberto Nerino de Souza
    Universidade Federal Rural da Amazônia, Paragominas Campus, Paragominas, Pará, Brazil.
  • Alícia Graziella Balbino Mendes
    Universidade Federal Rural da Amazônia, Capitão Poço Campus, Parauapebas, Pará, Brazil.
  • Joaquim Dos Santos Costa
    Universidade Federal Rural da Amazônia, Paragominas Campus, Paragominas, Pará, Brazil.
  • Mikeias Dos Santos Oliveira
    Universidade Federal Rural da Amazônia, Parauapebas Campus, Parauapebas, Pará, Brazil.
  • Paulo Victor Cunha Lima
    Universidade Federal Rural da Amazônia, Paragominas Campus, Paragominas, Pará, Brazil.
  • Vitor Nunes de Moraes
    Cyberspace Institute, Universidade Federal Rural da Amazônia, Belém, Pará, Brazil.
  • David Costa Correia Silva
    Universidade Federal Rural da Amazônia, Paragominas Campus, Paragominas, Pará, Brazil.
  • Jonas Elias Castro da Rocha
    Universidade Federal Rural da Amazônia, Paragominas Campus, Paragominas, Pará, Brazil.
  • Marcel do Nascimento Botelho
    Socio-Environmental Institute of Water Resources, Universidade Federal Rural da Amazônia, Belém, Pará, Brazil.
  • Fabricio Almeida Araujo
    Computer Science Department, Universidade da Amazônia, Belém, Pará, Brazil.
  • Rafael da Silva Fernandes
    Universidade Federal Rural da Amazônia, Parauapebas Campus, Parauapebas, Pará, Brazil.
  • Daniel Leal Souza
    Computer Science Institute, Centro Universitário do Estado do Pará, Belém, Pará, Brazil.
  • Marcus de Barros Braga
    Universidade Federal Rural da Amazônia, Paragominas Campus, Paragominas, Pará, Brazil.