Comparative study of machine learning methods for COVID-19 transmission forecasting.

Journal: Journal of biomedical informatics
PMID:

Abstract

Within the recent pandemic, scientists and clinicians are engaged in seeking new technology to stop or slow down the COVID-19 pandemic. The benefit of machine learning, as an essential aspect of artificial intelligence, on past epidemics offers a new line to tackle the novel Coronavirus outbreak. Accurate short-term forecasting of COVID-19 spread plays an essential role in improving the management of the overcrowding problem in hospitals and enables appropriate optimization of the available resources (i.e., materials and staff).This paper presents a comparative study of machine learning methods for COVID-19 transmission forecasting. We investigated the performances of deep learning methods, including the hybrid convolutional neural networks-Long short-term memory (LSTM-CNN), the hybrid gated recurrent unit-convolutional neural networks (GAN-GRU), GAN, CNN, LSTM, and Restricted Boltzmann Machine (RBM), as well as baseline machine learning methods, namely logistic regression (LR) and support vector regression (SVR). The employment of hybrid models (i.e., LSTM-CNN and GAN-GRU) is expected to eventually improve the forecasting accuracy of COVID-19 future trends. The performance of the investigated deep learning and machine learning models was tested using confirmed and recovered COVID-19 cases time-series data from seven impacted countries: Brazil, France, India, Mexico, Russia, Saudi Arabia, and the US. The results reveal that hybrid deep learning models can efficiently forecast COVID-19 cases. Also, results confirmed the superior performance of deep learning models compared to the two considered baseline machine learning models. Furthermore, results showed that LSTM-CNN achieved improved performances with an averaged mean absolute percentage error of 3.718%, among others.

Authors

  • Abdelkader Dairi
    Computer Science Department, University of Oran, 1 Ahmed Ben Bella, Algeria Street El senia el mnouer bp, 31000 Oran, Algeria. Electronic address: dairi.aek@gmail.com.
  • Fouzi Harrou
    Computer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division, King Abdullah University of Science and Technology (KAUST), Thuwal, 23955-6900, Saudi Arabia. fouzi.harrou@kaust.edu.sa.
  • Abdelhafid Zeroual
    Faculty of Technology, Department of electrical engineering, University of 20 August 1955, Skikda 21000, Algeria; LAIG Laboratory, University of 08 May 1945, Guelma 24000, Algeria.
  • Mohamad Mazen Hittawe
    King Abdullah University of Science and Technology (KAUST) Computer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division, Thuwal 23955-6900, Saudi Arabia.
  • Ying Sun
    CFAR and I2R, Agency for Science, Technology and Research, Singapore.