Abstract

Coronavirus disease 2019 (COVID-19) has spread throughout the world. The prediction of the number of cases has become essential to governments’ ability to define policies and take countermeasures in advance. The numbers of cases have been estimated using compartment models of infectious diseases such as the susceptible-infected-removed (SIR) model and its derived models. However, the required use of hypothetical future values for parameters, such as the effective reproduction number or infection rate, increases the uncertainty of the prediction results. Here, we describe our model for forecasting future COVID-19 cases based on observed data by considering the time delay (tdelay). We used machine learning to estimate the future infection rate based on real-time mobility, temperature, and relative humidity. We then used this calculation with the susceptible-exposed-infectious-removed (SEIR) model to forecast future cases with less uncertainty. The results suggest that changes in mobility affect observed infection rates with 5–10 days of time delay. This window should be accounted for in the decision-making phase especially during periods with predicted infection surges. Our prediction model helps governments and medical institutions to take targeted early countermeasures at critical decision points regarding mobility to avoid significant levels of infection rise.

Highlights

  • Coronavirus disease 2019 (COVID-19) has spread throughout the world

  • In order to utilize the advantages of both mathematical modelling and machine learning techniques, this work has extended the SEIR model with a machine learning approach to forecast infection rate based on real-time mobility and weather data

  • The coefficients of determination remained high in the range between 5 and 10 days. This shows that the impact of mobility factors on calculated infection rates can be clearly observed within a window of 5–10 days

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Summary

Introduction

Coronavirus disease 2019 (COVID-19) has spread throughout the world. The prediction of the number of cases has become essential to governments’ ability to define policies and take countermeasures in advance. We used machine learning to estimate the future infection rate based on real-time mobility, temperature, and relative humidity We used this calculation with the susceptible-exposedinfectious-removed (SEIR) model to forecast future cases with less uncertainty. The number of infected people is calculated under the assumption of certain values of the effective reproduction number, which can result from the combination of several factors including the implemented policies and general environmental factors such as the weather Using such an approach for setting effective future policies would imply a dependence on the occurrence of specific scenarios under static conditions. In order to utilize the advantages of both mathematical modelling and machine learning techniques, this work has extended the SEIR model with a machine learning approach to forecast infection rate based on real-time mobility and weather data

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