A LINEAR STUDY OF THE SPREAD OF COVID-19 IN CHINA AND IRAN.

Autor: Sayadi, Mohammad Javad, Moghbeli, Fateme, Mehrjoo, Hafez, Mahaki, Mohammadreza
Předmět:
Zdroj: Frontiers in Health Informatics; 2020, Vol. 9 Issue 1, p1-5, 5p
Abstrakt: Introduction: Studying trends in observed rates provides valuable information in terms of need assessment, planning of programs and development indicators of each country. The purpose of the present study was to apply the regression model and the Fourier series in terms of predicting the trends in growth and mortality rate of coronavirus disease. Material and Methods: In this study, two linear analysis methods were used to predict the incidence and mortality rate of coronavirus disease in Iran and China. The methods used are linear regression and Fourier transform. The data used were collected by referring to the official media of the mentioned countries, the general form of which is a time series of the incidence and mortality rate in recent days and the model implemented to estimate the incidence and mortality rate for the coming days. Python programming language version 3.7 is used to implement models. Results: The results of this study show that the rates of coronavirus disease incidence and mortality are still increasing. Meanwhile, the Fourier transform-based analytical method is more accurate than the linear regression method and on the other hand, the accuracy of both algorithms for predicting mortality was much higher than the prediction rate. This indicates that the mortality rate is higher than that of its linearity over time. The other point is that based on the results of this study, however, linear methods are very suitable for future prediction, due to the nature of epidemic diseases whose growth chart is nonlinear, linear methods cannot be used to predict the rate and mortality used in distant times. Conclusion: The accuracy of the mathematics-based methods for predicting the trajectory of COVID-19 was really high. We predicted that the epidemics of COVID-19 will be high during 10 days. If the data are reliable and there are no second transmissions, we can accurately predict the transmission dynamics of the COVID-19 across the cities in China and Iran. The mathematics-inspired methods are a powerful tool for helping public health planning and policymaking. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index