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   Comparison of the Effective Reproduction Number (Rt) Estimation Methods of COVID-19 Using Simulation Data Based on Available Data from Iran, USA, UK, India, and Brazil  
   
نویسنده karamoozian ali ,bahrampour abbas
منبع journal of research in health sciences - 2022 - دوره : 22 - شماره : 3 - صفحه:1 -9
چکیده    Background: accurate determination of the effective reproduction number (rt) is a very important strategy in the epidemiology of contagious diseases, including coronavirus disease 2019 (covid-19). this study compares different methods of estimating the rt of susceptible population to identify the most accurate method for estimating rt. study design: a secondary study. methods: the value of rt was estimated using attack rate (ar), exponential growth (eg), maximum likelihood (ml), time-dependent (td), and sequential bayesian (sb) methods, for iran, the united states, the united kingdom, india, and brazil from june to october 2021. in order to accurately compare these methods, a simulation study was designed using forty scenarios. results: the lowest mean square error (mse) was observed for td and ml methods, with 15 and 12 cases, respectively. therefore, considering the estimated values of rt based on the td method, it was found that rt values in the united kingdom (1.33; 95% ci: 1.14-1.52) and the united states (1.25; 95% ci: 1.12-1.38) substantially have been more than those in other countries, such as iran (1.07; 95% ci: 0.95-1.19), india (0.99; 95% ci: 0.89-1.08), and brazil (0.98; 95% ci: 0.84-1.14) from june to october 2021. conclusion: the important result of this study is that td and ml methods lead to a more accurate estimation of rt of population than other methods. therefore, in order to monitor and determine the epidemic situation and have a more accurate prediction of the incidence rate, as well as control covid-19 and similar diseases, the use of these two methods is suggested to more accurately estimate rt.
کلیدواژه COVID-19 ,Effective reproduction number (Rt) ,Maximum likelihood estimation ,Time-dependent ,Simulation
آدرس kerman university of medical sciences, modeling in health research center, institute for futures studies in health, department of biostatistics and epidemiology, Iran, kerman university of medical sciences, modeling in health research center, institute for futures studies in health, department of biostatistics and epidemiology, iran. adjunct professor of griffith university, Australia
پست الکترونیکی abahrampour@yahoo. com
 
     
   
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