Author: Niu, Ruiwu; Chan, Yin-Chi; Wong, Eric W. M.; van Wyk, Michaël Antonie; Chen, Guanrong
                    Title: A stochastic SEIHR model for COVID-19 data fluctuations  Cord-id: bjd8jrx9  Document date: 2021_7_6
                    ID: bjd8jrx9
                    
                    Snippet: Although deterministic compartmental models are useful for predicting the general trend of a disease’s spread, they are unable to describe the random daily fluctuations in the number of new infections and hospitalizations, which is crucial in determining the necessary healthcare capacity for a specified level of risk. In this paper, we propose a stochastic SEIHR (sSEIHR) model to describe such random fluctuations and provide sufficient conditions for stochastic stability of the disease-free eq
                    
                    
                    
                     
                    
                    
                    
                    
                        
                            
                                Document: Although deterministic compartmental models are useful for predicting the general trend of a disease’s spread, they are unable to describe the random daily fluctuations in the number of new infections and hospitalizations, which is crucial in determining the necessary healthcare capacity for a specified level of risk. In this paper, we propose a stochastic SEIHR (sSEIHR) model to describe such random fluctuations and provide sufficient conditions for stochastic stability of the disease-free equilibrium, based on the basic reproduction number that we estimated. Our extensive numerical results demonstrate strong threshold behavior near the estimated basic reproduction number, suggesting that the necessary conditions for stochastic stability are close to the sufficient conditions derived. Furthermore, we found that increasing the noise level slightly reduces the final proportion of infected individuals. In addition, we analyze COVID-19 data from various regions worldwide and demonstrate that by changing only a few parameter values, our sSEIHR model can accurately describe both the general trend and the random fluctuations in the number of daily new cases in each region, allowing governments and hospitals to make more accurate caseload predictions using fewer compartments and parameters than other comparable stochastic compartmental models.
 
  Search related documents: 
                                Co phrase  search for related documents- accurate prediction and lyapunov function: 1
  
 
                                Co phrase  search for related documents, hyperlinks ordered by date