An Introduction to Networks in Epidemic Modeling

Author(s):  
Fred Brauer
Keyword(s):  
2001 ◽  
Author(s):  
Jr Bombardt ◽  
John N.

1994 ◽  
pp. 129-131
Author(s):  
Bruce Hannon ◽  
Matthias Ruth
Keyword(s):  

2019 ◽  
Vol 35 (3) ◽  
pp. 300-317 ◽  
Author(s):  
Elizaveta Ermakova ◽  
Polina Makhmutova ◽  
Elena Yarovaya

Author(s):  
Stanislaw Raczynski

An application of differential inclusions in the epidemic spread models is presented. Some mostly used epidemic models are discussed here, and a brief survey of epidemic modeling is given. Most of the models are some modifications of the Susceptible–Infected–Recovered model. Simple simulations are carried out. Then, we consider the influence of some uncertain parameters. It is pointed out that the presence of some fluctuating model parameters can be treated by differential inclusions. The solution to such differential inclusion is given in the form of reachable sets for model variables. Here, we focus on the differential inclusion application rather than the model construction.


Author(s):  
Junyi Lu ◽  
Sebastian Meyer

Accurate prediction of flu activity enables health officials to plan disease prevention and allocate treatment resources. A promising forecasting approach is to adapt the well-established endemic-epidemic modeling framework to time series of infectious disease proportions. Using U.S. influenza-like illness surveillance data over 18 seasons, we assessed probabilistic forecasts of this new beta autoregressive model with proper scoring rules. Other readily available forecasting tools were used for comparison, including Prophet, (S)ARIMA and kernel conditional density estimation (KCDE). Short-term flu activity was equally well predicted up to four weeks ahead by the beta model with four autoregressive lags and by KCDE; however, the beta model runs much faster. Non-dynamic Prophet scored worst. Relative performance differed for seasonal peak prediction. Prophet produced the best peak intensity forecasts in seasons with standard epidemic curves; otherwise, KCDE outperformed all other methods. Peak timing was best predicted by SARIMA, KCDE or the beta model, depending on the season. The best overall performance when predicting peak timing and intensity was achieved by KCDE. Only KCDE and naive historical forecasts consistently outperformed the equal-bin reference approach for all test seasons. We conclude that the endemic-epidemic beta model is a performant and easy-to-implement tool to forecast flu activity a few weeks ahead. Real-time forecasting of the seasonal peak, however, should consider outputs of multiple models simultaneously, weighing their usefulness as the season progresses.


2019 ◽  
Vol 108 (3) ◽  
pp. 1363-1377 ◽  
Author(s):  
Rajeev K. Shakya ◽  
Kamlesh Rana ◽  
Amit Gaurav ◽  
Pushpa Mamoria ◽  
Pramod K. Srivastava

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