Department of Mathematics and Statistics,Texas Tech University, 2500 Broadway, Lubbock, TX 79409, USA.
School of Mathematical and Statistical Sciences, The University of Texas Rio Grande Valley, 1201 W. University Drive, Edinburg, TX 78539, USA.
Int J Environ Res Public Health. 2020 Mar 18;17(6):2014. doi: 10.3390/ijerph17062014.
In this paper, we compare the performance between systems of ordinary and (Caputo) fractional differential equations depicting the susceptible-exposed-infectious-recovered (SEIR) models of diseases. In order to understand the origins of both approaches as mean-field approximations of integer and fractional stochastic processes, we introduce the fractional differential equations (FDEs) as approximations of some type of fractional nonlinear birth and death processes. Then, we examine validity of the two approaches against empirical courses of epidemics; we fit both of them to case counts of three measles epidemics that occurred during the pre-vaccination era in three different locations. While ordinary differential equations (ODEs) are commonly used to model epidemics, FDEs are more flexible in fitting empirical data and theoretically offer improved model predictions. The question arises whether, in practice, the benefits of using FDEs over ODEs outweigh the added computational complexities. While important differences in transient dynamics were observed, the FDE only outperformed the ODE in one of out three data sets. In general, FDE modeling approaches may be worth it in situations with large refined data sets and good numerical algorithms.
在本文中,我们比较了普通和(Caputo)分数阶微分方程系统在描述疾病的易感-暴露-感染-恢复(SEIR)模型方面的性能。为了理解这两种方法作为整数和分数随机过程的平均场近似的起源,我们将分数阶微分方程(FDE)引入作为某些类型的分数非线性生死过程的近似。然后,我们根据传染病的经验过程来检验这两种方法的有效性;我们将它们都拟合到三个不同地点在疫苗接种前时代发生的三种麻疹流行的病例数中。虽然常微分方程(ODE)常用于模拟传染病,但 FDE 在拟合经验数据方面更具灵活性,并且从理论上提供了改进的模型预测。问题是,在实践中,使用 FDE 相对于 ODE 的好处是否超过了增加的计算复杂性。虽然观察到了瞬态动力学的重要差异,但在三个数据集之一中,FDE 仅在一个数据集中优于 ODE。一般来说,在具有大量细化数据集和良好数值算法的情况下,FDE 建模方法可能是值得的。