Mathematics Program, University of the Philippines Cebu, 6000, Lahug, Cebu City, Philippines.
Institute of Mathematics, University of the Philippines Diliman, 1101, Diliman, Quezon City, Philippines.
Bull Math Biol. 2020 Jul 16;82(7):96. doi: 10.1007/s11538-020-00769-0.
Studies have been done using networks to represent the spread of infectious diseases in populations. For diseases with exposed individuals corresponding to a latent period, an SEIR model is formulated using an edge-based approach described by a probability generating function. The basic reproduction number is computed using the next generation matrix method and the final size of the epidemic is derived analytically. The SEIR model in this study is used to investigate the stochasticity of the SEIR dynamics. The stochastic simulations are performed applying continuous-time Gillespie's algorithm given Poisson and power law with exponential cut-off degree distributions. The resulting predictions of the SEIR model given the initial conditions match well with the stochastic simulations, validating the accuracy of the SEIR model. We varied the contribution of the disease parameters and the average degree of the network in order to investigate their effects on the spread of disease. We verified that the infection and the recovery rates show significant effects on the dynamics of the disease transmission. While the exposed rate delays the spread of the disease, increasing it towards infinity would lead to almost the same dynamics as that of an SIR case. A network with high average degree results to an early and higher peak of the epidemic compared to a network with low average degree. The results in this paper can be used as an alternative way of explaining the spread of disease and it provides implications on the control strategies applied to mitigate the disease transmission.
已经有研究利用网络来表示人群中传染病的传播。对于具有潜伏期的暴露个体的疾病,使用基于边的方法(由概率生成函数描述)来制定 SEIR 模型。使用下一代矩阵方法计算基本繁殖数,并通过解析方法推导出流行病的最终规模。本研究中的 SEIR 模型用于研究 SEIR 动力学的随机性。应用泊松分布和具有指数截断度分布的幂律分布,通过连续时间 Gillespie 算法进行随机模拟。给定初始条件的 SEIR 模型的预测结果与随机模拟吻合良好,验证了 SEIR 模型的准确性。我们改变了疾病参数和网络平均度数的贡献,以研究它们对疾病传播的影响。我们验证了感染率和恢复率对疾病传播动力学有显著影响。而暴露率会延迟疾病的传播,将其增加到无穷大将导致与 SIR 案例几乎相同的动力学。与平均度数较低的网络相比,平均度数较高的网络会导致疫情更早和更高的峰值。本文的结果可作为解释疾病传播的另一种方式,并且对应用于减轻疾病传播的控制策略具有启示意义。