Maity Sunil, Mandal Partha Sarathi
Department of Mathematics, NIT Patna, Patna, Bihar, India.
Bull Math Biol. 2022 Feb 12;84(3):41. doi: 10.1007/s11538-022-01001-x.
In this investigation, we formulate and analyse a stochastic epidemic model using the continuous-time Markov chain model for the propagation of a vector-borne cassava mosaic disease in a single population. The stochastic model is based upon a pre-existing deterministic plant-vector-virus model. To see how demographic stochasticity affects the vector-borne cassava mosaic disease dynamics, we compare the disease dynamics of both deterministic and stochastic models through disease extinction process. The probability of disease extinction and therefore the major outbreak are estimated analytically using the multitype Galton-Watson branching process (GWbp) approximation. Also, we have found the approximate probabilities of disease extinction numerically based on 30000 sample paths, and it is shown to be good estimate with the calculated probabilities from GWbp approximation. In particular, it is observed that there is a very high probability of disease extinction when the disease is introduced via the infected vectors rather than through infected plants.
在本研究中,我们使用连续时间马尔可夫链模型来构建和分析一个随机流行病模型,该模型用于研究单一种群中由媒介传播的木薯花叶病的传播情况。这个随机模型是基于一个已有的确定性植物 - 媒介 - 病毒模型建立的。为了了解人口统计学随机性如何影响由媒介传播的木薯花叶病动态,我们通过疾病灭绝过程比较了确定性模型和随机模型的疾病动态。使用多类型高尔顿 - 沃森分支过程(GWbp)近似方法对疾病灭绝概率以及因此发生大爆发的概率进行了分析估计。此外,我们基于30000条样本路径数值计算了疾病灭绝的近似概率,结果表明它与GWbp近似计算得出的概率是很好的估计值。特别地,我们观察到当疾病通过受感染的媒介引入而非通过受感染的植物引入时,疾病灭绝的概率非常高。