论文标题
具有病毒载荷依赖性传播的SIR模型
An SIR model with viral load-dependent transmission
论文作者
论文摘要
该病毒负荷是传播疾病传播风险的主要预测指标。在这项工作中,我们通过提出一个新的易感性感染性的流行病模型来研究个体病毒载量在疾病传播中的作用,以实现每个隔室的密度和平均病毒载荷。为此,我们从适当的显微镜中正式得出了隔室模型。首先,我们考虑了一个多机构系统,其中个人被其属于其属于的流行病学室和病毒负荷识别。微观规则描述了隔室的开关和病毒载荷的演变。特别是,在易感性和感染性个体之间的二元相互作用中,易感人被感染的概率取决于传染病的病毒负荷。然后,我们在适当的动力学方程中实现了规定的显微动力学,最终得出了隔室的密度和病毒载荷动量的宏观方程。在宏观模型中,疾病传播的速率证明是传染量的平均病毒负荷的函数。我们在分析和数值上研究了传输速率线性取决于病毒载荷的情况,这与经典的恒定传输速率相比。基于稳定性和分叉理论进行定性分析。最后,提出了有关模型繁殖数和流行动力学的数值研究。
The viral load is known to be a chief predictor of the risk of transmission of infectious diseases. In this work, we investigate the role of the individuals' viral load in the disease transmission by proposing a new susceptible-infectious-recovered epidemic model for the densities and mean viral loads of each compartment. To this aim, we formally derive the compartmental model from an appropriate microscopic one. Firstly, we consider a multi-agent system in which individuals are identified by the epidemiological compartment to which they belong and by their viral load. Microscopic rules describe both the switch of compartment and the evolution of the viral load. In particular, in the binary interactions between susceptible and infectious individuals, the probability for the susceptible individual to get infected depends on the viral load of the infectious individual. Then, we implement the prescribed microscopic dynamics in appropriate kinetic equations, from which the macroscopic equations for the densities and viral load momentum of the compartments are eventually derived. In the macroscopic model, the rate of disease transmission turns out to be a function of the mean viral load of the infectious population. We analytically and numerically investigate the case that the transmission rate linearly depends on the viral load, which is compared to the classical case of constant transmission rate. A qualitative analysis is performed based on stability and bifurcation theory. Finally, numerical investigations concerning the model reproduction number and the epidemic dynamics are presented.