Bakuli Abhishek, Klawonn Frank, Karch André, Mikolajczyk Rafael
Helmholtz Centre for Infection Research, Research Group Biostatistics, Braunschweig, Germany.
PhD Programme "Epidemiology", Braunschweig-Hannover, Germany.
Theor Biol Med Model. 2017 Dec 13;14(1):26. doi: 10.1186/s12976-017-0072-7.
Increased computational resources have made individual based models popular for modelling epidemics. They have the advantage of incorporating heterogeneous features, including realistic population structures (like e.g. households). Existing stochastic simulation studies of epidemics, however, have been developed mainly for incorporating single pathogen scenarios although the effect of different pathogens might directly or indirectly (e.g. via contact reductions) effect the spread of each pathogen. The goal of this work was to simulate a stochastic agent based system incorporating the effect of multiple pathogens, accounting for the household based transmission process and the dependency among pathogens.
With the help of simulations from such a system, we observed the behaviour of the epidemics in different scenarios. The scenarios included different household size distributions, dependency versus independency of pathogens, and also the degree of dependency expressed through household isolation during symptomatic phase of individuals. Generalized additive models were used to model the association between the epidemiological parameters of interest on the variation in the parameter values from the simulation data. All the simulations and statistical analyses were performed using R 3.4.0.
We demonstrated the importance of considering pathogen dependency using two pathogens, and showing the difference when considered independent versus dependent. Additionally for the general scenario with more pathogens, the assumption of dependency among pathogens and the household size distribution in the population cohort was found to be effective in containing the epidemic process. Additionally, populations with larger household sizes reached the epidemic peak faster than societies with smaller household sizes but dependencies among pathogens did not affect this outcome significantly. Larger households had more infections in all population cohort examples considered in our simulations. Increase in household isolation coefficient for pathogen dependency also could control the epidemic process.
Presence of multiple pathogens and their interaction can impact the behaviour of an epidemic across cohorts with different household size distributions. Future household cohort studies identifying multiple pathogens will provide useful data to verify the interaction processes in such an infectious disease system.
计算资源的增加使得基于个体的模型在流行病建模中很受欢迎。它们具有纳入异质性特征的优势,包括现实的人口结构(如家庭)。然而,现有的流行病随机模拟研究主要是为纳入单一病原体情景而开发的,尽管不同病原体的影响可能直接或间接(例如通过减少接触)影响每种病原体的传播。这项工作的目标是模拟一个基于主体的随机系统,该系统纳入多种病原体的影响,考虑基于家庭的传播过程以及病原体之间的依赖性。
借助这样一个系统的模拟,我们观察了不同情景下流行病的行为。这些情景包括不同的家庭规模分布、病原体的依赖性与独立性,以及在个体症状期通过家庭隔离所表达的依赖程度。使用广义相加模型对感兴趣的流行病学参数与模拟数据中参数值变化之间的关联进行建模。所有模拟和统计分析均使用R 3.4.0进行。
我们使用两种病原体证明了考虑病原体依赖性的重要性,并展示了将其视为独立与依赖时的差异。此外,对于更多病原体的一般情景,发现病原体之间的依赖性假设以及人群队列中的家庭规模分布在控制流行过程方面是有效的。此外,家庭规模较大的人群比家庭规模较小的社会更快达到流行高峰,但病原体之间的依赖性对这一结果没有显著影响。在我们模拟中考虑的所有人群队列示例中,较大的家庭有更多感染病例。病原体依赖性的家庭隔离系数增加也可以控制流行过程。
多种病原体的存在及其相互作用会影响不同家庭规模分布队列中流行病的行为。未来识别多种病原体的家庭队列研究将提供有用数据,以验证这种传染病系统中的相互作用过程。