Department of Physics, Chemistry and Biology, Division of Theoretical Biology, Linköping University, Linköping, Sweden.
Department of Biology, Colorado State University, Fort Collins, CO, United States of America.
PLoS Comput Biol. 2018 Apr 6;14(4):e1006086. doi: 10.1371/journal.pcbi.1006086. eCollection 2018 Apr.
Numerical models for simulating outbreaks of infectious diseases are powerful tools for informing surveillance and control strategy decisions. However, large-scale spatially explicit models can be limited by the amount of computational resources they require, which poses a problem when multiple scenarios need to be explored to provide policy recommendations. We introduce an easily implemented method that can reduce computation time in a standard Susceptible-Exposed-Infectious-Removed (SEIR) model without introducing any further approximations or truncations. It is based on a hierarchical infection process that operates on entire groups of spatially related nodes (cells in a grid) in order to efficiently filter out large volumes of susceptible nodes that would otherwise have required expensive calculations. After the filtering of the cells, only a subset of the nodes that were originally at risk are then evaluated for actual infection. The increase in efficiency is sensitive to the exact configuration of the grid, and we describe a simple method to find an estimate of the optimal configuration of a given landscape as well as a method to partition the landscape into a grid configuration. To investigate its efficiency, we compare the introduced methods to other algorithms and evaluate computation time, focusing on simulated outbreaks of foot-and-mouth disease (FMD) on the farm population of the USA, the UK and Sweden, as well as on three randomly generated populations with varying degree of clustering. The introduced method provided up to 500 times faster calculations than pairwise computation, and consistently performed as well or better than other available methods. This enables large scale, spatially explicit simulations such as for the entire continental USA without sacrificing realism or predictive power.
用于模拟传染病暴发的数值模型是为监测和控制策略决策提供信息的有力工具。然而,大规模的空间显式模型可能受到所需计算资源的限制,这在需要探索多个场景以提供政策建议时会造成问题。我们引入了一种易于实施的方法,可以在标准的易感-暴露-感染-消除(SEIR)模型中减少计算时间,而不会引入任何进一步的近似或截断。它基于一种分层感染过程,该过程作用于空间上相关节点(网格中的单元格)的整个群组,以便有效地过滤掉大量原本需要昂贵计算的易感节点。在对单元格进行过滤之后,然后仅对最初处于风险中的节点子集进行实际感染的评估。效率的提高对网格的确切配置敏感,我们描述了一种简单的方法来找到给定景观的最佳配置的估计值,以及将景观划分为网格配置的方法。为了研究其效率,我们将引入的方法与其他算法进行比较,并评估计算时间,重点是模拟美国、英国和瑞典的农场人口中的口蹄疫(FMD)暴发,以及具有不同聚类程度的三个随机生成的人群。引入的方法提供了比两两计算快 500 倍的计算速度,并且始终表现得与其他可用方法一样好或更好。这使得能够对整个美国大陆进行大规模、空间显式的模拟,而不会牺牲现实性或预测能力。