流行病:一种有效的算法,用于模拟传染病在大型现实社会网络中的传播

C. Barrett, K. Bisset, S. Eubank, Xizhou Feng, M. Marathe
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引用次数: 302

摘要

预防和控制大流行性流感等传染病的爆发是公共卫生的首要重点。我们描述了episimdemic——一种可扩展的并行算法,使用基于个体的模型来模拟传染病在大型现实社会联系网络中的传播。流行病是对一类随机反应扩散过程的基于相互作用的模拟。对这一过程的直接模拟不能很好地扩展,将基于个体的模型的使用限制在非常小的种群中。episimdemic专门设计用于扩展到拥有1亿个人的社交网络。该尺度是利用大型网络中疾病进化和疾病传播的语义来实现的。我们评估了episimdemic在中型HPC系统上基于mpi的并行实现,证明episimdemic具有良好的可扩展性。episimdemic已用于许多赞助者确定的针对政策规划和行动方案分析的案例研究,表明episimdemic在实际情况中的有用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EpiSimdemics: An efficient algorithm for simulating the spread of infectious disease over large realistic social networks
Preventing and controlling outbreaks of infectious diseases such as pandemic influenza is a top public health priority. We describe EpiSimdemics - a scalable parallel algorithm to simulate the spread of contagion in large, realistic social contact networks using individual-based models. EpiSimdemics is an interaction-based simulation of a certain class of stochastic reaction-diffusion processes. Straightforward simulations of such process do not scale well, limiting the use of individual-based models to very small populations. EpiSimdemics is specifically designed to scale to social networks with 100 million individuals. The scaling is obtained by exploiting the semantics of disease evolution and disease propagation in large networks. We evaluate an MPI-based parallel implementation of EpiSimdemics on a mid-sized HPC system, demonstrating that EpiSimdemics scales well. EpiSimdemics has been used in numerous sponsor defined case studies targeted at policy planning and course of action analysis, demonstrating the usefulness of EpiSimdemics in practical situations.
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