Department of Mathematics and Statistics, University of Victoria, Victoria BC, Canada V8W 3R4.
J Theor Biol. 2013 May 21;325:12-21. doi: 10.1016/j.jtbi.2013.01.006. Epub 2013 Jan 29.
The effects of a number of vaccination strategies on the spread of an SIR type disease are numerically investigated for several common network topologies including random, scale-free, small world, and meta-random networks. These strategies, namely, prioritized, random, follow links and contact tracing, are compared across networks using extensive simulations with disease parameters relevant for viruses such as pandemic influenza H1N1/09. Two scenarios for a network SIR model are considered. First, a model with a given transmission rate is studied. Second, a model with a given initial growth rate is considered, because the initial growth rate is commonly used to impute the transmission rate from incidence curves and to predict the course of an epidemic. Since a vaccine may not be readily available for a new virus, the case of a delay in the start of vaccination is also considered in addition to the case of no delay. It is found that network topology can have a larger impact on the spread of the disease than the choice of vaccination strategy. Simulations also show that the network structure has a large effect on both the course of an epidemic and the determination of the transmission rate from the initial growth rate. The effect of delay in the vaccination start time varies tremendously with network topology. Results show that, without the knowledge of network topology, predictions on the peak and the final size of an epidemic cannot be made solely based on the initial exponential growth rate or transmission rate. This demonstrates the importance of understanding the topology of realistic contact networks when evaluating vaccination strategies.
针对几种常见的网络拓扑结构,包括随机、无标度、小世界和元随机网络,数值研究了多种疫苗接种策略对 SIR 型疾病传播的影响。这些策略包括优先接种、随机接种、跟随链接和接触者追踪,通过与大流行性流感 H1N1/09 等病毒相关的疾病参数的广泛模拟,在网络上进行了比较。考虑了网络 SIR 模型的两种情况。首先,研究了具有给定传输率的模型。其次,考虑了具有给定初始增长率的模型,因为初始增长率通常用于从发病率曲线推断传输率并预测传染病的过程。由于新病毒可能无法立即获得疫苗,因此除了不延迟的情况外,还考虑了延迟开始接种疫苗的情况。结果发现,网络拓扑结构对疾病传播的影响可能大于疫苗接种策略的选择。模拟还表明,网络结构对传染病的过程和从初始增长率确定传输率都有很大的影响。疫苗接种开始时间延迟的影响随网络拓扑结构而变化极大。结果表明,如果不了解网络拓扑结构,就不能仅凭初始指数增长率或传播率来预测传染病的高峰期和最终规模。这证明了在评估疫苗接种策略时了解现实接触网络拓扑结构的重要性。