论文标题
平衡自适应流行网络中的隔离和自差措施
Balancing quarantine and self-distancing measures in adaptive epidemic networks
论文作者
论文摘要
我们研究了两种关键控制措施在流行病扩散中的相对重要性:内源性社会自我触及和外源性隔离。我们使用自适应网络,矩闭合和普通微分方程(ODE)的框架来基于易感性感染的(SIR)动力学引入几种新型模型。首先,我们将计算昂贵的自适应网络仿真与它们相应的计算高效颂歌等效物进行比较,并找到了出色的一致性。其次,我们发现,流行阈值的参数空间中存在相对简单的临界曲线,这强烈表明两种缓解策略之间存在相互补偿的效果:只要社会疏远和隔离措施都可以充分强烈,就可以防止大爆发。第三,我们使用分析估计和数值模拟的组合研究了大暴发期间感染的总数和最大峰值。同样,对于大暴发,我们发现与流行阈值相似的补偿效果。这表明,如果几乎没有激励人口内部的社会距离,则需要剧烈隔离,反之亦然。在实践中,这两种纯粹的场景都是不现实的。我们的模型表明,只有一系列措施才能成功控制流行病。第四,我们通过分析计算自适应网络中感染总数的上限,使用积分估计与可观察到的水平上的矩闭合近似结合使用。这是一种方法上的创新。我们的方法使我们能够优雅,快速检查并交叉验证有关不同网络控制措施相关性的各种猜想。
We study the relative importance of two key control measures for epidemic spreading: endogenous social self-distancing and exogenous imposed quarantine. We use the framework of adaptive networks, moment-closure, and ordinary differential equations (ODEs) to introduce several novel models based upon susceptible-infected-recovered (SIR) dynamics. First, we compare computationally expensive, adaptive network simulations with their corresponding computationally highly efficient ODE equivalents and find excellent agreement. Second, we discover that there exists a relatively simple critical curve in parameter space for the epidemic threshold, which strongly suggests that there is a mutual compensation effect between the two mitigation strategies: as long as social distancing and quarantine measures are both sufficiently strong, large outbreaks are prevented. Third, we study the total number of infected and the maximum peak during large outbreaks using a combination of analytical estimates and numerical simulations. Also for large outbreaks we find a similar compensation effect as for the epidemic threshold. This suggests that if there is little incentive for social distancing within a population, drastic quarantining is required, and vice versa. Both pure scenarios are unrealistic in practice. Our models show that only a combination of measures is likely to succeed to control epidemic spreading. Fourth, we analytically compute an upper bound for the total number of infected on adaptive networks, using integral estimates in combination with the moment-closure approximation on the level of an observable. This is a methodological innovation. Our method allows us to elegantly and quickly check and cross-validate various conjectures about the relevance of different network control measures.