Department of Epidemiology, Johns Hopkins Bloomberg School of Public Health, Baltimore, Maryland, USA.
PLoS Comput Biol. 2013;9(2):e1002912. doi: 10.1371/journal.pcbi.1002912. Epub 2013 Feb 7.
Antiviral resistance in influenza is rampant and has the possibility of causing major morbidity and mortality. Previous models have identified treatment regimes to minimize total infections and keep resistance low. However, the bulk of these studies have ignored stochasticity and heterogeneous contact structures. Here we develop a network model of influenza transmission with treatment and resistance, and present both standard mean-field approximations as well as simulated dynamics. We find differences in the final epidemic sizes for identical transmission parameters (bistability) leading to different optimal treatment timing depending on the number initially infected. We also find, contrary to previous results, that treatment targeted by number of contacts per individual (node degree) gives rise to more resistance at lower levels of treatment than non-targeted treatment. Finally we highlight important differences between the two methods of analysis (mean-field versus stochastic simulations), and show where traditional mean-field approximations fail. Our results have important implications not only for the timing and distribution of influenza chemotherapy, but also for mathematical epidemiological modeling in general. Antiviral resistance in influenza may carry large consequences for pandemic mitigation efforts, and models ignoring contact heterogeneity and stochasticity may provide misleading policy recommendations.
流感病毒的抗药性猖獗,有可能导致严重的发病率和死亡率。以前的模型已经确定了治疗方案,以尽量减少总感染人数并保持低耐药性。然而,这些研究的大部分都忽略了随机性和异质接触结构。在这里,我们开发了一个带有治疗和耐药性的流感传播网络模型,并提出了标准的平均场近似和模拟动态。我们发现,对于相同的传播参数(双稳定性),最终的流行病规模存在差异,从而导致不同的最佳治疗时机取决于最初感染的人数。我们还发现,与以前的结果相反,针对每个个体的接触次数(节点度)的治疗比非靶向治疗更容易导致较低水平的耐药性。最后,我们强调了两种分析方法(平均场与随机模拟)之间的重要差异,并展示了传统平均场近似在何处失效。我们的研究结果不仅对流感化疗的时机和分布具有重要意义,而且对一般的数学流行病学模型也具有重要意义。流感病毒的抗药性对大流行的缓解工作可能会产生重大影响,而忽略接触异质性和随机性的模型可能会提供误导性的政策建议。