首页> 外文期刊>Molecular biology and evolution >Using an Epidemiological Model for Phylogenetic Inference Reveals Density Dependence in HIV Transmission
【24h】

Using an Epidemiological Model for Phylogenetic Inference Reveals Density Dependence in HIV Transmission

机译:使用流行病学模型进行系统发育推断揭示了HIV传播中的密度依赖性

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

The control, prediction, and understanding of epidemiological processes require insight into how infectious pathogens transmit in a population. The chain of transmission can in principle be reconstructed with phylogenetic methods which analyze the evolutionary history using pathogen sequence data. The quality of the reconstruction, however, crucially depends on the underlying epidemiological model used in phylogenetic inference. Until now, only simple epidemiological models have been used, which make limiting assumptions such as constant rate parameters, infinite total population size, or deterministically changing population size of infected individuals. Here, we present a novel phylogenetic method to infer parameters based on a classical stochastic epidemiological model. Specifically, we use the susceptible-infected-susceptible model, which accounts for density-dependent transmission rates and finite total population size, leading to a stochastically changing infected population size. We first validate our method by estimating epidemic parameters for simulated data and then apply it to transmission clusters from the Swiss HIV epidemic. Our estimates of the basic reproductive number R-0 for the considered Swiss HIV transmission clusters are significantly higher than previous estimates, which were derived assuming infinite population size. This difference in key parameter estimates highlights the importance of careful model choice when doing phylogenetic inference. In summary, this article presents the first fully stochastic implementation of a classical epidemiological model for phylogenetic inference and thereby addresses a key aspect in ongoing efforts to merge phylogenetics and epidemiology.RI gunthard, huldrych/F-1724-2011
机译:控制、预测和理解流行病学过程需要深入了解传染性病原体如何在人群中传播。原则上,传播链可以用系统发育方法重建,该方法使用病原体序列数据分析进化历史。然而,重建的质量至关重要地取决于系统发育推断中使用的基本流行病学模型。到目前为止,仅使用简单的流行病学模型,这些模型做出了限制性假设,例如恒定速率参数、无限的总人口规模或确定性地改变感染个体的人口规模。在这里,我们提出了一种新的系统发育方法,以基于经典随机流行病学模型推断参数。具体来说,我们使用易感-感染-易感模型,该模型考虑了密度依赖的传播率和有限的总种群规模,导致感染种群规模随机变化。我们首先通过估计模拟数据的流行参数来验证我们的方法,然后将其应用于瑞士HIV流行的传播集群。我们对所考虑的瑞士HIV传播集群的基本繁殖数R-0的估计明显高于先前的估计,后者是假设无限的人口规模得出的。关键参数估计的这种差异凸显了在进行系统发育推断时谨慎选择模型的重要性。总之,本文首次提出了用于系统发育推断的经典流行病学模型的完全随机实现,从而解决了正在进行的系统发育学和流行病学合并工作的一个关键方面。RI gunthard,huldrych/F-1724-2011

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号