...
首页> 外文期刊>The American Naturalist: Devoted to the Conceptual Unification of the Biological Sciences >Stochasticity and Infectious Disease Dynamics: Density and Weather Effects on a Fungal Insect Pathogen
【24h】

Stochasticity and Infectious Disease Dynamics: Density and Weather Effects on a Fungal Insect Pathogen

机译:随机性和传染病动力学:对真菌昆虫病原体的密度和天气影响

获取原文
获取原文并翻译 | 示例

摘要

In deterministic models of epidemics, there is a host abundance threshold above which the introduction of a few infected individuals leads to a severe epidemic. Studies of weather-driven animal pathogens often assume that abundance thresholds will be overwhelmed by weather-driven stochasticity, but tests of this assumption are lacking. We collected observational and experimental data for a fungal pathogen, Entomophaga maimaiga, that infects the gypsy moth, Lymantria dispar. We used an advanced statistical-computing algorithm to fit mechanistic models to our data, such that different models made different assumptions about the effects of host density and weather on E. maimaiga epizootics (epidemics in animals). We then used Akaike information criterion analysis to choose the best model. In the best model, epizootics are driven by a combination of weather and host density, and the model does an excellent job of explaining the data, whereas models that allow only for weather effects or only for density-dependent effects do a poor job of explaining the data. Density-dependent transmission in our best model produces a host density threshold, but this threshold is strongly blurred by the stochastic effects of weather. Our work shows that host-abundance thresholds may be important even if weather strongly affects transmission, suggesting that epidemiological models that allow for weather have an important role to play in understanding animal pathogens. The success of our model means that it could be useful for managing the gypsy moth, an important pest of hardwood forests in North America.
机译:在流行病的确定性模型中,上面有一个主体丰富阈值,其中少数受感染的个体导致严重的流行病。天气驱动的动物病原体的研究通常假设丰富的阈值将被天气驱动的随机性淹没,但缺乏这种假设的测试。我们收集了真菌病原体的观测和实验数据,感染了吉普赛人,Lymantria Dispar感染了吉普赛人。我们利用先进的统计计算算法来适应机制模型,使得不同的模型对宿主密度和天气对E. Maimaiga Epizootics(动物的流行病)产生了不同的假设。然后我们使用Akaike信息标准分析来选择最佳模型。在最佳模型中,脱模性通过天气和主机密度的组合驱动,并且该模型做出了解释数据的优异工作,而仅用于天气效应的模型或仅针对密度依赖的效果做出糟糕的工作数据。在我们最佳模型中的密度依赖传输产生了主密度阈值,但是由于天气的随机效应,这种阈值强烈模糊。我们的工作表明,即使天气强烈影响传输,宿主丰富的阈值可能是重要的,这表明允许天气的流行病学模型在理解动物病原体方面发挥重要作用。我们的模型的成功意味着它可能有助于管理吉普赛蛾,这是北美硬木林的重要害虫。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
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