Michigan State University, East Lansing, Michigan, USA.
U.S. Geological Survey, Patuxent Wildlife Research Center, Laurel, Maryland, USA.
Sci Rep. 2020 Feb 13;10(1):2592. doi: 10.1038/s41598-020-59077-1.
Avian influenza (AI) affects wild aquatic birds and poses hazards to human health, food security, and wildlife conservation globally. Accordingly, there is a recognized need for new methods and tools to help quantify the dynamic interaction between wild bird hosts and commercial poultry. Using satellite-marked waterfowl, we applied Bayesian joint hierarchical modeling to concurrently model species distributions, residency times, migration timing, and disease occurrence probability under an integrated animal movement and disease distribution modeling framework. Our results indicate that migratory waterfowl are positively related to AI occurrence over North America such that as waterfowl occurrence probability or residence time increase at a given location, so too does the chance of a commercial poultry AI outbreak. Analyses also suggest that AI occurrence probability is greatest during our observed waterfowl northward migration, and less during the southward migration. Methodologically, we found that when modeling disparate facets of disease systems at the wildlife-agriculture interface, it is essential that multiscale spatial patterns be addressed to avoid mistakenly inferring a disease process or disease-environment relationship from a pattern evaluated at the improper spatial scale. The study offers important insights into migratory waterfowl ecology and AI disease dynamics that aid in better preparing for future outbreaks.
禽流感(AI)影响野生水鸟,对全球人类健康、食品安全和野生动物保护构成威胁。因此,需要新的方法和工具来帮助量化野生鸟类宿主和商业家禽之间的动态相互作用。我们使用卫星标记的水禽,在综合动物运动和疾病分布建模框架下,应用贝叶斯联合层次模型,同时对物种分布、居留时间、迁徙时间和疾病发生概率进行建模。我们的研究结果表明,北美的迁徙水禽与 AI 发生呈正相关,即给定地点的水禽出现概率或居留时间增加,商业家禽 AI 爆发的可能性也随之增加。分析还表明,AI 发生的概率在我们观察到的水禽向北迁徙期间最大,而在向南迁徙期间则较小。从方法学上讲,我们发现,在对野生动物-农业界面的疾病系统的不同方面进行建模时,必须解决多尺度空间模式问题,以避免从在不当空间尺度上评估的模式中错误推断疾病过程或疾病-环境关系。该研究为迁徙水禽生态学和 AI 疾病动态提供了重要的见解,有助于为未来的爆发做好更好的准备。