Centre de Recerca en Sanitat Animal, Universitat Autònoma de Barcelona-IRTA, Campus de la Universitat Autònoma de Barcelona, Barcelona, Spain.
PLoS One. 2012;7(8):e44354. doi: 10.1371/journal.pone.0044354. Epub 2012 Aug 30.
Design, sampling and data interpretation constitute an important challenge for wildlife surveillance of avian influenza viruses (AIV). The aim of this study was to construct a model to improve and enhance identification in both different periods and locations of avian species likely at high risk of contact with AIV in a specific wetland. This study presents an individual-based stochastic model for the Ebre Delta as an example of this appliance. Based on the Monte-Carlo method, the model simulates the dynamics of the spread of AIV among wild birds in a natural park following introduction of an infected bird. Data on wild bird species population, apparent AIV prevalence recorded in wild birds during the period of study, and ecological information on factors such as behaviour, contact rates or patterns of movements of waterfowl were incorporated as inputs of the model. From these inputs, the model predicted those species that would introduce most of AIV in different periods and those species and areas that would be at high risk as a consequence of the spread of these AIV incursions. This method can serve as a complementary tool to previous studies to optimize the allocation of the limited AI surveillance resources in a local complex ecosystem. However, this study indicates that in order to predict the evolution of the spread of AIV at the local scale, there is a need for further research on the identification of host factors involved in the interspecies transmission of AIV.
设计、采样和数据解释是进行禽流感病毒(AIV)野生动物监测的重要挑战。本研究旨在构建一个模型,以改进和增强对特定湿地中与 AIV 接触风险较高的鸟类物种在不同时期和地点的识别能力。本研究以埃布罗三角洲为例,提出了一种基于个体的随机模型。该模型基于蒙特卡罗方法,模拟了受感染鸟类引入后 AIV 在自然公园中野生鸟类之间传播的动态。模型的输入包括野生鸟类种群数据、研究期间野生鸟类中记录的明显 AIV 流行率,以及行为、水禽接触率或运动模式等因素的生态信息。根据这些输入,模型预测了在不同时期会引入大多数 AIV 的物种,以及由于这些 AIV 入侵而处于高风险的物种和地区。这种方法可以作为之前研究的补充工具,以优化在本地复杂生态系统中有限的 AI 监测资源的分配。然而,本研究表明,为了预测 AIV 在本地范围内传播的演变,需要进一步研究涉及 AIV 在种间传播的宿主因素的识别。