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Using sensitivity analysis to identify key factors for the propagation of a plant epidemic

机译:使用敏感性分析来确定植物流行病传播的关键因素

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摘要

Identifying the key factors underlying the spread of a disease is an essential but challenging prerequisite to design management strategies. To tackle this issue, we propose an approach based on sensitivity analyses of a spatiotemporal stochastic model simulating the spread of a plant epidemic. This work is motivated by the spread of sharka, caused by plum pox virus, in a real landscape. We first carried out a broad-range sensitivity analysis, ignoring any prior information on six epidemiological parameters, to assess their intrinsic influence on model behaviour. A second analysis benefited from the available knowledge on sharka epidemiology and was thus restricted to more realistic values. The broad-range analysis revealed that the mean duration of the latent period is the most influential parameter of the model, whereas the sharka-specific analysis uncovered the strong impact of the connectivity of the first infected orchard. In addition to demonstrating the interest of sensitivity analyses for a stochastic model, this study highlights the impact of variation ranges of target parameters on the outcome of a sensitivity analysis. With regard to sharka management, our results suggest that sharka surveillance may benefit from paying closer attention to highly connected patches whose infection could trigger serious epidemics.
机译:确定疾病传播的关键因素是设计管理策略的必要但具有挑战性的前提。为了解决这个问题,我们提出了一种基于时空随机模型的敏感性分析的方法,该模型模拟了植物流行病的传播。这项工作是由梅花痘病毒在真实环境中传播沙卡引起的。我们首先进行了广泛的敏感性分析,忽略了关于六个流行病学参数的任何先前信息,以评估它们对模型行为的内在影响。第二次分析得益于对sharka流行病学的了解,因此仅限于更现实的价值。广泛的分析表明,潜伏期的平均持续时间是该模型最有影响力的参数,而针对sharka的分析揭示了第一个受感染果园的连通性的强大影响。除了表明对随机模型进行敏感性分析的兴趣之外,本研究还强调了目标参数变化范围对敏感性分析结果的影响。关于sharka的管理,我们的结果表明,密切关注高度连接的斑块(可能会导致严重的流行病感染),可以对sharka进行监视。

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