空间明确的生态建模改善了植物病原体传播的经验特征。

Q3 Agricultural and Biological Sciences
Plant-environment interactions (Hoboken, N.J.) Pub Date : 2023-04-09 eCollection Date: 2023-04-01 DOI:10.1002/pei3.10104
Petteri Karisto, Frédéric Suffert, Alexey Mikaberidze
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引用次数: 0

摘要

扩散是一个关键的生态过程,但仍然难以测量。通过记录离扩散源不同距离的扩散个体数量,可以获得扩散梯度。散布梯度包含散布的信息,但它们受到来源地空间范围的影响。我们怎样才能将这两种贡献分离开来,从而提取有关扩散的知识呢?我们可以使用一个小的、点状的扩散源,扩散梯度代表扩散核,它量化了单个扩散事件从扩散源扩散到目的地的概率。然而,在进行测量之前,无法确定这一近似值的有效性。这是阻碍散布特征描述取得进展的一个关键挑战。为了克服这一难题,我们提出了一种理论,该理论结合了来源的空间范围,可从扩散梯度中估计扩散核。利用这一理论,我们重新分析了已发表的三种主要植物病原体的扩散梯度。结果表明,与传统估计相比,这三种病原体的扩散距离大大缩短。通过这种方法,研究人员可以重新分析大量现有的扩散梯度,从而提高我们对扩散的认识。改进后的知识有可能促进我们对物种分布范围扩展和转移的理解,并为作物杂草和病害的管理提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Spatially explicit ecological modeling improves empirical characterization of plant pathogen dispersal.

Spatially explicit ecological modeling improves empirical characterization of plant pathogen dispersal.

Spatially explicit ecological modeling improves empirical characterization of plant pathogen dispersal.

Spatially explicit ecological modeling improves empirical characterization of plant pathogen dispersal.

Dispersal is a key ecological process, but it remains difficult to measure. By recording numbers of dispersed individuals at different distances from the source, one acquires a dispersal gradient. Dispersal gradients contain information on dispersal, but they are influenced by the spatial extent of the source. How can we separate the two contributions to extract knowledge about dispersal? One could use a small, point-like source for which a dispersal gradient represents a dispersal kernel, which quantifies the probability of an individual dispersal event from a source to a destination. However, the validity of this approximation cannot be established before conducting measurements. This represents a key challenge hindering progress in characterization of dispersal. To overcome it, we formulated a theory that incorporates the spatial extent of sources to estimate dispersal kernels from dispersal gradients. Using this theory, we re-analyzed published dispersal gradients for three major plant pathogens. We demonstrated that the three pathogens disperse over substantially shorter distances compared to conventional estimates. This method will allow the researchers to re-analyze a vast number of existing dispersal gradients to improve our knowledge about dispersal. The improved knowledge has potential to advance our understanding of species' range expansions and shifts, and inform management of weeds and diseases in crops.

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CiteScore
2.70
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