Centre for Ecology and Conservation, Exeter University, Penryn, UK.
CABI, Nairobi, Kenya.
Pest Manag Sci. 2022 Feb;78(2):671-683. doi: 10.1002/ps.6677. Epub 2021 Oct 26.
Forecasting the spread of emerging pests is widely requested by pest management agencies in order to prioritise and target efforts. Two widely used approaches are statistical Species Distribution Models (SDMs) and CLIMEX, which uses ecophysiological parameters. Each have strengths and weaknesses. SDMs can incorporate almost any environmental condition and their accuracy can be formally evaluated to inform managers. However, accuracy is affected by data availability and can be limited for emerging pests, and SDMs usually predict year-round distributions, not seasonal outbreaks. CLIMEX can formally incorporate expert ecophysiological knowledge and predicts seasonal outbreaks. However, the methods for formal evaluation are limited and rarely applied. We argue that both approaches can be informative and complementary, but we need tools to integrate and evaluate their accuracy. Here we develop such an approach, and test it by forecasting the potential global range of the tomato pest Tuta absoluta.
The accuracy of previously developed CLIMEX and new statistical SDMs were comparable on average, but the best statistical SDM techniques and environmental data substantially outperformed CLIMEX. The ensembled approach changes expectations of T. absoluta's spread. The pest's environmental tolerances and potential range in Africa, the Arabian Peninsula, Central Asia and Australia will be larger than previous estimates.
We recommend that CLIMEX be considered one of a suite of SDM techniques and thus evaluated formally. CLIMEX and statistical SDMs should be compared and ensembled if possible. We provide code that can be used to do so when employing the biomod suite of SDM techniques. © 2021 The Authors. Pest Management Science published by John Wiley & Sons Ltd on behalf of Society of Chemical Industry.
为了确定优先级和目标,害虫管理机构广泛要求预测新出现的害虫的传播。两种广泛使用的方法是统计物种分布模型(SDM)和使用生理生态参数的 CLIMEX。每种方法都有其优缺点。SDM 可以包含几乎任何环境条件,其准确性可以通过正式评估来通知管理人员。然而,准确性受到数据可用性的影响,对于新出现的害虫可能会受到限制,并且 SDM 通常预测全年分布,而不是季节性爆发。CLIMEX 可以正式纳入专家生理生态知识并预测季节性爆发。然而,用于正式评估的方法有限,很少应用。我们认为这两种方法都可以提供信息和补充,但我们需要工具来整合和评估它们的准确性。在这里,我们开发了这样一种方法,并通过预测番茄害虫烟粉虱的潜在全球范围来测试它。
先前开发的 CLIMEX 和新的统计 SDM 的准确性平均相当,但最佳的统计 SDM 技术和环境数据大大优于 CLIMEX。综合方法改变了对 T. absoluta 传播的期望。该害虫在非洲、阿拉伯半岛、中亚和澳大利亚的环境耐受性和潜在范围将大于以前的估计。
我们建议将 CLIMEX 视为一套 SDM 技术之一,并进行正式评估。如果可能,应比较 CLIMEX 和统计 SDM 并进行综合。当使用 biomod 套件的 SDM 技术时,我们提供了可以用来做到这一点的代码。© 2021 作者。害虫管理科学由 John Wiley & Sons Ltd 代表化学工业协会出版。