非原产于北美的树皮甲虫和凤仙花甲虫的客观风险评估

IF 4.3 2区 环境科学与生态学 Q1 ECOLOGY
Andrew J. Johnson, David Bednar, Jiri Hulcr
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引用次数: 0

摘要

有害生物风险评估为监管决策提供信息,以促进安全贸易,同时保护一个国家的农业和环境资源。有害生物风险评估的第一步是有害生物分类,这有助于确定是否需要进行深入检查。我们建立了一个模型来预测非本地树皮和ambrosia甲虫(Curculionidae: Scolytinae)的潜在影响。该模型使用了从对外来物种的广泛评估中得出的生物变量,并产生了一个五分制的影响预测。我们使用蒙特卡罗模拟随机决策树森林来适应不确定性和缺失数据。非本地树皮甲虫既包括具有重大生态影响的入侵物种,如广泛的树木死亡,也包括其他风险很小的物种。我们在美国大陆收集了60种引进的非本地树皮甲虫作为训练集。从行为、瘟疫、文献中记录的损害/解释、生物学性状以及与真菌(包括植物病原体)的相互作用的报告中选择了42个潜在的预测变量。该模型基于USDA-APHIS在现有风险评估中使用的策略,特别是外来有害生物的客观优先排序(OPEP)模型,并进行了以下更改:(1)建立和训练模型的透明数据集,以便将来更新和在其他系统中使用;(2)使用从广泛的自然历史矩阵中获得的值进行不确定性模拟,而不是假设的均匀分布;(3)对多个影响水平的概率进行预测,允许用户根据可接受的风险做出决定。该模型是为美国大陆的猪瘟虫风险分析而设计的,但也可以适用于其他害虫或地区。我们通过迭代地从训练集中删除每个物种并重新训练模型来测试模型的性能。经过重新训练的模型准确地预测了被移除的物种。为了证明该模型的应用,我们预测了尚未出现在美国大陆的小甲虫、Xylosandrus morigerus和Hypoborus ficus的影响,以及一个没有已知数据的额外假设物种。我们的模型预测,如果引入这些物种,它们可能会产生中等影响,不太可能产生高影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Objective risk assessment of bark and ambrosia beetles non-indigenous to North America

Objective risk assessment of bark and ambrosia beetles non-indigenous to North America

Pest risk assessment informs regulatory decisions to facilitate safe trade while also protecting a country's agricultural and environmental resources. The first step in pest risk assessment is pest categorization which can help determine whether an in-depth examination is needed. We created a model to predict the potential impact of non-indigenous bark and ambrosia beetles (Curculionidae: Scolytinae). This model uses biological variables derived from extensive assessment of alien species and produces a five-point scale of impact prediction. We accommodate uncertainty and missing data using random decision tree forests with Monte Carlo simulations. Non-indigenous bark beetles include both invasive species with significant ecological impacts, such as widespread tree death, and others that pose little risk. We assembled a comprehensive list of 60 introduced non-native bark beetle species in the continental United States as the training set. Forty-two potentially predictive variables were chosen from reports on behaviors, pestilence, recorded damage/interpretations in literature, biological traits, and interactions with fungi including plant pathogens. The model builds upon strategies used by USDA-APHIS in existing risk assessments, specifically the Objective Prioritization of Exotic Pests (OPEP) model, with changes in the following: (1) a transparent dataset for building and training the model enabling future updates and use in other systems, (2) uncertainty simulations using values derived from an extensive natural history matrix rather than an assumed equal distribution, and (3) predictions made on the probability of multiple impact levels, allowing users to decide based on acceptable risk. The model is designed for pest risk analysis for Scolytinae in the continental United States but can be adapted to other pests or regions. We tested the model's performance by iteratively removing each species from the training set and retraining the model. The retrained models accurately predicted the removed species. To demonstrate the model's application, we predicted the impact of scolytine beetles not yet present in the continental United States, Xylosandrus morigerus and Hypoborus ficus, plus an additional hypothetical species with no known data. Our model predicts that these species are likely to have moderate impacts and unlikely to have high impacts if they were introduced.

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来源期刊
Ecological Applications
Ecological Applications 环境科学-环境科学
CiteScore
9.50
自引率
2.00%
发文量
268
审稿时长
6 months
期刊介绍: The pages of Ecological Applications are open to research and discussion papers that integrate ecological science and concepts with their application and implications. Of special interest are papers that develop the basic scientific principles on which environmental decision-making should rest, and those that discuss the application of ecological concepts to environmental problem solving, policy, and management. Papers that deal explicitly with policy matters are welcome. Interdisciplinary approaches are encouraged, as are short communications on emerging environmental challenges.
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