用于指导非本地物种生物监测的首批记录分布模型

IF 5.4 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION
Ecography Pub Date : 2024-12-16 DOI:10.1111/ecog.07522
Helen R. Sofaer, Demetra A. Williams, Catherine S. Jarnevich, Keana S. Shadwell, Caroline M. Kittle, Ian S. Pearse, Lucas Berio Fortini, Kelsey C. Brock
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引用次数: 0

摘要

快速定位非本地物种的新种群可以降低物种入侵造成的生态和经济损失。然而,由于难以预测哪些新的非本地物种会在哪里建立种群,这限制了积极的边境后生物监测工作。由于引入路径是建立风险空间模式的基础,一种直观的方法是在过去首次发现许多非本地物种的地区寻找新的非本地物种。我们通过首次记录分布模型(FRDMs)将这一直觉正式化,该模型将物种分布建模方法应用于收集不同物种的首次出现记录(即每个物种一条记录)。我们将首次记录分布模型定义为统计模型,通过量化与物种首次归化记录相关的环境条件来预测建立风险的空间模式。作为概念验证,我们对美国本土非本地植物的首次记录进行了建模。FRDMs 的新颖之处在于其推论不仅适用于提供数据的物种,还提供了一个严格的框架,用于预测与建模物种共享引入途径的新非本地类群的入侵热点。FRDM 可以指导在多个尺度和生态系统中对新的非本地类群的调查工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
First records distribution models to guide biosurveillance for non-native species
Quickly locating new populations of non-native species can reduce the ecological and economic costs of species invasions. However, the difficulty of predicting which new non-native species will establish, and where, has limited active post-border biosurveillance efforts. Because pathways of introduction underlie spatial patterns of establishment risk, an intuitive approach is to search for new non-native species in areas where many non-native species have first been detected in the past. We formalize this intuition via first records distribution models (FRDMs), which apply species distribution modeling methods to the collection of first occurrence records across species (i.e. one record per species). We define FRDMs as statistical models that quantify environmental conditions associated with species' first naturalized records to predict spatial patterns of establishment risk. We model the first records of non-native plants in the conterminous USA as a proof-of-concept. The novelty of FRDMs is that their inferences apply not just to the species that contributed data; they provide a rigorous framework for predicting hotspots of invasion for new non-native taxa that share a pathway of introduction with the modeled species. FRDMs can guide survey efforts for new non-native taxa at multiple scales and across ecosystems.
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来源期刊
Ecography
Ecography 环境科学-生态学
CiteScore
11.60
自引率
3.40%
发文量
122
审稿时长
8-16 weeks
期刊介绍: ECOGRAPHY publishes exciting, novel, and important articles that significantly advance understanding of ecological or biodiversity patterns in space or time. Papers focusing on conservation or restoration are welcomed, provided they are anchored in ecological theory and convey a general message that goes beyond a single case study. We encourage papers that seek advancing the field through the development and testing of theory or methodology, or by proposing new tools for analysis or interpretation of ecological phenomena. Manuscripts are expected to address general principles in ecology, though they may do so using a specific model system if they adequately frame the problem relative to a generalized ecological question or problem. Purely descriptive papers are considered only if breaking new ground and/or describing patterns seldom explored. Studies focused on a single species or single location are generally discouraged unless they make a significant contribution to advancing general theory or understanding of biodiversity patterns and processes. Manuscripts merely confirming or marginally extending results of previous work are unlikely to be considered in Ecography. Papers are judged by virtue of their originality, appeal to general interest, and their contribution to new developments in studies of spatial and temporal ecological patterns. There are no biases with regard to taxon, biome, or biogeographical area.
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