利用群落科学资料探讨基底白蚁属生境适宜性

IF 3.2 1区 农林科学 Q1 ENTOMOLOGY
Aaron M. Goodman, Jonah J Allen, Jinna Brim, Alessa Codella, Brittney Hahn, Hassan Jojo, Zoila BondocGawa Mafla-Mills, Salka’Tuwa Bondoc Mafla, Agnes Oduro, Megan M. Wilson, J. Ware
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引用次数: 1

摘要

社区科学数据库与博物馆标本位置信息的结合,极大地提高了生态位建模(ENM)的能力和准确性。增加的发生数据为了解鲜为人知或濒危物种(包括节肢动物)的分布提供了巨大的潜力。虽然在入侵和有害物种的背景下进行了白蚁的生态位建模,但很少有研究了解基生白蚁属的分布。利用美国自然历史博物馆(AMNH)的标本记录和当地数据库,建立了隶属于3科6属的12种基础白蚁的生态位模型。我们从Worldclim 19生物气候数据集v2中提取环境数据,以及SoilGrids数据集,并使用MaxEnt生成模型。基于部分接收工作特性(pROC)和遗漏率准则选择最优模型,并利用置换分析确定变量重要性。我们还计算了响应曲线,以了解适应性随环境变量变化的变化。我们的12种白蚁的最优模型的复杂性各不相同,但在属、科或地理范围之间没有明显的模式。生境适宜性主要受季节或月温、降水变化的影响。我们的研究结果不仅突出了社区科学和博物馆数据集的有效性,而且我们的模型为面对栖息地破坏和气候变化的情况下预测未来鲜为人知的节肢动物物种的丰度提供了基线。图形抽象
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilization of Community Science Data to Explore Habitat Suitability of Basal Termite Genera
Abstract The advent of community-science databases in conjunction with museum specimen locality information has exponentially increased the power and accuracy of ecological niche modeling (ENM). Increased occurrence data has provided colossal potential to understand the distributions of lesser known or endangered species, including arthropods. Although niche modeling of termites has been conducted in the context of invasive and pest species, few studies have been performed to understand the distribution of basal termite genera. Using specimen records from the American Museum of Natural History (AMNH) as well as locality databases, we generated ecological niche models for 12 basal termite species belonging to six genera and three families. We extracted environmental data from the Worldclim 19 bioclimatic dataset v2, along with SoilGrids datasets and generated models using MaxEnt. We chose Optimal models based on partial Receiving Operating characteristic (pROC) and omission rate criterion and determined variable importance using permutation analysis. We also calculated response curves to understand changes in suitability with changes in environmental variables. Optimal models for our 12 termite species ranged in complexity, but no discernible pattern was noted among genera, families, or geographic range. Permutation analysis revealed that habitat suitability is affected predominantly by seasonal or monthly temperature and precipitation variation. Our findings not only highlight the efficacy of largely community-science and museum-based datasets, but our models provide a baseline for predictions of future abundance of lesser-known arthropod species in the face of habitat destruction and climate change. Graphical Abstract
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来源期刊
CiteScore
5.30
自引率
8.80%
发文量
34
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