使用仅存在数据和生物地理模板绘制物种分布的可重复、数据驱动的方法

IF 2.3 2区 生物学 Q2 ECOLOGY
Cristian S. Montalvo-Mancheno, Jessie C. Buettel, Stefania Ondei, Barry W. Brook
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引用次数: 0

摘要

专家衍生的范围图广泛用于宏观生态学和生物地理学分析,但它们是主观的,在分类学上有偏见的,并且在处理物种缺失时不一致。我们开发了一种可重复的、数据驱动的方法,利用澳大利亚临时生物地理区划(IBRA)的存在数据和分区域来估计物种的发生程度(EOO)。这种方法采用高斯核密度估计器,校准空间相干性和生态真实感,生成独立于任意网格结构的地图。我们将其应用于610种澳大利亚鸟类,并评估了我们的数据驱动的EOO地图与国际鸟盟专家导出的范围地图的一致性。这两种地图来源之间的空间关联,以0-1的比例测量,在物种之间的范围从接近0到0.93,在陆生鸟类中一致性更高。两种地图来源的丰富度估计值在最精细的空间尺度(IBRA分区域)上差异最大,在最粗糙的生物地理尺度(生态区)上的平均误差和均方根误差比在分区域尺度上的误差低1/3。同样,我们通过为选定的两栖动物、哺乳动物、爬行动物和维管植物生成数据驱动的EOO地图,证明了该方法在不同分类群中的适用性。就像鸟类一样,这些非鸟类物种分布的不连续性代表了澳大利亚不同的亚种群。我们的方法最大限度地减少了采样偏差和内部不连续性对物种EOO估计的影响,同时允许范围边缘细化和亚种群描绘。它提供了一种客观和可扩展的替代专家衍生的范围地图,非常适合需要空间精度一致性的大规模生态研究。鉴于已经使用的生物地理模板过多,我们的方法适用于许多情况,因此可以很容易地支持在大空间尺度上更好地理解和保护生物多样性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Reproducible, Data-Driven Approach to Mapping Species Distributions Using Presence-Only Data and Biogeographic Templates

A Reproducible, Data-Driven Approach to Mapping Species Distributions Using Presence-Only Data and Biogeographic Templates

Expert-derived range maps are used extensively in macroecological and biogeographic analyses, yet they are subjective, taxonomically biased, and inconsistent in their treatment of species' absences. We developed a reproducible, data-driven approach to estimate species' extent of occurrence (EOO) using presence-only data and subregions of the Interim Biogeographic Regionalization for Australia (IBRA). This approach employs a Gaussian kernel density estimator calibrated for spatial coherence and ecological realism, producing maps independent of arbitrary grid structures. We applied it to 610 Australian bird species and evaluated the concordance of our data-driven EOO maps against BirdLife International expert-derived range maps. The spatial association between these two map sources, measured on a 0–1 scale, ranged from near-zero to 0.93 across species, with higher concordance among terrestrial birds. Estimates of richness using both map sources varied most at the finest spatial scale (IBRA subregions), with mean and root mean square errors at the coarsest biogeographic scale (ecoregion) being 1/3 lower than those at the subregional scale. Likewise, we demonstrated the approach's applicability across taxa by generating data-driven EOO maps for selected amphibians, mammals, reptiles, and vascular plants. Like for birds, discontinuities in the distribution of these non-avian species represented different subpopulations over Australia. Our approach minimizes the influence of sampling bias and internal discontinuities in the estimation of species' EOO, while allowing for range edge refinement and subpopulation delineation. It provides an objective and scalable alternative to expert-derived range maps, well-suited for large-scale ecological research requiring consistency in spatial precision. Given the plethora of biogeographic templates already in use, our approach is adaptable to many contexts and thus can readily support a better understanding and conservation of biodiversity at large spatial scales.

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来源期刊
CiteScore
4.40
自引率
3.80%
发文量
1027
审稿时长
3-6 weeks
期刊介绍: Ecology and Evolution is the peer reviewed journal for rapid dissemination of research in all areas of ecology, evolution and conservation science. The journal gives priority to quality research reports, theoretical or empirical, that develop our understanding of organisms and their diversity, interactions between them, and the natural environment. Ecology and Evolution gives prompt and equal consideration to papers reporting theoretical, experimental, applied and descriptive work in terrestrial and aquatic environments. The journal will consider submissions across taxa in areas including but not limited to micro and macro ecological and evolutionary processes, characteristics of and interactions between individuals, populations, communities and the environment, physiological responses to environmental change, population genetics and phylogenetics, relatedness and kin selection, life histories, systematics and taxonomy, conservation genetics, extinction, speciation, adaption, behaviour, biodiversity, species abundance, macroecology, population and ecosystem dynamics, and conservation policy.
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