A comparative framework to develop transferable species distribution models for animal telemetry data

IF 2.9 3区 环境科学与生态学 Q2 ECOLOGY Ecosphere Pub Date : 2024-12-22 DOI:10.1002/ecs2.70136
Joshua A. Cullen, Camila Domit, Margaret M. Lamont, Christopher D. Marshall, Armando J. B. Santos, Christopher R. Sasso, Mehsin Al Ansi, Kristen M. Hart, Mariana M. P. B. Fuentes
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Abstract

Species distribution models (SDMs) have become increasingly popular for making ecological inferences, as well as predictions to inform conservation and management. In predictive modeling, practitioners often use correlative SDMs that only evaluate a single spatial scale and do not account for differences in life stages. These modeling decisions may limit the performance of SDMs beyond the study region or sampling period. Given the increasing desire to develop transferable SDMs, a robust framework is necessary that can account for known challenges of model transferability. Here, we propose a comparative framework to develop transferable SDMs, which was tested using satellite telemetry data from green turtles (Chelonia mydas). This framework is characterized by a set of steps comparing among different models based on (1) model algorithm (e.g., generalized linear model vs. Gaussian process regression) and formulation (e.g., correlative model vs. hybrid model), (2) spatial scale, and (3) accounting for life stage. SDMs were fitted as resource selection functions and trained on data from the Gulf of Mexico with bathymetric depth, net primary productivity, and sea surface temperature as covariates. Independent validation datasets from Brazil and Qatar were used to assess model transferability. A correlative SDM using a hierarchical Gaussian process regression (HGPR) algorithm exhibited greater transferability than a hybrid SDM using HGPR, as well as correlative and hybrid forms of hierarchical generalized linear models. Additionally, models that evaluated habitat selection at the finest spatial scale and that did not account for life stage proved to be the most transferable in this study. The comparative framework presented here may be applied to a variety of species, ecological datasets (e.g., presence-only, presence-absence, mark-recapture), and modeling frameworks (e.g., resource selection functions, step selection functions, occupancy models) to generate transferable predictions of species–habitat associations. We expect that SDM predictions resulting from this comparative framework will be more informative management tools and may be used to more accurately assess climate change impacts on a wide array of taxa.

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为动物遥测数据开发可转移物种分布模型的比较框架
物种分布模型(SDMs)在进行生态推断以及为保护和管理提供信息的预测方面越来越受欢迎。在预测建模中,从业者经常使用相关的sdm,这些sdm只评估单个空间尺度,而不考虑生命阶段的差异。这些建模决策可能会限制sdm在研究区域或采样周期之外的性能。考虑到开发可转移sdm的愿望日益增加,一个健壮的框架是必要的,它可以解释模型可转移性的已知挑战。在此,我们提出了一个开发可转移sdm的比较框架,并使用绿海龟(CheloniaChelonia mydas)的卫星遥测数据对其进行了测试。该框架的特点是基于(1)模型算法(例如,广义线性模型与高斯过程回归)和公式(例如,相关模型与混合模型),(2)空间尺度,(3)生命阶段的考虑,对不同模型进行了一系列步骤的比较。sdm被拟合为资源选择函数,并以墨西哥湾的数据为基础,以水深、净初级生产力和海面温度为协变量进行训练。来自巴西和卡塔尔的独立验证数据集用于评估模型可转移性。使用层次高斯过程回归(HGPR)算法的相关SDM比使用HGPR的混合SDM以及相关和混合形式的层次广义线性模型具有更大的可转移性。此外,在最精细的空间尺度上评估栖息地选择且不考虑生命阶段的模型在本研究中被证明是最具可移植性的。这里提出的比较框架可以应用于各种物种、生态数据集(例如,仅存在、存在-缺失、标记-再捕获)和建模框架(例如,资源选择函数、步骤选择函数、占用模型),以产生可转移的物种-栖息地关联预测。我们期望基于这一比较框架的SDM预测将成为更具信息性的管理工具,并可用于更准确地评估气候变化对广泛分类群的影响。
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来源期刊
Ecosphere
Ecosphere ECOLOGY-
CiteScore
4.70
自引率
3.70%
发文量
378
审稿时长
15 weeks
期刊介绍: The scope of Ecosphere is as broad as the science of ecology itself. The journal welcomes submissions from all sub-disciplines of ecological science, as well as interdisciplinary studies relating to ecology. The journal''s goal is to provide a rapid-publication, online-only, open-access alternative to ESA''s other journals, while maintaining the rigorous standards of peer review for which ESA publications are renowned.
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