Combining past and contemporary species occurrences with ordinal species distribution modeling to investigate responses to climate change

IF 5.4 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION Ecography Pub Date : 2024-11-27 DOI:10.1111/ecog.07382
Erik A. Beever, Marie L. Westover, Adam B. Smith, Francis D. Gerraty, Peter D. Billman, Felisa A. Smith
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Abstract

Many organisms leave evidence of their former occurrence, such as scat, abandoned burrows, middens, ancient eDNA or fossils, which indicate areas from which a species has since disappeared. However, combining this evidence with contemporary occurrences within a single modeling framework remains challenging. Traditional binary species‐distribution modeling reduces occurrence to two temporally coarse states (present/absent), so thus cannot leverage the information inherent in temporal sequences of evidence of past occurrence. In contrast, ordinal modeling can use the natural time‐varying order of states (e.g. never occupied versus previously occupied versus currently occupied) to provide greater insights into range shifts. We demonstrate the power of ordinal modeling for identifying the major influences of biogeographic and climatic variables on current and past occupancy of the American pika Ochotona princeps, a climate‐sensitive mammal. Sampling over five years across the species' southernmost, warm‐edge range limit, we tested the effects of these variables at 570 habitat patches where occurrence was classified either as binary or ordinal. The two analyses produced different top models and predictors – ordinal modeling highlighted chronic cold as the most‐important predictor of occurrence, whereas binary modeling indicated primacy of average summer‐long temperatures. Colder wintertime temperatures were associated in ordinal models with higher likelihood of occurrence, which we hypothesize reflect longer retention of insulative and meltwater‐provisioning snowpacks. Our binary results mirrored those of other past pika investigations employing binary analysis, wherein warmer temperatures decrease likelihood of occurrence. Because both ordinal‐ and binary‐analysis top models included climatic and biogeographic factors, results constitute important considerations for climate‐adaptation planning. Cross‐time evidences of species occurrences remain underutilized for assessing responses to climate change. Compared to multi‐state occupancy modeling, which presumes all states occur in the same time period, ordinal models enable use of historical evidence of species' occurrence to identify factors driving species' distributions more finely across time.
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结合过去和现代物种发生与顺序物种分布模型研究对气候变化的响应
许多生物留下了它们曾经出现过的证据,如粪便、废弃的洞穴、堆、古老的dna或化石,这些都表明了一个物种后来消失的地方。然而,将这些证据与当代事件结合在一个单一的建模框架内仍然具有挑战性。传统的二元物种分布模型将发生减少到两种时间上的粗糙状态(存在/不存在),因此无法利用过去发生证据的时间序列中固有的信息。相比之下,有序建模可以使用状态的自然时变顺序(例如,从未占用与先前占用与当前占用)来提供对范围变化的更深入的了解。我们展示了序贯模型的力量,以确定生物地理和气候变量对美国鼠兔(一种气候敏感哺乳动物)当前和过去占用率的主要影响。我们在物种最南端的暖缘范围内进行了五年的采样,在570个栖息地斑块中测试了这些变量的影响,这些栖息地斑块的发生分为二元或有序。这两种分析产生了不同的顶级模型和预测因子——有序模型强调慢性寒冷是最重要的预测因子,而二元模型表明夏季平均温度是首要的。在顺序模型中,较冷的冬季温度与较高的发生可能性相关,我们假设这反映了保温和融水供应积雪的保留时间较长。我们的二元结果反映了过去其他鼠兔调查使用二元分析的结果,其中温度升高降低了发生的可能性。由于有序分析和二元分析顶级模型都包含了气候和生物地理因素,结果构成了气候适应规划的重要考虑因素。物种发生的跨时间证据在评估对气候变化的响应方面仍未得到充分利用。与假定所有状态都发生在同一时间段的多状态占用模型相比,有序模型能够利用物种发生的历史证据,更精细地识别驱动物种分布的因素。
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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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