在基于景观的溪流鱼类分布模型中量化生物因素和非生物因素的相对重要性

IF 1.2 4区 环境科学与生态学 Q4 ECOLOGY
Christopher A. Custer, Douglas P. Fischer, Geoffrey Smith, Aaron Henning, Megan Kepler Schall, Matthew K. Shank, Timothy A. Wertz, Tyler Wagner
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引用次数: 0

摘要

通常利用遥感生境变量来预测当地鱼类物种的分布,这些变量描述了邻近地貌的特征,并可作为溪流生境的代用指标。然而,统计方法的最新进展允许在预测分布时利用鱼类组合数据。这一点非常重要,因为与景观衍生指标相比,集合体组成可能能提供更好的有关溪流栖息地的信息,因此可以改善预测结果。为了更好地理解在物种分布建模中使用多物种鱼类数据的价值,我们在美国宾夕法尼亚州的 1200 多个溪流集水区拟合了两个条件随机场(CRF)模型,以量化鱼类集合体共存、景观衍生生境变量以及这两个预测组之间相互作用(即共存的影响可能与环境有关)的相对重要性。我们首先将 CRF 模型的预测性能与传统上使用的单物种逻辑回归(广义线性模型;GLMs)进行了比较,发现加入鱼类组合数据通常会提高预测性能。与 GLMs 相比,多物种 CRF 模型在预测 63% 的物种出现率方面有明显提高,平均 AUC 提高了 25%。此外,与其他效应类型相比,CRF 发现物种共生具有更多信息,因此在预测发生率方面也相对更重要。CRF 还表明,允许这些生物效应受环境影响对于预测许多物种的出现非常重要。这些发现说明了鱼类组合数据在景观尺度物种分布建模中的价值,利用这些信息可以改进预测和推断,为淡水鱼类的管理和保护提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Quantifying the relative importance of biotic and abiotic factors in landscape-based models of stream fish distributions

Quantifying the relative importance of biotic and abiotic factors in landscape-based models of stream fish distributions

Lotic fish species distributions are frequently predicted using remotely sensed habitat variables that characterize the adjacent landscape and serve as proxies for instream habitat. Recent advancements in statistical methodology, however, allow for leveraging fish assemblage data when predicting distributions. This is important because assemblage composition likely provides better information about instream habitat compared to landscape-derived metrics and therefore may improve predictions. To better understand the value of using multi-species fish data in species distribution modeling, we fit two conditional random fields (CRF) models to quantify the relative importance of fish assemblage co-occurrence, landscape-derived habitat variables, and interactions between these two predictor groups (i.e., effects of co-occurrence could be context-dependent) at over 1200 stream catchments in Pennsylvania, USA. We first compared predictive performance of CRF models against traditionally used single-species logistic regressions (generalized linear models; GLMs) and found that inclusion of fish assemblage data often improved predictive performance. The multi-species CRF models performed significantly better at predicting occurrence for 63% of species with an average percent increase in AUC of 25% compared to GLMs. Furthermore, the CRF identified species co-occurrences as more informative, and thus relatively more important, at predicting occurrence than the other effect types. The CRF also suggested that allowing these biotic effects to be context-dependent was important for predicting occurrence of many species. These findings illustrate the value of fish assemblage data for landscape-scale species distribution modeling and leveraging this information can improve predictions and inferences to help inform the management and conservation of freshwater fishes.

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来源期刊
Community Ecology
Community Ecology 环境科学-生态学
CiteScore
2.90
自引率
5.90%
发文量
51
审稿时长
>36 weeks
期刊介绍: Community Ecology, established by the merger of two ecological periodicals, Coenoses and Abstracta Botanica was launched in an effort to create a common global forum for community ecologists dealing with plant, animal and/or microbial communities from terrestrial, marine or freshwater systems. Main subject areas: (i) community-based ecological theory; (ii) modelling of ecological communities; (iii) community-based ecophysiology; (iv) temporal dynamics, including succession; (v) trophic interactions, including food webs and competition; (vi) spatial pattern analysis, including scaling issues; (vii) community patterns of species richness and diversity; (viii) sampling ecological communities; (ix) data analysis methods.
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