Integrating food webs in species distribution models can improve ecological niche estimation and predictions

IF 5.4 1区 环境科学与生态学 Q1 BIODIVERSITY CONSERVATION Ecography Pub Date : 2025-01-14 DOI:10.1111/ecog.07546
Giovanni Poggiato, Jérémy Andréoletti, Laura J. Pollock, Wilfried Thuiller
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Abstract

Biotic interactions play a fundamental role in shaping multitrophic species communities, yet incorporating these interactions into species distribution models (SDMs) remains challenging. With the growing availability of species interaction networks, it is now feasible to integrate these interactions into SDMs for more comprehensive predictions. Here, we propose a novel framework that combines trophic interaction networks with Bayesian structural equation models, enabling each species to be modeled based on its interactions with predators or prey alongside environmental factors. This framework addresses issues of multicollinearity and error propagation, making it possible to predict species distributions in unobserved locations or under future environmental conditions, even when prey or predator distributions are unknown. We tested and validated our framework on realistic simulated communities spanning different theoretical models and ecological setups. scenarios. Our approach significantly improved the estimation of both potential and realized niches compared to single SDMs, with mean performance gains of 8% and 6%, respectively. These improvements were especially notable for species strongly regulated by biotic factors, thereby enhancing model predictive accuracy. Our framework supports integration with various SDM extensions, such as occupancy and integrated models, offering flexibility and adaptability for future developments. While not a universal solution that consistently outperforms single SDMs, our approach provides a valuable new tool for modeling multitrophic community distributions when biotic interactions are known or assumed.
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将食物网整合到物种分布模型中可以改善生态位的估计和预测
生物相互作用在形成多营养物种群落中起着重要作用,但将这些相互作用纳入物种分布模型(SDMs)仍然具有挑战性。随着物种相互作用网络的不断增加,将这些相互作用整合到sdm中以进行更全面的预测是可行的。在这里,我们提出了一个新的框架,将营养相互作用网络与贝叶斯结构方程模型相结合,使每个物种能够根据其与捕食者或猎物的相互作用以及环境因素进行建模。该框架解决了多重共线性和误差传播问题,使得在未观察到的位置或未来环境条件下预测物种分布成为可能,即使猎物或捕食者的分布是未知的。我们在跨越不同理论模型和生态设置的现实模拟社区中测试和验证了我们的框架。场景。与单一sdm相比,我们的方法显著提高了对潜在和已实现利基的估计,平均性能分别提高了8%和6%。这些改进对于受生物因素强烈调节的物种尤其显著,从而提高了模型的预测准确性。我们的框架支持与各种SDM扩展的集成,例如占用和集成模型,为未来的发展提供灵活性和适应性。虽然不是一个普遍的解决方案,始终优于单一sdm,我们的方法提供了一个有价值的新工具,当生物相互作用是已知或假设的建模多营养群落分布。
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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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