Department of Integrative Biology; Ecology, Evolutionary Biology, and Behavior Program, Michigan State University, East Lansing, Michigan, USA.
Cornell Lab of Ornithology, Cornell University, Ithaca, New York, USA.
J Anim Ecol. 2023 Dec;92(12):2248-2262. doi: 10.1111/1365-2656.14012. Epub 2023 Oct 25.
Data deficiencies among rare or cryptic species preclude assessment of community-level processes using many existing approaches, limiting our understanding of the trends and stressors for large numbers of species. Yet evaluating the dynamics of whole communities, not just common or charismatic species, is critical to understanding and the responses of biodiversity to ongoing environmental pressures. A recent surge in both public science and government-funded data collection efforts has led to a wealth of biodiversity data. However, these data collection programmes use a wide range of sampling protocols (from unstructured, opportunistic observations of wildlife to well-structured, design-based programmes) and record information at a variety of spatiotemporal scales. As a result, available biodiversity data vary substantially in quantity and information content, which must be carefully reconciled for meaningful ecological analysis. Hierarchical modelling, including single-species integrated models and hierarchical community models, has improved our ability to assess and predict biodiversity trends and processes. Here, we highlight the emerging 'integrated community modelling' framework that combines both data integration and community modelling to improve inferences on species- and community-level dynamics. We illustrate the framework with a series of worked examples. Our three case studies demonstrate how integrated community models can be used to extend the geographic scope when evaluating species distributions and community-level richness patterns; discern population and community trends over time; and estimate demographic rates and population growth for communities of sympatric species. We implemented these worked examples using multiple software methods through the R platform via packages with formula-based interfaces and through development of custom code in JAGS, NIMBLE and Stan. Integrated community models provide an exciting approach to model biological and observational processes for multiple species using multiple data types and sources simultaneously, thus accounting for uncertainty and sampling error within a unified framework. By leveraging the combined benefits of both data integration and community modelling, integrated community models can produce valuable information about both common and rare species as well as community-level dynamics, allowing for holistic evaluation of the effects of global change on biodiversity.
由于稀有或隐匿物种的数据缺失,使用许多现有方法评估群落级过程受到限制,这限制了我们对大量物种的趋势和压力的了解。然而,评估整个群落的动态,而不仅仅是常见或有魅力的物种,对于理解生物多样性对持续环境压力的响应至关重要。最近,公众科学和政府资助的数据收集工作都有了激增,这导致了大量的生物多样性数据。然而,这些数据收集计划使用了广泛的采样协议(从野生动物的非结构化、机会性观察到结构化、基于设计的计划),并在各种时空尺度上记录信息。因此,可用的生物多样性数据在数量和信息含量上有很大的差异,必须仔细协调,以便进行有意义的生态分析。分层模型,包括单物种综合模型和分层群落模型,提高了我们评估和预测生物多样性趋势和过程的能力。在这里,我们强调了新兴的“综合群落建模”框架,该框架结合了数据集成和群落建模,以提高对物种和群落动态的推断。我们用一系列实例来说明这个框架。我们的三个案例研究表明,综合群落模型如何用于扩展评估物种分布和群落丰富度模式时的地理范围;辨别随时间推移的种群和群落趋势;以及估计同域物种群落的人口和种群增长速度。我们使用了多个软件方法,通过 R 平台中的公式接口的包以及在 JAGS、NIMBLE 和 Stan 中开发的自定义代码来实现这些实例。综合群落模型提供了一种令人兴奋的方法,可以使用多种数据类型和来源同时对多个物种的生物和观测过程进行建模,从而在一个统一的框架内考虑不确定性和采样误差。通过利用数据集成和群落建模的综合优势,综合群落模型可以产生关于常见和稀有物种以及群落动态的有价值的信息,从而全面评估全球变化对生物多样性的影响。