Bonebrake Timothy C, Yau Eugene Yu Hin
School of Biological Sciences, The University of Hong Kong, Hong Kong SAR, China.
J Anim Ecol. 2025 Oct;94(10):1900-1903. doi: 10.1111/1365-2656.70138. Epub 2025 Sep 11.
Research Highlight: Guilbault, E., Sihvonen, P., Suuronen A., Huikkonen, I.-M., Pöyry, J., Laine, A.-L., Roslin, T., Saastamoinen, M., Vanhatalo, J. (2025). Strong context dependence in the relative importance of climate and habitat on nation-wide macro-moth community changes. Journal of Animal Ecology, https://doi.org/10.1111/1365-2656.70107. Distributions of species are linked directly to extinction risk. Different threats can drive range contractions and reshape biodiversity patterns, yet their relative importance is rarely apparent. Additionally, the spatial and temporal distributions of species-and the resulting biodiversity patterns-are often incomplete or biased in existing datasets. Guilbault et al. (2025) present a productive framework to analyse biodiversity-monitoring data with spatiotemporal gaps by combining joint species distribution modelling (jSDM) with variance partitioning. Using a Finnish moth monitoring dataset, they demonstrate the effectiveness of this approach in identifying the dominant drivers of (and potentially, threats to) species' distributions. Their results reveal how these drivers vary across environments (environmental dependency) and between moths with different functional traits (functional dependency). Expanding this analytical framework to additional datasets with broad spatial and/or temporal coverage will further our understanding of how threats to biodiversity vary across time and space. Advances in modelling methods and the growing availability of high-quality data are substantially improving our capability to pinpoint and address threats to biodiversity-we hope that by leveraging results from such efforts, we may increase capacity for managing these threats to slow biodiversity loss.
吉尔博(Guilbault, E.)、西霍宁(Sihvonen, P.)、苏罗宁(Suuronen A.)、胡伊科宁(Huikkonen, I.-M.)、佩里(Pöyry, J.)、莱恩(Laine, A.-L.)、罗斯林(Roslin, T.)、萨斯塔莫伊宁(Saastamoinen, M.)、瓦纳塔洛(Vanhatalo, J.)(2025年)。气候和栖息地对全国范围内大型蛾类群落变化的相对重要性存在强烈的背景依赖性。《动物生态学杂志》,https://doi.org/10.1111/1365 - 2656.70107。物种分布直接与灭绝风险相关。不同的威胁可导致分布范围缩小并重塑生物多样性模式,但其相对重要性却很少明晰。此外,物种的时空分布以及由此产生的生物多样性模式在现有数据集中往往不完整或存在偏差。吉尔博等人(2025年)提出了一个有效的框架,通过将联合物种分布模型(jSDM)与方差分解相结合来分析存在时空缺口的生物多样性监测数据。利用芬兰蛾类监测数据集,他们证明了该方法在识别物种分布的主要驱动因素(以及潜在威胁)方面的有效性。他们的结果揭示了这些驱动因素如何在不同环境中变化(环境依赖性)以及在具有不同功能特征的蛾类之间如何变化(功能依赖性)。将这个分析框架扩展到具有广泛空间和/或时间覆盖范围的其他数据集,将进一步加深我们对生物多样性威胁如何随时间和空间变化的理解。建模方法的进步以及高质量数据可用性的不断提高,正在大幅提升我们精准定位和应对生物多样性威胁的能力——我们希望通过利用这些努力的成果,提高管理这些威胁的能力,以减缓生物多样性丧失。