Alexander Center for Applied Population Biology, Lincoln Park Zoo, Chicago, Illinois, United States of America.
PLoS One. 2021 Sep 10;16(9):e0257226. doi: 10.1371/journal.pone.0257226. eCollection 2021.
Biodiversity loss is a global ecological crisis that is both a driver of and response to environmental change. Understanding the connections between species declines and other components of human-natural systems extends across the physical, life, and social sciences. From an analysis perspective, this requires integration of data from different scientific domains, which often have heterogeneous scales and resolutions. Community science projects such as eBird may help to fill spatiotemporal gaps and enhance the resolution of standardized biological surveys. Comparisons between eBird and the more comprehensive North American Breeding Bird Survey (BBS) have found these datasets can produce consistent multi-year abundance trends for bird populations at national and regional scales. Here we investigate the reliability of these datasets for estimating patterns at finer resolutions, inter-annual changes in abundance within town boundaries. Using a case study of 14 focal species within Massachusetts, we calculated four indices of annual relative abundance using eBird and BBS datasets, including two different modeling approaches within each dataset. We compared the correspondence between these indices in terms of multi-year trends, annual estimates, and inter-annual changes in estimates at the state and town-level. We found correspondence between eBird and BBS multi-year trends, but this was not consistent across all species and diminished at finer, inter-annual temporal resolutions. We further show that standardizing modeling approaches can increase index reliability even between datasets at coarser temporal resolutions. Our results indicate that multiple datasets and modeling methods should be considered when estimating species population dynamics at finer temporal resolutions, but standardizing modeling approaches may improve estimate correspondence between abundance datasets. In addition, reliability of these indices at finer spatial scales may depend on habitat composition, which can impact survey accuracy.
生物多样性丧失是一个全球性的生态危机,既是环境变化的驱动因素,也是环境变化的响应。理解物种减少与人类-自然系统其他组成部分之间的联系需要跨越物理、生命和社会科学。从分析的角度来看,这需要整合来自不同科学领域的数据,这些数据通常具有异质的尺度和分辨率。鸟类学等社区科学项目可能有助于填补时空差距,并提高标准化生物调查的分辨率。与更全面的北美繁殖鸟类调查(BBS)相比,eBird 发现这些数据集可以在国家和地区尺度上为鸟类种群产生一致的多年丰度趋势。在这里,我们研究了这些数据集在更精细分辨率下估计模式的可靠性,即在城镇边界内的丰度年度变化。使用马萨诸塞州的 14 个焦点物种的案例研究,我们使用 eBird 和 BBS 数据集计算了四个年度相对丰度指数,包括每个数据集内的两种不同建模方法。我们比较了这些指数在多年趋势、年度估计和年度估计在州和城镇级别上的变化方面的一致性。我们发现 eBird 和 BBS 的多年趋势之间存在一致性,但并非所有物种都一致,并且在更精细的年度时间分辨率上会减弱。我们进一步表明,即使在较粗的时间分辨率下,标准化建模方法也可以提高指数的可靠性。我们的研究结果表明,在更精细的时间分辨率下估计物种种群动态时,应考虑多个数据集和建模方法,但标准化建模方法可能会提高丰度数据集之间的估计一致性。此外,这些指数在更精细的空间尺度上的可靠性可能取决于影响调查准确性的栖息地组成。