Informative priors can account for location uncertainty in stop-level analyses of the North American Breeding Bird Survey (BBS), allowing fine-scale ecological analyses

Ryan C Burner, Alan Kirschbaum, Jeffrey A Hostetler, David J Ziolkowski, Nicholas M Anich, Daniel Turek, Eli D Striegel, Neal D Niemuth
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Abstract

Ecological inferences are often based on the locations at which species are present, but many species records have substantial uncertainty in spatial metadata, limiting their utility for fine-scale analyses. This is especially prevalent in historical records such as museum specimens, and in some citizen-science data. For example, the North American Breeding Bird Survey (BBS) has 55+ years of bird data from regular transects (“routes”) across the continent but was not designed to capture the spatial component of point count events, limiting analyses of species-habitat relationships for which it would otherwise be well suited. We present a new methodology for quantifying location uncertainty in BBS records using digitized estimated stop locations, deriving the corresponding environmental covariate uncertainty distributions, and incorporating this information into hierarchical species distribution models using informative Bayesian priors. This approach allows for estimation of species–environment relationships in a way that fully accounts for underlying spatial uncertainty. We quantify stop-location uncertainty in BBS data across the central United States, model bird–land cover relationships in the upper Midwest, and validate our method by comparing posterior land cover estimates to known covariate values for a subset of GPS-digitized stop locations. We provide code for implementing this method in R. Posterior land cover estimates (forest, grass/hay, and developed land cover), based on our informative priors, were highly correlated with known land cover values from GPS-digitized stop locations. Our approach thus makes it possible to responsibly leverage large historic and citizen science databases, such as the BBS, for fine-scale ecological analyses.
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信息先验可以在北美繁殖鸟类调查(BBS)的停止级分析中考虑位置的不确定性,从而进行精细的生态分析
生态推断通常以物种出现的地点为基础,但许多物种记录的空间元数据具有很大的不确定性,限制了其在精细尺度分析中的实用性。这在博物馆标本等历史记录和一些公民科学数据中尤为普遍。例如,北美繁殖鸟类调查(BBS)拥有 55 年以上的鸟类数据,这些数据来自横跨美国大陆的常规横断面("路线"),但其设计并不是为了捕捉点计数事件的空间部分,从而限制了物种与栖息地关系的分析,而这本来是非常适合分析的。我们提出了一种新的方法,利用数字化的估计停止位置来量化 BBS 记录中位置的不确定性,推导出相应的环境协变量不确定性分布,并利用信息贝叶斯先验将这些信息纳入分层物种分布模型。这种方法可以在充分考虑潜在空间不确定性的情况下估计物种与环境的关系。我们量化了美国中部 BBS 数据中停止位置的不确定性,建立了中西部上部鸟类与土地覆被关系的模型,并通过比较土地覆被估计的后验值和 GPS 定位停止位置子集的已知协变量值验证了我们的方法。根据我们的信息先验,后验土地覆被估计值(森林、草地/干草和已开发土地覆被)与 GPS 定位停止位置的已知土地覆被值高度相关。因此,我们的方法可以负责任地利用大型历史数据库和公民科学数据库(如 BBS)进行精细的生态分析。
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