Department of Fisheries and Wildlife, Oregon State University, 104 Nash Hall, Corvallis, Oregon, 97331, USA.
Oregon Department of Fish and Wildlife, 1401 Gekeler Lane, La Grande, Oregon, 97850, USA.
Ecol Appl. 2021 Oct;31(7):e02405. doi: 10.1002/eap.2405. Epub 2021 Aug 11.
Spatial capture-recapture (SCR) models have become the preferred tool for estimating densities of carnivores. Within this family of models are variants requiring identification of all individuals in each encounter (SCR), a subset of individuals only (generalized spatial mark-resight, gSMR), or no individual identification (spatial count or spatial presence-absence). Although each technique has been shown through simulation to yield unbiased results, the consistency and relative precision of estimates across methods in real-world settings are seldom considered. We tested a suite of models ranging from those only requiring detections of unmarked individuals to others that integrate remote camera, physical capture, genetic, and global positioning system (GPS) data into a hybrid model, to estimate population densities of black bears, bobcats, cougars, and coyotes. For each species, we genotyped fecal DNA collected with detection dogs during a 20-d period. A subset of individuals from each species was affixed with GPS collars bearing unique markings and resighted by remote cameras over 140 d contemporaneous with scat collection. Camera-based gSMR models produced density estimates that differed by <10% from genetic SCR for bears, cougars, and coyotes once important sources of variation (sex or behavioral status) were controlled for. For bobcats, SCR estimates were 33% higher than gSMR. The cause of the discrepancies in estimates was likely attributable to challenges designing a study compatible for species with disparate home range sizes and the difficulty of collecting sufficient data in a timeframe in which demographic closure could be assumed. Unmarked models estimated densities that varied greatly from SCR, but estimates became more consistent in models wherein more individuals were identifiable. Hybrid models containing all data sources exhibited the most precise estimates for all species. For studies in which only sparse data can be obtained and the strictest model assumptions are unlikely to be met, we suggest researchers use caution making inference from models lacking individual identity. For best results, we further recommend the use of methods requiring at least a subset of the population is marked and that multiple data sets are incorporated when possible.
空间捕捉-再捕获 (SCR) 模型已成为估计食肉动物密度的首选工具。在这个模型家族中,有一些变体需要识别每个相遇中的所有个体(SCR),只识别部分个体(广义空间标记重见、gSMR),或者不识别个体(空间计数或空间存在-缺失)。虽然通过模拟已经证明每种技术都能产生无偏结果,但在现实世界中,很少考虑方法之间估计值的一致性和相对精度。我们测试了一系列模型,从仅需要检测未标记个体的模型到将远程相机、物理捕获、遗传和全球定位系统 (GPS) 数据集成到混合模型中的模型,以估计黑熊、山猫、美洲狮和郊狼的种群密度。对于每种物种,我们使用检测犬在 20 天内收集粪便 DNA 进行基因分型。从每个物种中选择一部分个体,佩戴带有独特标记的 GPS 项圈,并在粪便收集的同时通过远程相机在 140 天内重新看到。在控制了重要的变异源(性别或行为状态)之后,基于相机的 gSMR 模型产生的密度估计值与熊、美洲狮和郊狼的遗传 SCR 相差不到 10%。对于山猫,SCR 估计值比 gSMR 高 33%。估计值差异的原因可能归因于设计适合具有不同栖息地大小的物种的研究以及在可以假设人口封闭的时间范围内收集足够数据的困难。未标记的模型估计的密度与 SCR 差异很大,但在可以识别更多个体的模型中,估计值变得更加一致。包含所有数据源的混合模型对所有物种表现出最精确的估计。对于只能获得稀疏数据且不太可能满足最严格模型假设的研究,我们建议研究人员在从缺乏个体身份的模型进行推断时要谨慎。为了获得最佳结果,我们进一步建议使用至少标记一部分种群的方法,并尽可能纳入多个数据集。