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Inferences about population dynamics from count data using multistate models: a comparison to capture–recapture approaches

机译:使用多状态模型从计数数据中推断种群动态:与捕获-捕获方法的比较

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AbstractWildlife populations consist of individuals that contribute disproportionately to growth and viability. Understanding a population's spatial and temporal dynamics requires estimates of abundance and demographic rates that account for this heterogeneity. Estimating these quantities can be difficult, requiring years of intensive data collection. Often, this is accomplished through the capture and recapture of individual animals, which is generally only feasible at a limited number of locations. In contrast, N-mixture models allow for the estimation of abundance, and spatial variation in abundance, from count data alone. We extend recently developed multistate, open population N-mixture models, which can additionally estimate demographic rates based on an organism's life history characteristics. In our extension, we develop an approach to account for the case where not all individuals can be assigned to a state during sampling. Using only state-specific count data, we show how our model can be used to estimate local population abundance, as well as density-dependent recruitment rates and state-specific survival. We apply our model to a population of black-throated blue warblers (Setophaga caerulescens) that have been surveyed for 25 years on their breeding grounds at the Hubbard Brook Experimental Forest in New Hampshire, USA. The intensive data collection efforts allow us to compare our estimates to estimates derived from capture–recapture data. Our model performed well in estimating population abundance and density-dependent rates of annual recruitment/immigration. Estimates of local carrying capacity and per capita recruitment of yearlings were consistent with those published in other studies. However, our model moderately underestimated annual survival probability of yearling and adult females and severely underestimates survival probabilities for both of these male stages. The most accurate and precise estimates will necessarily require some amount of intensive data collection efforts (such as capture–recapture). Integrated population models that combine data from both intensive and extensive sources are likely to be the most efficient approach for estimating demographic rates at large spatial and temporal scales.
机译:摘要野生动物种群由对生长和生存能力贡献过大的个体组成。要了解人口的时空动态,就需要估算造成这种异质性的人口数量和人口比率。估计这些数量可能很困难,需要多年的密集数据收集。通常,这是通过捕获和重新捕获单个动物来完成的,这通常仅在有限的位置上才可行。相反,N-混合模型仅从计数数据就可以估算丰度以及丰度的空间变化。我们扩展了最近开发的多状态,开放人口N-混合模型,该模型可以根据生物的生活史特征另外估算人口统计率。在我们的扩展中,我们开发了一种方法来说明在采样过程中并非所有个人都可以分配给某个州的情况。仅使用州特定的计数数据,我们展示了如何使用我们的模型来估计本地人口的丰度以及密度依赖的招聘率和州特定的生存率。我们将模型应用于一群黑喉蓝莺(Setophaga caerulescens),这些种群在美国新罕布什尔州的哈伯德布鲁克实验森林的繁殖地上进行了25年的调查。大量的数据收集工作使我们能够将估计值与从捕获-再捕获数据得出的估计值进行比较。我们的模型在估算人口丰度和密度相关的年度招募/移民率方面表现良好。一岁幼鸽的当地承载力和人均招募估计与其他研究中的估计一致。但是,我们的模型适度低估了一岁和成年雌性的年生存率,而严重低估了这两个男性阶段的生存率。最准确,最精确的估计必然需要进行大量的数据收集工作(例如捕获-重新捕获)。结合人口密集和广泛来源的数据的综合人口模型可能是估计大时空尺度上人口统计率的最有效方法。

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