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Use of hidden Markov capture–recapture models to estimate abundance in the presence of uncertainty: Application to the estimation of prevalence of hybrids in animal populations

机译:在存在不确定性的情况下使用隐马尔可夫捕获-捕获模型估计丰度:在动物种群中杂种的普遍性估计中的应用

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Estimating the relative abundance (prevalence) of different population segments is a key step in addressing fundamental research questions in ecology, evolution, and conservation. The raw percentage of individuals in the sample (naive prevalence) is generally used for this purpose, but it is likely to be subject to two main sources of bias. First, the detectability of individuals is ignored; second, classification errors may occur due to some inherent limits of the diagnostic methods. We developed a hidden Markov (also known as multievent) capture–recapture model to estimate prevalence in free‐ranging populations accounting for imperfect detectability and uncertainty in individual's classification. We carried out a simulation study to compare naive and model‐based estimates of prevalence and assess the performance of our model under different sampling scenarios. We then illustrate our method with a real‐world case study of estimating the prevalence of wolf ( Canis lupus ) and dog ( Canis lupus familiaris ) hybrids in a wolf population in northern Italy. We showed that the prevalence of hybrids could be estimated while accounting for both detectability and classification uncertainty. Model‐based prevalence consistently had better performance than naive prevalence in the presence of differential detectability and assignment probability and was unbiased for sampling scenarios with high detectability. We also showed that ignoring detectability and uncertainty in the wolf case study would lead to underestimating the prevalence of hybrids. Our results underline the importance of a model‐based approach to obtain unbiased estimates of prevalence of different population segments. Our model can be adapted to any taxa, and it can be used to estimate absolute abundance and prevalence in a variety of cases involving imperfect detection and uncertainty in classification of individuals (e.g., sex ratio, proportion of breeders, and prevalence of infected individuals).
机译:估算不同人群的相对丰度(患病率)是解决生态,进化和保护方面基础研究问题的关键一步。样本中个体的原始百分比(未患病率)通常用于此目的,但很可能会受到两个主要偏见的影响。首先,个人的可检测性被忽略了。其次,由于诊断方法的某些固有限制,可能会发生分类错误。我们开发了一个隐式马尔可夫(也称为多事件)捕获-再捕获模型,以评估自由散居人口中的患病率,这说明了个人分类中的可检测性和不确定性。我们进行了一项模拟研究,以比较天真的和基于模型的患病率估计值,并评估在不同采样场景下我们模型的性能。然后,我们通过一个实际案例研究来说明我们的方法,该案例研究估计了意大利北部狼群中狼(Canis lupus)和狗(Canis lupus Friendlyis)杂种的患病率。我们表明,在考虑可检测性和分类不确定性的同时,可以估计杂种的患病率。在存在差异可检测性和分配概率的情况下,基于模型的患病率始终比纯朴的患病率具有更好的性能,并且对于具有高可检测性的采样方案没有偏见。我们还表明,忽略狼案例研究中的可检测性和不确定性会导致低估杂种的流行率。我们的结果强调了采用基于模型的方法来获得不同人群患病率的无偏估计的重要性。我们的模型可以适用于任何分类单元,并且可以用于估计不完整检测和个体分类不确定性的各种情况下的绝对丰度和患病率(例如性别比,育种者比例和感染个体的患病率) 。

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