MacKenzie Darryl I, Nichols James D, Seamans Mark E, Gutiérrez R J
Proteus Wildlife Research Consultants, P.O. Box 5193, Dunedin 9058, New Zealand.
Ecology. 2009 Mar;90(3):823-35. doi: 10.1890/08-0141.1.
Recent extensions of occupancy modeling have focused not only on the distribution of species over space, but also on additional state variables (e.g., reproducing or not, with or without disease organisms, relative abundance categories) that provide extra information about occupied sites. These biologist-driven extensions are characterized by ambiguity in both species presence and correct state classification, caused by imperfect detection. We first show the relationships between independently published approaches to the modeling of multistate occupancy. We then extend the pattern-based modeling to the case of sampling over multiple seasons or years in order to estimate state transition probabilities associated with system dynamics. The methodology and its potential for addressing relevant ecological questions are demonstrated using both maximum likelihood (occupancy and successful reproduction dynamics of California Spotted Owl) and Markov chain Monte Carlo estimation approaches (changes in relative abundance of green frogs in Maryland). Just as multistate capture-recapture modeling has revolutionized the study of individual marked animals, we believe that multistate occupancy modeling will dramatically increase our ability to address interesting questions about ecological processes underlying population-level dynamics.
近期占用模型的扩展不仅关注物种在空间上的分布,还关注额外的状态变量(例如,是否繁殖、是否携带致病生物、相对丰度类别),这些变量能提供有关被占据位点的额外信息。这些由生物学家推动的扩展的特点是,由于检测不完善,物种存在和正确状态分类都存在模糊性。我们首先展示了独立发表的多状态占用建模方法之间的关系。然后,我们将基于模式的建模扩展到多个季节或年份的采样情况,以估计与系统动态相关的状态转移概率。使用最大似然法(加利福尼亚斑点猫头鹰的占用和成功繁殖动态)和马尔可夫链蒙特卡罗估计方法(马里兰州绿蛙相对丰度的变化)展示了该方法及其解决相关生态问题的潜力。正如多状态捕获 - 重捕建模彻底改变了对个体标记动物的研究一样,我们相信多状态占用建模将极大地提高我们解决有关种群水平动态背后生态过程的有趣问题的能力。