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利用历史记录识别濒危分类单元的目击聚类。

Identifying sighting clusters of endangered taxa with historical records.

机构信息

School of Biological and Conservation Sciences, University of KwaZulu-Natal, Scottsville, Pietermaritzburg 3209, South Africa.

出版信息

Conserv Biol. 2011 Apr;25(2):392-9. doi: 10.1111/j.1523-1739.2010.01612.x. Epub 2010 Dec 3.

Abstract

The probability and time of extinction of taxa is often inferred from statistical analyses of historical records. Many of these analyses require the exclusion of multiple records within a unit of time (i.e., a month or a year). Nevertheless, spatially explicit, temporally aggregated data may be useful for identifying clusters of sightings (i.e., sighting clusters) in space and time. Identification of sighting clusters highlights changes in the historical recording of endangered taxa. I used two methods to identify sighting clusters in historical records: the Ederer-Myers-Mantel (EMM) test and the space-time permutation scan (STPS). I applied these methods to the spatially explicit sighting records of three species of orchids that are listed as endangered in the Republic of Ireland under the Wildlife Act (1976): Cephalanthera longifolia, Hammarbya paludosa, and Pseudorchis albida. Results with the EMM test were strongly affected by the choice of the time interval, and thus the number of temporal samples, used to examine the records. For example, sightings of P. albida clustered when the records were partitioned into 20-year temporal samples, but not when they were partitioned into 22-year temporal samples. Because the statistical power of EMM was low, it will not be useful when data are sparse. Nevertheless, the STPS identified regions that contained sighting clusters because it uses a flexible scanning window (defined by cylinders of varying size that move over the study area and evaluate the likelihood of clustering) to detect them, and it identified regions with high and regions with low rates of orchid sightings. The STPS analyses can be used to detect sighting clusters of endangered species that may be related to regions of extirpation and may assist in the categorization of threat status.

摘要

生物灭绝的概率和时间通常是通过对历史记录的统计分析来推断的。这些分析中有许多需要排除一个时间单位(即一个月或一年)内的多个记录。然而,空间明确、时间聚合的数据可能有助于识别空间和时间上的观测聚集(即观测聚集)。识别观测聚集突出了濒危分类单元历史记录的变化。我使用两种方法来识别历史记录中的观测聚集:Ederer-Myers-Mantel(EMM)检验和时空置换扫描(STPS)。我将这些方法应用于三种在爱尔兰共和国根据《野生动物法》(1976 年)被列为濒危的兰花的空间明确观测记录:Cephalanthera longifolia、Hammarbya paludosa 和 Pseudorchis albida。EMM 检验的结果受到所选择的时间间隔的强烈影响,因此用于检查记录的时间样本数量也受到影响。例如,当将记录划分为 20 年的时间样本时,P. albida 的观测值会聚集,但当将记录划分为 22 年的时间样本时则不会。由于 EMM 的统计功效较低,因此在数据稀疏时它将没有用处。尽管如此,STPS 还是可以识别包含观测聚集的区域,因为它使用灵活的扫描窗口(由在研究区域上移动并评估聚集可能性的不同大小的圆柱体定义)来检测它们,并识别出高观测率和低观测率的兰花区域。STPS 分析可用于检测可能与灭绝区域相关的濒危物种的观测聚集,并有助于对威胁状况进行分类。

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