Legendre Pierre
Département de sciences biologiques Université de Montréal Montréal Québec Canada.
Ecol Evol. 2019 Feb 18;9(6):3500-3514. doi: 10.1002/ece3.4984. eCollection 2019 Mar.
This paper presents the statistical bases for temporal beta-diversity analysis, a method to study changes in community composition through time from repeated surveys at several sites. Surveys of that type are presently done by ecologists around the world. A temporal beta-diversity Index (TBI) is computed for each site, measuring the change in species composition between the first (T1) and second surveys (T2). TBI indices can be decomposed into losses and gains; they can also be tested for significance, allowing one to identify the sites that have changed in composition in exceptional ways. This method will be of value to identify exceptional sites in space-time surveys carried out to study anthropogenic impacts, including climate change.
The null hypothesis of the TBI test is that a species assemblage is not exceptionally different between T1 and T2, compared to assemblages that could have been observed at this site at T1 and T2 under conditions corresponding to H. Tests of significance of coefficients in a dissimilarity matrix are usually not possible because the values in the matrix are interrelated. Here, however, the dissimilarity between T1 and T2 for a site is computed with different data from the dissimilarities used for the T1-T2 comparison at other sites. It is thus possible to compute a valid test of significance in that case. In addition, the paper shows how TBI dissimilarities can be decomposed into loss and gain components (of species, or abundances-per-species) and how a B-C plot can be produced from these components, which informs users about the processes of biodiversity losses and gains through time in space-time survey data.
Three applications of the method to different ecological communities are presented. This method is applicable worldwide to all types of communities, marine, and terrestrial. R software is available implementing the method.
本文介绍了时间β多样性分析的统计基础,这是一种通过在多个地点进行重复调查来研究群落组成随时间变化的方法。目前世界各地的生态学家都在进行此类调查。为每个地点计算一个时间β多样性指数(TBI),以衡量第一次调查(T1)和第二次调查(T2)之间物种组成的变化。TBI指数可以分解为损失和增益;还可以对其进行显著性检验,从而使人们能够识别出在组成上发生了异常变化的地点。该方法对于在研究包括气候变化在内的人为影响而进行的时空调查中识别异常地点具有重要价值。
TBI检验的零假设是,与在该地点T1和T2时在符合H条件下可能观察到的组合相比,一个物种组合在T1和T2之间没有异常差异。通常无法对相异矩阵中的系数进行显著性检验,因为矩阵中的值是相互关联的。然而,在这里,一个地点T1和T2之间的相异度是用与其他地点T1 - T2比较所用相异度不同的数据来计算的。因此在这种情况下可以计算出有效的显著性检验。此外,本文还展示了如何将TBI相异度分解为物种(或每个物种的丰度)的损失和增益成分,以及如何从这些成分生成B - C图,这能让使用者了解时空调查数据中生物多样性随时间的损失和增益过程。
介绍了该方法在不同生态群落中的三个应用实例。该方法在全球范围内适用于所有类型的群落,包括海洋群落和陆地群落。有可用的R软件来实现该方法。