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Disentangling the drivers of metacommunity structure across spatial scales

机译:跨空间尺度分解元社区结构的驱动力

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Aim Metacommunity theories attribute different relative degrees of importance to dispersal, environmental filtering, biotic interactions and stochastic processes in community assembly, but the role of spatial scale remains uncertain. Here we used two complementary statistical tools to test: (1) whether or not the patterns of community structure and environmental influences are consistent across resolutions; and (2) whether and how the joint use of two fundamentally different statistical approaches provides a complementary interpretation of results. Location Grassland plants in the French Alps. Methods We used two approaches across five spatial resolutions (ranging from 1kmx1km to 30kmx30km): variance partitioning, and analysis of metacommunity structure on the site-by-species incidence matrices. Both methods allow the testing of expected patterns resulting from environmental filtering, but variance partitioning allows the role of dispersal and environmental gradients to be studied, while analysis of the site-by-species metacommunity structure informs an understanding of how environmental filtering occurs and whether or not patterns differ from chance expectation. We also used spatial regressions on species richness to identify relevant environmental factors at each scale and to link results from the two approaches. Results Major environmental drivers of richness included growing degree-days, temperature, moisture and spatial or temporal heterogeneity. Variance partitioning pointed to an increase in the role of dispersal at coarser resolutions, while metacommunity structure analysis pointed to environmental filtering having an important role at all resolutions through a Clementsian assembly process (i.e. groups of species having similar range boundaries and co-occurring in similar environments). Main conclusions The combination of methods used here allows a better understanding of the forces structuring ecological communities than either one of them used separately. A key aspect in this complementarity is that variance partitioning can detect effects of dispersal whereas metacommunity structure analysis cannot. Moreover, the latter can distinguish between different forms of environmental filtering (e.g. individualistic versus group species responses to environmental gradients).
机译:目的元社区理论将不同的相对重要程度归因于社区组装中的分散,环境过滤,生物相互作用和随机过程,但是空间规模的作用仍然不确定。在这里,我们使用两个互补的统计工具进行测试:(1)各项决议中社区结构和环境影响的模式是否一致; (2)是否以及如何共同使用两种根本不同的统计方法对结果进行补充解释。地点法国阿尔卑斯山的草原植物。方法我们采用了两种方法,跨越了五个空间分辨率(范围从1kmx1km到30kmx30km):方差划分和基于场所的发病率矩阵的元社区结构分析。两种方法都可以测试由环境过滤产生的预期模式,但是方差划分允许研究分散和环境梯度的作用,而对不同地点的元社区结构的分析则有助于人们了解环境过滤的发生方式以及是否发生环境过滤。模式与机会预期没有差异。我们还使用了物种丰富度的空间回归来确定各个尺度上的相关环境因素,并将两种方法的结果联系起来。结果丰富度的主要环境驱动因素包括日生长程度,温度,湿度和时空异质性。方差划分指出,在较粗的分辨率下,扩散的作用增加了,而元社区结构分析指出,环境过滤在所有分辨率下都通过克莱门特集会过程发挥着重要作用(即,具有相似范围边界并在相似条件下共存的物种组)环境)。主要结论与单独使用其中一种方法相比,此处使用的方法组合可以更好地理解构成生态群落的力量。这种互补性的一个关键方面是,方差划分可以检测分散的影响,而元社区结构分析则不能。此外,后者可以区分不同形式的环境过滤(例如,个人主义对群体物种对环境梯度的响应)。

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