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Spatial autocorrelation and the analysis of invasion processes from distribution data: a study with the crayfish Procambarus clarkii

机译:空间自相关和来自分布数据的入侵过程分析:小龙虾克氏原螯虾的研究

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Complex spatial dynamics are frequent in invasive species; analyzing distribution patterns can help to understand the mechanisms driving invasions. We used different spatial regression techniques to evaluate processes determining the invasion of the red swamp crayfish Procambarus clarkii. We evaluated four a priori hypotheses on processes that may determine crayfish invasion: landscape alteration, connectivity, wetland suitability for abiotic and biotic features. We assessed the distribution of P. clarkii in 119 waterbodies in a recently invaded area. We used spatially explicit statistical techniques (spatial eigenvector mapping, generalized additive models, Bayesian intrinsic conditional autoregressive models) within an information-theoretic framework to assess the support of hypotheses; we also analyzed the pattern of spatial autocorrelation of data, model residuals, and eigenvectors. We found strong agreement between the results of spatial eigenvector mapping and Bayesian autoregressive models. Procambarus clarkii was significantly associated with the largest, permanent wetlands. Additive models suggested also association with human-dominated landscapes, but tended to overfit data. The results indicate that abiotic wetlands features and landscape alteration are major drivers of the species’ distribution. Species distribution data, residuals of ordinary least squares regression, and spatial eigenvectors all showed positive and significant spatial autocorrelation at distances up to 2,500 m; this may be caused by the dispersal ability of the species. Our analyses help to understand the processes determining the invasion and to identify the areas most at risk where screening and early management efforts can be focused. The comparison of multiple spatial techniques allows a robust assessment of factors determining complex distribution patterns.
机译:在入侵物种中,复杂的空间动力学很常见。分析分布模式可以帮助理解导致入侵的机制。我们使用了不同的空间回归技术来评估确定红色沼泽小龙虾Procambarus clarkii入侵的过程。我们对可能决定小龙虾入侵的过程进行了四个先验假设:景观改变,连通性,湿地对非生物和生物特征的适应性。我们评估了最近入侵地区119个水体中克拉克疟原虫的分布。我们在信息理论框架内使用了空间显式统计技术(空间特征向量映射,广义加性模型,贝叶斯内在条件自回归模型)来评估假设的支持。我们还分析了数据,模型残差和特征向量的空间自相关模式。我们发现空间特征向量映射的结果与贝叶斯自回归模型之间有很强的一致性。克氏原螯虾与最大的永久性湿地显着相关。加性模型也暗示了与人类主导的景观的关联,但倾向于过度拟合数据。结果表明,非生物湿地特征和景观变化是该物种分布的主要驱动力。物种分布数据,普通最小二乘回归的残差和空间特征向量都在2500 m以下的距离上显示出正的和显着的空间自相关。这可能是由于物种的扩散能力所致。我们的分析有助于理解确定入侵的过程,并确定最有可能进行筛选和早期管理工作的风险区域。多种空间技术的比较允许对确定复杂分布模式的因素进行可靠的评估。

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