Identifying potential provenances for climate-change adaptation using spatially variable coefficient models.

IF 2.3 Q2 ECOLOGY BMC ecology and evolution Pub Date : 2024-05-28 DOI:10.1186/s12862-024-02260-z
Marieke Wesselkamp, David R Roberts, Carsten F Dormann
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Abstract

Background: Selection of climate-change adapted ecotypes of commercially valuable species to date relies on DNA-assisted screening followed by growth trials. For trees, such trials can take decades, hence any approach that supports focussing on a likely set of candidates may save time and money. We use a non-stationary statistical analysis with spatially varying coefficients to identify ecotypes that indicate first regions of similarly adapted varieties of Douglas-fir (Pseudotsuga menziesii (Mirbel) Franco) in North America. For over 70,000 plot-level presence-absences, spatial differences in the survival response to climatic conditions are identified.

Results: The spatially-variable coefficient model fits the data substantially better than a stationary, i.e. constant-effect analysis (as measured by AIC to account for differences in model complexity). Also, clustering the model terms identifies several potential ecotypes that could not be derived from clustering climatic conditions itself. Comparing these six identified ecotypes to known genetically diverging regions shows some congruence, as well as some mismatches. However, comparing ecotypes among each other, we find clear differences in their climate niches.

Conclusion: While our approach is data-demanding and computationally expensive, with the increasing availability of data on species distributions this may be a useful first screening step during the search for climate-change adapted varieties. With our unsupervised learning approach being explorative, finely resolved genotypic data would be helpful to improve its quantitative validation.

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利用空间可变系数模型确定适应气候变化的潜在产地。
背景:迄今为止,商业价值物种适应气候变化生态型的选择主要依靠 DNA 辅助筛选,然后进行生长试验。对于树木来说,这种试验可能需要几十年的时间,因此,任何支持集中于一组可能的候选物种的方法都可能节省时间和金钱。我们使用了一种具有空间变化系数的非稳态统计分析方法来确定生态型,这些生态型表明了北美花旗松(Pseudotsuga menziesii (Mirbel) Franco)具有类似适应性品种的首批区域。在超过 70,000 个地块水平的存在-缺失中,确定了生存对气候条件反应的空间差异:结果:空间可变系数模型对数据的拟合效果大大优于静态的恒定效应分析(用 AIC 来衡量,以考虑模型复杂性的差异)。此外,通过对模型项进行聚类,还发现了几种潜在的生态类型,而这些生态类型是无法通过对气候条件本身进行聚类而得出的。将这六种已确定的生态型与已知的基因差异区域进行比较,可以发现有些是一致的,也有些是不一致的。然而,通过比较彼此间的生态型,我们发现它们的气候龛位存在明显差异:虽然我们的方法对数据要求较高,计算成本也很高,但随着物种分布数据的不断增加,这可能是寻找适应气候变化品种的第一步。由于我们的无监督学习方法是探索性的,精细解析的基因型数据将有助于改进其定量验证。
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