Centre for Forest Conservation Genetics and Department of Forest Sciences, University of British Columbia, 3041-2424 Main Mall, Vancouver, British Columbia, Canada V6T 1Z4.
Ecol Appl. 2010 Jan;20(1):153-63. doi: 10.1890/08-2257.1.
Climate is a major environmental factor affecting the phenotype of trees and is also a critical agent of natural selection that has molded among-population genetic variation. Population response functions describe the environmental effect of planting site climates on the performance of a single population, whereas transfer functions describe among-population genetic variation molded by natural selection for climate. Although these approaches are widely used to predict the responses of trees to climate change, both have limitations. We present a novel approach that integrates both genetic and environmental effects into a single "universal response function" (URF) to better predict the influence of climate on phenotypes. Using a large lodgepole pine (Pinus contorta Dougl. ex Loud.) field transplant experiment composed of 140 populations planted on 62 sites to demonstrate the methodology, we show that the URF makes full use of data from provenance trials to: (1) improve predictions of climate change impacts on phenotypes; (2) reduce the size and cost of future provenance trials without compromising predictive power; (3) more fully exploit existing, less comprehensive provenance tests; (4) quantify and compare environmental and genetic effects of climate on population performance; and (5) predict the performance of any population growing in any climate. Finally, we discuss how the last attribute allows the URF to be used as a mechanistic model to predict population and species ranges for the future and to guide assisted migration of seed for reforestation, restoration, or afforestation and genetic conservation in a changing climate.
气候是影响树木表型的主要环境因素,也是塑造种群间遗传变异的自然选择的关键因素。种群响应函数描述了种植地点气候对单一种群表现的环境影响,而转移函数则描述了自然选择对气候的种群间遗传变异的塑造。尽管这些方法广泛用于预测树木对气候变化的响应,但它们都有局限性。我们提出了一种新的方法,将遗传和环境效应整合到一个单一的“通用响应函数”(URF)中,以更好地预测气候对表型的影响。我们使用一个由 140 个种群组成的大型落基山冷杉(Pinus contorta Dougl. ex Loud.)田间移植实验来演示该方法,该实验由 62 个地点种植的 140 个种群组成,结果表明 URF 充分利用了起源试验的数据:(1) 改进对气候变化对表型影响的预测;(2) 减少未来起源试验的规模和成本,而不影响预测能力;(3) 更充分地利用现有的、不那么全面的起源试验;(4) 量化和比较气候对种群表现的环境和遗传影响;(5) 预测任何在任何气候条件下生长的种群的表现。最后,我们讨论了最后一个属性如何使 URF 能够被用作一个机制模型,以预测未来的种群和物种范围,并指导在气候变化下的种子辅助迁移、重新造林、恢复或造林以及遗传保护。