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预测新环境中的性状反应以助力气候变化下的种子产地溯源

Forecasting trait responses in novel environments to aid seed provenancing under climate change.

作者信息

Putra Andhika R, Yen Jian D L, Fournier-Level Alexandre

机构信息

School of BioSciences, The University of Melbourne, Parkville, Victoria, Australia.

Arthur Rylah Institute for Environmental Research, Heidelberg, Victoria, Australia.

出版信息

Mol Ecol Resour. 2023 Apr;23(3):565-580. doi: 10.1111/1755-0998.13728. Epub 2022 Nov 10.

Abstract

Revegetation projects face the major challenge of sourcing optimal plant material. This is often done with limited information about plant performance and increasingly requires factoring resilience to climate change. Functional traits can be used as quantitative indices of plant performance and guide seed provenancing, but trait values expected under novel conditions are often unknown. To support climate-resilient provenancing efforts, we develop a trait prediction model that integrates the effect of genetic variation with fine-scale temperature variation. We train our model on multiple field plantings of Arabidopsis thaliana and predict two relevant fitness traits-days-to-bolting and fecundity-across the species' European range. Prediction accuracy was high for days-to-bolting and moderate for fecundity, with the majority of trait variation explained by temperature differences between plantings. Projection under future climate predicted a decline in fecundity, although this response was heterogeneous across the range. In response, we identified novel genotypes that could be introduced to genetically offset the fitness decay. Our study highlights the value of predictive models to aid seed provenancing and improve the success of revegetation projects.

摘要

植被恢复项目面临着获取最佳植物材料的重大挑战。这通常是在关于植物性能的信息有限的情况下进行的,并且越来越需要考虑对气候变化的适应能力。功能性状可以用作植物性能的定量指标,并指导种子来源确定,但新环境条件下预期的性状值往往未知。为了支持适应气候变化的种子来源确定工作,我们开发了一个性状预测模型,该模型整合了遗传变异与精细尺度温度变化的影响。我们在拟南芥的多个田间种植上训练我们的模型,并预测了该物种在欧洲范围内的两个相关适合度性状——抽薹天数和繁殖力。抽薹天数的预测准确率较高,繁殖力的预测准确率中等,大部分性状变异由种植间的温度差异解释。未来气候预测下的预测显示繁殖力会下降,尽管这种反应在整个范围内是异质的。作为回应,我们确定了可以引入以在基因上抵消适合度下降的新基因型。我们的研究强调了预测模型对辅助种子来源确定和提高植被恢复项目成功率的价值。

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