Forecasting floral futures: leveraging genetic and microenvironmental
data to improve seed provenancing under climate change
- Alexandre Fournier-Level
Abstract
Revegetation projects seeking to restore degraded ecosystems face a
major challenge in sourcing appropriate plant material, as identifying
plants adapted to future climates requires knowledge of plant
performance under novel conditions. In order to support
climate-resilient provenancing efforts, we develop a quantitative trait
model that integrates genetic and microenvironmental variation. We train
our model with multiple natural plantings of Arabidopsis thaliana and
predict days-to-bolting and fecundity across the species' European
range. Model prediction accuracy was high for days-to-bolting and
moderate for fecundity, with the majority of trait variation being
explained by temperature variation. Concerningly, fecundity was
predicted to decline under future conditions, although this response was
heterogeneous across regions, and could be offset through the
introduction of specific genotypes. Our study highlights the value of
predictive models to aid seed provenancing and improve the success of
revegetation projects.