Leaf gene expression trajectories during the growing season are consistent between sites and years in American beech

Proc Biol Sci. 2024 Apr 10;291(2020):20232338. doi: 10.1098/rspb.2023.2338. Epub 2024 Apr 10.

Abstract

Transcriptomics provides a versatile tool for ecological monitoring. Here, through genome-guided profiling of transcripts mapping to 33 042 gene models, expression differences can be discerned among multi-year and seasonal leaf samples collected from American beech trees at two latitudinally separated sites. Despite a bottleneck due to post-Columbian deforestation, the single nucleotide polymorphism-based population genetic background analysis has yielded sufficient variation to account for differences between populations and among individuals. Our expression analyses during spring-summer and summer-autumn transitions for two consecutive years involved 4197 differentially expressed protein coding genes. Using Populus orthologues we reconstructed a protein-protein interactome representing leaf physiological states of trees during the seasonal transitions. Gene set enrichment analysis revealed gene ontology terms that highlight molecular functions and biological processes possibly influenced by abiotic forcings such as recovery from drought and response to excess precipitation. Further, based on 324 co-regulated transcripts, we focused on a subset of GO terms that could be putatively attributed to late spring phenological shifts. Our conservative results indicate that extended transcriptome-based monitoring of forests can capture diverse ranges of responses including air quality, chronic disease, as well as herbivore outbreaks that require activation and/or downregulation of genes collectively tuning reaction norms maintaining the survival of long living trees such as the American beech.

Keywords: American beech; Fagus grandifolia; RNAseq; interactomics; phenology; transcriptomics.

MeSH terms

  • Fagus* / genetics
  • Forests
  • Humans
  • Plant Leaves / physiology
  • Seasons
  • Transcriptome
  • Trees / physiology