GWAS supported by computer vision identifies large numbers of candidate regulators of in planta regeneration in Populus trichocarpa.
Michael F NagleJialin YuanDamanpreet KaurCathleen MaEkaterina PeremyslovaYuan JiangAlexa Niño de RiveraSara S JawdyJin-Gui ChenKai FengTimothy B YatesGerald A TuskanWellington MucheroLi FuxinSteven H StraussPublished in: G3 (Bethesda, Md.) (2024)
Plant regeneration is an important dimension of plant propagation and a key step in the production of transgenic plants. However, regeneration capacity varies widely among genotypes and species, the molecular basis of which is largely unknown. While association mapping methods such as genome-wide association studies (GWAS) have long demonstrated abilities to help uncover the genetic basis of trait variation in plants, the abilities of these methods depend on the accuracy and scale of phenotyping. To enable a largescale GWAS of in planta regeneration in the model tree Populus, we developed a phenomics workflow involving semantic segmentation to quantify regenerating plant tissues (callus and shoot) over time. We found the resulting statistics are of highly non-normal distributions, and employed transformations or permutations to avoid violating assumptions of linear models used in GWAS. We report over 200 statistically supported quantitative trait loci (QTLs), with genes encompassing or near to top QTLs including regulators of cell adhesion, stress signaling, and hormone signaling pathways, as well as other diverse functions. Our results encourage models of hormonal signaling during plant regeneration to consider keystone roles of stress-related signaling (e.g., involving jasmonates and salicylic acid) in addition to the auxin and cytokinin pathways commonly considered. The putative regulatory genes and biological processes we identified provide new insights into the biological complexity of plant regeneration, and may serve as new reagents for improving regeneration and transformation of recalcitrant genotypes and species.
Keyphrases
- stem cells
- genome wide
- wound healing
- high resolution
- genome wide association
- cell adhesion
- dna methylation
- signaling pathway
- gene expression
- cell proliferation
- metabolic syndrome
- oxidative stress
- genome wide association study
- adipose tissue
- cell wall
- deep learning
- insulin resistance
- epithelial mesenchymal transition
- mass spectrometry
- bioinformatics analysis
- copy number
- neural network
- pi k akt