Calleja-Rodriguez, Ainhoa
- Department of Forest Genetics and Plant Physiology, Swedish University of Agricultural Sciences
- Forestry Research Institute of Sweden, Skogforsk
Research article2019Peer reviewedOpen access
Calleja-Rodriguez, Ainhoa; Li, Zitong; Hallingback, Henrik R.; Sillanpaa, Mikko J.; Wu, Harry X.; Abrahamsson, Sara; Garcia-Gil, Maria Rosario
In forest tree breeding, family-based Quantitative Trait Loci (QTL) studies are valuable as methods to dissect the complexity of a trait and as a source of candidate genes. In the field of conifer research, our study contributes to the evaluation of phenotypic and predicted breeding values for the identification of QTL linked to complex traits in a three-generation pedigree population in Scots pine (Pinus sylvestris L.). A total of 11 470 open pollinated F-2-progeny trees established at three different locations, were measured for growth and adaptive traits. Breeding values were predicted for their 360 mothers, originating from a single cross of two grand-parents. A multilevel LASSO association analysis was conducted to detect QTL using genotypes of the mothers with the corresponding phenotypes and Estimated Breeding Values (EBV). Different levels of genotype-by-environment (G x E) effects among sites at different years, were detected for survival and height. Moderate-to-low narrow sense heritabilities and EBV accuracies were found for all traits and all sites. We identified 18 AFLPs and 12 SNPs to be associated with QTL for one or more traits. 62 QTL were significant with percentages of variance explained ranging from 1.7 to 18.9%. In those cases where the same marker was associated to a phenotypic or an ebvQTL, the ebvQTL always explained higher proportion of the variance, maybe due to the more accurate nature of Estimated Breeding Values (EBV). Two SNP-QTL showed pleiotropic effects for traits related with hardiness, seed, cone and flower production. Furthermore, we detected several QTL with significant effects across multiple ages, which could be considered as strong candidate loci for early selection. The lack of reproducibility of some QTL detected across sites may be due to environmental heterogeneity reflected by the genotype- and QTL-by-environment effects. (C) 2018 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license.
Scots pine; Quantitative trait locus; LASSO; Adaptive traits
Journal of Theoretical Biology
2019, Volume: 462, pages: 283-292
Genetics
DOI: https://doi.org/10.1016/j.jtbi.2018.11.007
https://res.slu.se/id/publ/97113