Mieres-Castro Daniel, Maldonado Carlos, Mora-Poblete Freddy
Laboratory of Genomics and Forestry Biotechnology, Institute of Biological Sciences, University of Talca, Talca, Chile.
Centro de Genómica y Bioinformática, Facultad de Ciencias, Universidad Mayor, Santiago, Chile.
Front Plant Sci. 2024 Oct 10;15:1451784. doi: 10.3389/fpls.2024.1451784. eCollection 2024.
Labill., is a recognized multipurpose tree, which stands out not only for the valuable qualities of its wood but also for the medicinal applications of the essential oil extracted from its leaves. In this study, we implemented an integrated strategy comprising genomic and phenomic approaches to predict foliar essential oil content, stem quality, and growth-related traits within a 9-year-old breeding population of . The strategy involved evaluating Uni/Multi-trait deep learning (DL) models by incorporating genomic data related to single nucleotide polymorphisms (SNPs) and haplotypes, as well as the phenomic data from leaf near-infrared (NIR) spectroscopy. Our results showed that essential oil content (oil yield) ranged from 0.01 to 1.69% v/fw and had no significant correlation with any growth-related traits. This suggests that selection solely based on growth-related traits did n The emphases (colored text) from revisions were removed throughout the article. Confirm that this change is fine. ot influence the essential oil content. Genomic heritability estimates ranged from 0.25 (diameter at breast height (DBH) and oil yield) to 0.71 (DBH and stem straightness (ST)), while pedigree-based heritability exhibited a broader range, from 0.05 to 0.88. Notably, oil yield was found to be moderate to highly heritable, with genomic values ranging from 0.25 to 0.60, alongside a pedigree-based estimate of 0.48. The DL prediction models consistently achieved higher prediction accuracy (PA) values with a Multi-trait approach for most traits analyzed, including oil yield (0.699), tree height (0.772), DBH (0.745), slenderness coefficient (0.616), stem volume (0.757), and ST (0.764). The Uni-trait approach achieved superior PA values solely for branching quality (0.861). NIR spectral absorbance was the best omics data for CNN or MLP models with a Multi-trait approach. These results highlight considerable genetic variation within the progeny trial, particularly regarding oil production. Our results contribute significantly to understanding omics-assisted deep learning models as a breeding strategy to improve growth-related traits and optimize essential oil production in this species.
拉比尔(Labill.)是一种公认的多用途树种,它不仅因其木材的宝贵品质而引人注目,还因其从叶子中提取的精油的药用价值而备受关注。在本研究中,我们实施了一种综合策略,包括基因组学和表型组学方法,以预测一个9岁育种群体中的叶片精油含量、茎干质量和与生长相关的性状。该策略涉及通过纳入与单核苷酸多态性(SNP)和单倍型相关的基因组数据,以及来自叶片近红外(NIR)光谱的表型组数据,来评估单性状/多性状深度学习(DL)模型。我们的结果表明,精油含量(出油率)范围为0.01%至1.69%(体积/鲜重),与任何生长相关性状均无显著相关性。这表明仅基于生长相关性状进行选择不会影响精油含量。基因组遗传力估计值范围为0.25(胸径(DBH)和出油率)至0.71(DBH和树干通直度(ST)),而基于系谱的遗传力范围更广,为0.05至0.88。值得注意的是,发现出油率具有中等至高遗传力,基因组值范围为0.25至0.60,基于系谱的估计值为0.48。对于大多数分析的性状,包括出油率(0.699)、树高(0.772)、DBH(0.745)、细长系数(0.616)、茎干体积(0.757)和ST(0.764),DL预测模型采用多性状方法始终能获得更高的预测准确性(PA)值。单性状方法仅在分枝质量(0.861)方面获得了更高的PA值。对于采用多性状方法的CNN或MLP模型,NIR光谱吸光度是最佳的组学数据。这些结果突出了子代试验中存在相当大的遗传变异,特别是在产油方面。我们的结果对于理解组学辅助深度学习模型作为一种育种策略,以改善生长相关性状并优化该物种的精油生产具有重要贡献。