Plant Breeding and Genetics Section, School of Integrative Plant Science, Cornell Univ., Ithaca, NY, 14853, USA.
Dep. of Agronomy, Horticulture & Plant Science, South Dakota State Univ., Brookings, SD, 57006, USA.
Plant Genome. 2022 Jun;15(2):e20205. doi: 10.1002/tpg2.20205. Epub 2022 Apr 25.
Plant metabolites are important traits for plant breeders seeking to improve nutrition and agronomic performance yet integrating selection for metabolomic traits can be limited by phenotyping expense and degree of genetic characterization, especially of uncommon metabolites. As such, developing generalizable genomic selection methods based on biochemical pathway biology for metabolites that are transferable across plant populations would benefit plant breeding programs. We tested genomic prediction accuracy for >600 metabolites measured by gas chromatography-mass spectrometry (GC-MS) and liquid chromatography-mass spectrometry (LC-MS) in oat (Avena sativa L.) seed. Using a discovery germplasm panel, we conducted metabolite genome-wide association study (mGWAS) and selected loci to use in multikernel models that encompassed metabolome-wide mGWAS results or mGWAS from specific metabolite structures or biosynthetic pathways. Metabolite kernels developed from LC-MS metabolites in the discovery panel improved prediction accuracy of LC-MS metabolite traits in the validation panel consisting of more advanced breeding lines. No approach, however, improved prediction accuracy for GC-MS metabolites. We ranked model performance by metabolite and found that metabolites with similar polarity had consistent rankings of models. Overall, testing biological rationales for developing kernels for genomic prediction across populations contributes to developing frameworks for plant breeding for metabolite traits.
植物代谢物是植物育种者寻求改善营养和农艺性能的重要特征,但整合代谢组学特征的选择可能受到表型费用和遗传特征程度的限制,特别是对于不常见的代谢物。因此,开发基于生化途径生物学的可推广的基因组选择方法,对于可在植物群体中转移的代谢物,将有益于植物育种计划。我们测试了通过气相色谱-质谱(GC-MS)和液相色谱-质谱(LC-MS)测定的 600 多种代谢物在燕麦(Avena sativa L.)种子中的基因组预测准确性。使用发现种质资源面板,我们进行了代谢物全基因组关联研究(mGWAS),并选择了包含代谢组全基因组 mGWAS 结果或特定代谢物结构或生物合成途径的 mGWAS 的多核模型中的位点。从发现面板中的 LC-MS 代谢物开发的代谢物核,提高了由更先进的育种系组成的验证面板中 LC-MS 代谢物特征的预测准确性。然而,没有任何方法可以提高 GC-MS 代谢物的预测准确性。我们根据代谢物对模型性能进行了排名,发现具有相似极性的代谢物的模型排名一致。总体而言,测试跨群体开发基因组预测核的生物学合理性有助于为代谢物特征的植物育种开发框架。