Gonzalez Milena, Aguilar Ignacio, Bermann Matias, Quezada Marianella, Hidalgo Jorge, Misztal Ignacy, Lourenco Daniela, Balmelli Gustavo
Instituto Nacional de Investigación Agropecuaria (INIA), Tacuarembó 45000, Uruguay.
Instituto Nacional de Investigación Agropecuaria (INIA), Montevideo 11500, Uruguay.
Genes (Basel). 2025 Jun 10;16(6):700. doi: 10.3390/genes16060700.
Single-step genomic BLUP (ssGBLUP) has gained increasing interest from forest tree breeders. ssGBLUP combines phenotypic and pedigree data with marker data to enhance the prediction accuracy of estimated breeding values. However, potential errors in determining progeny relationships among open-pollinated species may result in lower accuracy of estimated breeding values. Unknown parent groups (UPG) and metafounders (MF) were developed to address missing pedigrees in a population. This study aimed to incorporate MF into ssGBLUP models to select the best parents for controlled mating and the best progenies for cloning in a tree breeding population of .
Genetic groups were defined to include base individuals of similar genetic origin. Tree growth was measured as total height (TH) and diameter at breast height (DBH), while disease resistance was assessed through heteroblasty (the transition from juvenile to adult foliage: ADFO). All traits were evaluated at 14 and 21 months. Two genomic multi-trait threshold linear models were fitted, with and without MF. Also, two multi-trait threshold-linear models based on phenotypic and pedigree information (ABLUP) were used to evaluate the increase in accuracy when adding genomic information to the model. To test the quality of models by cross-validation, the linear regression method (LR) was used.
The LR statistics indicated that the ssGBLUP models without MF performed better, as the inclusion of MF increased the bias of predictions. The ssGBLUP accuracy for both validations ranged from 0.42 to 0.68.
The best model to select parents for controlled matings and individuals for cloning is ssGBLUP without MF.
单步基因组最佳线性无偏预测(ssGBLUP)越来越受到林木育种者的关注。ssGBLUP将表型和系谱数据与标记数据相结合,以提高估计育种值的预测准确性。然而,在确定自由授粉物种后代关系时的潜在误差可能导致估计育种值的准确性降低。未知亲本组(UPG)和元奠基者(MF)被开发出来以解决群体中缺失的系谱问题。本研究旨在将MF纳入ssGBLUP模型,以便在一个树木育种群体中选择用于控制交配的最佳亲本和用于克隆的最佳后代。
定义遗传组以包括具有相似遗传起源的基础个体。树木生长以总高度(TH)和胸径(DBH)来衡量,而抗病性通过异形叶性(从幼年叶到成年叶)来评估。所有性状在14个月和21个月时进行评估。拟合了两个基因组多性状阈值线性模型,一个包含MF,一个不包含MF。此外,还使用了两个基于表型和系谱信息的多性状阈值线性模型(ABLUP)来评估在模型中添加基因组信息时准确性的提高。为了通过交叉验证测试模型质量,使用了线性回归方法(LR)。
LR统计表明,不包含MF的ssGBLUP模型表现更好,因为纳入MF增加了预测偏差。两次验证的ssGBLUP准确性范围为0.42至0.68。
用于选择控制交配亲本和克隆个体 的最佳模型是不包含MF的ssGBLUP。