Nyouma Achille, Bell Joseph Martin, Jacob Florence, Riou Virginie, Manez Aurore, Pomiès Virginie, Domonhedo Hubert, Arifiyanto Deni, Cochard Benoit, Durand-Gasselin Tristan, Cros David
Department of Plant Biology, Faculty of Science, University of Yaoundé I, Yaoundé, Cameroon.
CETIC (African Center of Excellence in Information and Communication Technologies), University of Yaoundé I, Yaoundé, Cameroon.
Mol Genet Genomics. 2022 Mar;297(2):523-533. doi: 10.1007/s00438-022-01867-5. Epub 2022 Feb 15.
Genomic selection (GS) is a method of marker-assisted selection revolutionizing crop improvement, but it can still be optimized. For hybrid breeding between heterozygote parents of different populations or species, specific aspects can be considered to increase GS accuracy: (1) training population genotyping, i.e., only genotyping the hybrid parents or also a sample of hybrid individuals, and (2) marker effects modeling, i.e., using population-specific effects of single nucleotide polymorphism alleles model (PSAM) or across-population SNP genotype model (ASGM). Here, this was investigated empirically for the prediction of the performances of oil palm hybrids for yield traits. The GS model was trained on 352 hybrid crosses and validated on 213 independent hybrid crosses. The training and validation hybrid parents and 399 training hybrid individuals were genotyping by sequencing. Despite the small proportion of hybrid individuals genotyped and low parental heterozygosity, GS prediction accuracy increased on average by 5% (range 1.4-31.3%, depending on trait and model) when training was done using genomic data on hybrids and parents compared with only parental genomic data. With ASGM, GS prediction accuracy increased on average by 3% (- 10.2 to 40%, depending on trait and genotyping strategy) compared with PSAM. We conclude that the best GS strategy for oil palm is to aggregate genomic data of parents and hybrid individuals and to ignore the parental origin of marker alleles (ASGM). To gain a better insight into these results, future studies should examine the respective effect of capturing genetic variability within crosses and taking segregation distortion into account when genotyping hybrid individuals, and investigate the factors controlling the relative performances of ASGM and PSAM in hybrid crops.
基因组选择(GS)是一种革新作物改良的标记辅助选择方法,但仍可进行优化。对于不同群体或物种的杂合亲本之间的杂交育种,可以考虑特定方面来提高GS的准确性:(1)训练群体基因分型,即仅对杂交亲本进行基因分型,还是也对杂交个体样本进行基因分型;(2)标记效应建模,即使用单核苷酸多态性等位基因模型(PSAM)的群体特异性效应或跨群体SNP基因型模型(ASGM)。在此,针对油棕杂交种产量性状表现的预测进行了实证研究。GS模型在352个杂交组合上进行训练,并在213个独立杂交组合上进行验证。通过测序对训练和验证杂交亲本以及399个训练杂交个体进行基因分型。尽管进行基因分型的杂交个体比例较小且亲本杂合度较低,但与仅使用亲本基因组数据相比,当使用杂交种和亲本的基因组数据进行训练时,GS预测准确性平均提高了5%(范围为1.4 - 31.3%,取决于性状和模型)。与PSAM相比,使用ASGM时,GS预测准确性平均提高了3%(-10.2至40%,取决于性状和基因分型策略)。我们得出结论,油棕的最佳GS策略是汇总亲本和杂交个体的基因组数据,并忽略标记等位基因的亲本来源(ASGM)。为了更好地理解这些结果,未来的研究应研究在对杂交个体进行基因分型时,捕获杂交组合内遗传变异和考虑分离畸变的各自影响,并研究控制ASGM和PSAM在杂交作物中相对表现的因素。