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 1, Yaoundé, Cameroon.
Department of Plant Biology, Faculty of Science, University of Yaoundé I, Yaoundé, Cameroon.
Plant Sci. 2020 Oct;299:110547. doi: 10.1016/j.plantsci.2020.110547. Epub 2020 Jun 3.
The prediction of clonal genetic value for yield is challenging in oil palm (Elaeis guineensis Jacq.). Currently, clonal selection involves two stages of phenotypic selection (PS): ortet preselection on traits with sufficient heritability among a small number of individuals in the best crosses in progeny tests, and final selection on performance in clonal trials. The present study evaluated the efficiency of genomic selection (GS) for clonal selection. The training set comprised almost 300 Deli × La Mé crosses phenotyped for eight palm oil yield components and the validation set 42 Deli × La Mé ortets. Genotyping-by-sequencing (GBS) revealed 15,054 single nucleotide polymorphisms (SNP). The effects of the SNP dataset (density and percentage of missing data) and two GS modeling approaches, ignoring (ASGM) and considering (PSAM) the parental origin of alleles, were assessed. The results showed prediction accuracies ranging from 0.08 to 0.70 for ortet candidates without data records, depending on trait, SNP dataset and modeling. ASGM was better (on average slightly more accurate, less sensitive to SNP dataset and simpler), although PSAM appeared interesting for a few traits. With ASGM, the number of SNPs had to reach 7,000, while the percentage of missing data per SNP was of secondary importance, and GS prediction accuracies were higher than those of PS for most of the traits. Finally, this makes possible two practical applications of GS, that will increase genetic progress by improving ortet preselection before clonal trials: (1) preselection at the mature stage on all yield components jointly using ortet genotypes and phenotypes, and (2) genomic preselection on more yield components than PS, among a large population of the best possible crosses at nursery stage.
油棕(Elaeis guineensis Jacq.)的产量克隆遗传值预测具有挑战性。目前,克隆选择包括两个表型选择(PS)阶段:在后代测试中最好的杂交中,对少数个体中具有足够遗传力的性状进行亲本品系预选,以及对无性系试验中的表现进行最终选择。本研究评估了基因组选择(GS)对无性系选择的效率。训练集包括近 300 个 Deli × La Mé 杂交种,对 8 个棕榈油产量组成部分进行表型选择,验证集包括 42 个 Deli × La Mé 亲本品系。基于测序的基因分型(GBS)揭示了 15054 个单核苷酸多态性(SNP)。评估了 SNP 数据集(密度和缺失数据百分比)和两种 GS 建模方法(忽略(ASGM)和考虑(PSAM)等位基因的亲本来源)的效果。结果表明,对于没有数据记录的亲本品系候选者,根据性状、SNP 数据集和建模,预测准确率从 0.08 到 0.70 不等。ASGM 更好(平均略准确、对 SNP 数据集更不敏感且更简单),尽管 PSAM 对于一些性状似乎很有趣。使用 ASGM,SNP 的数量必须达到 7000 个,而每个 SNP 的缺失数据百分比则相对次要,并且对于大多数性状,GS 预测准确率都高于 PS。最后,这使得 GS 的两种实际应用成为可能,这将通过在无性系试验之前提高亲本品系预选来提高遗传进展:(1)使用亲本品系基因型和表型对所有产量组成部分进行成熟阶段的预选,以及(2)在苗圃阶段对大量最佳杂交中选择比 PS 更多的产量组成部分进行基因组预选。