Olatoye Marcus O, Hu Zhenbin, Aikpokpodion Peter O
Department of Crop Sciences, University of Illinois, Urbana-Champaign, IL, United States.
Department of Agronomy, Kansas State University, Manhattan, KS, United States.
Front Genet. 2019 Jul 30;10:677. doi: 10.3389/fgene.2019.00677. eCollection 2019.
Genetic architecture reflects the pattern of effects and interaction of genes underlying phenotypic variation. Most mapping and breeding approaches generally consider the additive part of variation but offer limited knowledge on the benefits of epistasis which explains in part the variation observed in traits. In this study, the cowpea multiparent advanced generation inter-cross (MAGIC) population was used to characterize the epistatic genetic architecture of flowering time, maturity, and seed size. In addition, consideration for epistatic genetic architecture in genomic-enabled breeding (GEB) was investigated using parametric, semi-parametric, and non-parametric genomic selection (GS) models. Our results showed that large and moderate effect-sized two-way epistatic interactions underlie the traits examined. Flowering time QTL colocalized with cowpea putative orthologs of and genes like ( [Vigun11g157600]) and ( [Vigun01g205500]). Flowering time adaptation to long and short photoperiod was found to be controlled by distinct and common main and epistatic loci. Parametric and semi-parametric GS models outperformed non-parametric GS model, while using known quantitative trait nucleotide(s) (QTNs) as fixed effects improved prediction accuracy when traits were controlled by large effect loci. In general, our study demonstrated that prior understanding of the genetic architecture of a trait can help make informed decisions in GEB.
遗传结构反映了表型变异背后基因的效应模式和相互作用。大多数定位和育种方法通常考虑变异的加性部分,但对上位性的益处提供的了解有限,而上位性部分解释了性状中观察到的变异。在本研究中,豇豆多亲本高世代杂交(MAGIC)群体被用于表征开花时间、成熟度和种子大小的上位性遗传结构。此外,使用参数化、半参数化和非参数化基因组选择(GS)模型研究了基因组辅助育种(GEB)中对上位性遗传结构的考量。我们的结果表明,大效应和中等效应大小的双向上位性相互作用是所研究性状的基础。开花时间QTL与豇豆假定的 和 基因的直系同源基因共定位,如 ([Vigun11g157600])和 ([Vigun01g205500])。发现开花时间对长日照和短日照的适应性受不同和共同的主效和上位性位点控制。参数化和半参数化GS模型优于非参数化GS模型,而当性状由大效应位点控制时,使用已知的数量性状核苷酸(QTNs)作为固定效应可提高预测准确性。总体而言,我们的研究表明,事先了解一个性状的遗传结构有助于在基因组辅助育种中做出明智的决策。