Ozimati Alfred, Kawuki Robert, Esuma Williams, Kayondo Ismail Siraj, Wolfe Marnin, Lozano Roberto, Rabbi Ismail, Kulakow Peter, Jannink Jean-Luc
National Crops Resources Research Institute (NaCRRI), P.O. Box, 7084 Kampala, Uganda
School of Integrative Plant Science, Plant breeding and Genetics Section, Cornell University, Ithaca, New York.
G3 (Bethesda). 2018 Dec 10;8(12):3903-3913. doi: 10.1534/g3.118.200710.
Cassava production in the central, southern and eastern parts of Africa is under threat by cassava brown streak virus (CBSV). Yield losses of up to 100% occur in cases of severe infections of edible roots. Easy illegal movement of planting materials across African countries, and long-range movement of the virus vector () may facilitate spread of CBSV to West Africa. Thus, effort to pre-emptively breed for CBSD resistance in W. Africa is critical. Genomic selection (GS) has become the main approach for cassava breeding, as costs of genotyping per sample have declined. Using phenotypic and genotypic data (genotyping-by-sequencing), followed by imputation to whole genome sequence (WGS) for 922 clones from National Crops Resources Research Institute, Namulonge, Uganda as a training population (TP), we predicted CBSD symptoms for 35 genotyped W. African clones, evaluated in Uganda. The highest prediction accuracy (r = 0.44) was observed for cassava brown streak disease severity scored at three months (CBSD3s) in the W. African clones using WGS-imputed markers. Optimized TPs gave higher prediction accuracies for CBSD3s and CBSD6s than random TPs of the same size. Inclusion of CBSD QTL chromosome markers as kernels, increased prediction accuracies for CBSD3s and CBSD6s. Similarly, WGS imputation of markers increased prediction accuracies for CBSD3s and for cassava brown streak disease root severity (CBSDRs), but not for CBSD6s. Based on these results we recommend TP optimization, inclusion of CBSD QTL markers in genomic prediction models, and the use of high-density (WGS-imputed) markers for CBSD predictions across population.
非洲中部、南部和东部的木薯生产受到木薯褐色条纹病毒(CBSV)的威胁。在食用根严重感染的情况下,产量损失高达100%。种植材料在非洲国家之间容易非法流动,以及病毒载体的远距离移动,可能会促使CBSV传播到西非。因此,在西非抢先培育抗木薯褐色条纹病的品种至关重要。随着每个样本的基因分型成本下降,基因组选择(GS)已成为木薯育种的主要方法。利用表型和基因型数据(简化基因组测序),随后对来自乌干达纳穆隆格国家作物资源研究所的922个克隆进行全基因组序列(WGS)推算作为训练群体(TP),我们预测了在乌干达评估的35个基因分型的西非克隆的木薯褐色条纹病症状。使用WGS推算标记,在西非克隆中,观察到三个月时木薯褐色条纹病严重程度(CBSD3s)的预测准确率最高(r = 0.44)。优化后的训练群体在CBSD3s和CBSD6s上的预测准确率高于相同大小的随机训练群体。将木薯褐色条纹病数量性状位点染色体标记作为内核纳入,提高了CBSD3s和CBSD6s的预测准确率。同样,标记的WGS推算提高了CBSD3s和木薯褐色条纹病根部严重程度(CBSDRs)的预测准确率,但对CBSD6s没有提高。基于这些结果,我们建议进行训练群体优化,在基因组预测模型中纳入木薯褐色条纹病数量性状位点标记,并使用高密度(WGS推算)标记对不同群体进行木薯褐色条纹病预测。