Pook Torsten, Tost Mila Leonie, Simianer Henner
Department of Animal Sciences, Animal Breeding and Genetics Group, University of Goettingen, 37075 Goettingen, Germany.
Center for Integrated Breeding Research, University of Goettingen, 37075 Goettingen, Germany.
G3 (Bethesda). 2025 Jul 9;15(7). doi: 10.1093/g3journal/jkaf100.
In recent years, the turnover of germplasm in plant breeding has substantially increased as the use of genomic information allows for earlier selection and the integration of controlled growing environments reduces the time to reach a particular growing stage. However, high generation turnover and intensive selection of lines before own yield trials are performed come at the risk of a drastic reduction of genetic diversity and lower prediction accuracies. To this end, we investigate strategies to cope with these challenges in a maize rapid cycle breeding scheme using stochastic simulations employing the software MoBPS. We find that genetic gains soon reach a plateau when only the original breeding material is phenotyped. Updating the training data set via additional phenotyping of crosses or doubled haploid lines ensures long-term progress with a gain of 6.80/6.95 genetic standard deviations (gSD) for the performance as a cross/DH after 30 cycles of breeding compared with 3.40/4.28 without additional phenotyping. Introducing genetic material from outside the breeding pool to introduce novel genetic diversity led to a further increase to 9.34/7.89 gSD. In particular, for the management of genetic diversity, further modifications of breeding program design are analysed to optimize the number of selected lines per cycle and to account for the relatedness of F2 plants in the selection using the software AlphaMate. Balancing short-term genetic gains with long-term diversity preservation is crucial for sustainable breeding. MoBPS provides a tool for quantifying these effects and provides solutions specific to the respective breeding program.
近年来,随着基因组信息的使用使得早期选择成为可能,以及可控生长环境的整合缩短了达到特定生长阶段的时间,植物育种中种质的周转量大幅增加。然而,在进行自身产量试验之前,高世代周转和品系的密集选择存在遗传多样性急剧减少和预测准确性降低的风险。为此,我们利用MoBPS软件进行随机模拟,研究了在玉米快速循环育种方案中应对这些挑战的策略。我们发现,仅对原始育种材料进行表型分析时,遗传增益很快就会达到平台期。通过对杂交种或双单倍体系进行额外的表型分析来更新训练数据集,可确保长期进展,与不进行额外表型分析相比,在30个育种周期后,作为杂交种/双单倍体的性能遗传增益为6.80/6.95遗传标准差(gSD),而未进行额外表型分析时为3.40/4.28。引入育种群体之外的遗传材料以引入新的遗传多样性,可使遗传增益进一步提高至9.34/7.89 gSD。特别是,为了管理遗传多样性,我们使用AlphaMate软件分析了育种计划设计的进一步修改,以优化每个周期选择的品系数,并在选择过程中考虑F2植株的亲缘关系。在短期遗传增益与长期多样性保护之间取得平衡对于可持续育种至关重要。MoBPS提供了一个量化这些效应的工具,并针对各自的育种计划提供了具体解决方案。