Seck Fallou, Prakash Parthiban Thathapalli, Covarrubias-Pazaran Giovanny, Gueye Tala, Diédhiou Ibrahima, Bhosale Sankalp, Kadaru Suresh, Bartholomé Jérôme
Rice Breeding Platform, International Rice Research Institute, Metro Manila, Philippines.
Department of Crop Science, National Agricultural Institute (ENSA), University Iba Der Thiam of Thiès, Thiès, Senegal.
Front Plant Sci. 2024 Nov 1;15:1488814. doi: 10.3389/fpls.2024.1488814. eCollection 2024.
Genetic improvement in rice increased yield potential and improved varieties for farmers over the last decades. However, the demand for rice is growing while its cultivation faces challenges posed by climate change. To address these challenges, rice breeding programs need to adopt efficient breeding strategies to provide a steady increase in the rate of genetic gain for major traits. The International Rice Research Institute (IRRI) breeding program has evolved over time to implement faster and more efficient breeding techniques such as rapid generation advance (RGA) and genomic selection (GS). Simulation experiments support data-driven optimization of the breeding program toward the desired rate of genetic gain for key traits.
This study used stochastic simulations to compare breeding schemes with different cycle times. The objective was to assess the impact of different genomic selection strategies on medium- and long-term genetic gain. Four genomic selection schemes were simulated, representing the past approaches (5 years recycling), current schemes (3 years recycling), and two options for the future schemes (both with 2 years recycling).
The 2-Year within-cohort prediction scheme showed a significant increase in genetic gain in the medium-term horizon. Specifically, it resulted in a 22%, 24%, and 27% increase over the current scheme in the zero, intermediate, and high genotype-by-environment interaction (GEI) contexts, respectively. On the other hand, the 2-Year scheme based on between-cohort prediction was more efficient in the long term, but only in the absence of GEI. Consistent with our expectations, the shortest breeding schemes showed an increase in genetic gain and faster depletion of genetic variance compared to the current scheme.
These results suggest that higher rates of genetic gain are achievable in the breeding program by further reducing the cycle time and adjusting the target population of environments. However, more attention is needed regarding the crossing strategy to use genetic variance optimally.
在过去几十年里,水稻的遗传改良提高了产量潜力,为农民培育出了更好的品种。然而,水稻的需求在不断增长,而其种植面临着气候变化带来的挑战。为应对这些挑战,水稻育种计划需要采用高效的育种策略,以持续提高主要性状的遗传增益率。国际水稻研究所(IRRI)的育种计划随着时间的推移不断发展,以实施更快、更高效的育种技术,如快速世代推进(RGA)和基因组选择(GS)。模拟实验支持对育种计划进行数据驱动的优化,以实现关键性状所需的遗传增益率。
本研究使用随机模拟来比较不同周期时间的育种方案。目的是评估不同基因组选择策略对中长期遗传增益的影响。模拟了四种基因组选择方案,分别代表过去的方法(5年循环)、当前的方案(3年循环)以及未来方案的两种选择(均为2年循环)。
两年内群体预测方案在中期显示出遗传增益显著增加。具体而言,在零、中等和高基因型与环境互作(GEI)情况下,与当前方案相比,分别增加了22%、24%和27%。另一方面,基于跨群体预测的两年方案在长期更有效,但仅在不存在GEI的情况下。与我们的预期一致,与当前方案相比,最短的育种方案显示出遗传增益增加,遗传方差消耗更快。
这些结果表明,通过进一步缩短周期时间和调整目标环境群体,育种计划可以实现更高的遗传增益率。然而,在最佳利用遗传方差的杂交策略方面需要更多关注。