...
首页> 外文期刊>Molecular Breeding >Training genomic selection models across several breeding cycles increases genetic gain in oil palm in silico study
【24h】

Training genomic selection models across several breeding cycles increases genetic gain in oil palm in silico study

机译:培训跨几种育种周期的基因组选择模型增加了Silico研究中的油棕中的遗传增益

获取原文
获取原文并翻译 | 示例
           

摘要

Genomic selection (GS) is expected to increase the rate of genetic gain in oil palm. In a GS scheme, breeding cycles with progeny tests (phenotypic selection, PS) used to calibrate the GS predictive model and for selection alternate with GS cycles, making it possible to train the GS model with aggregated data from several cycles. To evaluate this possibility, we simulated four cycles of hybrid breeding for bunch production and compared two methods of calibrating the GS model, one using aggregated data from the two most recent cycles (Tr2Gen), the other using data from the last cycle (Tr1Gen). We also compared a GS scheme with two PS cycles and two GS cycles (2PT-2noPT), and a scheme with PS every other cycle and GS otherwise (PT-noPT). We showed that Tr2Gen had a 10.7% higher genetic gain per cycle than Tr1Gen, mostly due to increased selection accuracy, particularly in across-cycle selection, despite the decreased relationship between training individuals and selection candidates. After four cycles, Tr2Gen had a 5% higher cumulative genetic gain than Tr1Gen, with a lower coefficient of variation. PT-noPT benefited more from the advantages offered by Tr2Gen than 2PT-2noPT. Over four breeding cycles, combining PT-noPT and Tr2Gen largely outperformed conventional reciprocal recurrent selection (RRS), with an increase in annual genetic gain ranging from 37.6 to 57.5%, depending on the number of GS candidates. This study confirms the advantages of GS over RRS and indicated that oil palm breeders should train GS models using all data from past breeding cycles.
机译:预期基因组选择(GS)增加油棕的遗传增益率。在GS方案中,用于校准GS预测模型的后代测试(表型选择,PS)的繁殖循环与GS循环进行校准,使得可以从几个周期中使用聚合数据训练GS模型。为了评估这种可能性,我们模拟了四个循环的束生产的混合育种,并比较了校准GS模型的两种方法,其中一个使用来自两个最近周期(Tr2Gen)的聚合数据,另一个使用来自最后一个周期的数据(TR1Gen) 。我们还将GS方案与两个PS周期和两个GS循环(2PT-​​2nopt)进行了比较了GS方案,以及每个其他周期的PS和GS(PT-NOPT)的方案。我们表明,尽管培训个人和选择候选人之间的关系降低,但TR2GEN每周周期的遗传增益比TR1GEN具有10.7%的遗传增益,主要是由于选择精度增加,特别是在跨循环选择中。在四个循环之后,Tr2Gen具有比TR1Gen更高的累积遗传增益的5%,变异系数较低。 Pt-nopt从TR2Gen提供的优势超过2PT-2Nopt受益更多。超过四个育种循环,组合Pt-nopt和Tr2Gen在很大程度上优于常规的往复式复发选择(RRS),其年遗传增益的增加范围从37.6%到57.5%,这取决于GS候选人的数量。本研究证实了GS对RRS的优势,并表示油棕育种者应使用过去育种周期的所有数据训练GS模型。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号