Exploiting historical agronomic data to develop genomic prediction strategies for early clonal selection in the Louisiana sugarcane variety development program.

IF 3.9 2区 生物学 Q1 GENETICS & HEREDITY
Plant Genome Pub Date : 2025-03-01 DOI:10.1002/tpg2.20545
Dipendra Shahi, James Todd, Kenneth Gravois, Anna Hale, Brayden Blanchard, Collins Kimbeng, Michael Pontif, Niranjan Baisakh
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引用次数: 0

Abstract

Genomic selection can enhance the rate of genetic gain of cane and sucrose yield in sugarcane (Saccharum L.), an important industrial crop worldwide. We assessed the predictive ability (PA) for six traits, such as theoretical recoverable sugar (TRS), number of stalks (NS), stalk weight (SW), cane yield (CY), sugar yield (SY), and fiber content (Fiber) using 20,451 single nucleotide polymorphisms (SNPs) with 22 statistical models based on the genomic estimated breeding values of 567 genotypes within and across five stages of the Louisiana sugarcane breeding program. TRS and SW with high heritability showed higher PA compared to other traits, while NS had the lowest. Machine learning (ML) methods, such as random forest and support vector machine (SVM), outperformed others in predicting traits with low heritability. ML methods predicted TRS and SY with the highest accuracy in cross-stage predictions, while Bayesian models predicted NS and CY with the highest accuracy. Extended genomic best linear unbiased prediction models accounting for dominance and epistasis effects showed a slight improvement in PA for a few traits. When both NS and TRS, which can be available as early as stage 2, were considered in a multi-trait selection model, the PA for SY in stage 5 could increase up to 0.66 compared to 0.30 with a single-trait model. Marker density assessment suggested 9091 SNPs were sufficient for optimal PA of all traits. The study demonstrated the potential of using historical data to devise genomic prediction strategies for clonal selection early in sugarcane breeding programs.

利用历史农艺数据开发基因组预测策略,用于路易斯安那甘蔗品种开发计划的早期无性系选择。
甘蔗(Saccharum L.)是世界上重要的经济作物,基因组选择可以提高甘蔗遗传增益率和蔗糖产量。基于路易斯安那甘蔗育种计划5个阶段内567个基因型的基因组估计育种值,利用22个统计模型,利用20451个单核苷酸多态性(snp)评估了理论可采糖(TRS)、茎数(NS)、茎重(SW)、甘蔗产量(CY)、糖产量(SY)和纤维含量(fiber)等6个性状的预测能力(PA)。遗传力较高的TRS和SW的PA高于其他性状,而NS的PA最低。机器学习(ML)方法,如随机森林和支持向量机(SVM),在预测低遗传率性状方面优于其他方法。在跨阶段预测中,ML方法预测TRS和SY的准确率最高,而贝叶斯模型预测NS和CY的准确率最高。考虑显性和上位效应的扩展基因组最佳线性无偏预测模型显示,少数性状的PA略有改善。如果在多性状选择模型中同时考虑NS和TRS(最早可在第2阶段获得),第5阶段SY的PA可提高到0.66,而单性状模型的PA可提高到0.30。标记密度评估表明,9091个snp足以满足所有性状的最佳PA。该研究证明了利用历史数据设计基因组预测策略的潜力,以便在甘蔗育种计划的早期进行克隆选择。
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来源期刊
Plant Genome
Plant Genome PLANT SCIENCES-GENETICS & HEREDITY
CiteScore
6.00
自引率
4.80%
发文量
93
审稿时长
>12 weeks
期刊介绍: The Plant Genome publishes original research investigating all aspects of plant genomics. Technical breakthroughs reporting improvements in the efficiency and speed of acquiring and interpreting plant genomics data are welcome. The editorial board gives preference to novel reports that use innovative genomic applications that advance our understanding of plant biology that may have applications to crop improvement. The journal also publishes invited review articles and perspectives that offer insight and commentary on recent advances in genomics and their potential for agronomic improvement.
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