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Performance of Genomic Prediction for a Sugarcane Commercial Breeding Program

机译:甘蔗商业育种计划的基因组预测性能

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摘要

Sugarcane is a clonally propagated crop of economic importance in tropical areas and is mostly used for production of sugar, ethanol, energy and animal feed. Cultivars are hybrids between two autopolyploid species, the domesticated "noble cane" Saccharum officinarum L. (2n=80) and the wild Saccharum spontaneum L. (2n=40-128). In this study genomic selection was evaluated as a tool to increase efficiency in the breeding program. A population of 1882 clones from two breeding cycles was genotyped by sequencing resulting in a filtered set of 55k SNPs, providing extensive genome coverage. This population was phenotyped for plot weight, Brix, fiber and sucrose content, with replicated measurements taken on first season crop and ratoon crop harvests. Broad-sense heritabilities ranged from 0.69 to 0.90. Genomic prediction accuracy was assessed with genomic best linear unbiased prediction models in two ways: for clonal prediction of the genotyped clones and for parental prediction of their respective progenitors. In clonal prediction accuracies ranged from 0.07 to 0.39 in cross validation within a breeding cycle, and 0.01 to 0.32 in predictions across cycles. In parental prediction accuracies varied from 0.14 to 0.17 for Brix, and from 0.20 to 0.26 for plot weight. We observed a strong genotype by year interaction effect leading to reduced accuracies when predicting across breeding cycles. The genomic predicted breeding value using progeny data, achieved similar accuracies as clonal prediction. These results could be taken into account in the deployment of genomic selection for a sugarcane breeding program. We also investigated the use of high dosage information in the representation of SNP data from sugarcane. Association analysis and genomic prediction were performed using four fiber traits, for a countinuous marker representation that can represent high dosage of alleles, and for a discrete representation, that is limited in distinguishing heterozygous from homozygous states. We observed an increase in the number of significant hits in association tests when using dosage coding. In genomic prediction, differences were small between continuous and discrete coding, but in most of the cases there was an advantage when using continuous coding.
机译:甘蔗是在热带地区具有重要经济意义的无性繁殖作物,主要用于生产糖,乙醇,能源和动物饲料。品种是两种同倍体物种的杂种,驯化的“贵族甘蔗” Saccharum officinarum L.(2n = 80)和野生Saccharum spontaneum L.(2n = 40-128)。在这项研究中,基因组选择被评估为提高育种程序效率的工具。通过测序对来自两个育种周期的1882个克隆种群进行基因分型,从而产生一组55k SNP过滤组,从而提供了广泛的基因组覆盖范围。对这一种群进行表型分析,确定地块重量,白利糖度,纤维和蔗糖含量,并对第一季作物和再生作物的收获进行重复测量。广义的遗传力范围为0.69至0.90。用基因组最佳线性无偏预测模型以两种方式评估基因组预测的准确性:用于基因分型克隆的克隆预测和用于其各自祖细胞的亲代预测。在克隆预测中,一个育种周期内的交叉验证准确度范围为0.07至0.39,跨周期预测的准确度范围为0.01至0.32。在父母身预测中,白利糖度的准确度从0.14到0.17不等,地块权重的准确度从0.20到0.26。在逐个育种周期进行预测时,我们观察到了按年相互作用的强基因型,导致准确性降低。使用后代数据进行基因组预测的育种价值,实现了与克隆预测相似的准确性。在为甘蔗育种计划进行基因组选择时,可以考虑这些结果。我们还研究了高剂量信息在甘蔗SNP数据表示中的使用。使用四个纤维性状进行关联分析和基因组预测,一个连续的标记代表可以代表高剂量的等位基因,一个离散的代表,只能区分纯合子和纯合子。我们观察到使用剂量编码时,关联测试中的有效命中次数有所增加。在基因组预测中,连续编码和离散编码之间的差异很小,但是在大多数情况下,使用连续编码是有优势的。

著录项

  • 作者单位

    Cornell University.;

  • 授予单位 Cornell University.;
  • 学科 Agriculture.;Biostatistics.;Plant sciences.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 113 p.
  • 总页数 113
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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