首页> 外文期刊>Theoretical and Applied Genetics: International Journal of Breeding Research and Cell Genetics >Genome-based trait prediction in multi- environment breeding trials in groundnut
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Genome-based trait prediction in multi- environment breeding trials in groundnut

机译:基于基于基于基于基于Granntnut多环境育种试验的特征预测

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Key message Comparative assessment identified naive interaction model, and naive and informed interaction GS models suitable for achieving higher prediction accuracy in groundnut keeping in mind the high genotype x environment interaction for complex traits. Genomic selection (GS) can be an efficient and cost-effective breeding approach which captures both small- and large-effect genetic factors and therefore promises to achieve higher genetic gains for complex traits such as yield and oil content in groundnut. A training population was constituted with 340 elite lines followed by genotyping with 58 K 'Axiom_Arachis' SNP array and phenotyping for key agronomic traits at three locations in India. Four GS models were tested using three different random cross-validation schemes (CV0, CV1 and CV2). These models are: (1) model 1 (M1 = E + L) which includes the main effects of environment (E) and line (L); (2) model 2 (M2 = E + L + G) which includes the main effects of markers (G) in addition to E and L; (3) model 3 (M3 = E + L + G + GE), a naive interaction model; and (4) model 4 (E + L + G + LE + GE), a naive and informed interaction model. Prediction accuracy estimated for four models indicated clear advantage of the inclusion of marker information which was reflected in better prediction accuracy achieved with models M2, M3 and M4 as compared to M1 model. High prediction accuracies (> 0.600) were observed for days to 50% flowering, days to maturity, hundred seed weight, oleic acid, rust@90 days, rust@105 days and late leaf spot@90 days, while medium prediction accuracies (0.400-0.600) were obtained for pods/plant, shelling %, and total yield/plant. Assessment of comparative prediction accuracy for different GS models to perform selection for untested genotypes, and unobserved and unevaluated environments provided greater insights on potential application of GS breeding in groundnut.
机译:关键消息比较评估确定了天真的相互作用模型,并且天真和知情的交互GS模型,适用于在地生中实现更高的预测准确性,保持对复杂性状的高基因X环境相互作用。基因组选择(GS)可以是一种有效且经济效益的育种方法,其捕获了小和大效应的遗传因素,因此有望实现更高的复杂性状的遗传增益,例如在地上的产量和油含量。培训人口与340条精英线条构成,随后用58 k'Axiom_arachis的基因分型进行基因分型,并在印度的三个地点进行关键农艺性状的表型。使用三种不同的随机交叉验证方案(CV0,CV1和CV2)测试四个GS模型。这些模型是:(1)型号1(M1 = E + L),包括环境(E)和线(L)的主要效果; (2)模型2(M2 = E + L + G),包括标记物(g)的主要效果,除e和l之外] (3)模型3(M3 = E + L + G + GE),天真的相互作用模型; (4)模型4(E + L + G + Le + GE),一个天真和明智的交互模型。估计四个模型的预测精度表明包含标记信息的清晰优势,其与M2,M3和M4的模型相比达到的更好的预测精度反映在于M1模型。观察到高预测准确性(> 0.600)几天至50%开花,天数到成熟度,百种子重量,油酸,生锈@ 90天,805天和晚叶点@ 90天,而中等预测精度(0.400获得-0.600)用于豆荚/植物,脱壳%和总产率/植物。评估不同GS模型的比较预测准确性,以对未经测试的基因型进行选择,并且未观察和未评估的环境提供了更大的见解对GS繁殖在地生中的潜在应用提供了更大的见解。

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