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Novel Bayesian Networks for Genomic Prediction of Developmental Traits in Biomass Sorghum

机译:用于生物量高粱发育性状基因组预测的新型贝叶斯网络。

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摘要

The ability to connect genetic information between traits over time allow Bayesian networks to offer a powerful probabilistic framework to construct genomic prediction models. In this study, we phenotyped a diversity panel of 869 biomass sorghum ( (L.) Moench) lines, which had been genotyped with 100,435 SNP markers, for plant height (PH) with biweekly measurements from 30 to 120 days after planting (DAP) and for end-of-season dry biomass yield (DBY) in four environments. We evaluated five genomic prediction models: Bayesian network (BN), Pleiotropic Bayesian network (PBN), Dynamic Bayesian network (DBN), multi-trait GBLUP (MTr-GBLUP), and multi-time GBLUP (MTi-GBLUP) models. In fivefold cross-validation, prediction accuracies ranged from 0.46 (PBN) to 0.49 (MTr-GBLUP) for DBY and from 0.47 (DBN, DAP120) to 0.75 (MTi-GBLUP, DAP60) for PH. Forward-chaining cross-validation further improved prediction accuracies of the DBN, MTi-GBLUP and MTr-GBLUP models for PH (training slice: 30-45 DAP) by 36.4–52.4% relative to the BN and PBN models. Coincidence indices (target: biomass, secondary: PH) and a coincidence index based on lines (PH time series) showed that the ranking of lines by PH changed minimally after 45 DAP. These results suggest a two-level indirect selection method for PH at harvest (first-level target trait) and DBY (second-level target trait) could be conducted earlier in the season based on ranking of lines by PH at 45 DAP (secondary trait). With the advance of high-throughput phenotyping technologies, our proposed two-level indirect selection framework could be valuable for enhancing genetic gain per unit of time when selecting on developmental traits.
机译:随着时间的推移,在性状之间关联遗传信息的能力使贝叶斯网络能够提供强大的概率框架来构建基因组预测模型。在这项研究中,我们对869个生物量高粱(L. Moench)品系的多样性表型进行了表型分析,并用100,435个SNP标记对植物高度(PH)进行了基因分型,并在种植后30到120天(DAP)每两周测量一次以及四种环境下的季末干生物量产量(DBY)。我们评估了五个基因组预测模型:贝叶斯网络(BN),多亲贝叶斯网络(PBN),动态贝叶斯网络(DBN),多特征GBLUP(MTr-GBLUP)和多次GBLUP(MTi-GBLUP)模型。在五重交叉验证中,对于DBY,预测精度的范围从0.46(PBN)到0.49(MTr-GBLUP),对于PH,预测精度的范围从0.47(DBN,DAP120)到0.75(MTi-GBLUP,DAP60)。与BN和PBN模型相比,前向交叉验证进一步改善了PH(训练切片:30-45 DAP)的DBN,MTi-GBLUP和MTr-GBLUP模型的预测准确性36.4–52.4%。符合指数(目标:生物量,次要:PH)和基于品系的符合指数(PH时间序列)显示,在45 DAP之后,按PH划分品系的排名变化最小。这些结果表明,基于PH值在45 DAP(次要性状)对品系的排名,可以在本季早些时候对收获期的PH(第一级目标性状)和DBY(第二等级目标性状)进行两级间接选择。 )。随着高通量表型技术的发展,我们提出的两级间接选择框架对于选择发育性状对于提高单位时间的遗传增益可能是有价值的。

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