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Selection of trait-specific markers and multi-environment models improve genomic predictive ability in rice

机译:性状特异性标记和多环境模型的选择提高了水稻的基因组预测能力

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摘要

Developing high yielding rice varieties that are tolerant to drought stress is crucial for the sustainable livelihood of rice farmers in rainfed rice cropping ecosystems. Genomic selection (GS) promises to be an effective breeding option for these complex traits. We evaluated the effectiveness of two rather new options in the implementation of GS: trait and environment-specific marker selection and the use of multi-environment prediction models. A reference population of 280 rainfed lowland accessions endowed with 215k SNP markers data was phenotyped under a favorable and two managed drought environments. Trait-specific SNP subsets (28k) were selected for each trait under each environment, using results of GWAS performed with the complete genotype dataset. Performances of single-environment and multi-environment genomic prediction models were compared using kernel regression based methods (GBLUP and RKHS) under two cross validation scenarios: availability (CV2) or not (CV1) of phenotypic data for the validation set, in one of the environments. Trait-specific marker selection strategy achieved predictive ability (PA) of genomic prediction up to 22% higher than markers selected on the bases of neutral linkage disequilibrium (LD). Tolerance to drought stress was up to 32% better predicted by multi-environment models (especially RKHS based models) under CV2 strategy. Under the less favorable CV1 strategy, the multi-environment models achieved similar PA than the single-environment predictions. We also showed that reasonable PA could be obtained with as few as 3,000 SNP markers, even in a population of low LD extent, provided marker selection is based on pairwise LD. The implications of these findings for breeding for drought tolerance are discussed. The most resource sparing option would be accurate phenotyping of the reference population in a favorable environment and under a managed drought, while the candidate population would be phenotyped only under one of those environments.
机译:开发耐旱胁迫的高产水稻品种对于雨育水稻种植生态系统中的稻农可持续生计至关重要。基因组选择(GS)有望成为这些复杂性状的有效育种选择。我们评估了GS实施中两个相当新的选项的有效性:性状和特定于环境的标记选择以及多环境预测模型的使用。在一个有利的和两个有管理的干旱环境下,对280个雨育低地种质的参考种群进行了表型分析,其中包括215k SNP标记数据。使用完整基因型数据集执行的GWAS结果,为每个特质在每种环境下选择特质特异性SNP子集(28k)。在以下两种交叉验证方案下,使用基于核回归的方法(GBLUP和RKHS)比较了单环境和多环境基因组预测模型的性能:验证集的表型数据的可用性(CV2)或否(CV1)。环境。性状特异性标记物选择策略实现的基因组预测的预测能力(PA)比基于中性连锁不平衡(LD)选择的标记物高22%。在CV2策略下,多环境模型(尤其是基于RKHS的模型)预测的干旱胁迫耐受性提高了32%。在不太有利的CV1策略下,多环境模型获得的PA高于单环境预测。我们还表明,即使在低LD程度的人群中,只要使用成对LD选择标记,即使使用低LD的人群也可以用3,000个SNP标记获得合理的PA。讨论了这些发现对耐旱育种的意义。节省资源最多的选择是在有利环境和干旱控制下对参考种群进行准确的表型鉴定,而候选种群仅在其中一种环境下进行表型鉴定。

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