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Genomic prediction of fruit texture and training population optimization towards the application of genomic selection in apple

机译:基因组纹理及培养人口优化在苹果中基因组选择应用的基因组预测

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Texture is a complex trait and a major component of fruit quality in apple. While the major effect of MdPG1, a gene controlling firmness, has already been exploited in elite cultivars, the genetic basis of crispness remains poorly understood. To further improve fruit texture, harnessing loci with minor effects via genomic selection is therefore necessary. In this study, we measured acoustic and mechanical features in 537 genotypes to dissect the firmness and crispness components of fruit texture. Predictions of across-year phenotypic values for these components were calculated using a model calibrated with 8,294 SNP markers. The best prediction accuracies following cross-validations within the training set of 259 genotypes were obtained for the acoustic linear distance (0.64). Predictions for biparental families using the entire training set varied from low to high accuracy, depending on the family considered. While adding siblings or half-siblings into the training set did not clearly improve predictions, we performed an optimization of the training set size and composition for each validation set. This allowed us to increase prediction accuracies by 0.17 on average, with a maximal accuracy of 0.81 when predicting firmness in the ‘Gala’?×?‘Pink Lady’ family. Our results therefore identified key genetic parameters to consider when deploying genomic selection for texture in apple. In particular, we advise to rely on a large training population, with high phenotypic variability from which a ‘tailored training population’ can be extracted using a priori information on genetic relatedness, in order to predict a specific target population.
机译:纹理是一个复杂的特质和苹果果实品质的主要成分。虽然MDPG1的主要作用是控制坚固性的基因,但已经在精英品种中被利用,而Crispness的遗传基础仍然很清楚。为了进一步改善果实纹理,因此需要通过基因组选择利用具有微小效果的基因座。在这项研究中,我们在537个基因型中测量了声学和机械特征,以将果实纹理的坚固性和脆性分量剖析。使用用8,294个SNP标记校准的模型计算这些组分的跨年表型值的预测。获得训练组259基因型内的交叉验证后的最佳预测精度是针对声学线性距离(0.64)。根据考虑的家庭,使用整个训练集的前婴儿系列的预测变化不足到高精度。在将兄弟姐妹或半兄弟添加到培训集中没有明确提高预测的同时,我们对每个验证集进行了优化训练集大小和组合。这使我们可以平均提高预测精度0.17,在“粉扑女”家庭中预测坚固性时,最大精度为0.81。因此,我们的结果确定了在苹果纹理中部署基因组选择时要考虑的关键遗传参数。特别是,我们建议依靠大型培训人群,具有高表型可变性,可以使用先验信息提取“定制培训人口”,以预测特定的目标群体。

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