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Evaluation of Genomic Prediction for Pasmo Resistance in Flax

机译:亚麻耐渗透性的基因组预测评估

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摘要

Pasmo (Septoria linicola) is a fungal disease causing major losses in seed yield and quality and stem fibre quality in flax. Pasmo resistance (PR) is quantitative and has low heritability. To improve PR breeding efficiency, the accuracy of genomic prediction (GP) was evaluated using a diverse worldwide core collection of 370 accessions. Four marker sets, including three defined by 500, 134 and 67 previously identified quantitative trait loci (QTL) and one of 52,347 PR-correlated genome-wide single nucleotide polymorphisms, were used to build ridge regression best linear unbiased prediction (RR-BLUP) models using pasmo severity (PS) data collected from field experiments performed during five consecutive years. With five-fold random cross-validation, GP accuracy as high as 0.92 was obtained from the models using the 500 QTL when the average PS was used as the training dataset. GP accuracy increased with training population size, reaching values >0.9 with training population size greater than 185. Linear regression of the observed PS with the number of positive-effect QTL in accessions provided an alternative GP approach with an accuracy of 0.86. The results demonstrate the GP models based on marker information from all identified QTL and the 5-year PS average is highly effective for PR prediction.
机译:Pasmo(Septoria linicola)是一种真菌病,会导致亚麻的种子产量,品质和茎纤维品质的重大损失。耐渗透性(PR)是定量的,遗传力低。为了提高PR育种效率,使用了全球370种保藏号的核心文献对基因组预测(GP)的准确性进行了评估。四个标记集,包括三个由500、134和67个先前确定的定量性状基因座(QTL)定义的标记集和52,347个PR相关的全基因组单核苷酸多态性之一,被用于建立岭回归最佳线性无偏预测(RR-BLUP)使用连续五年进行的现场实验收集的pasmo严重性(PS)数据建立模型。通过五重随机交叉验证,当将平均PS用作训练数据集时,使用500 QTL从模型中获得的GP精度高达0.92。 GP准确度随训练种群数量的增加而增加,当训练种群数量大于185时,其值达到> 0.9。所观察到的PS与入种中的正效应QTL数量的线性回归提供了一种GP替代方法,其准确性为0.86。结果表明,GP模型基于来自所有已识别QTL的标记信息,并且5年PS平均值对PR预测非常有效。

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