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Genomic Prediction of Columnaris Disease Resistance in Catfish

机译:鲶鱼柱状疾病性的基因组预测

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摘要

Catfish is an important aquaculture species in the USA. Columnaris disease is distributed worldwide, affecting a wide variety of fish species including catfish . It leads to huge economic losses each year to the US catfish industry. Channel catfish in general is highly resistant to the disease, while blue catfish is highly susceptible. Genomic selection is an effective and accurate way to predict the breeding values and thus was expected to improve the prediction veracity of columnaris disease resistance in catfish effectively. In this study, two different methods, elastic net genomic best linear unbiased prediction (ENGBLUP) and genomic best linear unbiased prediction (GBLUP), were used to predict the columnaris disease resistance evaluated by binary survival status. Cross-validation showed that the prediction accuracy of ENGBLUP and GBLUP was 0.7347 and 0.4868, respectively, showing that ENGBLUP had a high prediction accuracy. It was shown that fitting QTL and polygenic effect with different distribution will improve genomic prediction accuracy for binary traits. In this study, an accurate and effective genomic selection method was proposed to predict the columnaris resistance in catfish, and its application should be beneficial to catfish breeding.
机译:鲶鱼是美国的重要水产养殖种类。柱状疾病在全球范围内分布,影响各种各样的鱼类,包括鲶鱼。它导致每年对美国鲶鱼行业的巨大经济损失。通道鲶鱼通常对疾病具有高度抗性,而蓝鲶鱼是高度敏感的。基因组选择是预测繁殖值的有效和准确的方法,因此预计有效提高鲶鱼柱抗病性的预测真实性。在该研究中,两种不同的方法,弹性净基因组最佳线性无偏见预测(Engblup)和基因组最佳线性无偏的预测(GBLUP)用于预测通过二元存活状态评估的柱状疾病性。交叉验证表明,EngBlup和GBLUP的预测精度分别为0.7347和0.4868,显示ENGBLUP具有高预测精度。结果表明,拟合QTL和不同分布的多基因效果将提高二元特征的基因组预测精度。在该研究中,提出了一种准确且有效的基因组选择方法以预测鲶鱼的柱力,其应用应该有利于鲶鱼培养。

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