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The Impact of Variable Degrees of Freedom and Scale Parameters in Bayesian Methods for Genomic Prediction in Chinese Simmental Beef Cattle

机译:贝叶斯方法可变自由度和尺度参数对中国西门塔尔牛牛基因组预测的影响

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摘要

Three conventional Bayesian approaches (BayesA, BayesB and BayesCπ) have been demonstrated to be powerful in predicting genomic merit for complex traits in livestock. A priori, these Bayesian models assume that the non-zero SNP effects (marginally) follow a t-distribution depending on two fixed hyperparameters, degrees of freedom and scale parameters. In this study, we performed genomic prediction in Chinese Simmental beef cattle and treated degrees of freedom and scale parameters as unknown with inappropriate priors. Furthermore, we compared the modified methods (BayesFA, BayesFB and BayesFCπ) with their corresponding counterparts using simulation datasets. We found that the modified methods with distribution assumed to the two hyperparameters were beneficial for improving the predictive accuracy. Our results showed that the predictive accuracies of the modified methods were slightly higher than those of their counterparts especially for traits with low heritability and a small number of QTLs. Moreover, cross-validation analysis for three traits, namely carcass weight, live weight and tenderloin weight, in 1136 Simmental beef cattle suggested that predictive accuracy of BayesFCπ noticeably outperformed BayesCπ with the highest increase (3.8%) for live weight using the cohort masking cross-validation.
机译:已经证明了三种常规的贝叶斯方法(BayesA,BayesB和BayesCπ)在预测牲畜复杂性状的基因组价值方面具有强大的作用。先验地,这些贝叶斯模型假设非零SNP效应(略微地)遵循t分布,这取决于两个固定的超参数,自由度和比例参数。在这项研究中,我们对中国西门塔尔肉牛进行了基因组预测,并以不适当的先验方式将自由度和比例参数视为未知。此外,我们使用模拟数据集将修改后的方法(BayesFA,BayesFB和BayesFCπ)与其对应的方法进行了比较。我们发现,假设分布在两个超参数上的改进方法有利于提高预测精度。我们的结果表明,特别是对于遗传力低且QTL数量少的性状,改良方法的预测准确性略高于同类方法。此外,对1136个西门塔尔肉牛的3个性状(car体重量,活重和里脊肉重量)的交叉验证分析表明,使用队列掩盖杂交法,BayesFCπ的预测准确性明显优于BayesCπ,活重的最大增加(3.8%) -验证。

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