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Radial basis function regression methods for predicting quantitative traits using SNP markers

机译:使用SNP标记预测数量性状的径向基函数回归方法

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摘要

A challenge when predicting total genetic values for complex quantitative traits is that an unknown number of quantitative trait loci may affect phenotypes via cryptic interactions. If markers are available, assuming that their effects on phenotypes are additive may lead to poor predictive ability. Non-parametric radial basis function (RBF) regression, which does not assume a particular form of the genotype phenotype relationship, was investigated here by simulation and analysis of body weight and food conversion rate data in broilers. The simulation included a toy example in which an arbitrary non-linear genotype phenotype relationship was assumed, and five different scenarios representing different broad sense heritability levels (0.1, 0.25, 0.5, 0.75 and 0.9) were created. In addition, a whole genome simulation was carried out, in which three different gene action modes (pure additive, additive +dominance and pure epistasis) were considered. In all analyses, a training set was used to fit the model and a testing set was used to evaluate predictive performance. The latter was measured by correlation and predictive mean-squared error (PMSE) on the testing data. For comparison, a linear additive model known as Bayes A was used as benchmark. Two RBF models with single nucleotide polymorphism (SNP)-specific (RBF I) and common (RBF II) weights were examined. Results indicated that, in the presence of complex genotype phenotype relationships (i.e. non-linearity and non-additivity), RBF outperformed Bayes A in predicting total genetic values using SNP markers. Extension of Bayes A to include all additive, dominance and epistatic effects could improve its prediction accuracy. RBF I was generally better than RBF II, and was able to identify relevant SNPs in the toy example.
机译:预测复杂数量性状的总遗传值时面临的挑战是数量未知的数量性状基因座可能会通过隐秘相互作用影响表型。如果有标记,假设它们对表型的影响是累加的,则可能导致较差的预测能力。通过模拟和分析肉鸡的体重和食物转化率数据,研究了非参数径向基函数(RBF)回归,该回归不假设基因型表型关系的特定形式。该模拟包括一个玩具示例,其中假设了一个任意的非线性基因型表型关系,并创建了代表不同广义遗传性水平(0.1、0.25、0.5、0.75和0.9)的五个不同场景。另外,进行了全基因组模拟,其中考虑了三种不同的基因作用模式(纯加性,加性+显性和纯上位性)。在所有分析中,训练集用于拟合模型,测试集用于评估预测性能。后者是通过对测试数据的相关性和预测均方误差(PMSE)进行测量的。为了进行比较,使用称为贝叶斯A的线性加法模型作为基准。检查了两个具有单核苷酸多态性(SNP)特定(RBF I)和常见(RBF II)权重的RBF模型。结果表明,在存在复杂基因型表型关系(即非线性和非可加性)的情况下,RBF在使用SNP标记预测总遗传值方面优于贝叶斯A。将贝叶斯A扩展到包括所有加性,显性和上位性效应可以提高其预测准确性。 RBF I通常优于RBF II,并且能够识别玩具示例中的相关SNP。

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