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Genome-enabled prediction of genetic values using radial basis function neural networks

机译:使用径向基函数神经网络的基因组预测遗传值

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摘要

The availability of high density panels of molecular markers has prompted the adoption of genomic selection (GS) methods in animal and plant breeding. In GS, parametric, semi-parametric and non-parametric regressions models are used for predicting quantitative traits. This article shows how to use neural networks with radial basis functions (RBFs) for prediction with dense molecular markers. We illustrate the use of the linear Bayesian LASSO regression model and of two non-linear regression models, reproducing kernel Hilbert spaces (RKHS) regression and radial basis function neural networks (RBFNN) on simulated data and real maize lines genotyped with 55,000 markers and evaluated for several trait–environment combinations. The empirical results of this study indicated that the three models showed similar overall prediction accuracy, with a slight and consistent superiority of RKHS and RBFNN over the additive Bayesian LASSO model. Results from the simulated data indicate that RKHS and RBFNN models captured epistatic effects; however, adding non-signal (redundant) predictors (interaction between markers) can adversely affect the predictive accuracy of the non-linear regression models.
机译:高密度分子标记面板的可用性促使动植物育种中采用了基因组选择(GS)方法。在GS中,参数,半参数和非参数回归模型用于预测数量性状。本文介绍了如何使用带有径向基函数(RBF)的神经网络通过密集的分子标记进行预测。我们说明了线性贝叶斯LASSO回归模型和两个非线性回归模型的使用,它们在模拟数据和基因型55,000个标记的真实玉米品系上重现了内核希尔伯特空间(RKHS)回归和径向基函数神经网络(RBFNN)用于几种特质-环境组合。这项研究的经验结果表明,这三个模型显示出相似的总体预测准确性,并且与附加贝叶斯LASSO模型相比,RKHS和RBFNN略有一致的优势。模拟数据的结果表明,RKHS和RBFNN模型捕获了上位性效应。但是,添加非信号(冗余)预测变量(标记之间的交互作用)可能会对非线性回归模型的预测准确性产生不利影响。

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