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Deep Kernel for Genomic and Near Infrared Predictions in Multi-environment Breeding Trials

机译:用于多环境育种试验的基因组和近红外预测的深核

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摘要

Kernel methods are flexible and easy to interpret and have been successfully used in genomic-enabled prediction of various plant species. Kernel methods used in genomic prediction comprise the linear genomic best linear unbiased predictor (GBLUP or GB) kernel, and the Gaussian kernel (GK). In general, these kernels have been used with two statistical models: single-environment and genomic × environment (GE) models. Recently near infrared spectroscopy (NIR) has been used as an inexpensive and non-destructive high-throughput phenotyping method for predicting unobserved line performance in plant breeding trials. In this study, we used a non-linear arc-cosine kernel (AK) that emulates deep learning artificial neural networks. We compared AK prediction accuracy with the prediction accuracy of GB and GK kernel methods in four genomic data sets, one of which also includes pedigree and NIR information. Results show that for all four data sets, AK and GK kernels achieved higher prediction accuracy than the linear GB kernel for the single-environment and GE multi-environment models. In addition, AK achieved similar or slightly higher prediction accuracy than the GK kernel. For all data sets, the GE model achieved higher prediction accuracy than the single-environment model. For the data set that includes pedigree, markers and NIR, results show that the NIR wavelength alone achieved lower prediction accuracy than the genomic information alone; however, the pedigree plus NIR information achieved only slightly lower prediction accuracy than the marker plus the NIR high-throughput data.
机译:内核方法灵活且易于解释,已成功用于各种植物物种的基因组预测。基因组预测中使用的内核方法包括线性基因组最佳线性无偏预测器(GBLUP或GB)内核和高斯内核(GK)。通常,这些内核已与两种统计模型一起使用:单环境模型和基因组×环境(GE)模型。近来,近红外光谱法(NIR)已被用作一种廉价且无损的高通量表型分析方法,用于预测植物育种试验中未观察到的品系表现。在这项研究中,我们使用了非线性的反余弦核(AK)来模拟深度学习人工神经网络。我们在四个基因组数据集中比较了AK预测精度与GB和GK核方法的预测精度,其中之一还包括谱系和NIR信息。结果表明,对于单环境模型和GE多环境模型,AK和GK核均比线性GB核具有更高的预测精度。此外,AK的预测精度与GK内核相似或略高。对于所有数据集,GE模型均比单环境模型具有更高的预测精度。对于包括谱系,标记和NIR的数据集,结果表明,仅NIR波长比单独的基因组信息可获得较低的预测准确度。但是,谱系加NIR信息的预测准确度仅比标记物加NIR高通量数据低。

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