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Genomic Bayesian functional regression models with interactions for predicting wheat grain yield using hyper-spectral image data

机译:利用相互作用的基因组贝叶斯功能回归模型,利用高光谱图像数据预测小麦籽粒产量

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BackgroundModern agriculture uses hyperspectral cameras that provide hundreds of reflectance data at discrete narrow bands in many environments. These bands often cover the whole visible light spectrum and part of the infrared and ultraviolet light spectra. With the bands, vegetation indices are constructed for predicting agronomically important traits such as grain yield and biomass. However, since vegetation indices only use some wavelengths (referred to as bands), we propose using all bands simultaneously as predictor variables for the primary trait grain yield; results of several multi-environment maize (Aguate et al. in Crop Sci 57(5):1–8, 2017 ) and wheat (Montesinos-López et al. in Plant Methods 13(4):1–23, 2017 ) breeding trials indicated that using all bands produced better prediction accuracy than vegetation indices. However, until now, these prediction models have not accounted for the effects of genotype?×?environment (G?×?E) and band?×?environment (B?×?E) interactions incorporating genomic or pedigree information. ResultsIn this study, we propose Bayesian functional regression models that take into account all available bands, genomic or pedigree information, the main effects of lines and environments, as well as G?×?E and B?×?E interaction effects. The data set used is comprised of 976 wheat lines evaluated for grain yield in three environments (Drought, Irrigated and Reduced Irrigation). The reflectance data were measured in 250 discrete narrow bands ranging from 392 to 851?nm (nm). The proposed Bayesian functional regression models were implemented using two types of basis: B-splines and Fourier. Results of the proposed Bayesian functional regression models, including all the wavelengths for predicting grain yield, were compared with results from conventional models with and without bands. ConclusionsWe observed that the models with B?×?E interaction terms were the most accurate models, whereas the functional regression models (with B-splines and Fourier basis) and the conventional models performed similarly in terms of prediction accuracy. However, the functional regression models are more parsimonious and computationally more efficient because the number of beta coefficients to be estimated is 21 (number of basis), rather than estimating the 250 regression coefficients for all bands. In this study adding pedigree or genomic information did not increase prediction accuracy.
机译:背景技术现代农业使用高光谱相机,该相机在许多环境中在离散的窄带上提供数百个反射率数据。这些波段通常覆盖整个可见光谱以及部分红外和紫外光谱。利用这些波段,可以构建植被指数以预测重要的农艺性状,例如谷物产量和生物量。但是,由于植被指数仅使用某些波长(称为波段),因此我们建议同时使用所有波段作为主要性状粮食产量的预测变量;几种多环境玉米(Aguate等人在Crop Sci 57(5):1–8,2017)和小麦(Montesinos-López等人在Plant Methods 13(4):1–23,2017)育种的结果试验表明,与植被指数相比,使用所有频段产生的预测精度更高。但是,直到现在,这些预测模型还没有考虑结合基因组或谱系信息的基因型××环境(G××E)和带××环境(B××E)的相互作用。结果在这项研究中,我们提出了贝叶斯函数回归模型,该模型考虑了所有可用的带,基因组或谱系信息,线条和环境的主要影响以及G?×?E和B?×?E相互作用的影响。所使用的数据集由976种小麦品系组成,这些小麦品系在三种环境(干旱,灌溉和节水灌溉)下进行了谷物单产评估。在392至851?nm(nm)的250个离散窄带中测量了反射率数据。拟议的贝叶斯功能回归模型是使用两种类型的基础实现的:B样条和傅立叶。将拟议的贝叶斯功能回归模型的结果(包括用于预测谷物产量的所有波长)与具有和不具有谱带的常规模型的结果进行了比较。结论我们观察到,具有B?x?E相互作用项的模型是最准确的模型,而功能回归模型(具有B样条和傅立叶基础)和常规模型在预测准确性方面的表现相似。但是,功能回归模型更为简洁,计算效率更高,因为要估计的beta系数为21(基数),而不是为所有波段估计250的回归系数。在这项研究中,添加谱系或基因组信息不会增加预测准确性。

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