Yusuf Muyideen, Meng Xiaoxi, Stefaniak Thomas R, Montesinos-López Osval A, Shannon Laura M
Department of Horticultural Science, University of Minnesota, Saint Paul, Minnesota, USA.
Facultad de Telemática, Universidad de Colima, Colima, México.
Plant Genome. 2025 Sep;18(3):e70082. doi: 10.1002/tpg2.70082.
Multispectral leaf canopy reflectance as measured by unmanned aerial vehicles is the result of genetic and environmental interactions driving plant physiochemical processes. These measures can then be used to construct relationship matrices for modeling genetic main effects. This type of phenotypic prediction is particularly relevant for trials with many entries, such as those used in early generation potato (Solanum tuberosum) breeding. We compared three methods for making predictions in our potato breeding program: first, using multispectral-derived relationship matrices; second, using the traditional approach based on genomic derived relationships; and third, using a combination of both. Multispectral bands were collected at five different time points for two market classes of potato: chipping and fresh market. We modeled genetic main effects for yield and quality traits at each time point and all stages combined. Models with multispectral relationship matrices exhibited better prediction accuracy for yield and roundness than genomic only models and models featuring spectra plus genomic kernels outperformed both single-kernel predictions in terms of accuracy for most traits. Time points were variably informative depending on the trait measured, however, for all traits combining across time points performed as well or better than single time point models. Similarly, using feature selection to limit our models to important variables did not improve prediction accuracy significantly. This work highlights two potential uses for spectral data in genomic prediction: first, as an alternative to genetic data and second, in combination with genetic data to increase precision of selection.
通过无人机测量的多光谱叶冠层反射率是驱动植物生理化学过程的遗传和环境相互作用的结果。然后可以使用这些测量值来构建关系矩阵,以对遗传主效应进行建模。这种类型的表型预测对于有许多参赛品种的试验特别相关,例如早期马铃薯(Solanum tuberosum)育种中使用的试验。我们在马铃薯育种计划中比较了三种进行预测的方法:第一,使用多光谱衍生的关系矩阵;第二,使用基于基因组衍生关系的传统方法;第三,使用两者的组合。在五个不同时间点收集了两种市场类型马铃薯(薯片型和鲜食型)的多光谱波段。我们对每个时间点以及所有阶段综合的产量和品质性状的遗传主效应进行了建模。与仅使用基因组模型相比,表示多光谱关系矩阵的模型对产量和圆度表现出更好的预测准确性,并且在大多数性状的准确性方面,具有光谱加基因组核的模型优于单内核预测。时间点根据所测量的性状提供的信息各不相同,然而,对于所有性状,跨时间点进行组合的模型表现与单时间点模型一样好或更好。同样,使用特征选择将我们的模型限制在重要变量上并没有显著提高预测准确性。这项工作突出了光谱数据在基因组预测中的两个潜在用途:第一,作为遗传数据的替代;第二,与遗传数据结合以提高选择的精度。