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基于高光谱反射率推导的关系矩阵用于小麦籽粒产量的基因组预测

Hyperspectral Reflectance-Derived Relationship Matrices for Genomic Prediction of Grain Yield in Wheat.

作者信息

Krause Margaret R, González-Pérez Lorena, Crossa José, Pérez-Rodríguez Paulino, Montesinos-López Osval, Singh Ravi P, Dreisigacker Susanne, Poland Jesse, Rutkoski Jessica, Sorrells Mark, Gore Michael A, Mondal Suchismita

机构信息

Plant Breeding and Genetics Section, School of Integrative Plant Science, Cornell University, Ithaca, New York, 14853.

Global Wheat Program, International Maize and Wheat Improvement Center (CIMMYT), Ciudad de México, 06600, México.

出版信息

G3 (Bethesda). 2019 Apr 9;9(4):1231-1247. doi: 10.1534/g3.118.200856.

Abstract

Hyperspectral reflectance phenotyping and genomic selection are two emerging technologies that have the potential to increase plant breeding efficiency by improving prediction accuracy for grain yield. Hyperspectral cameras quantify canopy reflectance across a wide range of wavelengths that are associated with numerous biophysical and biochemical processes in plants. Genomic selection models utilize genome-wide marker or pedigree information to predict the genetic values of breeding lines. In this study, we propose a multi-kernel GBLUP approach to genomic selection that uses genomic marker-, pedigree-, and hyperspectral reflectance-derived relationship matrices to model the genetic main effects and genotype × environment ( × ) interactions across environments within a bread wheat ( L.) breeding program. We utilized an airplane equipped with a hyperspectral camera to phenotype five differentially managed treatments of the yield trials conducted by the Bread Wheat Improvement Program of the International Maize and Wheat Improvement Center (CIMMYT) at Ciudad Obregón, México over four breeding cycles. We observed that single-kernel models using hyperspectral reflectance-derived relationship matrices performed similarly or superior to marker- and pedigree-based genomic selection models when predicting within and across environments. Multi-kernel models combining marker/pedigree information with hyperspectral reflectance phentoypes had the highest prediction accuracies; however, improvements in accuracy over marker- and pedigree-based models were marginal when correcting for days to heading. Our results demonstrate the potential of using hyperspectral imaging to predict grain yield within a multi-environment context and also support further studies on the integration of hyperspectral reflectance phenotyping into breeding programs.

摘要

高光谱反射表型分析和基因组选择是两项新兴技术,它们有潜力通过提高对籽粒产量的预测准确性来提高植物育种效率。高光谱相机可对与植物众多生物物理和生化过程相关的广泛波长范围内的冠层反射率进行量化。基因组选择模型利用全基因组标记或系谱信息来预测育种系的遗传值。在本研究中,我们提出了一种多内核GBLUP基因组选择方法,该方法使用基因组标记、系谱和高光谱反射率衍生的关系矩阵来模拟面包小麦(Triticum aestivum L.)育种计划中不同环境下的遗传主效应和基因型×环境(G×E)相互作用。我们利用一架配备高光谱相机的飞机,对国际玉米和小麦改良中心(CIMMYT)在墨西哥奥布雷贡市进行的面包小麦改良计划产量试验的五种不同管理处理进行了四个育种周期的表型分析。我们观察到,在预测环境内和环境间时,使用高光谱反射率衍生关系矩阵的单核模型的表现与基于标记和系谱的基因组选择模型相似或更优。将标记/系谱信息与高光谱反射表型相结合的多核模型具有最高的预测准确性;然而,在校正抽穗天数时,与基于标记和系谱的模型相比,准确性的提高幅度很小。我们的结果证明了在多环境背景下使用高光谱成像预测籽粒产量的潜力,也支持了将高光谱反射表型分析整合到育种计划中的进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ffca/6469421/38d7a4cc8a3b/1231f1.jpg

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