Center for Plant Science Innovation and Department of Agronomy and Horticulture, University of Nebraska-Lincoln, Lincoln, NE, USA.
Department of Plant Molecular Ecophysiology, Institute of Plant Experimental Biology and Biotechnology, Faculty of Biology, University of Warsaw, Warsaw, Poland.
Plant Commun. 2021 May 27;2(4):100209. doi: 10.1016/j.xplc.2021.100209. eCollection 2021 Jul 12.
Many biochemical and physiological properties of plants that are of interest to breeders and geneticists have extremely low throughput and/or can only be measured destructively. This has limited the use of information on natural variation in nutrient and metabolite abundance, as well as photosynthetic capacity in quantitative genetic contexts where it is necessary to collect data from hundreds or thousands of plants. A number of recent studies have demonstrated the potential to estimate many of these traits from hyperspectral reflectance data, primarily in ecophysiological contexts. Here, we summarize recent advances in the use of hyperspectral reflectance data for plant phenotyping, and discuss both the potential benefits and remaining challenges to its application in plant genetics contexts. The performances of previously published models in estimating six traits from hyperspectral reflectance data in maize were evaluated on new sample datasets, and the resulting predicted trait values shown to be heritable (e.g., explained by genetic factors) were estimated. The adoption of hyperspectral reflectance-based phenotyping beyond its current uses may accelerate the study of genes controlling natural variation in biochemical and physiological traits.
许多对育种家和遗传学家有兴趣的植物生化和生理特性具有极低的通量,或者只能进行破坏性测量。这限制了对营养和代谢物丰度以及光合作用能力的自然变异信息的利用,因为在需要从数百或数千株植物中收集数据的定量遗传背景下,这是必要的。最近的一些研究已经证明了从高光谱反射率数据中估算许多这些特性的潜力,主要是在生理生态背景下。在这里,我们总结了最近在使用高光谱反射率数据进行植物表型分析方面的进展,并讨论了其在植物遗传学背景下应用的潜在好处和仍然存在的挑战。在新的样本数据集上评估了以前发表的模型在从玉米高光谱反射率数据中估算六个特性的性能,并估计了由此产生的预测特性值是可遗传的(例如,由遗传因素解释)。超越其当前用途采用基于高光谱反射率的表型分析可能会加速对控制生化和生理特性自然变异的基因的研究。