Anderegg Jonas, Yu Kang, Aasen Helge, Walter Achim, Liebisch Frank, Hund Andreas
Crop Science Group, Institute of Agricultural Sciences, ETH Zurich, Zurich, Switzerland.
Division of Forest, Nature and Landscape, Department of Earth and Environmental Sciences, KU Leuven, Leuven, Belgium.
Front Plant Sci. 2020 Jan 28;10:1749. doi: 10.3389/fpls.2019.01749. eCollection 2019.
The ability of a genotype to stay green affects the primary target traits grain yield (GY) and grain protein concentration (GPC) in wheat. High throughput methods to assess senescence dynamics in large field trials will allow for (i) indirect selection in early breeding generations, when yield cannot yet be accurately determined and (ii) mapping of the genomic regions controlling the trait. The aim of this study was to develop a robust method to assess senescence based on hyperspectral canopy reflectance. Measurements were taken in three years throughout the grain filling phase on >300 winter wheat varieties in the spectral range from 350 to 2500 nm using a spectroradiometer. We compared the potential of spectral indices (SI) and full-spectrum models to infer visually observed senescence dynamics from repeated reflectance measurements. Parameters describing the dynamics of senescence were used to predict GY and GPC and a feature selection algorithm was used to identify the most predictive features. The three-band plant senescence reflectance index (PSRI) approximated the visually observed senescence dynamics best, whereas full-spectrum models suffered from a strong year-specificity. Feature selection identified visual scorings as most predictive for GY, but also PSRI ranked among the most predictive features while adding additional spectral features had little effect. Visually scored delayed senescence was positively correlated with GY ranging from r = 0.173 in 2018 to r = 0.365 in 2016. It appears that visual scoring remains the gold standard to quantify leaf senescence in moderately large trials. However, using appropriate phenotyping platforms, the proposed index-based parameterization of the canopy reflectance dynamics offers the critical advantage of upscaling to very large breeding trials.
基因型保持绿色的能力会影响小麦的主要目标性状——籽粒产量(GY)和籽粒蛋白质浓度(GPC)。在大型田间试验中评估衰老动态的高通量方法将有助于:(i)在早期育种世代进行间接选择,此时产量尚无法准确测定;(ii)绘制控制该性状的基因组区域图谱。本研究的目的是开发一种基于高光谱冠层反射率评估衰老的可靠方法。在整个灌浆期的三年里,使用光谱辐射计对300多个冬小麦品种在350至2500纳米的光谱范围内进行了测量。我们比较了光谱指数(SI)和全光谱模型从重复反射率测量中推断视觉观察到的衰老动态的潜力。描述衰老动态的参数用于预测GY和GPC,并使用特征选择算法识别最具预测性的特征。三波段植物衰老反射率指数(PSRI)最能近似视觉观察到的衰老动态,而全光谱模型则具有很强的年份特异性。特征选择确定视觉评分对GY最具预测性,但PSRI也位列最具预测性的特征之中,而添加额外的光谱特征影响不大。视觉评分的延迟衰老与GY呈正相关,相关系数从2018年的r = 0.173到2016年的r = 0.365。在适度规模的试验中,视觉评分似乎仍然是量化叶片衰老的金标准。然而,使用合适的表型平台,所提出的基于指数的冠层反射率动态参数化具有扩大到超大型育种试验的关键优势。