A multiscale approach to investigate fluorescence and NDVI imaging as proxy of photosynthetic traits in wheat

Nicolas Virlet, João Paulo Pennacchi, Pouria Sadeghi-Tehran, Tom Ashfield, Douglas Orr, Elizabete Carmo-Silva, Malcolm Hawkesford
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Abstract

With the development of the digital phenotyping, repeated measurements of agronomic traits over time are easily accessible, notably for morphological and phenological traits. However high throughput methods for estimating physiological traits such as photosynthesis are lacking. This study demonstrates the links of fluorescence and reflectance imaging with photosynthetic traits. Two wheat cultivars were grown in pots in a controlled environment. Photosynthesis was characterised by gas-exchange and biochemical analysis at five time points, from booting to 21 days post anthesis. On the same days imaging was performed on the same pots, at leaf and plant scale, using indoor and outdoor phenotyping platforms, respectively. Five image variables (Fv/Fm and NDVI at the whole plant level and Fv/Fm, Φ(II)532 and Φ(NPQ)1077 at the leaf scale) were compared to variables from A-Ci and A-Par curves, biochemical analysis, and fluorescence instruments. The results suggested that the image variables are robust estimators of photosynthetic traits, as long as senescence is driving the variability. Despite contrasting cultivar behaviour, linear regression models which account for the cultivar and the interaction effects, further improved the modelling of photosynthesis indicators. Finally, the results highlight the challenge of discriminating functional to cosmetic stay green genotypes using digital imaging.
小麦光合特性荧光和NDVI成像的多尺度研究
随着数字表型的发展,农艺性状随时间的重复测量很容易实现,特别是形态和物候性状。然而,高通量的方法估计生理性状,如光合作用是缺乏的。本研究证明了荧光和反射成像与光合特性的联系。两种小麦品种在受控环境下盆栽种植。从孕穗期到花后21天的5个时间点,通过气体交换和生化分析来表征光合作用。在同一天,分别使用室内和室外表型平台在相同的花盆上进行叶片和植物尺度的成像。5个图像变量(全株水平的Fv/Fm和NDVI,叶片水平的Fv/Fm, Φ(II)532和Φ(NPQ)1077)与A-Ci和A-Par曲线、生化分析和荧光仪器的变量进行了比较。结果表明,只要衰老驱动变异,图像变量是光合特性的稳健估计器。在对比品种行为的基础上,考虑品种和相互作用效应的线性回归模型进一步改进了光合作用指标的建模。最后,结果强调了使用数字成像区分功能性和美容性绿色基因型的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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