Yendrek Craig R, Tomaz Tiago, Montes Christopher M, Cao Youyuan, Morse Alison M, Brown Patrick J, McIntyre Lauren M, Leakey Andrew D B, Ainsworth Elizabeth A
Carl R. Woese Institute for Genomic Biology (C.R.Y., T.T., C.M.M., Y.C., P.J.B., A.D.B.L., E.A.A.), Department of Plant Biology (C.M.M., A.D.B.L., E.A.A.), and Department of Crop Sciences (P.J.B.), University of Illinois at Urbana Champaign, Urbana, Illinois 61801.
Plant Protection Department, Fujian Agriculture and Forestry University, Fuzhou 350002, China (Y.C.).
Plant Physiol. 2017 Jan;173(1):614-626. doi: 10.1104/pp.16.01447. Epub 2016 Nov 15.
High-throughput, noninvasive field phenotyping has revealed genetic variation in crop morphological, developmental, and agronomic traits, but rapid measurements of the underlying physiological and biochemical traits are needed to fully understand genetic variation in plant-environment interactions. This study tested the application of leaf hyperspectral reflectance (λ = 500-2,400 nm) as a high-throughput phenotyping approach for rapid and accurate assessment of leaf photosynthetic and biochemical traits in maize (Zea mays). Leaf traits were measured with standard wet-laboratory and gas-exchange approaches alongside measurements of leaf reflectance. Partial least-squares regression was used to develop a measure of leaf chlorophyll content, nitrogen content, sucrose content, specific leaf area, maximum rate of phosphoenolpyruvate carboxylation, [CO]-saturated rate of photosynthesis, and leaf oxygen radical absorbance capacity from leaf reflectance spectra. Partial least-squares regression models accurately predicted five out of seven traits and were more accurate than previously used simple spectral indices for leaf chlorophyll, nitrogen content, and specific leaf area. Correlations among leaf traits and statistical inferences about differences among genotypes and treatments were similar for measured and modeled data. The hyperspectral reflectance approach to phenotyping was dramatically faster than traditional measurements, enabling over 1,000 rows to be phenotyped during midday hours over just 2 to 4 d, and offers a nondestructive method to accurately assess physiological and biochemical trait responses to environmental stress.
高通量、非侵入性田间表型分析揭示了作物形态、发育和农艺性状的遗传变异,但要全面了解植物与环境相互作用中的遗传变异,还需要对潜在的生理和生化性状进行快速测量。本研究测试了叶片高光谱反射率(λ = 500 - 2400 nm)作为一种高通量表型分析方法,用于快速准确地评估玉米(Zea mays)叶片的光合和生化性状。使用标准湿实验室和气体交换方法测量叶片性状,并同时测量叶片反射率。利用偏最小二乘回归从叶片反射光谱中得出叶片叶绿素含量、氮含量、蔗糖含量、比叶面积、磷酸烯醇式丙酮酸羧化最大速率、[CO₂]饱和光合速率和叶片氧自由基吸收能力的测量值。偏最小二乘回归模型准确预测了七个性状中的五个,并且比之前用于叶片叶绿素、氮含量和比叶面积的简单光谱指数更准确。对于实测数据和模型数据,叶片性状之间的相关性以及关于基因型和处理间差异的统计推断是相似的。高光谱反射率表型分析方法比传统测量方法快得多,在中午时段仅需2至4天就能对1000多行进行表型分析,并且提供了一种无损方法来准确评估生理和生化性状对环境胁迫的响应。