Neilson E H, Edwards A M, Blomstedt C K, Berger B, Møller B Lindberg, Gleadow R M
School of Biological Sciences, Monash University, Clayton 3800, Australia Plant Biochemistry Laboratory, Department of Plant and Environmental Sciences, University of Copenhagen, 40 Thorvaldsensvej, DK-1871 Frederiksberg C, Copenhagen, Denmark.
School of Biological Sciences, Monash University, Clayton 3800, Australia.
J Exp Bot. 2015 Apr;66(7):1817-32. doi: 10.1093/jxb/eru526. Epub 2015 Feb 19.
The use of high-throughput phenotyping systems and non-destructive imaging is widely regarded as a key technology allowing scientists and breeders to develop crops with the ability to perform well under diverse environmental conditions. However, many of these phenotyping studies have been optimized using the model plant Arabidopsis thaliana. In this study, The Plant Accelerator(®) at The University of Adelaide, Australia, was used to investigate the growth and phenotypic response of the important cereal crop, Sorghum bicolor L. Moench and related hybrids to water-limited conditions and different levels of fertilizer. Imaging in different spectral ranges was used to monitor plant composition, chlorophyll, and moisture content. Phenotypic image analysis accurately measured plant biomass. The data set obtained enabled the responses of the different sorghum varieties to the experimental treatments to be differentiated and modelled. Plant architectural instead of architecture elements were determined using imaging and found to correlate with an improved tolerance to stress, for example diurnal leaf curling and leaf area index. Analysis of colour images revealed that leaf 'greenness' correlated with foliar nitrogen and chlorophyll, while near infrared reflectance (NIR) analysis was a good predictor of water content and leaf thickness, and correlated with plant moisture content. It is shown that imaging sorghum using a high-throughput system can accurately identify and differentiate between growth and specific phenotypic traits. R scripts for robust, parsimonious models are provided to allow other users of phenomic imaging systems to extract useful data readily, and thus relieve a bottleneck in phenotypic screening of multiple genotypes of key crop plants.
高通量表型分析系统和无损成像技术的应用被广泛视为一项关键技术,它能让科学家和育种人员培育出在多种环境条件下都能良好生长的作物。然而,许多此类表型分析研究都是以模式植物拟南芥为对象进行优化的。在本研究中,澳大利亚阿德莱德大学的植物加速器(®)被用于研究重要谷类作物双色高粱(Sorghum bicolor L. Moench)及其相关杂交种在水分受限条件和不同施肥水平下的生长及表型响应。利用不同光谱范围的成像技术来监测植物组成、叶绿素和含水量。表型图像分析准确测量了植物生物量。所获得的数据集能够区分并模拟不同高粱品种对实验处理的响应。利用成像技术确定的是植物架构而非架构元素,并发现其与胁迫耐受性的提高相关,例如昼夜叶片卷曲和叶面积指数。彩色图像分析表明,叶片“绿度”与叶片氮含量和叶绿素相关,而近红外反射率(NIR)分析是含水量和叶片厚度的良好预测指标,且与植物含水量相关。研究表明,使用高通量系统对高粱进行成像能够准确识别并区分生长和特定表型性状。提供了用于稳健、简约模型的R脚本,以使其他表型成像系统用户能够轻松提取有用数据,从而缓解关键作物多种基因型表型筛选中的瓶颈问题。