Moghimi Ali, Yang Ce, Miller Marisa E, Kianian Shahryar F, Marchetto Peter M
Department of Bioproducts and Biosystems Engineering, University of Minnesota, Minneapolis, MN, United States.
Cereal Disease Laboratory, USDA-ARS, Saint Paul, MN, United States.
Front Plant Sci. 2018 Aug 24;9:1182. doi: 10.3389/fpls.2018.01182. eCollection 2018.
Salinity stress has significant adverse effects on crop productivity and yield. The primary goal of this study was to quantitatively rank salt tolerance in wheat using hyperspectral imaging. Four wheat lines were assayed in a hydroponic system with control and salt treatments (0 and 200 mM NaCl). Hyperspectral images were captured one day after salt application when there were no visual symptoms. Subsequent to necessary preprocessing tasks, two endmembers, each representing one of the treatment, were identified in each image using successive volume maximization. To simplify image analysis and interpretation, similarity of all pixels to the salt endmember was calculated by a technique proposed in this study, referred to as vector-wise similarity measurement. Using this approach allowed high-dimensional hyperspectral images to be reduced to one-dimensional gray-scale images while retaining all relevant information. Two methods were then utilized to analyze the gray-scale images: minimum difference of pair assignments and Bayesian method. The rankings of both methods were similar and consistent with the expected ranking obtained by conventional phenotyping experiments and historical evidence of salt tolerance. This research highlights the application of machine learning in hyperspectral image analysis for phenotyping of plants in a quantitative, interpretable, and non-invasive manner.
盐胁迫对作物生产力和产量有显著的不利影响。本研究的主要目标是利用高光谱成像对小麦的耐盐性进行定量排名。在水培系统中对四个小麦品系进行了对照和盐处理(0和200 mM NaCl)的测定。在施加盐分一天后,当没有视觉症状时采集高光谱图像。在完成必要的预处理任务后,使用连续体积最大化方法在每个图像中识别出两个端元,每个端元代表一种处理。为了简化图像分析和解释,通过本研究提出的一种技术(称为逐向量相似性测量)计算所有像素与盐端元的相似度。使用这种方法可以将高维高光谱图像简化为一维灰度图像,同时保留所有相关信息。然后利用两种方法分析灰度图像:配对分配的最小差异法和贝叶斯方法。两种方法的排名相似,且与通过传统表型实验获得的预期排名以及耐盐性的历史证据一致。本研究突出了机器学习在高光谱图像分析中的应用,以定量、可解释和非侵入性的方式对植物进行表型分析。