Galletti Patrícia A, Carvalho Marcia E A, Hirai Welinton Y, Brancaglioni Vivian A, Arthur Valter, Barboza da Silva Clíssia
Department of Crop Science, College of Agriculture "Luiz de Queiroz", University of São Paulo, Piracicaba, Brazil.
Department of Genetics, College of Agriculture "Luiz de Queiroz", University of São Paulo, Piracicaba, Brazil.
Front Plant Sci. 2020 Dec 21;11:577851. doi: 10.3389/fpls.2020.577851. eCollection 2020.
Light-based methods are being further developed to meet the growing demands for food in the agricultural industry. Optical imaging is a rapid, non-destructive, and accurate technology that can produce consistent measurements of product quality compared to conventional techniques. In this research, a novel approach for seed quality prediction is presented. In the proposed approach two advanced optical imaging techniques based on chlorophyll fluorescence and chemometric-based multispectral imaging were employed. The chemometrics encompassed principal component analysis (PCA) and quadratic discrimination analysis (QDA). Among plants that are relevant as both crops and scientific models, tomato, and carrot were selected for the experiment. We compared the optical imaging techniques to the traditional analytical methods used for quality characterization of commercial seedlots. Results showed that chlorophyll fluorescence-based technology is feasible to discriminate cultivars and to identify seedlots with lower physiological potential. The exploratory analysis of multispectral imaging data using a non-supervised approach (two-component PCA) allowed the characterization of differences between carrot cultivars, but not for tomato cultivars. A Random Forest (RF) classifier based on Gini importance was applied to multispectral data and it revealed the most meaningful bandwidths from 19 wavelengths for seed quality characterization. In order to validate the RF model, we selected the five most important wavelengths to be applied in a QDA-based model, and the model reached high accuracy to classify lots with high-and low-vigor seeds, with a correct classification from 86 to 95% in tomato and from 88 to 97% in carrot for validation set. Further analysis showed that low quality seeds resulted in seedlings with altered photosynthetic capacity and chlorophyll content. In conclusion, both chlorophyll fluorescence and chemometrics-based multispectral imaging can be applied as reliable proxies of the physiological potential in tomato and carrot seeds. From the practical point of view, such techniques/methodologies can be potentially used for screening low quality seeds in food and agricultural industries.
基于光的方法正在进一步发展,以满足农业产业对粮食日益增长的需求。光学成像是一种快速、无损且准确的技术,与传统技术相比,它能够对产品质量进行一致的测量。在本研究中,提出了一种用于种子质量预测的新方法。在所提出的方法中,采用了基于叶绿素荧光和基于化学计量学的多光谱成像这两种先进的光学成像技术。化学计量学包括主成分分析(PCA)和二次判别分析(QDA)。在作为作物和科学模型都相关的植物中,选择了番茄和胡萝卜进行实验。我们将光学成像技术与用于商业种子批质量表征的传统分析方法进行了比较。结果表明,基于叶绿素荧光的技术对于区分品种和识别生理潜力较低的种子批是可行的。使用非监督方法(双组分PCA)对多光谱成像数据进行探索性分析,能够表征胡萝卜品种之间的差异,但不能表征番茄品种之间的差异。将基于基尼重要性的随机森林(RF)分类器应用于多光谱数据,它揭示了19个波长中用于种子质量表征最有意义的带宽。为了验证RF模型,我们选择了五个最重要的波长应用于基于QDA的模型,该模型在对高活力和低活力种子批进行分类时达到了高精度,在验证集中,番茄的正确分类率为86%至95%,胡萝卜的正确分类率为88%至97%。进一步分析表明,低质量种子导致幼苗的光合能力和叶绿素含量发生改变。总之,叶绿素荧光和基于化学计量学的多光谱成像都可以作为番茄和胡萝卜种子生理潜力的可靠指标。从实际角度来看,这些技术/方法可潜在地用于食品和农业行业中筛选低质量种子。