Department of Animal Production, University of Cordoba, Campus of Rabanales, 14071 Córdoba, Spain.
Department of Food Science and Food Technology, University of Cordoba, Campus of Rabanales, 14071 Córdoba, Spain.
Spectrochim Acta A Mol Biomol Spectrosc. 2019 Jan 15;207:242-250. doi: 10.1016/j.saa.2018.09.035. Epub 2018 Sep 19.
The study sought to perform a non-destructive and in-situ quality evaluation of spinach plants using near infrared (NIR) spectroscopy in order to establish its suitability for different uses once harvested. Modified partial least square (MPLS) regression models using NIR spectra of intact spinach leaves were developed for nitrate, ascorbic acid and soluble solid contents. The residual predictive deviation (RPD) values were 1.29, 1.21 and 2.54 for nitrate, ascorbic acid and soluble solid contents, respectively. Later, this predictive capacity increased for nitrate content (RPDcv = 1.63) when new models were developed, taking into account the influence on the robustness of the model exercised by the simultaneity between the NIR and laboratory analyses. Subsequently, using partial least squares discriminant analysis (PLS-DA), the ability of NIRS technology to classify spinach as a function of nitrate content was tested. PLS-DA yielded percentages of correctly classified samples ranging from 73.08-76.92% for the class 'spinach able to be used fresh' to 85.71-73.08% for the class 'preserved, deep-frozen or frozen spinach, both for unbalanced and balanced models respectively, based on NH signal associated with proteins. Overall, the data supports the capability of NIR spectroscopy to establish the final destination of the production of spinach analysed on the plant, as a screening tool for important safety and quality parameters.
该研究旨在使用近红外(NIR)光谱对菠菜植株进行非破坏性和原位质量评估,以确定其在收获后的不同用途中的适用性。使用完整的菠菜叶片的 NIR 光谱建立了用于硝酸盐、抗坏血酸和可溶性固形物含量的改良偏最小二乘(MPLS)回归模型。硝酸盐、抗坏血酸和可溶性固形物含量的残余预测偏差(RPD)值分别为 1.29、1.21 和 2.54。后来,当考虑到 NIR 和实验室分析之间的同时性对模型稳健性的影响时,新模型的建立提高了硝酸盐含量的预测能力(RPDcv=1.63)。随后,使用偏最小二乘判别分析(PLS-DA)测试了 NIRS 技术根据硝酸盐含量对菠菜进行分类的能力。PLS-DA 产生的正确分类样本百分比范围为 73.08-76.92%,用于“可新鲜使用的菠菜”类别,以及 85.71-73.08%,用于“保藏、深冻或冷冻菠菜”类别,对于不平衡和平衡模型分别基于与蛋白质相关的 NH 信号。总的来说,这些数据支持了 NIR 光谱在确定分析植物上的菠菜生产的最终用途方面的能力,作为重要安全和质量参数的筛选工具。