Department of Food Safety, Institute for Postharvest and Food Sciences, Agricultural Research Organization, Volcani Center, Rishon LeZion, Israel.
Department of Plant Science, The Robert H Smith Faculty of Agriculture, Food and Environment, Rehovot, Israel.
J Sci Food Agric. 2022 Jun;102(8):3325-3335. doi: 10.1002/jsfa.11679. Epub 2021 Dec 9.
Terpene, eugenol and polyphenolic contents of basil are major determinants of quality, which is affected by genetics, weather, growing practices, pests and diseases. Here, we aimed to develop a simple predictive analytical method for determining the polyphenol, eugenol and terpene content of the leaves of major Israeli sweet basil cultivars grown hydroponically, as a function of harvest time, through the use of near-infrared (NIR) spectroscopy, liquid/gas chromatography, and chemometric methods. We also wanted to identify the harvest time associated with the highest terpene, eugenol and polyphenol content.
Six different cultivars and four different harvest times were analyzed. Partial least square regression (PLS-R) analysis yielded an accurate, predictive model that explained more than 93% of the population variance for all of the analyzed compounds. The model yielded good/excellent prediction (R > 0.90, R and R > 0.80) and very good residual predictive deviation (RPD > 2) for all of the analyzed compounds. Concentrations of rosmarinic acid, eugenol and terpenes increased steadily over the first 3 weeks, peaking in the fourth week in most of the cultivars. Our PLS-discriminant analysis (PLS-DA) model provided accurate harvest classification and prediction as compared to cultivar classification. The sensitivity, specificity and accuracy of harvest classification were larger than 0.82 for all harvest time points, whereas the cultivar classification, resulted in sensitivity values lower than 0.8 in three cultivars.
The PLS-R model provided good predictions of rosmarinic acid, eugenol and terpene content. Our NIR coupled with a PLS-DA demonstrated reasonable solution for harvest and cultivar classification. © 2021 Society of Chemical Industry.
罗勒中的萜烯、丁香酚和多酚含量是决定其质量的主要因素,而质量受到遗传、天气、种植方式、病虫害等因素的影响。在此,我们旨在开发一种简单的预测分析方法,以确定水培以色列主要甜罗勒品种叶片中的多酚、丁香酚和萜烯含量,作为收获时间的函数,通过使用近红外(NIR)光谱、液/气相色谱和化学计量方法。我们还希望确定与萜烯、丁香酚和多酚含量最高相关的收获时间。
分析了六个不同品种和四个不同的收获时间。偏最小二乘回归(PLS-R)分析生成了一个准确的预测模型,该模型解释了所有分析化合物超过 93%的群体方差。该模型对所有分析化合物均产生了良好/优秀的预测(R > 0.90,R 和 R > 0.80)和非常好的残留预测偏差(RPD > 2)。迷迭香酸、丁香酚和萜烯的浓度在前 3 周内稳步上升,在大多数品种中第 4 周达到峰值。与品种分类相比,我们的偏最小二乘判别分析(PLS-DA)模型提供了更准确的收获分类和预测。对于所有收获时间点,收获分类的灵敏度、特异性和准确性均大于 0.82,而品种分类在三个品种中导致灵敏度值低于 0.8。
PLS-R 模型对迷迭香酸、丁香酚和萜烯含量的预测效果良好。我们的 NIR 与 PLS-DA 相结合,为收获和品种分类提供了合理的解决方案。© 2021 化学工业协会。