Essential oil profile of Origanum vulgare subsp. vulgare native population from Rtanj via chemometrics tools

M. Aćimović, L. Pezo, Stefan Ivanović, K. Simić, Jovana Ljujić
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Abstract

The aim of this study was to predict the retention indices of chemical compounds found in the aerial parts of Origanum vulgare subsp. vulgare essential oil, obtained by hydrodistillation and analyzed by GC-MS. A total number of 28 compounds were detected in the essential oil. The compounds with the highest relative concentrations were germacrene D (21.5%), 1,8-cineole (14.2%), sabinene (14.0%) and trans-caryophyllene (13.4%). The retention time was predicted by using the quantitative structure–retention relationship, using seven molecular descriptors chosen by factor analysis and genetic algorithm. The chosen descriptors were mutually uncorrelated, and they were used to develop an artificial neural network model. A total number of 28 experimentally obtained retention indices (log RI) were used to set up a predictive quantitative structure-retention relationship model. The coefficient of determination for the training cycle was 0.998, indicating that this model could be used for predicting retention indices for O. vulgare subsp. vulgare essential oil compounds.
土一枝精油谱。通过化学计量学工具分析Rtanj的普通土著人口
本研究的目的是预测淫羊藿(Origanum vulgare subsp.)地上部分化合物的保留指数。用气相色谱-质谱联用法分析得到的芫花精油。在精油中共检测到28种化合物。相对浓度最高的化合物依次为竹蕊烯D(21.5%)、1,8-桉叶油脑(14.2%)、沙宾烯(14.0%)和反式石竹烯(13.4%)。利用因子分析和遗传算法选择的7个分子描述符,利用定量结构-保留关系预测保留时间。所选择的描述符是相互不相关的,它们被用来开发人工神经网络模型。利用28个实验获得的保留指数(log RI)建立了预测定量的结构-保留关系模型。培养周期的决定系数为0.998,表明该模型可用于预测绿僵菌的保留指标。普通精油化合物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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