首页> 外文期刊>Journal of chromatography, A: Including electrophoresis and other separation methods >Comprehensive characterisation of ylang-ylang essential oils according to distillation time, origin, and chemical composition using a multivariate approach applied to average mass spectra and segmented average mass spectral data
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Comprehensive characterisation of ylang-ylang essential oils according to distillation time, origin, and chemical composition using a multivariate approach applied to average mass spectra and segmented average mass spectral data

机译:使用多变量方法的蒸馏时间,来源和化学成分综合表征ylang-ylang精油,使用多变量方法应用于平均质谱和分段的平均质谱数据

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Analyses of the complex essential oil samples using gas chromatography hyphenated with mass spectrometry (GC-MS) generate large three-way data arrays. Processing such large data sets and extracting meaningful information in the metabolic studies of natural products requires application of multivariate statistical techniques (MSTs). From the GC-MS raw data several different input data sets for the MSTs can be created, including total chromatogram average mass spectra (TCAMS), segmented average mass spectra (SAMS) and chemical composition. Herein, we compared the performance of MSTs on average mass spectrum based data sets, TCAMS and SAMS, against chemical composition and attenuated total reflectance Fourier transformation infrared (ATR-FTIR) spectroscopy in the evaluation of quality of ylang-ylang essential oils, based on their grade, geographical origin and chemical composition, using principal component analysis (PCA), partial least squares regression (PLS) and discriminatory analysis (PLS-DA). PCA based on TCAMS, SAMS and chemical composition showed clear trends amongst the samples based on increase in grade (distillation time). PLS-DA applied to TCAMS, SAMS and ATR-FTIR discriminated between all geographical origins. Predicted relative abundances of the 18 most important compounds, using PLS regression models on TCAMS, SAMS and ATR-FTIR, were successfully applied to ylang-ylang essential oil quality assessment based on comparison with the ISO 3063:2004 standard, where the SAMS data set showed superior performance, compared to other data sets. (C) 2020 Elsevier B.V. All rights reserved.
机译:使用质谱(GC-MS)连字符的气相色谱法分析复合物精油样品(GC-MS)产生大的三通数据阵列。处理如此大数据集并在天然产品的代谢研究中提取有意义的信息需要应用多元统计技术(MSTS)。从GC-MS原始数据可以创建MST的几个不同的输入数据集,包括总色谱图均质谱(TCAM),分段的平均质谱(SAMS)和化学组成。在此,我们将MSTS对平均质谱基于数据集,TCAM和SAM的性能进行了比较,反对化学成分,并衰减总反射率傅里叶变换红外(ATR-FTIR)光谱,评估Ylang-Ylang精油的质量,基于它们的等级,地理原产地和化学成分,使用主成分分析(PCA),偏最小二乘回归(PLS)和鉴别性分析(PLS-DA)。基于TCAMS,SAM和化学成分的PCA基于级别(蒸馏时间)的增加,样品中的清晰趋势。 PLS-DA适用于TCAMS,SAM和ATR-FTIR,歧视所有地理起源。预测18个最重要的化合物的相对丰富,使用PLS回归模型在TCAMS,SAMS和ATR-FTIR上成功应用于ylang-Ylang基本石油质量评估,基于与ISO 3063:2004标准的比较,其中SAMS数据集与其他数据集相比,表现出卓越的性能。 (c)2020 Elsevier B.v.保留所有权利。

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