Jalali-Heravi Mehdi, Moazeni-Pourasil Roudabeh Sadat, Sereshti Hassan
Department of Chemistry and Biochemistry, California State University, Los Angeles, CA 90032, United States; Department of Chemistry, Sharif University of Technology, P.O. Box 11155-9516, Tehran, Iran.
Department of Chemistry, Sharif University of Technology, P.O. Box 11155-9516, Tehran, Iran.
J Chromatogr B Analyt Technol Biomed Life Sci. 2015 Mar 1;983-984:83-9. doi: 10.1016/j.jchromb.2015.01.005. Epub 2015 Jan 13.
In analysis of complex natural matrices by gas chromatography-mass spectrometry (GC-MS), many disturbing factors such as baseline drift, spectral background, homoscedastic and heteroscedastic noise, peak shape deformation (non-Gaussian peaks), low S/N ratio and co-elution (overlapped and/or embedded peaks) lead the researchers to handle them to serve time, money and experimental efforts. This study aimed to improve the GC-MS analysis of complex natural matrices utilizing multivariate curve resolution (MCR) methods. In addition, to assess the peak purity of the two-dimensional data, a method called variable size moving window-evolving factor analysis (VSMW-EFA) is introduced and examined. The proposed methodology was applied to the GC-MS analysis of Iranian Lavender essential oil, which resulted in extending the number of identified constituents from 56 to 143 components. It was found that the most abundant constituents of the Iranian Lavender essential oil are α-pinene (16.51%), camphor (10.20%), 1,8-cineole (9.50%), bornyl acetate (8.11%) and camphene (6.50%). This indicates that the Iranian type Lavender contains a relatively high percentage of α-pinene. Comparison of different types of Lavender essential oils showed the composition similarity between Iranian and Italian (Sardinia Island) Lavenders.
在通过气相色谱 - 质谱联用(GC - MS)分析复杂天然基质时,许多干扰因素,如基线漂移、光谱背景、同方差和异方差噪声、峰形变形(非高斯峰)、低信噪比以及共洗脱(重叠和/或包埋峰),使得研究人员需要花费时间、金钱和实验精力来处理这些问题。本研究旨在利用多元曲线分辨率(MCR)方法改进对复杂天然基质的GC - MS分析。此外,为了评估二维数据的峰纯度,引入并检验了一种称为可变大小移动窗口 - 演化因子分析(VSMW - EFA)的方法。所提出的方法应用于伊朗薰衣草精油的GC - MS分析,结果使鉴定出的成分数量从56种增加到143种。研究发现,伊朗薰衣草精油中含量最高的成分是α - 蒎烯(16.51%)、樟脑(10.20%)、1,8 - 桉叶素(9.50%)、乙酸龙脑酯(8.11%)和莰烯(6.50%)。这表明伊朗品种的薰衣草中α - 蒎烯的含量相对较高。不同类型薰衣草精油的比较表明,伊朗薰衣草和意大利(撒丁岛)薰衣草在成分上具有相似性。