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Essential oils analysis. II. Mass spectra identification of terpene and phenylpropane derivatives.

机译:精油分析。二。萜烯和苯丙烷衍生物的质谱鉴定。

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摘要

Mass spectra are widely used in order to identify the peaks resulting from a chromatographic separation. The most common approach to solve the problem for unknowns on whom very little other structural information is available is the use of a retrieval algorithm and a reference mass spectra database. The wide variety of mass spectra recorded with different instruments under various experimental conditions can lead to erroneous results. In order to improve the accuracy of the results, we proposed earlier an identification algorithm, which combines the information obtained from both GC and MS fingerprints. This paper presents a new algorithm based on the comparison of the unknown mass spectra with several libraries (including Wiley and NIST) by using reverse and direct search algorithms respectively. The results of the comparisons were quantified with respect to the match quality and the interference compounds. A global match index for the comparison using all the above information was computed and the results were presented as the match probability. This index expresses more accurately the matches between unknown and all the available libraries mass spectra. In order to verify our algorithm, we tried to identify the compounds separated by GC-MSD from different species of Acorus calamus L. (Araceae) essential oils. The probability of the matches increases compared with the quality of matches resulting from Wiley and NIST libraries.
机译:质谱被广泛使用,以鉴定色谱分离产生的峰。解决未知数最多的其他结构信息很少的最常见方法是使用检索算法和参考质谱数据库。在不同的实验条件下用不同的仪器记录的各种各样的质谱会导致错误的结果。为了提高结果的准确性,我们较早提出了一种识别算法,该算法结合了从GC和MS指纹获得的信息。本文提出了一种基于未知质谱与多个库(包括Wiley和NIST)进行比较的新算法,分别使用了反向搜索和直接搜索算法。比较结果相对于匹配质量和干扰化合物进行了量化。计算使用上述所有信息进行比较的全局匹配指数,并将结果表示为匹配概率。该索引更准确地表示未知质谱图和所有可用库质谱图之间的匹配。为了验证我们的算法,我们尝试鉴定了通过GC-MSD从不同种类的cor蒲香精油中分离出的化合物。与Wiley和NIST库产生的匹配质量相比,匹配的可能性增加。

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