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利用挥发性物质的类模拟软独立建模识别香烟品牌。

Identification of Cigarette Brands by Soft Independent Modeling of Class Analogy of Volatile Substances.

机构信息

European Commission, Joint Research Centre (JRC), Geel, Belgium.

出版信息

Nicotine Tob Res. 2020 May 26;22(6):997-1003. doi: 10.1093/ntr/ntz066.

Abstract

INTRODUCTION

This study aimed to develop a method for discriminating cigarette brands based on the profiles of volatile components extracted from the tobacco fraction of the finished cigarettes to authenticate branded cigarettes of unknown origin.

METHODS

An analytical method comprising direct thermal desorption coupled with gas chromatography-quadrupole time-of-flight mass spectrometry was developed for acquiring volatile profiles of cigarettes. About 290 samples of commercially available cigarettes were analyzed. Within this batch, 123 samples represented four popular cigarette brands. They were selected for in-depth characterization. Multivariate analysis was used to investigate the interrelations among volatile compounds of cigarettes and to identify characteristic markers for the cigarette discrimination. Supervised pattern recognition techniques were used for designing classification models.

RESULTS

Principal component analysis covering all detected volatiles allowed the differentiation of cigarettes based on the brand. A number of 56 volatile components were identified as markers with high discrimination power. These compounds were used for establishing classification models. A method of soft independent modeling of class analogy developed for the four studied cigarette brands proved to be efficient in the classification of unknown cigarettes, with accuracy between 95.9% and 100%.

CONCLUSIONS

The data evaluation by soft independent modeling of class analogy was highly accurate in classification of unknown cigarettes with a low rate of false positives and false negatives. The developed models can be used for discrimination of genuine from non-genuine products with high level of probability.

IMPLICATIONS

Profiling of volatiles, which is commonly used for authentication of different food commodities, was applied for the characterization of cigarette tobacco for the purpose of authentication a cigarette brand. Volatile components with a high discrimination power were identified by means of multivariate statistical methods and used for establishing of a classification model. The classification model was able to discriminate genuine from non-genuine cigarettes with a high level of prediction accuracy. This model could be a powerful tool for tobacco control to judge the authenticity of cigarettes.

摘要

简介

本研究旨在开发一种基于从成品卷烟的烟草部分提取的挥发性成分谱来鉴别未知来源品牌卷烟的方法,以鉴别假冒卷烟。

方法

开发了一种包括直接热解吸与气相色谱-四极杆飞行时间质谱联用的分析方法,用于获取卷烟的挥发性成分谱。分析了约 290 个市售卷烟样品。在这批样品中,有 123 个样品代表四个流行的卷烟品牌。它们被选来进行深入的特征描述。采用多元分析方法研究卷烟中挥发性化合物的相互关系,鉴定出用于卷烟鉴别的特征标志物。采用有监督的模式识别技术设计分类模型。

结果

涵盖所有检测到的挥发性成分的主成分分析允许基于品牌对卷烟进行区分。确定了 56 种具有高鉴别能力的挥发性成分作为标志物。这些化合物被用于建立分类模型。针对所研究的四个卷烟品牌开发的软独立建模类模拟分类方法被证明在未知卷烟的分类中非常有效,准确率在 95.9%到 100%之间。

结论

软独立建模类模拟法的数据评估在对未知卷烟的分类中具有很高的准确性,假阳性和假阴性率都很低。所开发的模型可用于以高概率鉴别真假产品。

意义

常用于不同食品商品认证的挥发性成分分析方法,被应用于卷烟烟草的特征描述,以鉴定卷烟品牌。采用多元统计方法鉴定出具有高鉴别能力的挥发性成分,并用于建立分类模型。分类模型能够以高预测准确率区分真假卷烟。该模型可能成为烟草控制的有力工具,用于判断卷烟的真伪。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b21/7249919/4f5c6af0975c/ntz066f0001.jpg

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