环境电离质谱和化学计量相结合的方法在大麻和大麻品种鉴别中的应用。

Megan I Chambers, Samira Beyramysoltan, Benedetta Garosi, Rabi A Musah
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引用次数: 0

摘要

背景:大麻和大麻是大麻的两个主要品种。虽然两者都含有Δ9-tetrahydrocannabinol (THC),这是大麻的主要精神活性成分,但它们所含的THC含量不同。目前,美国联邦法律规定,THC含量大于0.3%的大麻为大麻,THC含量小于或等于0.3%的植物材料为大麻。目前确定四氢大麻酚含量的方法是以色谱为基础的,这需要大量的样品制备,使材料成为适合样品进样的提取物,以便从所有其他分析物中完全分离和区分四氢大麻酚。这可能会给法医实验室带来问题,因为需要分析和量化所有大麻材料中的四氢大麻酚,从而增加了工作量。方法:采用实时高分辨率质谱(DART-HRMS)直接分析和先进的化学计量学相结合的方法对大麻和大麻植物材料进行鉴别。样本来自几个来源(例如,商业供应商、dea注册供应商和娱乐性大麻市场)。DART-HRMS可以在没有样品预处理的情况下对植物材料进行问询。采用随机森林和主成分分析(PCA)等先进的多变量数据分析方法对两个品种进行了最优区分,准确率较高。结果:当PCA应用于大麻和大麻数据时,可以观察到不同的聚类,使它们能够区分。此外,在大麻类中,在娱乐和dea提供的大麻样本之间观察到亚簇。另一项单独的调查使用轮廓宽度指数来确定大麻和大麻数据的最佳簇数,结果显示这个数字是2。使用随机森林的模型内部验证的准确率为98%,而外部验证样本的分类准确率为100%。讨论:结果表明,所开发的方法将显著有助于在使用色谱法进行艰苦的验证性测试之前对sativa植物材料进行分析和区分。然而,为了保持和/或提高预测模型的准确性并防止其过时,有必要继续扩展它,以包括具有代表性的新兴大麻和大麻菌株/栽培品种的质谱数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Combined ambient ionization mass spectrometric and chemometric approach for the differentiation of hemp and marijuana varieties of Cannabis sativa.

Combined ambient ionization mass spectrometric and chemometric approach for the differentiation of hemp and marijuana varieties of Cannabis sativa.

Combined ambient ionization mass spectrometric and chemometric approach for the differentiation of hemp and marijuana varieties of Cannabis sativa.

Combined ambient ionization mass spectrometric and chemometric approach for the differentiation of hemp and marijuana varieties of Cannabis sativa.

Background: Hemp and marijuana are the two major varieties of Cannabis sativa. While both contain Δ9-tetrahydrocannabinol (THC), the primary psychoactive component of C. sativa, they differ in the amount of THC that they contain. Presently, U.S. federal laws stipulate that C. sativa containing greater than 0.3% THC is classified as marijuana, while plant material that contains less than or equal to 0.3% THC is hemp. Current methods to determine THC content are chromatography-based, which requires extensive sample preparation to render the materials into extracts suitable for sample injection, for complete separation and differentiation of THC from all other analytes present. This can create problems for forensic laboratories due to the increased workload associated with the need to analyze and quantify THC in all C. sativa materials.

Method: The work presented herein combines direct analysis in real time-high-resolution mass spectrometry (DART-HRMS) and advanced chemometrics to differentiate hemp and marijuana plant materials. Samples were obtained from several sources (e.g., commercial vendors, DEA-registered suppliers, and the recreational Cannabis market). DART-HRMS enabled the interrogation of plant materials with no sample pretreatment. Advanced multivariate data analysis approaches, including random forest and principal component analysis (PCA), were used to optimally differentiate these two varieties with a high level of accuracy.

Results: When PCA was applied to the hemp and marijuana data, distinct clustering that enabled their differentiation was observed. Furthermore, within the marijuana class, subclusters between recreational and DEA-supplied marijuana samples were observed. A separate investigation using the silhouette width index to determine the optimal number of clusters for the marijuana and hemp data revealed this number to be two. Internal validation of the model using random forest demonstrated an accuracy of 98%, while external validation samples were classified with 100% accuracy.

Discussion: The results show that the developed approach would significantly aid in the analysis and differentiation of C. sativa plant materials prior to launching painstaking confirmatory testing using chromatography. However, to maintain and/or enhance the accuracy of the prediction model and keep it from becoming outdated, it will be necessary to continue to expand it to include mass spectral data representative of emerging hemp and marijuana strains/cultivars.

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