Department of Chemistry, Sapienza University of Rome, Piazzale Aldo Moro 5, 00185, Rome, Italy.
Department of Physical and Chemical Sciences, University of L'Aquila, Via Vetoio, 67100, L'Aquila, Coppito, Italy.
Anal Chim Acta. 2023 Oct 16;1278:341716. doi: 10.1016/j.aca.2023.341716. Epub 2023 Aug 22.
Cannabis sativa has long been harvested for industrial applications related to its fibers. Industrial hemp cultivars, a botanical class of Cannabis sativa with a low expression of intoxicating Δ-tetrahydrocannabinol (Δ-THC) have been selected for these purposes and scarcely investigated in terms of their content in bioactive compounds. Following the global relaxation in the market of industrial hemp-derived products, research in industrial hemp for pharmaceutical and nutraceutical purposes has surged. In this context, metabolomics-based approaches have proven to fulfill the aim of obtaining comprehensive information on the phytocompound profile of cannabis samples, going beyond the targeted evaluation of the major phytocannabinoids. In the present paper, an HRMS-based metabolomics study was addressed to seven distinct industrial hemp cultivars grown in four experimental fields in Northern, Southern, and Insular Italy. Since the role of minor phytocannabinoids as well as other phytocompounds was found to be critical in discriminating cannabis chemovars and in determining its biological activities, a comprehensive characterization of phytocannabinoids, flavonoids, and phenolic acids was carried out by LC-HRMS and a dedicated data processing workflow following the guidelines of the metabolomics Quality Assurance and Quality Control Consortium. A total of 54 phytocannabinoids, 134 flavonoids, and 77 phenolic acids were annotated, and their role in distinguishing hemp samples based on the geographical field location and cultivar was evaluated by ANOVA-simultaneous component analysis. Finally, a low-level fused model demonstrated the key role of untargeted cannabinomics extended to lesser-studied phytocompound classes for the discrimination of hemp samples.
大麻长期以来一直被用于与其纤维相关的工业应用。工业大麻品种是大麻的一个植物学类别,其致醉 Δ-四氢大麻酚(Δ-THC)的表达水平较低,因此被选用于这些目的,而且几乎没有针对其生物活性化合物含量进行研究。随着工业大麻衍生产品市场的全球放宽,工业大麻在制药和营养保健品方面的研究也如雨后春笋般涌现。在这种情况下,基于代谢组学的方法已被证明能够达到全面了解大麻样品中植物化合物特征的目的,超越了对主要植物大麻素的靶向评估。在本文中,进行了一项基于高分辨质谱(HRMS)的代谢组学研究,涉及在意大利北部、南部和岛屿的四个实验田中种植的七个不同的工业大麻品种。由于发现低丰度植物大麻素以及其他植物化合物在区分大麻化学型和确定其生物活性方面起着关键作用,因此通过 LC-HRMS 对植物大麻素、类黄酮和酚酸进行了全面表征,并按照代谢组学质量保证和质量控制联盟的指导方针进行了专门的数据处理工作。共注释了 54 种植物大麻素、134 种类黄酮和 77 种酚酸,并通过方差分析-同时成分分析评估了它们根据地理田间位置和品种区分大麻样品的作用。最后,一个低水平融合模型证明了针对较少研究的植物化合物类别的靶向大麻素组学扩展对于区分大麻样品的关键作用。