info:eu-repo/semantics/article
Relationship among subjective responses, flavor, and chemical composition across more than 800 commercial cannabis varieties
Fecha
2020-07Registro en:
de la Fuente de la Torre, Laura Alethia; Zamberlan, Federico; Sánchez Ferrán, Andrés; Carrillo, Facundo; Tagliazucchi, Enzo Rodolfo; et al.; Relationship among subjective responses, flavor, and chemical composition across more than 800 commercial cannabis varieties; BioMed Central; Journal of Cannabis Research; 2; 1; 7-2020; 1-18
2522-5782
CONICET Digital
CONICET
Autor
de la Fuente de la Torre, Laura Alethia
Zamberlan, Federico
Sánchez Ferrán, Andrés
Carrillo, Facundo
Tagliazucchi, Enzo Rodolfo
Pallavicini, Carla
Resumen
Background: Widespread commercialization of cannabis has led to the introduction of brand names based onusers? subjective experience of psychological effects and flavors, but this process has occurred in the absence ofagreed standards. The objective of this work was to leverage information extracted from large databases toevaluate the consistency and validity of these subjective reports, and to determine their correlation with thereported cultivars and with estimates of their chemical composition (delta-9-THC, CBD, terpenes).Methods: We analyzed a large publicly available dataset extracted from Leafly.com where users freely reportedtheir experiences with cannabis cultivars, including different subjective effects and flavour associations. This analysiswas complemented with information on the chemical composition of a subset of the cultivars extracted fromPsilabs.org. The structure of this dataset was investigated using network analysis applied to the pairwise similaritiesbetween reported subjective effects and/or chemical compositions. Random forest classifiers were used to evaluatewhether reports of flavours and subjective effects could identify the labelled species cultivar. We applied NaturalLanguage Processing (NLP) tools to free narratives written by the users to validate the subjective effect and flavourtags. Finally, we explored the relationship between terpenoid content, cannabinoid composition and subjectivereports in a subset of the cultivars.Results: Machine learning classifiers distinguished between species tags given by ?Cannabis sativa? and ?Cannabisindica? based on the reported flavours: <AUC> = 0.828 ± 0.002 (p < 0.001); and effects: <AUC> = 0.9965 ± 0.0002 (p <0.001). A significant relationship between terpene and cannabinoid content was suggested by positive correlationsbetween subjective effect and flavour tags (p < 0.05, False-Discovery-rate (FDR)-corrected); these correlationsclustered the reported effects into three groups that represented unpleasant, stimulant and soothing effects. Theuse of predefined tags was validated by applying latent semantic analysis tools to unstructured written reviews, alsoproviding breed-specific topics consistent with their purported subjective effects. Terpene profiles matched theperceptual characterizations made by the users, particularly for the terpene-flavours graph (Q = 0.324).