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Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour

Cannabis flower odour is an important aspect of product quality as it impacts the sensory experience when administered, which can affect therapeutic outcomes in paediatric patient populations who may reject unpalatable products. However, the cannabis industry has a reputation for having products wit...

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Autores principales: Wise, Kimber, Phan, Nicholas, Selby-Pham, Jamie, Simovich, Tomer, Gill, Harsharn
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10128932/
https://www.ncbi.nlm.nih.gov/pubmed/37098051
http://dx.doi.org/10.1371/journal.pone.0284842
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author Wise, Kimber
Phan, Nicholas
Selby-Pham, Jamie
Simovich, Tomer
Gill, Harsharn
author_facet Wise, Kimber
Phan, Nicholas
Selby-Pham, Jamie
Simovich, Tomer
Gill, Harsharn
author_sort Wise, Kimber
collection PubMed
description Cannabis flower odour is an important aspect of product quality as it impacts the sensory experience when administered, which can affect therapeutic outcomes in paediatric patient populations who may reject unpalatable products. However, the cannabis industry has a reputation for having products with inconsistent odour descriptions and misattributed strain names due to the costly and laborious nature of sensory testing. Herein, we evaluate the potential of using odour vector modelling for predicting the odour intensity of cannabis products. Odour vector modelling is proposed as a process for transforming routinely produced volatile profiles into odour intensity (OI) profiles which are hypothesised to be more informative to the overall product odour (sensory descriptor; SD). However, the calculation of OI requires compound odour detection thresholds (ODT), which are not available for many of the compounds present in natural volatile profiles. Accordingly, to apply the odour vector modelling process to cannabis, a QSPR statistical model was first produced to predict ODT from physicochemical properties. The model presented herein was produced by polynomial regression with 10-fold cross-validation from 1,274 median ODT values to produce a model with R(2) = 0.6892 and a 10-fold R(2) = 0.6484. This model was then applied to terpenes which lacked experimentally determined ODT values to facilitate vector modelling of cannabis OI profiles. Logistic regression and k-means unsupervised cluster analysis was applied to both the raw terpene data and the transformed OI profiles to predict the SD of 265 cannabis samples and the accuracy of the predictions across the two datasets was compared. Out of the 13 SD categories modelled, OI profiles performed equally well or better than the volatile profiles for 11 of the SD, and across all SD the OI data was on average 21.9% more accurate (p = 0.031). The work herein is the first example of the application of odour vector modelling to complex volatile profiles of natural products and demonstrates the utility of OI profiles for the prediction of cannabis odour. These findings advance both the understanding of the odour modelling process which has previously only been applied to simple mixtures, and the cannabis industry which can utilise this process for more accurate prediction of cannabis odour and thereby reduce unpleasant patient experiences.
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spelling pubmed-101289322023-04-26 Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour Wise, Kimber Phan, Nicholas Selby-Pham, Jamie Simovich, Tomer Gill, Harsharn PLoS One Research Article Cannabis flower odour is an important aspect of product quality as it impacts the sensory experience when administered, which can affect therapeutic outcomes in paediatric patient populations who may reject unpalatable products. However, the cannabis industry has a reputation for having products with inconsistent odour descriptions and misattributed strain names due to the costly and laborious nature of sensory testing. Herein, we evaluate the potential of using odour vector modelling for predicting the odour intensity of cannabis products. Odour vector modelling is proposed as a process for transforming routinely produced volatile profiles into odour intensity (OI) profiles which are hypothesised to be more informative to the overall product odour (sensory descriptor; SD). However, the calculation of OI requires compound odour detection thresholds (ODT), which are not available for many of the compounds present in natural volatile profiles. Accordingly, to apply the odour vector modelling process to cannabis, a QSPR statistical model was first produced to predict ODT from physicochemical properties. The model presented herein was produced by polynomial regression with 10-fold cross-validation from 1,274 median ODT values to produce a model with R(2) = 0.6892 and a 10-fold R(2) = 0.6484. This model was then applied to terpenes which lacked experimentally determined ODT values to facilitate vector modelling of cannabis OI profiles. Logistic regression and k-means unsupervised cluster analysis was applied to both the raw terpene data and the transformed OI profiles to predict the SD of 265 cannabis samples and the accuracy of the predictions across the two datasets was compared. Out of the 13 SD categories modelled, OI profiles performed equally well or better than the volatile profiles for 11 of the SD, and across all SD the OI data was on average 21.9% more accurate (p = 0.031). The work herein is the first example of the application of odour vector modelling to complex volatile profiles of natural products and demonstrates the utility of OI profiles for the prediction of cannabis odour. These findings advance both the understanding of the odour modelling process which has previously only been applied to simple mixtures, and the cannabis industry which can utilise this process for more accurate prediction of cannabis odour and thereby reduce unpleasant patient experiences. Public Library of Science 2023-04-25 /pmc/articles/PMC10128932/ /pubmed/37098051 http://dx.doi.org/10.1371/journal.pone.0284842 Text en © 2023 Wise et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Wise, Kimber
Phan, Nicholas
Selby-Pham, Jamie
Simovich, Tomer
Gill, Harsharn
Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour
title Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour
title_full Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour
title_fullStr Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour
title_full_unstemmed Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour
title_short Utilisation of QSPR ODT modelling and odour vector modelling to predict Cannabis sativa odour
title_sort utilisation of qspr odt modelling and odour vector modelling to predict cannabis sativa odour
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10128932/
https://www.ncbi.nlm.nih.gov/pubmed/37098051
http://dx.doi.org/10.1371/journal.pone.0284842
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