Yoon Hyo In, Lee Su Hyeon, Ryu Dahye, Choi Hyelim, Park Soo Hyun, Jung Je Hyeong, Kim Ho-Youn, Yang Jung-Seok
Smart Farm Research Center, Korea Institute of Science and Technology (KIST), Gangneung, Gangwon, Republic of Korea.
Front Plant Sci. 2024 Apr 26;15:1365298. doi: 10.3389/fpls.2024.1365298. eCollection 2024.
L. is an industrially valuable plant known for its cannabinoids, such as cannabidiol (CBD) and Δ9-tetrahydrocannabinol (THC), renowned for its therapeutic and psychoactive properties. Despite its significance, the cannabis industry has encountered difficulties in guaranteeing consistent product quality throughout the drying process. Hyperspectral imaging (HSI), combined with advanced machine learning technology, has been used to predict phytochemicals that presents a promising solution for maintaining cannabis quality control. We examined the dynamic changes in cannabinoid compositions under diverse drying conditions and developed a non-destructive method to appraise the quality of cannabis flowers using HSI and machine learning. Even when the relative weight and water content remained constant throughout the drying process, drying conditions significantly influenced the levels of CBD, THC, and their precursors. These results emphasize the importance of determining the exact drying endpoint. To develop HSI-based models for predicting cannabis quality indicators, including dryness, precursor conversion of CBD and THC, and CBD : THC ratio, we employed various spectral preprocessing methods and machine learning algorithms, including logistic regression (LR), support vector machine (SVM), k-nearest neighbor (KNN), random forest (RF), and Gaussian naïve Bayes (GNB). The LR model demonstrated the highest accuracy at 94.7-99.7% when used in conjunction with spectral pre-processing techniques such as multiplicative scatter correction (MSC) or Savitzky-Golay filter. We propose that the HSI-based model holds the potential to serve as a valuable tool for monitoring cannabinoid composition and determining optimal drying endpoint. This tool offers the means to achieve uniform cannabis quality and optimize the drying process in the industry.
大麻是一种具有工业价值的植物,以其大麻素而闻名,如大麻二酚(CBD)和Δ9-四氢大麻酚(THC),因其治疗和精神活性特性而著称。尽管其具有重要意义,但大麻产业在整个干燥过程中保证产品质量一致性方面遇到了困难。高光谱成像(HSI)与先进的机器学习技术相结合,已被用于预测植物化学物质,这为维持大麻质量控制提供了一个有前景的解决方案。我们研究了不同干燥条件下大麻素成分的动态变化,并开发了一种使用高光谱成像和机器学习评估大麻花质量的无损方法。即使在整个干燥过程中相对重量和含水量保持不变,干燥条件仍会显著影响CBD、THC及其前体的含量。这些结果强调了确定精确干燥终点的重要性。为了开发基于高光谱成像的模型来预测大麻质量指标,包括干燥度、CBD和THC的前体转化率以及CBD:THC比率,我们采用了各种光谱预处理方法和机器学习算法,包括逻辑回归(LR)、支持向量机(SVM)、k近邻(KNN)、随机森林(RF)和高斯朴素贝叶斯(GNB)。当与乘法散射校正(MSC)或Savitzky-Golay滤波器等光谱预处理技术结合使用时,LR模型的准确率最高,为94.7-99.7%。我们提出,基于高光谱成像的模型有潜力成为监测大麻素成分和确定最佳干燥终点的有价值工具。这个工具提供了实现大麻质量均匀性和优化该行业干燥过程的方法。