Jafari Marzieh, Paul Nathan, Hesami Mohsen, Jones Andrew Maxwell Phineas
Department of Plant Agriculture, University of Guelph, Guelph, ON N1G 2W1, Canada.
Int J Mol Sci. 2025 Feb 18;26(4):1746. doi: 10.3390/ijms26041746.
Polyploidy, characterized by an increase in the number of whole sets of chromosomes in an organism, offers a promising avenue for cannabis improvement. Polyploid cannabis plants often exhibit altered morphological, physiological, and biochemical characteristics with a number of potential benefits compared to their diploid counterparts. The optimization of polyploidy induction, such as the level of antimitotic agents and exposure duration, is essential for successful polyploidization to maximize survival and tetraploid rates while minimizing the number of chimeric mixoploids. In this study, three classification-based machine learning algorithms-probabilistic neural network (PNN), support vector classification (SVC), and k-nearest neighbors (KNNs)-were used to model ploidy levels based on oryzalin concentration and exposure time. The results indicated that PNN outperformed both KNNs and SVC. Subsequently, PNN was combined with a genetic algorithm (GA) to optimize oryzalin concentration and exposure time to maximize tetraploid induction rates. The PNN-GA results predicted that the optimal conditions were a concentration of 32.98 µM of oryzalin for 17.92 h. A validation study testing these conditions confirmed the accuracy of the PNN-GA model, resulting in 93.75% tetraploid induction, with the remaining 6.25% identified as mixoploids. Additionally, the evaluation of morphological traits showed that tetraploid plants were more vigorous and had larger leaf sizes compared to diploid or mixoploid plants in vitro.
多倍体的特征是生物体中整套染色体数量增加,为大麻改良提供了一条有前景的途径。与二倍体大麻相比,多倍体大麻植株通常表现出形态、生理和生化特征的改变,并具有许多潜在益处。优化多倍体诱导,如抗有丝分裂剂的水平和处理时间,对于成功实现多倍体化至关重要,以便在使嵌合混倍体数量最少的同时,最大化存活率和四倍体率。在本研究中,基于三种分类的机器学习算法——概率神经网络(PNN)、支持向量分类(SVC)和k近邻算法(KNN)——被用于根据氨磺乐灵浓度和处理时间对倍性水平进行建模。结果表明,PNN的表现优于KNN和SVC。随后,PNN与遗传算法(GA)相结合,以优化氨磺乐灵浓度和处理时间,从而最大化四倍体诱导率。PNN-GA的结果预测,最佳条件是氨磺乐灵浓度为32.98 µM,处理17.92小时。对这些条件进行测试的验证研究证实了PNN-GA模型的准确性,四倍体诱导率为93.75%,其余6.25%被鉴定为混倍体。此外,对形态特征的评估表明,在体外,四倍体植株比二倍体或混倍体植株更健壮,叶片更大。