Li Jing, Zhang Yuanju, Hou Yingyue, Zhou Rong, Lu Yang, Du Guangying
Guizhou University of Traditional Chinese Medicine, Guiyang, Guizhou, China.
Guizhou Key Laboratory of Modern Traditional Chinese Medicine Creation, Huaxi, Guiyang, Guizhou, China.
Physiol Plant. 2025 May-Jun;177(3):e70334. doi: 10.1111/ppl.70334.
The genus Dendrobium, the largest within the Orchidaceae family, includes Dendrobium officinale, a dual-purpose medicinal and edible functional food experiencing substantial market demand in Asia. The accumulation patterns and molecular regulatory networks of sugars in its stems and leaves are influenced by seasonal temperature and humidity variations. Understanding these patterns and mechanisms is essential for ensuring high-quality D. officinale production. Based on dynamic monitoring and machine learning models over 2 years involving 2318 data points, this study discovered seasonal variations in glucose, sucrose, fructose, mannose, galactose, and galacturonic acid in stems and leaves conformed to a polynomial regression model (R = 0.742). The model revealed sugar content in stems primarily accumulated from October to April of the following year, with a rapid accumulation from October to February of the subsequent year. Combined with transcriptomic profiling at three critical growth stages, the differentially expressed genes related to sugar metabolism and abiotic stress in leaves and stems were mainly enriched in pathways such as plant-pathogen interaction, photosynthesis, and starch and sucrose metabolism. Additionally, 15 hub genes (e.g., RPS5, RPL23A, PSBO, etc.) were screened using weighted gene co-expression correlation network analysis, which may regulate photosynthesis-related pathways by responding to low-temperature and drought stresses, thereby facilitating normal sugar metabolism in D. officinale to adapt to environmental changes. In summary, these findings elucidate the seasonal variation models and molecular regulatory mechanisms of six sugars in D. officinale, offering scientific guidance for its harvesting and molecular breeding.
石斛属是兰科中最大的属,其中包括铁皮石斛,这是一种兼具药用和食用功能的食品,在亚洲市场需求巨大。其茎和叶中糖类的积累模式和分子调控网络受季节温度和湿度变化的影响。了解这些模式和机制对于确保高质量的铁皮石斛生产至关重要。基于两年内对2318个数据点的动态监测和机器学习模型,本研究发现茎和叶中葡萄糖、蔗糖、果糖、甘露糖、半乳糖和半乳糖醛酸的季节变化符合多项式回归模型(R = 0.742)。该模型显示,茎中的糖含量主要在次年10月至4月积累,并在次年10月至2月快速积累。结合三个关键生长阶段的转录组分析,叶和茎中与糖代谢和非生物胁迫相关的差异表达基因主要富集在植物-病原体相互作用、光合作用以及淀粉和蔗糖代谢等途径中。此外,通过加权基因共表达相关网络分析筛选出15个核心基因(如RPS5、RPL23A、PSBO等),这些基因可能通过响应低温和干旱胁迫来调节光合作用相关途径,从而促进铁皮石斛正常的糖代谢以适应环境变化。总之,这些发现阐明了铁皮石斛中六种糖类的季节变化模型和分子调控机制,为其采收和分子育种提供了科学指导。