CsHCT synthesizes acylated flavonoid, kaempferol‐3‐ O ‐(6″‐ p ‐coumaroyl)‐glucoside, to enhance cold resistance in tea plants ( Camellia sinensis )

类黄酮 拟南芥 冷应激 生物化学 生物 代谢组学 类黄酮生物合成 拟南芥 体外 化学 生物合成 体内 植物 冷敏 代谢途径 体外毒理学 转录组 基因
作者
Xuyang Liu,Shan Tao Jiang,Yawei Li,Liping Gao,Yajun Liu,Jia‐Ping Ke,Zhaoliang Zhang,Liang Zhang
出处
期刊:Journal of Integrative Plant Biology [Wiley]
卷期号:68 (4): 1118-1135
标识
DOI:10.1111/jipb.70055
摘要

Tea plant (Camellia sinensis) accumulates abundant secondary metabolites under cold stress, some of which are thought to play important roles in enhancing cold tolerance. To explore novel secondary metabolites involved in cold tolerance, we conducted an untargeted metabolomics analysis of tea plants under cold stress treatment. This revealed a novel acylated flavonoid, kaempferol-3-O-(6″-p-coumaroyl)-glucoside (KCG), in which accumulation positively correlated with stress severity. The compound was purified and structurally characterized using nuclear magnetic resonance (NMR) spectroscopy. Exogenous application of this flavonoid significantly improved cold tolerance in tea plants, indicating its role as a defensive metabolite. Transcriptome sequencing identified candidate acyltransferases, with tea hydroxycinnamoyl transferase (CsHCT) emerging as a key biosynthetic gene. In vitro assays confirmed that recombinant CsHCT catalyzes the formation of KCG from kaempferol-3-O-glucoside and p-coumaroyl-CoA. Overexpression of CsHCT in tea seedlings and Arabidopsis thaliana resulted in markedly elevated levels of this flavonoid and cold resistance of these plants, validating its in vivo role. Our findings elucidate the biosynthesis of acylated flavonoids in tea plants and highlight CsHCT as a genetic target for enhancing cold resistance. This study provides foundational insights for advancing cold-resistant tea breeding programs.
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