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在生长室条件下,考虑氨基酸谱,通过人工栽培生产高品质绿茶叶。

High-quality green tea leaf production by artificial cultivation under growth chamber conditions considering amino acids profile.

作者信息

Miyauchi Shunsuke, Yuki Takayuki, Fuji Hiroshi, Kojima Kunio, Yonetani Tsutomu, Tomio Ayako, Bamba Takeshi, Fukusaki Eiichiro

机构信息

Corporate Research and Development Division, Sharp Corporation, 2613-1 Ichinomoto-cho, Tenri, Nara 632-8567, Japan.

Department of Biotechnology, Graduate School of Engineering, Osaka University, 2-1 Yamadaoka, Suita, Osaka 565-0871, Japan.

出版信息

J Biosci Bioeng. 2014 Dec;118(6):710-5. doi: 10.1016/j.jbiosc.2014.05.008. Epub 2014 Jun 7.

Abstract

The current study focused on the tea plant (Camellia sinensis) as a target for artificial cultivation because of the variation in its components in response to light conditions. We analyzed its sensory quality by multi-marker profiling using multicomponent data based on metabolomics to optimize the conditions of light and the environment during cultivation. From the analysis of high-quality tea samples ranked in a tea contest, the ranking predictive model was created by the partial least squares (PLS) regression analysis to examine the correlation between the amino-acid content (X variables) and the ranking in the tea contest (Y variables). The predictive model revealed that glutamine, arginine, and theanine were the predominant amino acids present in high-ranking teas. Based on this result, we established a cover-culture condition (i.e., a low-light intensity condition) during the later stage of the culture process and obtained artificially cultured tea samples, which were predicted to be high-quality teas. The aim of the current study was to optimize the light conditions for the cultivation of tea plants by performing data analysis of their sensory qualities through multi-marker profiling in order to facilitate the development of high-quality teas by plant factories.

摘要

由于茶树(Camellia sinensis)的成分会因光照条件而发生变化,本研究将其作为人工栽培的目标。我们基于代谢组学的多组分数据,通过多标记分析来分析其感官品质,以优化栽培过程中的光照和环境条件。通过对在茶叶竞赛中排名靠前的优质茶样进行分析,利用偏最小二乘(PLS)回归分析建立了排名预测模型,以检验氨基酸含量(X变量)与茶叶竞赛排名(Y变量)之间的相关性。预测模型表明,谷氨酰胺、精氨酸和茶氨酸是高排名茶叶中的主要氨基酸。基于这一结果,我们在培养过程的后期建立了覆盖培养条件(即低光照强度条件),并获得了预计为优质茶的人工培养茶样。本研究的目的是通过多标记分析对茶树感官品质进行数据分析,以优化茶树栽培的光照条件,从而促进植物工厂生产高品质茶叶。

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