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

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...

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Veröffentlicht in:Journal of bioscience and bioengineering 2014-12, Vol.118 (6), p.710-715
Hauptverfasser: Miyauchi, Shunsuke, Yuki, Takayuki, Fuji, Hiroshi, Kojima, Kunio, Yonetani, Tsutomu, Tomio, Ayako, Bamba, Takeshi, Fukusaki, Eiichiro
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container_end_page 715
container_issue 6
container_start_page 710
container_title Journal of bioscience and bioengineering
container_volume 118
creator Miyauchi, Shunsuke
Yuki, Takayuki
Fuji, Hiroshi
Kojima, Kunio
Yonetani, Tsutomu
Tomio, Ayako
Bamba, Takeshi
Fukusaki, Eiichiro
description 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.
doi_str_mv 10.1016/j.jbiosc.2014.05.008
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subjects Amino Acids - analysis
Amino Acids - metabolism
Biological and medical sciences
Biotechnology
Camellia sinensis
Camellia sinensis - chemistry
Camellia sinensis - growth & development
Camellia sinensis - metabolism
Camellia sinensis - radiation effects
Fundamental and applied biological sciences. Psychology
Glutamates - analysis
Least-Squares Analysis
Metabolomics
Plant Extracts - analysis
Plant Extracts - chemistry
Plant factory
Plant Leaves - chemistry
Plant Leaves - growth & development
Plant Leaves - metabolism
Plant Leaves - radiation effects
Prediction model
Quality of green tea
Tea - chemistry
Tea - standards
title High-quality green tea leaf production by artificial cultivation under growth chamber conditions considering amino acids profile
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