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An integrated strategy to identify genes responsible for sesquiterpene biosynthesis in turmeric.

Jingru SunGuanghong CuiXiaohui MaZhilai ZhanYing MaZhongqiu TengWei GaoYanan WangTong ChenChangjiangsheng LaiYujun ZhaoJinfu TangHuixin LinYe ShenWen ZengJuan GuoLuqi Huang
Published in: Plant molecular biology (2019)
Metabolic module, gene expression pattern and PLS modeling were integrated to precisely identify the terpene synthase responsible for sesquiterpene formation. Functional characterization confirmed the feasibility and sensitivity of this strategy. Plant secondary metabolite biosynthetic pathway elucidation is crucial for the production of these compounds with metabolic engineering. In this study, an integrated strategy was employed to predict the gene function of sesquiterpene synthase (STS) genes using turmeric as a model. Parallel analysis of gene expression patterns and metabolite modules narrowed the candidates into an STS group in which the STSs showed a similar expression pattern. The projections to latent structures by means of partial least squares model was further employed to establish a clear relationship between the candidate STS genes and metabolites and to predict three STSs (ClTPS16, ClTPS15 and ClTPS14) involved in the biosynthesis of several sesquiterpene skeletons. Functional characterization revealed that zingiberene and β-sesquiphellandrene were the major products of ClTPS16, and β-eudesmol was produced by ClTPS15, both of which indicated the accuracy of the prediction. Functional characterization of a control STS, ClTPS1, produced a small amount of β-sesquiphellandrene, as predicted, which confirmed the sensitivity of metabolite module analysis. This integrated strategy provides a methodology for gene function predictions, which represents a substantial improvement in the elucidation of biosynthetic pathways in nonmodel plants.
Keyphrases
  • gene expression
  • genome wide
  • genome wide identification
  • dna methylation
  • genome wide analysis
  • copy number
  • bioinformatics analysis
  • poor prognosis
  • high resolution
  • ms ms
  • cell wall