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Omics Technologies Applied to Agriculture and Food
Metabolomics Integrated with Transcriptomics Reveals Redirection of the Phenylpropanoids Metabolic Flux in Ginkgo biloba Jie Meng, Bo Wang, Guo He, Yu Wang, Xianfeng Tang, Shumin Wang, Yubin Ma, Chunxiang Fu, Guohua Chai, and Gongke Zhou J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.8b06355 • Publication Date (Web): 25 Feb 2019 Downloaded from http://pubs.acs.org on February 26, 2019
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Journal of Agricultural and Food Chemistry
Metabolomics integrated with transcriptomics reveals redirection of the phenylpropanoids metabolic flux in Ginkgo biloba Jie Meng1,2, Bo Wang2, Guo He2, Yu Wang2, Xianfeng Tang1,2, Shumin Wang1,2, Yubin Ma2, Chunxiang Fu2, Guohua Chai1,2*, Gongke Zhou1,2* Affiliation: 1, College of Resources and Environment, Qingdao Agricultural University, Qingdao 266109, China. 2, Qingdao Engineering Research Center of Biomass Resources and Environment, Qingdao Institute of Bioenergy and Bioprocess Technology, Chinese Academy of Sciences, Qingdao, China * Corresponding
authors: Guohua Chai,
[email protected]; Gongke Zhou
[email protected].
Tel: +86-532-80662731. Fax: +86-532-80662778.
Jie Meng:
[email protected]; Bo Wang:
[email protected]; Guo He:
[email protected]; Yu Wang:
[email protected]; Xianfeng Tang:
[email protected]; Shumin Wang:
[email protected]; Yubin Ma:
[email protected]; Chunxiang Fu:
[email protected]; Guohua Chai:
[email protected]; Gongke Zhou:
[email protected].
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Abstract
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Ginkgo biloba is monotypic species native to China with great economic and
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ecological values. Leaves extract of this tree contains about 24% flavonoids, which
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are widely used for pharmaceutical industry. However, the flavonoids biosynthesis
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pathway is poorly understood in Ginkgo. In this study, we comprehensively compared
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the transcriptome and metabolite profiles of Ginkgo high-flavonoids mutant (ZY1)
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and Anlu1 (control) leaves. A total of 122 significantly changed metabolites (SCMs)
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and 1683 differentially expressed genes (DEGs), including 45 transcription factors,
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were identified in ZY1 compared with Anlu1. An integrated analysis of metabolic and
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transcriptomic data revealed that the abundances of some major flavonoids (especially
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flavone and flavonol) were most significantly increased, while other
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phenylpropanoid-derived products and lipids showed the most largely reduced
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abundances in ZY1 compared to that in Anlu1. qRT-PCR results confirmed the
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alterations in the expression levels of genes encoding components of pathways
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involved in phenylpropanoids and lipids. The redirection of metabolic flux may
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contribute to increased accumulation of flavonoid levels in ZY1 leaves. Our results
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provide valuable information for metabolic engineering of Ginkgo flavonoids
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biosynthesis.
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KEYWORDS: metabolomics, transcriptomics, phenylpropanoids metabolic flux,
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flavonoids biosynthesis, Ginkgo biloba
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Introduction
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Ginkgo (Ginkgo biloba L.) is one of the oldest living tree species, with distinguishing
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features such as slow growing and strong resistance to environmental stresses,
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microbial disease and pests. For thousands of years, Ginkgo is thought to be an
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important medicinal tree, because its leaves and nuts possess many pharmacological
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properties including flavonoids and terpene lactones, which have been widely used for
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treating and protecting from various illnesses 1. However, the mechanism underlying
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flavonoids biosynthesis in Ginkgo remains unclear.
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Flavonoids are extensively distributed in the plant kingdom and their
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biosynthesis pathways have been relatively well elucidated in the Arabidopsis seed 2.
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Flavonoid scaffolds are formed from the building blocks of a phenylpropanoid primer
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(p-coumaroyl-CoA) and polyketide condensing unit (malonyl-CoA) by a serial of
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reactions, including condensation, isomerization, oxidation and reduction. The
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scaffolds are further modified to various sub-classes of flavonoids by different classes
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of enzymes. Functional analysis of Arabidopsis mutants identifies a battery of genes,
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which encode key components of the flavonoids biosynthesis pathway and its
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constituent enzymes. These genes mainly include CHALCONE SYNTHASE (CHS),
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CHALCONE ISOMERASE (CHI), FLAVANONE 3-HYDROXYLASE (F3H),
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FLAVONOID 3’HYDROXYLASE (F3’H), ISOFLAVONE SYNTHASE (IFS),
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FLAVONOL SYNTHASE (FLS), DIHYDROFLAVONOL 4-REDUCTASE (DFR),
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LEUCOANTHOCYANIDIN REDUCTASE (LAR), ANTHOCYANIDIN REDUCTASE
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(ANR), and ANTHOCYANIDIN SYNTHASE (ANS). Compared with the single-copy
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genes in Arabidopsis, Ginkgo employs multigene families to control each step of the
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flavonoid biosynthesis pathway, resulting in a more complex network 3. Although the
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catalyzed activities of several Ginkgo homologs (GbCHS, GbCHI, GbF3H, GbFLS
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and GbANS) are characterized in Escherichia coli 4-8, it is still unclear how these
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enzymes synthesize flavonoid compounds in planta due to lack of related mutants.
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Transcriptome analysis of Ginkgo tissues has successfully identified genes that
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are involved in ginkgolides and bilobalide biosynthesis 9,10, sex determination 11 and
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circadian rhythms-mediated regulation of flavonoid contents 12. In particular, Ni et al.
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showed that different flavonoids varied their contents differently during the day–night
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cycles 12. Genes involved in the flavonoids biosynthesis were down-regulated at
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midnight compared with that at midday. However, no systematic analysis of the
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alterations of flavonoid biosynthesis genes expression is conducted in Ginkgo leaves.
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Recently, application of metabolomics to medicinal plants has significantly facilitated
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the identification of the metabolic pathways of the active medicinal compounds in
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plants 13. Furthermore, the integration of transcriptomics and metabolomics has larger
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advantages to reveal the biosynthetic mechanisms of key metabolic pathways 14,15.
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Therefore, it is feasible to analyze the flavonoid biosynthesis pathway in Ginkgo
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through joint application of the two technologies.
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We recently cultivated a high-flavonoids Ginkgo variety ZY1, whose leaves
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extract contains higher (28%) level of flavonols than Anlu1 (CK, a widely planted
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variety in China) 16. In this study, we further clarified the mechanism of enhanced
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flavonoids levels in ZY1 leaves by integrating the transcriptome and metabolome
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data. The levels of some major flavonoid compounds (especially flavone and
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flavonol) were drastically increased, whereas other phenylpropanoid-derived products
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and fatty acids showed lower abundances in ZY1, compared with CK. These were
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correlated with the alterations in the expression levels of genes associated with these
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metabolic processes. Our current finding may be useful for metabolic engineering of
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Ginkgo flavonoids biosynthesis in host cells.
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Materials and Methods
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Plant Materials
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The Ginkgo varieties “Anlu1” (control) and “ZY1” (bred from “Anlu1”) grafted on
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three-year-old rootstock (the variety “Damaling”) were grown in the field (Laoshan
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district, Qingdao, China; 36°09′13″N, 120°28′53″E). After two years of growth,
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fifteen leaves in three trees for each variety were sampled at middle part of the main
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stems in October, 2017. Each leaf was split into two equal parts along the mid vein:
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one half of the halves was used for metabolomic analysis and the other half for
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transcriptomic analysis. All the materials were frozen in liquid nitrogen immediately
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and then stored at -80°C until used.
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Metabolite Extraction
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The frozen leaves were crushed using a bead beater (1.5 min, 30 Hz, three repetitions,
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MM 400, Retsch). 100 mg of the powdered sample was extracted overnight at 4 °C
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using 1 mL 70% aqueous methanol containing 0.1 mg L-1 lidocaine. After
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centrifugation at 10,000 g for 10 min, the supernatants were filtrated by using 0.22-
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μm hydrophilic PTFE syringe filters (SCAA-104, ANPEL, Shanghai, China) before
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metabolomics analysis. The quality control samples (mix1-3) were injected every two
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experimental samples throughout the analytical run to provide a set of data from
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which repeatability could be assessed.
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Metabolite Profiling Using Liquid Chromatography-Electrospray Ionization -
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Tandem Mass Spectrometry (LC-ESI-MS/MS)
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Metabolite profiling was conducted using a LC-ESI-MS/MS system (HPLC, UFLC
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SHIMADZU CBM30A system; MS, Applied Biosystems 4500 Q TRAP) and an
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Agilent 6520 accurate-mass time-of-flight mass spectrometry. Chromatographic
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separation was performed on an ACQUITY UPLC HSS T3 C18 column (2.1
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mm×100 mm×1.8 μm; Waters) using mobile phase A (0.04% acetic acid in deionized
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water) and mobile phase B (0.04% acetic acid in acetonitrile). The elution profile was
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used as follow: 95:5 V(A)/V(B) at 0 min, 5:95 V(A)/V(B) at 11.0 min, 5:95
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V(A)/V(B) at 12.0 min, 95:5 V(A)/V(B) at 12.1 min, 95:5 V(A)/V(B) at 15.0 min.
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The flow rate was maintained at 0.4 mL min-1.
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Mass data acquisition was performed in electrospray ionization-positive/negative
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mode using the following parameters: ion spray voltage of (+/-)5.5 kV; ion source gas
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I (GSI) of 55 psi; gas II (GSII) of 60 psi; curtain gas (CUR) of 25 psi; turbo spray
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temperature of 550 °C. Instrument tuning and mass calibration were performed with
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10 and 100 μmol L-1 polypropylene glycol solutions in triple quadrupole (QQQ) and
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linear ion trap (LIT) modes, respectively. Declustering potential (DP) and collision
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energy (CE) for individual multiple reaction monitoring (MRM) transitions were
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performed with specific DP and CE optimization. A specific set of MRM transitions
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were monitored for each period based on the metabolites eluted within this period.
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Qualitative and Quantitative Analysis of Metabolites
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To facilitate the identification of metabolites by widely targeted metabolomics
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approach (MetWare, Wuhan, China), accurate m/z value of each precursor ions (Q1)
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was obtained. This method has been previously described 14,17. In brief, metabolites
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were identified by comparing the m/z values, the retention time (RT) and the
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fragmentation patterns with the standards in a self-compiled database (MetWare).
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Significantly changed metabolites (SCMs) were filtered according to |Log2 (fold
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change)| ≥1, p-value < 0.05. Principle component analysis (PCA) of SCMs was
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performed by R (www.r-project.org/) to study metabolite variety-specific accumulation
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18.
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RNA Extraction and Illumine Sequencing
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Total RNAs were isolated from frozen leaves using the modified CTAB method 19.
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Quality and concentration of RNAs were determined using a Nanodrop 2000
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spectrophotometer (Thermo Scientific, Wilmington, USA) and an Agilent 2100
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Bioanalyzer (Agilent Technologies, Santa Clara, USA). RNA purification, library
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construction and RNA-seq were performed by Biotree Bio-technology Co., Ltd.
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(Shanghai, China). Briefly, a library per sample was generated by 3 ug RNA and then
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sequenced using Illumina HiSeq4000 (6G 150bp paired-end reads). Sequence data
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with base-pair qualities in the Q ≥ 20 were extracted by custom Perl scripts. The
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filtered reads were mapped to a Ginkgo reference genome
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(http://gigadb.org/dataset/100209) using the TopHat2 software with default
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parameters 20. FPKM was used for gene/transcript level quantification. Based on the
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raw count data, edgeR package (http://www.bioconductor.org/packages/release/bioc
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/html/edgeR.-html) was adopted to identify differentially expressed genes (DEGs)
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using the following criteria: (1) FPKM of CK or ZY1 >1; (2) false discovery rate
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(FDR) < 0.05; (3) Log2FC is greater than 1 or less than -1. DEGs were subjected to
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Gene ontology (GO) and pathway analysis. GO analysis was conducted using the
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GOseq R package based on biological process categories (corrected P-values < 0.05).
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Pathway analysis was conducted to elucidate significant pathways of DEGs according
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to the Kyoto Encyclopedia of Gene and Genomes (KEGG)
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(http://www.genome.jp/kegg) databases. The RNA-Seq data set is available in the
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Gene Expression Omnibus (accession No.--).
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Integrative Analysis of Metabolome and Transcriptome
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Metabolites and DEGs involved in phenylpropanoids biosynthesis and lipids
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metabolism in KEGG pathways were selected for integrative analysis. Metabolites
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used for correlation analysis were filtered according to Variable Importance in the
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Project (VIP) > 1, p-value < 0.05 and |Log2(Fold Change)|≥1. Pearson correlation
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coefficients and p-values were calculated for metabolome and transcriptome data
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integration using the Spearman method 21.
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Quantitative Realtime RT-PCR (qRT-PCR)
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Total RNAs isolation, DNase I digestion and first-strand cDNA synthesis were
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performed previously described 19. Reactions were carried out on a Lightcycler 480
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Real-Time PCR Detection System (Roche, Germany) using transStart® Top/Tip
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Green qPCR (TransGen Biotech, China). The amplification cycling program was as
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follows: 94 °C for 30 s, 45 cycles of 94 °C for 5 s, 59 °C for 15 s and 72 °C for 10 s.
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Primers were listed in Supplemental Table 6. The relative expression was calculated
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using the 2−ΔΔCT method 22. The 18S gene (Gb_32799) was used as an internal control.
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Data from three independent biological replicates were analyzed by one-way analysis of
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variance. P-values of < 0.05 and < 0.01, calculated using Dunnett’s test, were regarded as
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statistically significant and highly significant, respectively.
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Measurement of Lignin Content
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Alcohol insoluble residues (AIR) were prepared from the leaves that are used for
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metabolomic and transcriptomic analysis following our previous method 23. To detect
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lignin content, about 3 mg AIRs were solubilized by acetyl bromide solution, and 2 M
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sodium hydroxide and 0.5 M hydroxylamine hydrochloride were added to stop the
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reaction. Absorbance at 280 nm was recorded by an UV-visible spectrophotometer of
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VARIAN Cary 50 (VARIAN, USA). Percentage of acetyl bromide soluble lignin (%
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ABSL) was calculated by the formula (% ABSL = 0.236 × absorbance at 280 nm /
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weight of AIRs).
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Results
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Metabolic Differences between the Leaves of ZY1 and CK
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To compare the differences of metabolite compositions in two G. biloba varieties
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ZY1 and Anlu 1 (CK) (Supplemental Figure 1), the leaves sampled in October were
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subjected to LC-ESI-MS/MS analysis. In this work, 702 metabolites including 200
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flavonoids and 81 amino acids, two types of major medical components, were
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identified and quantified in Ginkgo leaves (Supplemental Figure 2). PCA analysis
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showed that ZY1 and CK were clearly separated in the PC1×PC2 score plots (Figure
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1A). Volcano plot of the metabolite contents indicated the significant differences
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between these two varieties (Figure 1B). Of the 702 metabolites, 122 (17.4%) were
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markedly changed in ZY1 compared with CK, with 62 metabolites being up-regulated
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and 60 metabolites being down-regulated (Figure 1C; Supplemental Table 1). The 122
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significantly changed metabolites (SCMs) were generally divided into 22 categories,
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including flavonoids, other phenylpropanoid-derived products, lipids, amino acids,
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and nucleotides and its derivatives. Interestingly, most of flavonoids abundances were
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markedly increased, while other phenylpropanoid-derived products and lipids were
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reduced in ZY1, compared to that in CK (Supplemental Table 1a). This was
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consistent with our previous HPLC analysis of flavonoids contents in ZY1 and CK16.
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Differential Expression of Genes between ZY1 and CK
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To identify genes differentially expressed in the leaves of ZY1 compared with CK, a
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transcriptomic comparison of the materials mentioned above was carried out. A total
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of 40.4-49.8 (98.3%-98.4% of total clean reads) million clean reads were obtained
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through sequencing of the cDNA libraries after stringent quality checks and data
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cleanup. 39.1–48.7 million reads were mapped to the Ginkgo genomic database
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(http://gigadb.org/dataset/100209), with match ratios in the range of 88.1 -91.5%.
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Comparing the two types of library with respect to the FPKM calculation, 26104 and
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26173 genes were detected in the ZY1 and CK leaves. High correlation coefficients
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(R2 > 0.99) of gene expression between biological replicates indicated the
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effectiveness of data (Supplemental Figure 3). With the filter criteria of fold change ≥
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2 and FDR < 0.05, 1683 DEGs were identified in ZY1 compared with CK, of which
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739 and 944 genes were up-regulated and down-regulated, respectively (Supplemental
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Table 1b). GO analysis of the 1683 DEGs showed enrichment of five major biological
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processes, including single-organism process, metabolic process and cellular process.
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In the molecular function aspect, these DEGs were enriched in catalytic activity and
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binding. In the cellular component aspect, most of DEGs were enriched in four
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categories including membrane, organelle, and cell part (Figure 2A). KEGG pathway
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enrichment analysis (Q-value < 0.05) revealed that these DEGs were mainly enriched
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in several metabolic processes including phenylpropanoid biosynthesis, lipid
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metabolism, and amino acid metabolism (Figure 2B; Supplemental Table 2).
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Alterations of Phenylpropanoid and Lipid Biosynthesis in the Leaves of ZY1
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Compared with CK
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To understand the regulatory mechanism of enhanced flavonoids biosynthesis in the
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leaves of ZY1, 72 metabolites (flavonoid biosynthesis: 43, other phenylpropanoid -
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derived products: 15, and lipid metabolism: 14) and 44 DEGs (flavonoid biosynthesis:
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10, other phenylpropanoid-derived products: 16, and lipid metabolism: 18) were
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selected to carried out correlation tests. PCA results showed strong positive and
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negative correlation (r > 0.8 or