Abstract
The yellow colour of ornamental varieties of tree peony originated from Paeonia delavayi. However, but P. delavayi and Paeonia suffruticosa belong to different subgroups, so hybridization is difficult and results in a long breeding cycle. However, no comprehensive transcriptomic profiling has focused on the colour formation mechanisms of yellow tree peony petals. Analysing the colour formation mechanism of yellow petals in P. delavayi is very important for directional molecular breeding. In this study, the transcriptional map of yellow pigment development in petals was used to analyse the mechanism of petal colour formation. We analysed the genes related to the metabolism of flavonoids and carotenoids and the transcription factors (TFs) involved in P. delavayi var. lutea (pure yellow individual) yellow pigment development using transcriptome sequence profiling. Transcriptome sequence profiles revealed three and four differentially expressed transcripts (DETs) involved in flavonoid biosynthesis and carotenoid biosynthesis, respectively. An analysis of DETs in the flavonoid pathway showed that chalcone synthase (CHS) and chalcone 2´-glucosyltransferases (THC2’GT) act in synergy to synthesize isosalipurposide (ISP). CHS and flavonol synthase (FLS) synergistically synthesize quercetin and kaempferol. DEG analysis of the carotenoid pathway revealed that phytoene synthase (PSY), carotenoid isomerase (CRTISO) and β-carotene hydroxylases (CHYB) play a key role in regulating lutein formation, and carotenoid cleavage dioxygenase (CCD) plays an important role in the degradation of carotenoids. These two pathways may be regulated by TF families such as bHLH, ARF, and MYB. The results of the transient overexpression of genes showed that CHS and CHI are regulated by PdMYB2. In this study, the molecular mechanism of ISP synthesis was analysed in depth, and the complete metabolic pathway of carotenoids in Paeonia L. was reported for the first time. By studying the formation mechanism of yellow pigment in P. delavayi petals, a breeding strategy for improving flavonol and carotenoid contents and reducing anthocyanin synthesis by genetic engineering was suggested.
Similar content being viewed by others
Avoid common mistakes on your manuscript.
Introduction
Tree peony (Paeonia suffruticosa Andrew) is a traditional Chinese flower that is loved by people all over the world because of its beautiful flowers. Tree peonies with yellow flowers have always been a valuable variety and are also a current breeding direction. P. delavayi is a special species due to its various petal colours, including yellow, orange, red, purple–red and dark red (Li et al. 2011). P. delavayi var. lutea is its yellow variation. The more successful yellow tree peony varieties on the market, such as the ‘High Noon’, ‘Alice Harding’ and Itoh hybrid series, have a P. delavayi var. lutea pedigree. Stable pure yellow petals have made P. delavayi var. lutea a suitable material for researching the formation of yellow flowers in tree peony. P. delavayi and P. suffruticosa belong to different subgroups, which makes hybridization difficult and results in a long breeding cycle. Hybrids also easily inherit the characteristics of small flowers and drooping flower heads from P. delavayi. Therefore, molecular breeding is the best way to obtain yellow-flowered tree peony. However, the molecular mechanism of yellow colour synthesis in P. delavayi petals is not clear. Analysing the molecular regulatory mechanism of yellow colour synthesis in P. delavayi petals is helpful for identifying the key genes involved in yellow anthocyanin synthesis and laying a foundation for the molecular breeding of tree peony.
Carotenoids and flavonoids are two main categories of yellow pigments in nature. In carotenoids, the main yellow substances are cryptoxanthin, zeaxanthin, lutein, violaxanthin and neoxanthin (Fraser and Bramley 2004). In flavonoids, flavones and flavonols are milky white to light yellow, while chalcones and aurones are pure yellow to dark yellow (Tanaka et al. 2010). In tree peony, the glycosides kaempferol, luteolin, apigenin and isosalipurposide (ISP) were the main flavonoids investigated. ISP is a kind of chalcone that is the main pigment component of P. delavayi var. lutea petals (Li et al. 2009a; Zhou et al. 2011). A few genes have been identified to be involved in the formation of ISP, including chalcone synthase (CHS) and chalcone2´-glucosyltransferases (THC2’GT). In ISP biosynthesis, CHS catalyses 1-molecule coumaroyl-CoA and 3-molecule malonyl-CoA to form 2´,4´,6´,4-tetrahyroxychalcone (THC), and THC generates a stable ISP in the vacuole under the action of THC2’GT (Yoshio et al. 2002). THC produces naringenin (colourless) under the action of chalcone isomerase (CHI), which is the precursor of anthocyanin, copigment flavone and flavonol biosynthesis. Naringin is catalysed by flavanone 3-hydroxylase (F3H) to synthesize dihydrokaempferol, followed by the synthesis of kaempferol (light yellow) and quercetin (light yellow) by flavonol synthase (FLS) (Bogs et al. 2005; Schijlen et al. 2006; Sharma and Dixon 2005). In addition, 14 carotenoids were identified by Zou et al. (2021) in P. delavayi var. lutea, and the yellow pigment with the highest content was lutein. In lutein biosynthesis, geranylgeranyl diphosphate (GGPP) first generates 15-cis-phytoene under the action of phytoene synthase (PSY), and then lycopene is generated under the successive action of phytoene desaturase (PDS), ζ-carotene desaturase (ZDS) and carotenoid isomerase (CRTISO). Under the catalysis of lycopene ε-cyclase (LCYE) and lycopene β-cyclase (LCYB), lycopene produces α-carotene, and then β-carotene hydroxylases (CHYB) catalyse the production of zeinoxanthin and zeioxanthin, which are catalysed by ε-carotene hydroxylases (CHYE) to form lutein. On the other hand, the degradation of carotenoids is accomplished by carotenoid cleavage dioxygenase (CCD) to decompose carotenoids and remove auxiliary carotenoids (Hannoufa and Hossain 2012; Li and Yuan 2013).
Because ISP is only found in a few species, such as carnation (Yoshida et al. 2004), cyclamen, catharanthus (Harborne 1966), kangaroo paw (Brkljaca et al. 2015) and peony (Li et al. 2009a, b; Zhou et al. 2011), THC2’GT has rarely been studied. THC is the substrate for almost all flavonoids (Ogata et al. 2004), and we do not know who is competing with THC2’GT in P. delavayi var. lutea. It is difficult to understand the formation of the ISP or the other underlying mechanism of floral development in tree peony. In the past, there were no reports of carotenoid-related genes in tree peony, and the carotenoid metabolic mechanism in tree peony is not clear. In this study, considering the four developmental stages of P. delavayi var. lutea petals, RNA-seq and full-length ISO-seq were used to analyse the transcriptome sequences and the gradual change in petal colour of P. delavayi var. lutea. Critical changes were found in the expression of genes involved in carotenoid and flavonoid pigment biosynthesis. We identified structural genes related to carotenoid and flavonoid biosynthesis during the flower development process and further explored key structural genes and transcription factor (TF) interactions in these pathways. The findings provide a systems-level context for further studies on the multigene regulation of carotenoid and flavonoid biosynthesis in P. delavayi.
Materials and methods
Plant materials and RNA preparation
P. delavayi var. lutea is an important breeding resource for tree peonies with yellow flowers. All the materials were collected from flowers of tree peony in Shangri-La County, Yunnan, China (E: 99°34′60″; N: 27°58′7″). The development of yellow flowers was distinguished into four stages from buds to open flowers: unpigmented tight bud (S1), slightly pigmented soft bud (S2), initially opened flower (S3), and fully opened flower (S4) (Fig. 1). Only petals were collected as experimental materials; they were immediately frozen in liquid nitrogen and then stored at − 80 °C.
Total RNA was extracted from the petals of the four developmental stages mentioned above using an EASYspin Plus Plant RNA Kit (No. RN38; Aidlab Biotechnologies Co., Ltd, Beijing, China) according to the manufacturer’s protocols. The RNA integrity was determined by an Agilent 2100 bioanalyzer and agarose gel electrophoresis. The purity and concentration of the RNA were determined by a Nanodrop microspectrophotometer (Thermo Fisher). Samples with intact electrophoresis bands, an RNA integrity number (RIN) > 7.0 and an RNA concentration > 50 ng/µL were used for transcriptome sequencing and real-time fluorescence quantitative PCR verification.
Illumina and PacBio sequencing, functional annotation and classification, and identification of differentially expressed transcripts (DETs)
cDNA library construction and sequencing were performed by Gene Denovo Biotechnology Co. (Guangzhou, China). The Illumina cDNA libraries were sequenced on an Illumina Nova-seq 6000. The PacBio cDNA libraries were sequenced on the PacBio Sequel II platform using P6-C4 chemistry with 10 h movies. The raw sequencing reads of cDNA libraries were classified and clustered into consensus transcripts using the SMRT Link v5.0.1 pipeline (Gordon et al. 2015) supported by Pacific Biosciences. The raw reads were filtered to obtain high-quality reads. The filtering rules included removing reads containing adapters, removing reads containing more than 10% unknown nucleotides (N), and removing low-quality reads containing more than 40% low-quality (Q-value ≤ 20) bases. The high-quality clean reads were mapped to ribosomal RNA (rRNA) to identify residual rRNA reads. The high-quality clean reads without rRNA were mapped to the reference transcriptome using the short read alignment tool Bowtie2 (Li et al. 2009b) with default parameters, and the mapping ratio was calculated. The calculation formula is Mapping Ratio = (Number of Uniquely Mapped Reads + Number of Multiple Mapped Reads)/Total Number of Reads. The gene abundances were calculated and normalized to RPKM (reads per kb per million reads) (Mortazavi et al. 2008). The calculation formula is RPKM = 106C/(NL/103).
The basic annotation of isoforms included protein functional annotation, pathway annotation, COG/KOG functional annotation and Gene Ontology (GO) annotation. For annotation, isoforms were BLAST analysed against the NCBI nonredundant protein (Nr) database (http://www.ncbi.nlm.nih.gov), the Swiss-Prot protein database (http://www.expasy.ch/sprot), the Kyoto Encyclopedia of Genes and Genomes (KEGG) database (http://www.genome.jp/kegg), and the COG/KOG database (http://www.ncbi.nlm.nih.gov/COG) with the BLASTx program (http://www.ncbi.nlm.nih.gov/BLAST/) at an E-value threshold of 1e−5 to evaluate sequence similarity with genes of other species. Gene Ontology (GO) annotation was performed with Blast2GO software (Conesa et al. 2005) compared to the Nr annotation results of the isoforms. The open reading frames (ORFs) were detected using ANGEL (Shimizu et al. 2006) software for the isoform sequences to obtain the coding sequences (CDS), protein sequences, and UTR sequences. Protein domain prediction was performed by aligning the protein sequences of the isoforms to the Pfam database (version 26.0) with the Pfam_Scan program (Finn et al. 2016) and SMART database (version 06/08/2012) with the HMMER-profile hidden Markov models for biosequence analysis (http://hmmer.org/) program to obtain protein domain annotations. For plants, the protein coding sequences of the isoforms were aligned by hmmscan to Plant TFdb (http://planttfdb.cbi.pku.edu.cn/) to predict TF families. To identify DETs across samples or groups, the edgeR package (https://bioconductor.org/packages/release/bioc/html/edgeR.html) was used. The raw count data were imported into Bioconductor package edgeR (Robinson et al. 2010) in the R language to identify the differentially expressed genes and to calculate the RPKM of each gene. When calculating the differentially expressed genes, a gene was retained only if it was expressed at a count-per-million (CPM) above 0.5 in at least two samples. We identified genes with a fold change ≥ 2 and a false discovery rate (FDR) < 0.05 in a comparison as significant DETs. DETs were then subjected to enrichment analysis of GO functions and KEGG pathways.
Real-time fluorescence quantitative PCR verification of DETs in P. delavayi var. lutea
Fourteen DETs (five genes in flavonoid synthesis, five genes in carotenoid synthesis, two genes in the MYB family, and two genes in the bHLH family) (Supplementary Table 1) involved in petal development of P. delavayi var. lutea were selected, and primers were designed using Primer3web (https://primer3.ut.ee/) online primer design software. The basic principles of design are as follows: primer length 17–25 bp, GC content 45–55%, TM value 60–68 ℃, and product length 80–1150 bp. The quantitative fluorescence PCR determination instrument was an Applied Biosystems StepOnePlus Real-Time PCR System, and the reagent was TaKaRa TB Green® Premix Ex Taq™ (Tli RnaseH Plus). The reaction system was as follows: TB Green Premix Ex Taq (Tli RnaseH Plus) (2 ×), 10 μl; forward and reverse primers (10 μM), 0.4 μl, for a total of 0.8 μl; correction solution ROX Reference Dye (50 ×), 0.4 μl (< 100 ng); and sterilized water, 6.8 μl, for a total volume of 20 μl. The 2−△△Ct method was used to calculate the expression, as described by Livak and Schmittgen (2002), and the internal reference was PsPP2A. Three biological replicates and two technical replicates were set for each quantitative test. All data are expressed as the mean ± SD after normalization.
Functional validation of MYB transcription factors
To validate the MYB TFs, transient overexpression assays were carried out in the leaves of Nicotiana benthamiana according to the methods proposed by Lu et al. (2019). Briefly, cDNAs were synthesized from the total RNA of petals of P. delavayi var. lutea in the S2 stage. The target genes were cloned into the pCAMBIA1302 vector (Supplementary Table 1). The vector was under the control of a 35S promoter. Subsequently, the constructs harbouring the cloned target gene were transformed into Agrobacterium tumefaciens strain GV3101 by heat shock. Then, the Agrobacterium cell cultures were infiltrated into the leaves of N. benthamiana. The blank vector was injected into different leaves of the same tobacco as a control, and repeated experiments were carried out in three tobacco plants. After 60 h, the infiltrated leaves were harvested, and the expression of NtCHS and NtCHI was analysed by qRT–PCR (Supplementary Table 1).
Results
Transcriptomic changes in P. delavayi var. lutea during yellow pigment development
A total of 32.69 Gb of raw sequence data were generated by 28,134,899 subreads based on RNA-seq using PacBio ISO-seq. After being classified and clustered into the consensus transcript, CCSs (circular consensus sequences) containing 581,257 reads were obtained, which included 60.51% FLNC (full-length nonchimeric) and 39.49% nFL (non-full-length) sequences. Consequently, a total of 351,703 high-quality FLNC reads were obtained, and their average length was 2352 bp. The high-quality sequences were made nonredundant, and a full-length transcript of 103,240 bp was obtained. The total length of the isoform sequence was 246,339,799 bp, the length of the longest isoform was 14,187 bp, the length of the shortest isoform was 57 bp, the average length was 2386.09 bp, the N50 length was 3,373 bp, and the GC content was 39.82% (Supplementary Table 2).
The raw 154.75 Gb of data from 12 samples were sequenced using the Illumina Nova-Seq 6000 platform. The raw data range of a single sample was 11.26–14.16 Gb, and a total of 1,031,643,140 raw reads were obtained. The raw read number of a single sample ranged from 75,039,494 to 99,674,848. After removing impurities and ribosomal sequences, 1,017,213,846 clean reads in total and 75,039,494–97,552,438 clean reads per single sample were obtained. The lowest percentage of clean reads was 97.87%. The total number of unique mapped reads was 103,341,297, the range of unique mapped reads in a single sample was 6,793,163–10,741,602, the total number of multiple mapped reads was 849,525,052, the number of multiple mapped reads in a single sample ranged from 60,261,006 to 84,302,306, and the lowest comparison rate was 91.63% (Supplementary Table 3). All raw high-throughput sequence data have been deposited in the NCBI Sequence Read Archive (SRA) database under accession number PRJNA772706.
Expression profile of the transcriptome of yellow petals in relation to flower development
Four public databases, Nr, Swissport, KOG and KEGG, were used to annotate all isoforms based on sequence similarity. There were 103,240 isoforms and 76,889 isoform annotations in the full-length transcript. Among them, 76,677 isoforms were annotated to the Nr database, 64,672 isoforms were annotated to the Swissport database, 35,699 isoforms were annotated to the KOG database, and 35,699 isoforms were annotated to the KEGG database. There were 26,351 isoforms (25.52% of the full-length transcripts) that did not significantly match any of the sequences in the public databases. These new genes with unknown functions are worthy of further study. The 4 database annotations and their overlaps were visualized in the form of a Venn diagram (Fig. 2a), with 30,196 common items in the 4 databases.
According to the Nr annotation information, the GO functional annotations were obtained, and the gene annotations of isoforms were standardized (Fig. 2b). A total of 31,669 isoforms were divided into 3 categories: molecular function, cellular component and biological process. In the molecular function category, binding, catalytic activity and transporter activity accounted for a relatively high proportion of the terms. In the cellular component category, cell, cell part, organelle, organelle part, membrane, membrane part and macromolecular complex accounted for the highest proportion of the terms. In the biological process category, cellular process, metabolic process, single-organism process, biological regulation, cellular component organization or biogenesis, developmental process, localization and response to stimulus accounted for a relatively high proportion of the terms.
The assembled isoforms were annotated with Cluster of Orthologous Groups of proteins (KOG). A total of 101,927 isoforms were assigned to 24 KOG clusters, and the largest category was general function prediction only, followed by posttranslational modification, protein turnover, chaperones, signal transduction mechanisms, RNA processing and modification, transcription, translation, ribosomal structure and biogenesis (Fig. 2c).
Identification of DETs
To identify the DETs during flower development, we compared the transcription levels of each isoform at different developmental stages, and a total of 22,912 genes were differentially expressed at different stages. In the comparison between S1 and S2, a small number of DETs were detected, with 710 upregulated transcripts and 1210 downregulated transcripts. In the comparison between S1 and S3, 6065 upregulated transcripts and 4851 downregulated transcripts were detected. The number of DETs detected between S1 and S4 was the largest, with 7433 upregulated transcripts and 6792 downregulated transcripts. In the comparison between S2 and S3, 3854 upregulated transcripts and 2290 downregulated transcripts were detected. A large number of transcripts were also detected in the comparison between S2 and S4, including 6981 upregulated transcripts and 6264 downregulated transcripts. In the comparison between S3 and S4, the number of DETs detected was lower, with 1116 upregulated transcripts and 1452 downregulated transcripts (Fig. 3).
TFs play important roles in regulating colour change and pigment synthesis. By analysing the transcriptome data, a total of 55 TF families were predicted by hmmscan alignment between the predicted protein sequence and plantTFdb. The bHLH and ARF families were the most abundant TF families during the P. delavayi var. lutea yellow pigment development process, followed by the MYB_related, C3H, GRAS, FAR1, C2H2 and MYB families. The bHLH, ARF, C3H, and GRAS families had more upregulated genes during the whole flower blooming process. The MYB_related and MYB families had more downregulated genes during the S1–S3 stage of the yellow pigment development process, while S3–S4 had more upregulated genes after the flowers had turned yellow (Table 1).
Analysis of flavonoid pathway gene expression during flower development
To identify the key genes involved in flavonoid biosynthesis, all isoforms in the flavonoid biosynthesis pathway were searched in the KEGG database, and a metabolic map was compiled that showed multiple transcripts of enzymes involved in the flavonoid biosynthesis pathway. Zhou et al. (2011) determined the composition of yellow pigment in P. delavayi and considered that the main flavonoid pigments were chalcone, flavones and flavonoids, including ISP, as well as kaempferol, quercetin, isorhamnetin, chrysoeriol and apigenin, of which the most important chromogenic substance was ISP. As shown in the figure, the biosynthesis of quercetin and kaempferol involved CHS (seven isoforms), CHI (four isoforms), F3H (five isoforms) and FLS (eight isoforms). In addition, the key enzymes chalcone reductase (CHR, three isoforms), DFR (two isoforms), ANS (two isoforms) and 3-glucosyltransferase (3GT, six isoforms) in the flavonoid metabolic pathway were identified. THC2'GT is essential for the biosynthetic pathway of ISP, which converts THC to ISP and stabilizes it in vesicles. However, this pathway was only found in a few species, such as D. caryophyllus and Paeonia potaninii var. Trollioides and Catharanthus (Harborne 1966; Yoshida et al. 2004). Thus, THC2'GT is seldom studied in plants and has not been accurately annotated in the KEGG database. In this paper, in the transcriptome data, a total of 37 isoforms belonging to the GT family were predicted. Based on the expression data of the identified flavonoid pathway DETs in the transcriptome, a heatmap of the flavonoid metabolic pathway was constructed (Fig. 4a). CHSs, as the first structural gene in the flavonoid metabolic pathway, showed a high expression level from S1 to S4. The low expression of CHR indicated that 6-deoxychalcone is not the main yellow substance in P. delavayi var. lutea, which was consistent with the identification results of flower colour. FLS catalyses the formation of flavonols, and quercetin and kaempferol, important components of flower colour, need to be catalysed by FLSs, which is consistent with the high expression of FLSs. Some highly expressed genes were also identified among the candidate genes of THC2'GTs, which was much higher than that of the other two branches, suggesting that THC2'GTs played an important role in this pathway. Among these DETs, the expression of some genes increased significantly from S1 to S2, reached a peak in S2, and then decreased slowly in S3 and S4. The expression of another part of the gene increased continuously in S1–S4 and reached its peak in S4. This provided an important reference for the identification of the THC2'GT gene in the later stage. The high expression of THC2'GT made the ISP pathway compete strongly with the anthocyanin pathway. The expression levels of DFRs, ANSs and 3GTs were all low, and a large amount of THC was converted into ISP instead of anthocyanin.
Analysis of carotenoid pathway gene expression during flower development
To identify the key genes involved in carotenoid biosynthesis, all isoforms involved in the carotenoid biosynthesis pathway were searched in the KEGG database, and metabolic maps were compiled that showed multiple transcripts of enzymes involved in the carotenoid biosynthesis pathway. Upstream genes of the carotenoid biosynthesis pathway PSY (eight isoforms), PDS (two isoforms), CRTISO (six isoforms), and ZDS (four isoforms) were identified. Downstream structural genes of the carotenoid biosynthesis pathway LCYE (six isoforms), LCYB (three isoforms), CHYB (seven isoforms), VDE (3 isoforms), ZEP (three isoforms), NXS (one isoform), and CCD (seven isoforms) were identified. Based on the expression data of the identified carotenoid pathway DETs in the transcriptome, a heatmap of the carotenoid metabolic pathway was constructed (Fig. 4b). The results indicated that 12 isoforms encoding 6 enzymes showed marked changes in expression during the stages of flower development; among these isoforms, isoforms encoding PSY, CRTISO, CHYB, and CCD all showed upregulated expression during flower development from S1 to S4, while isoforms encoding LCYE and ZEP showed downregulated expression. Therefore, we speculated that the synthesis of lutein was more affected by PSY, CHYB and CRTISO. Lutein degradation was affected by CCD. The expression of all carotenoid pathway genes was extremely low, which indicated that carotenoids were not the main pigment component in the petals of P. delavayi var. lutea, which was consistent with the carotenoid content determination results (Zou et al. 2021).
Validation of DEG expression in the transcriptome data
To validate the key DEG results (Fig. 5), the 14 DETs that showed the most significant differences in expression were selected: five flavonoid biosynthetic pathway genes (Fig. 5a–e), five carotenoid biosynthetic pathway genes (Fig. 5f–j), and four TFs (Fig. 5k–n). We analysed the evolution of gene expression during the yellow pigment development in P. delavayi var. lutea petals using qRT–PCR. The RNA-seq and qRT–PCR data were very closely correlated, and there was high consistency in the up- and downregulated expression of DETs.
Functional validation of PdMYB2
The MYB TF family is one of the most influential TF families in the process of flower colour expression. We annotated all the MYB TFs and totally 64 MYB gene family members were obtained. We constructed an expression heatmap based on the transcriptome data. The results showed that the expression of PdMYB2 (Isoform0011606) was significantly different in the 4 stages and was much higher than that of other MYB members (Fig. 6a). To validate the MYB TFs mentioned above, transient overexpression assays were carried out in Nicotiana benthamiana leaves. As expected, the transcript levels of the target genes NtCHS and NtCHI were significantly increased by PdMYB2 overexpression in N. benthamiana leaves for 60 h. However, the colour of tobacco leaves did not change, which may be related to the lack of a substrate for THC in tobacco leaves, making it difficult to synthesize anthocyanins. The function of PdMYB2 needs further verification. Furthermore, the expression of NtCHI was higher than that of NtCHS, which may be related to the cascade effect of genes (Fig. 6b).
Discussion
Transcriptome analysis provides an important dataset for understanding the molecular genetic basis of P. delavayi var. lutea coloration. The RNA-seq and qRT–PCR results indicated that the expression of flavonoid biosynthesis genes (such as CHS, THC2'GT and FLS) leads to the production of flavonols, and the expression of carotenoid biosynthesis genes (such as PSY, CRTISO and CHYB) leads to the production of lutein. These two pathways may be regulated by TF families such as bHLH, ARF, and MYB. We preliminarily showed that CHS and CHI are regulated by PdMYB2. The synergy of carotenoids and flavonoid glycosides leads to golden yellow petals. This research suggests directions for the breeding of yellow tree peony. For breeders, future research should focus on improving the levels of ISP and lutein and reducing the synthesis of anthocyanins through genetic engineering.
Transcriptome sequencing and annotation
Peonies with yellow flowers are rare and popular. Flower colour is regulated by gene expression. Understanding the molecular mechanism controlling yellow coloration during flower development will help to cultivate yellow peony flowers with high ornamental value. However, there is little genetic information available for P. delavayi. The popularity of RNA-seq and full-length ISO-seq provides great convenience for the study of plant transcripts, especially for transcriptome analysis without reference genomes (Wang et al. 2014; Loraine et al. 2013). The RNA-seq data can be used to analyse the differential gene expression during the synthesis of flavonoids and carotenoids in the petals of P. delavayi var. lutea and correct the full-length ISO-seq data. The full-length ISO-seq data can directly obtain the complete full-length transcripts from 5´ to 3´ and optimize the RNA-seq data to make the quantitative results more accurate. Combined, RNA-seq and full-length ISO-seq were used to comprehensively analyse the biosynthesis pathway of isoberellin and carotenoids in P. delavayi var. lutea and discover key genes, which laid the foundation for directional breeding of yellow flowers in tree peony.
In this work, a total of 103,240 isoforms from P. delavayi var. lutea were annotated by comparison with the public databases Nr, Swissport, KOG and KEGG. However, the remaining 26,351 isoforms did not significantly match any sequences in the public database. The function of these newly reported P. delavayi var. lutea-specific genes is unknown and will be the subject of future research.
Carotenoid metabolic pathway genes were first reported in tree peony
To date, the genes of the carotenoid metabolism pathway in peony have not been reported. In the report by Zou et al. (2021), the main carotenoid in the S1 phase was lutein, and the metabolic flux in the S4 phase basically stops at (E/Z)-phytoene. From the expression heatmap data, the expression of PSY gradually increased, while the expression of downstream structural genes gradually decreased, which was consistent with the change in carotenoid content. CCD reduces the accumulation of carotenoids in plants by decomposing carotenoids into deauxiliary carotenoids (Li and Yuan 2013; Hannoufa and Hossain 2012). In this study, the expression of CCD was negatively correlated with the accumulation of lutein and was consistent with the flower colour phenotype. The results of this study show that the carotenoid synthesis pathway and its metabolism in P. delavayi var. lutea were basically complete, which means that there is another pigment pathway in tree peony that can be targeted gene breeding.
Flavonoid accumulation in tree peony is regulated at the transcriptional level
ISP is the main source of yellow pigment in petals of P. delavayi (Zhou et al. 2011). CHS is an especially important enzyme in the flavonoid biosynthesis pathway. It catalyses the production of THC, the most important intermediate in the flavonoid biosynthesis pathway. THC2'GT is the most critical enzyme in the synthesis of ISP, and THC2'GT converts THC into chalcononaringein2´-O-glucoside, namely, ISP. In this study, Isoform0035047, annotated as CHS, continued to be highly expressed during the development of S1–S4, which also proved the important role of CHS in yellow petals. Itoh et al. (2002) found that the synthesis and accumulation of THC2'GT caused the yellow petals of D. caryophyllus. ISP has been detected in many plants and causes yellow flowers in Corylopsis spp. (Iwashina et al. 2009). Due to the lack of research on THC2'GT in plants, the transcriptome data were unable to directly annotate the gene. After selecting the genes annotated to the GT family and constructing the expression heatmap, it was found that Isoform0003192, Isoform0020672, Isoform0018756 and Isoform0035017 were highly expressed during flower development. The expression of Isoform0003192 and Isoform0020672 first increased and then decreased, while the expression of Isoform0018756 and Isoform0035017 consistently increased. Combined with the fact that flowers began to turn yellow at the S2 stage and were completely yellow at the S3 stage, this study suggested that Isoform0003192 and Isoform0020672 may be more critical genes in the process of ISP production. This study provides a basis for the final identification and verification of the THC2'GT gene. In P. delavayi var. lutea transcriptome data, the expression of genes annotated as CHI showed a decreasing trend, and the expression of downstream genes such as DFR and ANS was also extremely low. This decrease may be due to the competition between the ISP pathway and anthocyanin pathway, resulting in a decrease in the expression of CHI, so that the petals did not show red colour.
Effects of MYB TFs in yellow P. delavayi flowers
Based on the above research on pigment and related metabolic pathway genes in P. delavayi, we inferred that the degradation and biosynthesis of pigments occurred throughout the entire process of the whole flowering in a dynamic form that was directly related to some TFs of key genes. MYB transcription factor family is the largest transcription factor family in plants, among which R2R3 MYB is the largest in plants (Cao et al. 2013). They are mainly involved in cell differentiation, hormone response, secondary metabolism, environmental stress and resistance to diseases and insect pests, and can regulate the biosynthesis of plant anthocyanins (Tang and Chen 2014). After transient expression of PdMYB2 in tobacco leaves, the expression levels of NtCHI and NtCHS in tobacco were obviously up-regulated, but the color of tobacco leaves did not change. We speculated that the main pigment in tobacco leaves was chlorophyll, and the accumulation of flavonoid substrates and products was not enough to cause the color change. MYB genes regulating flavonoid synthesis pathway have been isolated from many plants, and their functions have been studied. Different MYB transcription factors can cause different kinds of pigment accumulation, and their regulated genes are different.
Gates et al. (2017) found a new R3-MYB transcription factor allele from Iochroma spp., which is closely related to flower color variation, and named MYBL1, which is a transcription inhibitor of MYB. The high expression of this gene is related to the down-regulation of multiple anthocyanin pigment pathway genes. Deng et al. (2021) found a R2R3-MYB transcription factor MaMYB4 in banana (Musas PP.), which can combine with the promoters of CHS, ANS, DFR and bHLH, thus inhibiting their expression and reducing the accumulation of anthocyanins. The MdMYB10 isolated from apple (Malus × domestica) by Espley et al. (2007) can induce anthocyanin accumulation in both homologous and heterologous systems, and co-express with two bHLH proteins, MdbHLH3 and MdbHLH33. Because PdMYB2 is highly expressed in the petals of P. delavayi, but there is no visible red pigment in the petals of pure P. delavayi, we speculate that PdMYB2 does not directly regulate the expression of CHI, but regulates the expression of downstream genes by regulating CHS. A R2R3-MYB gene PsMYB12 was found in peony (Gu et al. 2019), studies have shown that PsMYB12 and bHLH and WD40 proteins directly activate PsCHS expression to regulate the formation of petal spots. The continued verification of the function of PdMYB2, and whether PdMYB2 interacts with bHLH, WD40 and directly interacts with CHS in P. delavayi are the key points of follow-up research.
Breeding of yellow tree peony through genetic engineering
Based on the analysis of gene expression and pigment levels in the flavonoid metabolic pathway and carotenoid metabolic pathway of P. delavayi var. lutea, the mechanism behind yellow pigment production can be explained. First, the high expression of CHS and THC2'GT genes in the ISP pathway led to the accumulation of ISP in petals, and the expression of FLS led to the production of kaempferol and quercetin in petals. At the same time, the expression of PSY, CRTISO, LCYE, LCYB and CHYB in the carotenoid pathway regulates the production of lutein. The accumulation of these substances makes P. delavayi var. lutea appear bright yellow. Fukusaki et al. (2004) obtained white-flowered plants by silencing the CHS gene of blue Torenia hybrida by an RNA interference technique. Ohno et al. (2018) found that DvCHS2 posttranscriptional gene silencing occurred in white petals rather than red petals in bicolour Dahlia pinnata. These results confirmed the important role of the CHS gene in anthocyanin accumulation. Yoshida et al. (2004) speculated that the difference in gene expression or enzyme activity of THC2'GT was the main reason for the difference in ISP content (ranging from 5.5 to 100%) in petals of different varieties of carnation and speculated that THC2'GT might not be regulated by a single gene but by multiple genes. Togami et al. (2011) cloned the cDNA of THC2'GT from D. caryophyllus, C. persicum and Catharanthus roseus and expressed it in Petunia hybrida, which caused ISP accumulation in the petals of P. hybrida. Giovanni et al. (2013) increased the content of lutein in tomato fruit by overexpressing LCYB. Yamamizo et al. (2010) determined that the high expression of CHYB was one of the main reasons for the accumulation of lutein and yellow coloration of petals of P. hybrida. In strawberry (Fragaria × ananassa), the upregulation of the expression of dioxygenase FaCCD1 leads to a decrease in lutein accumulation (García-Limones et al. 2008). Therefore, we speculate that overexpression of CHS and THC2’GT and suppression of CHI will increase the accumulation of ISP. Overexpression of LCYB and CHYB and inhibition of CCD expression increased the accumulation of lutein. Gamsjaeger et al. (2011) used FT-Raman to analyse pigments on different coloured petals of pansy (Viola × wittrockiana), and the results showed that the flower colour of pansy was controlled by flavonoids (flavonoids and anthocyanins) and carotenoids. Cao et al. (2015) studied the metabolic process of carotenoids in citrus (Citrus reticulata), and the results showed that the changes in carotenoid accumulation had significant effects on redox modification, starch degradation and flavonoid/anthocyanin biosynthesis. These studies show that it is feasible to increase the content of ISP and lutein and reduce the synthesis of anthocyanins by genetic engineering. Whether the accumulation of carotenoids in P. delavayi var. lutea affects the content of flavonoids, and whether there is a cooperative relationship between them, is worthy of more in-depth study in the future.
Data availability
The data generated and analysed during the current study are available in the NCBI repository.
References
Bogs J, Downey MO, Harvey JS et al (2005) Proanthocyanidin synthesis and expression of genes encoding leucoanthocyanidin reductase and anthocyanidin reductase in developing grape berries and grapevine leaves. Plant Physiol 139(2):652–663. https://doi.org/10.1104/PP.105.064238
Brkljaca R, White J, Urban S (2015) Phytochemical investigation of the constituents derived from the Australian plant Macropidia fuliginosa. J Nat Prod 78(7):1600–1608. https://doi.org/10.1021/acs.jnatprod.5b00161
Cao ZH, Zhang SZ, Wang RK et al (2013) Genome wide analysis of the apple MYB transcription factor family allows the identification of MdoMYB121 gene confering abiotic stress tolerance in plants. PLoS ONE 8(7):e69955. https://doi.org/10.1371/journal.pone.0069955
Cao H, Wang J, Dong X et al (2015) Carotenoid accumulation affects redox status, starch metabolism, and flavonoid/anthocyanin accumulation in citrus. BMC Plant Biol 15(1):27. https://doi.org/10.1186/s12870-015-0426-4
Conesa A, Gotz S, Garcia-Gomez MJ et al (2005) Blast2GO: a universal tool for annotation, visualization and analysis in functional genomics research. Bioinformatics 21(18):3674–3676. https://doi.org/10.1093/bioinformatics/bti610
Deng GM, Zhang S, Yang QS et al (2021) (2021) MaMYB4, an R2R3-MYB repressor transcription factor, negatively regulates the biosynthesis of anthocyanin in banana. Front Plant Sci 11:600704. https://doi.org/10.3389/fpls.2020.600704
Espley RV, Hellens RP, Putterill J et al (2007) Red colouration in apple fruit is due to the activity of the MYB transcription factor, MdMYB10. Plant J 49(3):414–427. https://doi.org/10.1111/J.1365-313X.2006.02964.X
Finn RD, Coggill P, Eberhardt RY et al (2016) The Pfam protein families database: towards a more sustainable future. Nucleic Acids Res 44(D1):D279–D285. https://doi.org/10.1093/nar/gkv1344
Fraser PD, Bramley PM (2004) The biosynthesis and nutritional uses of carotenoids. Prog Lipid Res 43(3):228–265. https://doi.org/10.1016/j.plipres.2003.10.002
Fukusaki EI, Kawasaki K, Kajiyama S et al (2004) Flower color modulations of Torenia hybrida, by downregulation of chalcone synthase genes with RNA interference. J Biotechnol 111(3):229–240. https://doi.org/10.1016/j.jbiotec.2004.02.019
Gamsjaeger S, Baranska M, Schulz H et al (2011) Discrimination of carotenoid and flavonoid content in petals of pansy cultivars (Viola × wittrockiana) by FT-Raman spectroscopy. J Raman Spectrosc 42(6):1240–1247. https://doi.org/10.1002/jrs.2860
García-Limones C, Schnäbele K, Blanco-Portales R et al (2008) Functional characterization of FaCCD1: a carotenoid cleavage dioxygenase from strawberry involved in lutein degradation during fruit ripening. J Agric Food Chem 56(19):9277–9285. https://doi.org/10.1021/jf801096t
Gates DJ, Olson BJSC, Clemente TE et al (2017) A novel R3 MYB transcriptional repressor associated with the loss of floral pigmentation in Iochroma. New Phytol 217(3):1346–1356. https://doi.org/10.1111/nph.14830
Gordon SP, Tseng E, Salamov A et al (2015) Widespread polycistronic transcripts in fungi revealed by single-molecule mRNA sequencing. PLoS ONE 10(7):e0132628. https://doi.org/10.1371/journal.pone.0132628
Gu ZY, Zhu J, Hao Q et al (2019) A novel R2R3-MYB transcription factor contributes to petal blotch formation by regulating organ-specific expression of PsCHS in tree peony (Paeonia suffruticosa)[J]. Plant Cell Physiol 60(3):599–611. https://doi.org/10.1093/pcp/pcy232
Hannoufa A, Hossain Z (2012) Regulation of carotenoid accumulation in plants. Biocatal Agric Biotechnol 1(3):198–202. https://doi.org/10.1016/j.bcab.2012.03.004
Harborne JB (1966) Comparative biochemistry of flavonoids—I.: distribution of chalcone and aurone pigments in plants. Phytochemistry 5(1):111–115. https://doi.org/10.1016/S0031-9422(00)85088-8
Itoh Y, Higeta D, Suzuki A et al (2002) Excision of transposable elements from the chalcone isomerase and dihydroflavonol 4-reductase genes may contribute to the variegation of the yellow-flowered carnation (Dianthus caryophyllus). Plant Cell Physiol 43(5):578–585. https://doi.org/10.1093/pcp/pcf065
Iwashina T, Takemura T, Mishio T (2009) Chalcone glycoside in the flowers of six Corylopsis species as yellow pigment. J Jpn Soc Hortic Sci 78(4):485–490. https://doi.org/10.2503/jjshs1.78.485
Li L, Yuan H (2013) Chromoplast biogenesis and carotenoid accumulation. Arch Biochem Biophys 539(2):102–109. https://doi.org/10.1016/j.abb.2013.07.002
Li C, Du H, Wang L et al (2009a) Flavonoid composition and antioxidant activity of tree peony (Paeonia Section, Moutan, ) yellow flowers. J Agric Food Chem 57(18):8496–8503. https://doi.org/10.1021/jf902103b
Li R, Yu C, Li Y et al (2009b) SOAP2: an improved ultrafast tool for short read alignment. Bioinformatics 25(15):1966–1967. https://doi.org/10.1093/bioinformatics/btp336
Li K, Wang Y, Zheng BQ et al (2011) Pollen morphology of 40 Paeonia delavayi (Paeoniaceae) populations. J Beijing for Univ 33(1):94–103
Livak KJ, Schmittgen TD (2002) Analysis of relative gene expression data using real-time quantitative PCR. Methods 25(4):402–408. https://doi.org/10.1006/meth.2001.1262
Loraine A, McCormick S, Estrada A et al (2013) RNA-seq of arabidopsis pollen uncovers novel transcription and alternative splicing. Plant Physiol 162(2):1092–1109. https://doi.org/10.1104/pp.112.211441
Lu Y, Deng SR, Li ZR et al (2019) Competing endogenous RNA networks underlying anatomical and physiological characteristics of poplar wood in acclimation to low nitrogen availability. Plant Cell Physiol 60(11):2478–2495. https://doi.org/10.1093/pcp/pcz146
Mortazavi A, Williams BA, Mccue K et al (2008) Mapping and quantifying mammalian transcriptomes byRNA-Seq. Nat Methods 5(7):621–628. https://doi.org/10.1038/nmeth.1226
Ogata J, Itoh Y, Ishida M et al (2004) Cloning and heterologous expression of Cdnas encoding flavonoid glucosyltransferases from Dianthus Caryophyllus. Plant Tissue Cult Lett 21(5):367–375. https://doi.org/10.5511/plantbiotechnology.21.367
Ohno S, Hori W, Hosokawa M et al (2018) Post-transcriptional silencing of chalcone synthase, is involved in phenotypic lability in petals and leaves of bicolor dahlia (Dahlia variabilis) ‘Yuino.’ Planta 247(2):413–428. https://doi.org/10.1007/s00425-017-2796-3
Robinson MD, McCarthy DJ, Smyth GK (2010) edgeR: a Bioconductor package for differential expression analysis of digital gene expression data. Bioinformatics 26(1):139–140. https://doi.org/10.1093/bioinformatics/btp616
Schijlen E, Ric de vos CH, Jonker H et al (2006) Pathway engineering for healthy phytochemicals leading to the production of novel flavonoids in tomato fruit. Plant Biotechnol J 4(4):433–444. https://doi.org/10.1111/j.1467-7652.2006.00192.x
Sharma SB, Dixon RA (2005) Metabolic engineering of proanthocyanidins by ectopic expression of transcription factors in Arabidopsis thaliana. Plant J 44(1):62–75. https://doi.org/10.1111/j.1365-313X.2005.02510.x
Shimizu K, Adachi J, Muraoka Y (2006) ANGLE: a sequencing errors resistant program for predicting protein coding regions in unfinished cDNA. J Bioinform Comput Biol 4(03):649–664. https://doi.org/10.1142/S0219720006002260
Tanaka Y, Sasaki N et al (2010) Biosynthesis of plant pigments: anthocyanins, betalains and carotenoids. Plant J 54(4):733–749. https://doi.org/10.1111/j.1365-313X.2008.03447.x
Tang N, Chen XB (2014) Research of MYB transcription factors in plant and abiotic stress response. J Biol 31(3):74–78 (in Chinese)
Togami J, Okuhara H, Nakamura N et al (2011) Isolation of cDNAs encoding tetrahydroxychalcone 2’-glucosyltransferase activity from carnation, cyclamen, and catharanthus. Plant Tissue Cult Lett 28(2):231–238. https://doi.org/10.5511/plantbiotechnology.11.0106b
Wang L, Cao C, Ma Q et al (2014) RNA-seq analyses of multiple meristems of soybean: novel and alternative transcripts, evolutionary and functional implications. BMC Plant Biol 14(1):169. https://doi.org/10.1186/1471-2229-14-169
Yamamizo C, Kishimoto S, Ohmiya A (2010) Carotenoid composition and carotenogenic gene expression during ipomoea petal development. J Exp Bot 61(3):709. https://doi.org/10.1093/jxb/erp335
Yoshida H, Itoh Y, Ozeki Y et al (2004) Variation in chalcononaringenin 2′-O-glucoside content in the petals of carnations (Dianthus caryophyllus) bearing yellow flowers. Sci Hortic 99(2):175–186. https://doi.org/10.1016/S0304-4238(03)00093-1
Yoshio I, Daisuke H, Akane S et al (2002) Excision of transposable elements from the chalcone isomerase and dihydroflavonol 4-reductase genes may contribute to the variegation of the yellow-flowered carnation (Dianthus caryophyllus). Plant Cell Physiol 5:5. https://doi.org/10.1093/pcp/pcf065
Zhou L, Wang Y, Lv CY et al (2011) Identification of components of flower pigments in petals of Paeonia lutea wild population in Yunnan. Journal of Northeast Forestry University 39(8):52–54
Zou HZ, Zhou L, Han LL et al (2021) Changes of carotenoid components and expression of the related genes during petal coloring of Paeonia delavayi. Acta Hortic Sin 10:1934–1944. https://doi.org/10.16420/j.issn.0513-353x.2021-0613
Acknowledgements
This work was supported by grants from the National Key Research and Development Program (Grant No. 2018YFD1000405) and The National Natural Science Foundation (Grant No. 31972456).
Author information
Authors and Affiliations
Contributions
H-ZZ and YW designed the experiments, collected samples, extracted RNA, processed the data, verified the gene function and wrote the manuscript. LZ collected samples, extracted RNA, processed the data, and reviewed the manuscript. L-LH designed the experiments, collected samples and reviewed the manuscript. J-HL and Y-HJ designed the experiments, reviewed the manuscript and supervised the study.
Corresponding author
Ethics declarations
Conflict of interest
The authors declare that they have no conflicts of interest.
Additional information
Communicated by Bing Yang.
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Supplementary Information
Below is the link to the electronic supplementary material.
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Zou, H., Zhou, L., Han, L. et al. Transcriptome profiling reveals the roles of pigment formation mechanisms in yellow Paeonia delavayi flowers. Mol Genet Genomics 298, 375–387 (2023). https://doi.org/10.1007/s00438-022-01973-4
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00438-022-01973-4