Next Article in Journal
Phytophthora pseudocryptogea, P. nicotianae and P. multivora Associated to Cycas revoluta: First Report Worldwide
Previous Article in Journal
Ferula communis Root Extract: In Vitro Evaluation of the Potential Additive Effect with Chemotherapy Tamoxifen in Breast Cancer (MCF-7) Cells Part II
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Transcriptome Analysis Reveals a Major Gene Expression Pattern and Important Metabolic Pathways in the Control of Heterosis in Chinese Cabbage

State Key Laboratory of Crop Stress Biology for Arid Area, College of Horticulture, Northwest A&F University, Xianyang 712100, China
*
Author to whom correspondence should be addressed.
Plants 2023, 12(5), 1195; https://doi.org/10.3390/plants12051195
Submission received: 21 January 2023 / Revised: 2 March 2023 / Accepted: 3 March 2023 / Published: 6 March 2023

Abstract

:
Although heterosis is commonly used in Chinese cabbage, its molecular basis is poorly understood. In this study, 16Chinese cabbage hybrids were utilized as test subjects to explore the potential molecular mechanism of heterosis. RNA sequencing revealed 5815–10,252 differentially expressed genes (DEGs) (female parent vs. male parent), 1796–5990 DEGs (female parent-vs-hybrid), and 2244–7063 DEGs (male parent vs. hybrid) in 16 cross combinations at the middle stage of heading. Among of them, 72.83–84.20% DEGs conformed to the dominant expression pattern, which is the predominant expression pattern in hybrids. There were 13 pathways in which DEGs were significantly enriched in most cross combinations. Among them, the plant–pathogen interaction (ko04626) and circadian rhythm-plant (ko04712)were significantly enriched by DEGs in strong heterosis hybrids. WGCNA also proved that the two pathways were significantly related to heterosis in Chinese cabbage.

1. Introduction

Heterosis is a phenomenon that the hybrid is superior to their parents in biomass, growth rate, yield, stress resistance, fecundity, quality, environmental adaption [1,2,3,4]. In historical process, heterosis phenomenon was perceived in various terms in different civilizations. By the 1870s, Darwin fully described the term “heterosis”, systematically observed the growth patterns of more than 60 plants, and concluded that “Hybridization is often beneficial to plants, and selfing is bad for plants” [5,6]. For many years since its discovery, heterosis was widely used as a breeding method to improve the yield and quality in many crops. At present, the utilization of heterosis is one of the most successful biological phenomena used by human beings in agricultural production [7].
Subsequently, numerous academics have investigated heterosis and advanced many hypotheses. Among them, the dominance hypothesis, overdominance hypothesis and epistasis hypothesis were widely accepted and served as the foundation for heterosis research [8,9,10,11,12,13]. The heterosis of plants was not adequately and rationally explained by any of these hypotheses or perspectives, regardless of how divergent they were. SSR markers and quantitative trait loci (QTL) mapping have increasingly become a standard tool for examining the genetic basis in hybrids due to the development of PCR [14]. Yu et al. summarized the QTL effect on heterosis based on 35 studies and found that dominance and epistasis had equal proportions in these studies, suggesting that the results of QTL mapping differed among species and even within different groups of the same specie [15]. Therefore, SSR markers and QTL mapping are insufficient to comprehensively explain the heterosis.
RNA sequencing has become a popular tool for studying heterosis due to the development of science and technology. Currently, RNA sequencing technology is being utilized to investigate the causes of heterosis in rice [16,17], rape [18,19], Arabidopsis [20,21], maize [22,23], wheat [24,25] and cotton [26]. On the one hand, special gene expression patterns based on gene expression level have been investigated in parents and hybrids [1,27]. It was found that the proportion of allelic additively expressed genes is positively associated with hybrid yield and heterosis in maize [22]. The coexistence of nonadditive DEGs including high-parent dominance, low-parent dominance, overdominance and underdominance, was observed in the F1 hybrid from Brassica napus and B. rapa, which were potentially related to heterosis [19]. On the other hand, enrichment analysis of differentially expressed genes between hybrids and their parents revealed special metabolic pathways connected to heterosis [28,29]. In Arabidopsis, integrating circadian rhythm and light signaling into ethylene production is a regulatory module of complex biological networks, leading to biomass heterosis [29]. RNA sequencing offers a new method for investigating the molecular mechanism of heterosis, selecting parent and predicting heterosis [30,31].
Chinese cabbage (Brassica rapa L. ssp. pekinensis), which belongs to the Brassica species in Cruciferae family, is one of the most widely cultivated vegetable crops in Asia [32]. In the breeding process, heterosis is an important selection criterion in Chinese cabbage. Yueet al. identified four heterotic quantitative trait loci (QTL) that could explain a part of the phenotypic variation using QTL-seq and Graded Pool-seq [33]. Li et al. identified differentially expressed microRNAs by small RNA sequencing and miRNA target genes by degradome sequencing in a F1 hybrid [34]. These results explain heterosis from different aspects, but only one or a few special hybrids were used. It is possible that these results only exist in these materials and are not universal. In this study, 16 hybrids hybridized by four female parents and four male parents were utilized as materials to investigate the molecular mechanism of heterosis in Chinese cabbage.

2. Results

2.1. Overview of RNA-seq Analysis

The leaf samples in hybrids and parents were harvested and used for RNA-seq analysis. In this stud, high-quality RNA was extracted, and 72cDNA libraries were separately prepared. After preliminary filtration, clean reads ranged from 6.00 billion to 16.25 billion bp (Table S1). HQ clean reads ranged from 5.84 billion to 15.78 billion bp were obtained by further strict filtration. Among them, 75.62–80.01%were mapped to the available Brassica rapa genome V3.0 using HISAT2 (Table S2). Then, a total of 26,266–32,338 genes were assembled for hybrids and parents (Table S3). All the correlation coefficients between different biological replicates showed higher than 0.90; thus, transcriptome data and each cDNA sample had high replicability (Figure 1).

2.2. Analysis of Differentially Expressed Genes in Hybrids and Parents of Chinese Cabbage

Through filtering by the criteria that FDR ≤ 0.05, the differentially expressed genes (DEGs) between different groups were identified. In 16 cross combinations, there were 5815–10,252 DEGs (female parent vs. male parent), 1796–5990 DEGs (female parent vs. hybrid), and 2244–7063 DEGs (male parent vs. hybrid) (Table 1). In every cross combination, the number of DEGs between parents was higher than that between parents and hybrid. There were many genes that differed between parents and hybrid among the DEGs between parents, accounting for 51.93–76.79% of the total. Therefore, DEGs between hybrid and their parents are mostly composed of genes that are also differentially expressed between parents.

2.3. Expression PatternAnalysis of Differentially Expressed Genes

For further analysis of DEGs, the genes were divided into 12 expression patterns based on the expression level of the parents and hybrid (Table 2). Genes in P1 and P2 showed an additive expression. Genes conformed to P3–P6showeda dominant expression. The over-dominant expression was observed in P7–P12. Genes with dominant expression patterns accounted for 72.83–84.20% of the total in Chinese cabbage, indicating that the dominance impact is important in heterosis (Figure 2). Among them, there were, on average, 1143 genes that conformed to P3, 1391 genes that conformed to P4, 669 genes that conformed to P5, and 1184 genes that conformed to P6 in cross combinations (Table 2). The genes that exhibited an additive expression pattern accounted for only 5.21–21.66% of the DEGs. The genes that exhibited an over-dominant expression pattern accounted for 1.07–20.30% of the DEGs (Figure 2).

2.4. MetabolicPathways Involved in Heterosis of Chinese Cabbage

DEGs between parent and hybrid were subjected to enrichment analysis to investigate the GO terms connected to heterosis. DEGs in 16 cross combinations were classified into 46–50 functional groups including 21 GO terms in the biological process group, 17 GO terms in the cellular component group and 12 GO terms in the molecular function group (Table S4). The significantly enriched GO terms included metabolic process (Go: 0008152), cellular process (Go: 0009987) and cell (Go: 005623).
KEGG pathway enrichment analysis was performed to identify related metabolic pathways. The results showed that 48 metabolic pathways were significantly enriched by DEGs in 16 cross-combinations, 4–23 metabolic pathways were significantly enriched in each hybrid, and various metabolic pathways were significantly enriched in different cross-combinations (Table S5). There were 13 metabolic pathways in which DEGs were significantly enriched in 8 or more cross combinations. These metabolic pathways included photosynthesis (ko00195), photosynthesis–antenna proteins (ko00196), phenylalanine metabolism (ko00360), tryptophan metabolism (ko00380), carbon fixation in photosynthetic organisms (ko00710), limonene and pinene degradation (ko00903), sulfur metabolism (ko00920), stilbenoid, diarylheptanoid and gingerol biosynthesis (ko00945), metabolic pathways (ko01100), biosynthesis of secondary metabolites (ko01110), microbial metabolism in diverse environments (ko01120), plant–pathogen interaction (ko04626) and circadian rhythm–plants (ko04712).

2.5. MetabolicPathways Influencing the Degree of Heterosis

In total, 1438commonDEGs in four strong heterosis hybrids (AF, CE, CF, DE)and 1145 common DEGs in four weak heterosis hybrids (AH, BG, BH, DH)were employed for enrichment analysis (Figure 3a,b). By enrichment analysis of the DEGs in four strong heterosis hybrids, it was found that the top 10 most enriched GO classifications belonged to the biological process classification and were shown in Figure 3c. The most dominant GO classification was response to stress (GO: 0006950). Go enrichment analysis of DEGs in four weak heterosis hybrids showed that six of the top ten GO classifications were related to cell component categorization, including plastid portion (GO: 0009579), thylakoid (GO: 0031976), photosynthetic membrane (GO: 0034357), photosystem (GO: 0009521), and plastid envelope (GO: 0009526) (Figure 3d).
The KEGG pathway enrichment analysis revealed that the DEGs in four strong heterosis hybrids were significantly enriched in plant pathogen interaction (ko04626) and plant circadian rhythm-plant (ko04712) (Figure 3e). The DEGs in four weak heterosis hybrids were significantly enriched in five pathways, which included photosynthesis-antenna proteins (ko00196), flavonoid biosynthesis (ko00941), metabolic pathways (ko01100), biosynthesis of secondary metabolites (ko01110), stilbenoid, diarylheptanoid and gingerol biosynthesis (ko00945) (Figure 3f).

2.6. Heterosis-Related Genes Found by WGCNA

As shown in Figure 4a, WGCNA was used to seek expression data for all materials to identify PGW-related genes. A total of 37 modules, each represented by a distinct hue, were created from all the genes. A module (MM.lightcyan) was significantly correlated with PGW (Figure 4a). The genes in this module were significantly enriched in circadian rhythm-plant (ko04712), photosynthesis-antenna proteins (ko00196)and carotenoid biosynthesis (ko00906).
All genes were split into 31 modules, each represented by a distinct hue based on the mid-parent heterosis value (MPV) of the gene expression level and PGW. Among these modules, five modules (MM.mediumpurple2, MM.orangered3, MM.darkolivegreen4, MM.honeydew1 and MM.saddlebrow) showed a significant correlation with PGW (Figure 4b). The genes in the MM.mediumpurple2 module were significantly enriched in ribosome biogenesis in eukaryotes (ko03008) (Table S6). The genes in the MM.orangered3 module were significantly enriched in ribosome (ko03010) and ribosome biogenesis in eukaryotes (ko03008). The genes of the MM.honeydew1 module were significantly enriched in plant–pathogen interaction (ko04626) and glucosinolate biosynthesis (ko00966).

2.7. DEGs Related to Heterosis in Circadian Rhythm–Plant and Plant–Pathogen Interaction Pathway

Based on the information above, one of the most important pathways for heterosis was the circadian rhythm-plant pathway. The genes in circadian rhythm-plant pathway showed varied expression patterns in the DE hybrid, which had the strongest heterosis of all cross combinations (Figure 5a). In the PRR protein family, BrAPRR1-1, BrAPRR1-2, BrAPRR3, BrAPRR5-2, BrAPRR7-1 and BrAPRR7-2 were showed a low parent-expression level, BrAPRR5-1 was down-regulated in the manner of over-dominant expression, and BrAPRR9 showedanadditive expression in the DE hybrid. In the manner of dominant expression, BrCCA1 showed an up-regulation expression. In contrast, BrLHY-2 was up-regulated in the manner of over-dominant expression. BrLHY-1 showed a high parental expression level. As a result, compared to the high parent-expression level, most DEGs in the PRR protein family showed a lower expression level in DE hybrid. Instead, compared to the low parent-expression level, BrCCA1, BrLHY-1, and BrLHY-2 conformed to higher expression levels in hybrid DE.
From the above, the plant–pathogen interaction pathway was related to heterosis. Genes controlling calcium displayed varied expression patterns in the DE hybrid, which had the strongest heterosis in all cross combinations (Figure 5b). In Calmodulin (CaM) and Calmodulin-like proteins (CML) genes, compared to the low parent-expression level, many genes had a higher expression level in hybrid DE, forexample, BrCAM4, BrCAM5-2, BrCAM5-3, BrCML1, BrCML11, BrCML26, BrCAM53 and BrCML22 showed a high parent-expression level, and BrCAM5-1, BrCCM1-1, BrCCM1-2, BrCCM1-3 showed an additive expression. In the case of CNGCs (cyclic nucleotide-gated channels), BrCNGC10, BrCNGC12-1, BrCNGC20-2, BrCNGC3, BrCNGC6-1, BrCNGC6-2 were showed a low parent-expression level, BrCNGC11, BrCNGC12-2, BrCNGC20-1 showed an additive expression. For CPKs (calcium-dependent protein kinases), BrCPK1 was down-regulated in the manner of over-dominant expression, BrCPK12-1 and BrCPK20 conformed to an additive expression, and BrCPK12 and BrCPK32 expressed a low parent-expression level. In sum, compared to the low parent-expression level, most genes of CaM and CML, showed a higher expression level in DE hybrid t. In contrast, compared to the high parent-expression level, most genes of CNGCs and CPKs exhibited a lower expression level in DE hybrid.

3. Discussion

Although heterosis has been successfully used from an agronomic standpoint in several crops, including hybrid rice and hybrid maize, the molecular mechanisms of heterosis still need to be fully understood. The mechanism of plant heterosis is still being studied, and most studies on the subject were conducted by a single or small number of special hybrids [35,36,37]. As a result, different hybrids have different reasons for heterosis, and it is uncertain whether there was any common variable contributing to heterosis. In this study, 16 hybrids created by 4 male parents and 4 female parents of Chinese cabbage were applied, allowing researchers to find the distinction between weak heterosis hybrids and strong heterosis hybrids.
In our study, DEGs were classified into additive, dominant and over-dominant expression pattern by comparing the gene expression level in hybrid and parents. Very few genes conformed to the additive and over-dominant expression pattern in Chinese cabbage, and most DEGs were expressed according to the dominant pattern. These results were distinct from other studies. The additive expression pattern of differentially expressed genes served as the primary expression pattern in maize [38]. Compared to other expression patterns, the number of genes with dominant expression pattern was considerably higher in tobacco. The number of genes with a male-dominant expression pattern was significantly greater than that of genes with a female-dominant expression pattern [39]. Ninety-five percent of the expressed genes in Arabidopsis thaliana were between the expression levels of the parents [27]. The main expression pattern of differentially expressed genes are distinct in different crops, consequently, the contributions of additive and dominant effect to heterosis are also distinct in different plants. The difference in gene expression pattern in different species may be due to differences in genetic background, classification and even environment, so the current explanation of the gene expression pattern in hybrids should be more reasonable from many aspects.
Identifying heterosis-related genes was an important target of the current study. Kong et al. found the high expression level of DEGs in photosynthesis pathway in hybrids depicting their relation with growth and hybrid vigor in Chinese cabbage [40]. Li et al. concluded that the expression levels of photosynthesis and chlorophyll synthesis-related differentially expressed genes were significantly different in the Chinese cabbage hybrid compared to the parental lines, resulting in increased photosynthesis capacity and chlorophyll content in the former [34]. In Pak choi hybrids, the increased photosynthetic activity was associated with an improved photosynthetic mechanism and larger leaves [41]. These results showed that photosynthesis is related to heterosis and were different from our conclusions. In our research, the photosynthesis (ko00195) and photosynthesis-antenna proteins (ko00196) were significantly enriched by DEGs in most cross combinations, however, these were not significantly enriched by DEGs in strong heterosis hybrids. Among them, the photosynthesis-antenna proteins were significantly enriched by DEGs in weak heterosis hybrids. Therefore, the photosynthesis is related to heterosis and may not make outstanding contributions to heterosis.
By KEGG pathway enrichment analysis, we discovered that 13 pathways, including plant–pathogen interaction (ko04626) and circadian rhythm-plant (ko04712), were significantly enriched by DEGs in the majority of cross combinations. Coincidentally, plant circadian rhythm pathways and plant–pathogen interaction were significantly enriched in the DEGs of strong heterosis hybrids. Therefore, the genes included in plant pathogen interaction and plant circadian rhythm pathways were related to heterosis and affected the degree of heterosis. WGCNA also proved a substantial relationship between the two pathways and PGW or PGW heterosis. Therefore, we hypothesized that plant pathogen interaction and plant circadian rhythm pathways have important contributions to heterosis.
The circadian rhythm clock’s impact on heterosis in hybrid crops has been proven. In Arabidopsis, hybrids and allopolyploids increased growth vigor and biomass by controlling physiological metabolic pathways that were mediated by circadian rhythm [42]. In maize, gene expression levels mediated by the circadian clock contributed to hybrid biomass [43]. Transcriptome analysis indicated that the circadian regulatory network may be related to heterosis in hybrid rice [34,44]. In addition, similar findings also have been reported in coffee, cotton, loquat and other plants [45,46]. In our work, the circadian rhythm clock core gene BrCCA1, BrLHY-1, and BrLHY-2 conformed to a high parental expression level in a hybrid with the strongest heterosis. Compared to the high parent-expression level, most DEGs of the PRR protein family showed lower expression levels. Our results suggested that genes in the circadian rhythm pathway may be related to heterosis. However, since there is only experimental evidence in the morning, more research is required to determine how these genes influence heterosis.
Calcium, an essential secondary messenger in eukaryotic cells, plays major roles in plant growth and development [47,48]. There have been some reports about the relationship between calcium and heterosis. By proteomic analysis, calmodulin-binding transcription activators were detected in hybrid rice under heat stress [49]. Compared with parents, the calmodulin binding protein was differentially expressed in a soybean hybrid (Jilin 38 × EXP) [50]. In our study, although most genes in CaM and CML had a high parental expression level, most genes in CPK and CNGC had lower expression level than high parent-expression level in hybrid with strongest heterosis. However, how these genes act on heterosis still needs to be further explored.

4. Materials and Methods

4.1. Plant Materials

Eight inbred lines and sixteen hybrids were used for heterosis analysis (Table 3). All materials were developed and provided by the Chinese cabbage research group, at the College of Horticulture, Northwest A&F University, Yangling, China. Eight Chinese cabbage inbred lines were self-bred for at least eight generations. The inbred line parents were used for artificial cross-pollination to obtain the hybrids by in complete diallel crossing design. In all the materials, inbred lines A(original name: S93), B(original name: S129), C(original name: S96), D(original name: S256), were female parents, inbred lines E(original name: S602), F(original name: S1063), G(original name: S568), H(original name: S346) were male parents, and the other materials were hybrids.
The experiment was conducted at Yangling Wuquan test field in Shaanxi, China. At the middle stage of heading (about 70 days), the first outer leaf from top to bottom was collected with the help of sterile scissors at 9:30–10:30 am. The samples were wrapped in tin foil, quickly frozen with liquid nitrogen, stored at −80 °C, and used for RNA-Seq. Specimens from three individuals were mixed as one test sample, and three replicates were taken from each material. At maturity (about 100 days), the PGW was investigated in parents and hybrids. The PGW data were described in detail in a previous study [51].
The code in the first column represents the female parent, the code in the first line represents the male parent, and the rests are the corresponding hybrids.
The MPV was calculated for PGW according to the formula:
MPV   = F 1 MP MP 100 %
where F1 is the value of hybrid, MP is the mean value of two parents. Then, these hybrids were separated into three groups according to the MPV of PGW (Table 4). When the MPV of PGW is higher than 140, the hybrid belongs to a strong heterosis combination, including AF, CE, DE, and CF hybrid. When the MPV of PGW is lower than 40, the hybrid belongs toa weak heterosis combination, including AH, BG, BH, and DH hybrid. When the MPV of PGW is between 40 and 140, the hybrid was in the moderate heterosis group (The details were obtained from previous project) [51].

4.2. RNA Isolation, cDNA Library Construction, and RNA-Seq

Following the manufacturer’s instructions, RNA was extracted using the Trizol reagent (Invitrogen, Carlsbad, CA, USA) before the decontamination of genomic DNA using DNaseI (TaKaRa, Otsu, Japan). A NanoDrop 8000 spectrophotometer (Thermo Scientific, Waltham, MA, USA), an Agilent 2100 Bioanalyzer (Agilent Technologies, Santa Clara, CA, USA), and 1.0% agarose gels were used to evaluate the quality, purity, and integrity of the RNA.
Total RNA was isolated from the sample, followed by the enrichment of mRNA using Oligo (dT) magnetic beads, shortening of the acquired mRNA by adding a fragmentation buffer, and using the short fragmented mRNA as a template. The first strand of cDNA was created using six-base random primers (random hexamers), whereas the second strand was created by adding buffer, dNTPs, RNase H, and DNA polymerase I. Then, the cDNA fragments were purified with aQiaQuick PCR extraction kit, end-repaired, poly(A) added, and ligated to Illumina sequencing adapters. The ligation products were size selected by agarose gel electrophoresis, PCR-amplified, and sequenced using Illumina HiSeqTM by Genedenovo Biotechnology Co., Ltd. (Guangzhou, China). The obtained raw data from constructed cDNA libraries were deposited in NCBI Sequence Read Archive (SRA, http://www.ncbi.nlm.nih.gov/Traces/sra/ (accessed on 1 June 2022)) under the accession number: BioProject PRJNA876066 (The details were obtained from previous project) [51].

4.3. Identification of Differentially Expressed Genes

After the total RNA was extracted from the sample, the constructed library was sequenced with Illumina HiSeqTM. After filtered, the reads were mapped to the reference genome, and the transcripts were assembled using cuff links to obtain the known transcripts and new transcripts. The mean FPKM value was taken for each gene in three biological repeats. DEGs between hybrid and parents were identified for each crossing combination using the DESeq2 package in R (false discovery rate adjusted p value < 0.01).

4.4. Analysis Expression Pattern of Differentially Expressed Genes

DEGs were divided into 12 expression patterns using R language (Table 5). When the DEGs met all screening conditions, it was considered to belong to the corresponding expression pattern. P1 and P2 were additive expression. P3–P6 conformed to dominant expression. P7–P12 were over-dominant expression.

4.5. Functional Enrichment Analysis

To identify possible biological functions, Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) annotations were performed for DEGs. The DEGs were mapped to GO database (http://www.geneontology.org/) (accessed on 1 March 2021) using GOseq R package, and signifcantly enriched GO terms were identified if an adjusted p < 0.05. The KEGG pathways were assigned using the KEGG software package (http://www.kegg.jp/) (accessed on 1 March 2021), and considered significant if an adjusted p < 0.05.

4.6. Weighted Gene Coexpression Network Analysis

Gene co-expression modules were assigned using the weighted gene coexpression network analysis (WGCNA) R package. The minimum module size was 50 genes and the soft threshold power β was set to 11. Significant module–trait associations were identified by correlating the module eigengenes with the measured value or MPV of PGW. The eigengenes represented the gene expression pattern within a module. A module was considered significant if the p < 0.05.

5. Conclusions

We concluded that the dominant expression pattern is the main expression pattern in Chinese cabbage hybrids. The genes in the plant–pathogen interaction and circadian rhythm-plant pathway were related to heterosis in Chinese cabbage. However, it is needs to be further explored.

Supplementary Materials

The following are available online at https://www.mdpi.com/article/10.3390/plants12051195/s1, Table S1: Overview of transcriptome sequencing data, Table S2: Assembling overview of transcriptome sequencing data, Table S3: The genes number of transcriptome sequencing, Table S4: Go term classification table of differential expression genes in different cross combinations, Table S5: KEGG enrichment analysis of differential expression genes in different cross combinations, Table S6: KEGG Enrichment analysis of module genes in hybrids of Chinese cabbage.

Author Contributions

Conceptualization, L.Z., R.L. and S.N.; methodology, L.Z., R.L. and S.N.; data curation, R.L., S.N., N.Z. and M.T.; validation, R.L., S.N., N.Z. and M.T.; writing—original draft preparation, L.Z., R.L. and S.N.; writing—review and editing, L.Z., R.L., S.N., N.Z. and M.T.; funding acquisition, L.Z. All authors have read and agreed to the published version of the manuscript.

Funding

This work was funded by the Key Research and Development Program of Yangling Seed Innovative Center (Ylzy-sc-04 to L.Z.), the Key Research and Development Program of Shaanxi Province (2023-YBNY-078 to L.Z.), the National Key Research and Development Program of China (2016YFD0101701 to L.Z.), and the Natural Science Basic Research Plan in Shaanxi Province of China (2023-JC-YB-184 to S.N.).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The RNA-seq data have been deposited with the NCBI with the dataset identifier PRJNA876066.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Ding, H.; Qin, C.; Luo, X.; Li, L.; Chen, Z.; Liu, H.; Gao, J.; Lin, H.; Shen, Y.; Zhao, M.; et al. Heterosis in early maize ear inflorescence development: A genome-wide transcription analysis for two maize inbred lines and their hybrid. Int. J. Mol. Sci. 2014, 15, 13892–13915. [Google Scholar] [CrossRef] [Green Version]
  2. Fujimoto, R.; Uezono, K.; Ishikura, S.; Osabe, K.; Peacock, W.J.; Dennis, E.S. Recent research on the mechanism of heterosis is important for crop and vegetable breeding systems. Breed. Sci. 2018, 68, 145–158. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  3. Hochholdinger, F.; Baldauf, J.A. Heterosis in plants. Curr. Biol. 2018, 28, R1089–R1092. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  4. Liu, J.; Li, M.; Zhang, Q.; Wei, X.; Huang, X. Exploring the molecular basis of heterosis for plant breeding. J. Integr. Plant Biol. 2020, 62, 287–298. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  5. Birchler, J.A.; Yao, H.; Chudalayandi, S.; Vaiman, D.; Veitia, R.A. Heterosis. Plant Cell 2010, 22, 2105–2112. [Google Scholar] [CrossRef] [Green Version]
  6. Rehman, A.U.; Dang, T.; Qamar, S.; Ilyas, A.; Fatema, R.; Kafle, M.; Hussain, Z.; Masood, S.; Iqbal, S.; Shahzad, K. Revisiting plant heterosis-from field scale to molecules. Genes 2021, 12, 1688. [Google Scholar] [CrossRef]
  7. Baranwal, V.K.; Mikkilineni, V.; Zehr, U.B.; Tyagi, A.K.; Kapoor, S. Heterosis: Emerging ideas about hybrid vigour. J. Exp. Bot. 2012, 63, 6309–6314. [Google Scholar] [CrossRef] [Green Version]
  8. Bruce, A. The mendelian theory of heredity and the augmentation of vigor. Science 1910, 32, 627–628. [Google Scholar] [CrossRef]
  9. Jones, D.F. Dominance of linked factors as a means of accounting for heterosis. Genetics 1917, 2, 466–479. [Google Scholar] [CrossRef]
  10. Davenport, C.B. Degeneration, albinism and inbreeding. Science 1908, 28, 454–455. [Google Scholar] [CrossRef]
  11. Schnable, P.S.; Springer, N.M. Progress toward understanding heterosis in crop plants. Annu. Rev. Plant Biol. 2013, 64, 71–88. [Google Scholar] [CrossRef]
  12. Moore, S.; Lukens, L. An evaluation of Arabidopsis thaliana hybrid traits and their genetic control. G3 (Bethesda) 2011, 1, 571–579. [Google Scholar] [CrossRef] [Green Version]
  13. Redei, G.P. Supervital mutants of Arabidopsis. Genetics 1962, 47, 443–460. [Google Scholar] [CrossRef]
  14. He, G.; Luo, X.; Tian, F.; Li, K.; Zhu, Z.; Su, W.; Qian, X.; Fu, Y.; Wang, X.; Sun, C.; et al. Haplotype variation in structure and expression of a gene cluster associated with a quantitative trait locus for improved yield in rice. Genome Res. 2006, 16, 618–626. [Google Scholar] [CrossRef] [Green Version]
  15. Yu, D.; Gu, X.; Zhang, S.; Dong, S.; Miao, H.; Gebretsadik, K.; Bo, K. Molecular basis of heterosis and related breeding strategies reveal its importance in vegetable breeding. Hortic. Res. 2021, 8, 120. [Google Scholar] [CrossRef]
  16. He, G.; Zhu, X.; Elling, A.A.; Chen, L.; Wang, X.; Guo, L.; Liang, M.; He, H.; Zhang, H.; Chen, F.; et al. Global epigenetic and transcriptional trends among two rice subspecies and their reciprocal hybrids. Plant Cell 2010, 22, 17–33. [Google Scholar] [CrossRef] [Green Version]
  17. Guo, X.Y.; Zhang, M.; Zhu, M.D.; Long, J.R.; Wei, Z.W.; Li, J.W.; Zhou, B.; Ai, Z.Y.; Deng, H.F. Comparative transcriptomic analysis of the super hybrid rice Chaoyouqianhao under salt stress. BMC Plant Biol. 2022, 22, 233. [Google Scholar]
  18. Yi, G.; Shin, H.; Park, H.R.; Park, J.E.; Ahn, J.H.; Lim, S.; Lee, J.G.; Lee, E.J.; Huh, J.H. Revealing biomass heterosis in the allodiploid × Brassicoraphanus, a hybrid between Brassica rapa and Raphanus sativus, through integrated transcriptome and metabolites analysis. BMC Plant Biol. 2020, 20, 252. [Google Scholar] [CrossRef]
  19. Zhang, J.; Li, G.; Li, H.; Pu, X.; Jiang, J.; Chai, L.; Zheng, B.; Cui, C.; Yang, Z.; Zhu, Y.; et al. Transcriptome analysis of interspecific hybrid between Brassica napus and B. rapa reveals heterosis for oil rape improvement. Int. J. Genom. 2015, 2015, 230985. [Google Scholar]
  20. Shen, H.; He, H.; Li, J.; Chen, W.; Wang, X.; Guo, L.; Peng, Z.; He, G.; Zhong, S.; Qi, Y.; et al. Genome-wide analysis of DNA methylation and gene expression changes in two Arabidopsis ecotypes and their reciprocal hybrids. Plant Cell 2012, 24, 875–892. [Google Scholar] [CrossRef] [Green Version]
  21. Liu, W.; He, G.; Deng, X.W. Biological pathway expression complementation contributes to biomass heterosis in Arabidopsis. Proc. Natl. Acad. Sci. USA 2021, 118, e2023278118. [Google Scholar] [CrossRef] [PubMed]
  22. Guo, M.; Rupe, M.A.; Yang, X.; Crasta, O.; Zinselmeier, C.; Smith, O.S.; Bowen, B. Genome-wide transcript analysis of maize hybrids: Allelic additive gene expression and yield heterosis. Theor. Appl. Genet. 2006, 113, 831–845. [Google Scholar] [CrossRef] [PubMed]
  23. Luo, J.H.; Wang, M.; Jia, G.F.; He, Y. Transcriptome-wide analysis of epitranscriptome and translational efficiency associated with heterosis in maize. J. Exp. Bot. 2021, 72, 2933–2946. [Google Scholar] [CrossRef] [PubMed]
  24. Liu, Y.J.; Li, D.; Gong, J.; Wang, Y.B.; Chen, Z.B.; Pang, B.S.; Chen, X.C.; Gao, J.G.; Yang, W.B.; Zhang, F.T.; et al. Comparative transcriptome and DNA methylation analysis in temperature-sensitive genic male sterile wheat BS366. BMC Genom. 2021, 22, 911. [Google Scholar] [CrossRef]
  25. Liu, Z.; Li, S.; Li, W.; Liu, Q.; Zhang, L.; Song, X. Comparative transcriptome analysis indicates that a core transcriptional network mediates isonuclear alloplasmic male sterility in wheat (Triticum aestivum L.). BMC Plant Biol. 2020, 20, 10. [Google Scholar] [CrossRef] [Green Version]
  26. Flagel, L.; Udall, J.A.; Nettleton, D.S.; Wendel, J.F. Duplicate gene expression in allopolyploid Gossypium reveals two temporally distinct phases of expression evolution. BMC Biol. 2008, 6, 16. [Google Scholar] [CrossRef] [Green Version]
  27. Alonso-Peral, M.M.; Trigueros, M.; Sherman, B.; Ying, H.; Taylor, J.M.; Peacock, W.J.; Dennis, E.S. Patterns of gene expression in developing embryos of Arabidopsis hybrids. Plant J. 2017, 89, 927–939. [Google Scholar]
  28. Zhai, R.; Feng, Y.; Wang, H.; Zhan, X.; Shen, X.; Wu, W.; Zhang, Y.; Chen, D.; Dai, G.; Yang, Z.; et al. Transcriptome analysis of rice root heterosis by RNA-Seq. BMC Genom. 2013, 14, 19. [Google Scholar] [CrossRef] [Green Version]
  29. Song, Q.; Ando, A.; Xu, D.; Fang, L.; Zhang, T.; Huq, E.; Qiao, H.; Deng, X.W.; Chen, Z.J. Diurnal down-regulation of ethylene biosynthesis mediates biomass heterosis. Proc. Natl. Acad. Sci. USA 2018, 115, 5606–5611. [Google Scholar] [CrossRef] [Green Version]
  30. Fu, D.; Xiao, M.; Hayward, A.; Jiang, G.; Zhu, L.; Zhou, Q.; Li, J.; Zhang, M. What is crop heterosis: New insights into an old topic. J. Appl. Genet. 2015, 56, 1–13. [Google Scholar] [CrossRef]
  31. Wu, X.; Liu, Y.; Zhang, Y.; Gu, R. Advances in research on the mechanism of heterosis in plants. Front. Plant Sci. 2021, 12, 745726. [Google Scholar] [CrossRef]
  32. He, Q.; Zhang, Z.; Zhang, L. Anthocyanin accumulation, antioxidant ability and stability, and a transcriptional analysis of anthocyanin biosynthesis in purple heading Chinese cabbage (Brassica rapa L. ssp. pekinensis). J. Agric. Food Chem. 2016, 64, 132–145. [Google Scholar] [CrossRef]
  33. Yue, L.; Sun, R.; Li, G.; Cheng, F.; Gao, L.; Wang, Q.; Zhang, S.; Zhang, H.; Zhang, S.; Li, F. Genetic dissection of heterotic loci associated with plant weight by Graded pool-seq in heading Chinese cabbage (Brassica rapa). Planta 2022, 255, 126. [Google Scholar] [CrossRef]
  34. Li, P.; Su, T.; Zhang, D.; Wang, W.; Xin, X.; Yu, Y.; Zhao, X.; Yu, S.; Zhang, F. Genome-wide analysis of changes in miRNA and target gene expression reveals key roles in heterosis for Chinese cabbage biomass. Hortic. Res. 2021, 8, 39. [Google Scholar] [CrossRef]
  35. Yang, H.; Wang, X.; Wei, Y.; Deng, Z.; Liu, H.; Chen, J.; Dai, L.; Xia, Z.; He, G.; Li, D. Transcriptomic analyses reveal molecular mechanisms underlying growth heterosis and weakness of rubber tree seedlings. BMC Plant Biol. 2018, 18, 10. [Google Scholar] [CrossRef] [Green Version]
  36. Chen, L.; Bian, J.; Shi, S.; Yu, J.; Khanzada, H.; Wassan, G.M.; Zhu, C.; Luo, X.; Tong, S.; Yang, X.; et al. Genetic analysis for the grain number heterosis of a super-hybrid rice WFYT025 combination using RNA-Seq. Rice 2018, 11, 37. [Google Scholar] [CrossRef] [Green Version]
  37. Li, H.; Yuan, J.; Wu, M.; Han, Z.; Li, L.; Jiang, H.; Jia, Y.; Han, X.; Liu, M.; Sun, D.; et al. Transcriptome and DNA methylome reveal insights into yield heterosis in the curds of broccoli (Brassica oleracea L. var. italic). BMC Plant Biol. 2018, 18, 168. [Google Scholar] [CrossRef] [Green Version]
  38. Zhou, P.; Hirsch, C.N.; Briggs, S.P.; Springer, N.M. Dynamic patterns of gene expression additivity and regulatory variation throughout maize development. Mol. Plant 2019, 12, 410–425. [Google Scholar] [CrossRef] [Green Version]
  39. Tian, M.; Nie, Q.; Li, Z.; Zhang, J.; Liu, Y.; Long, Y.; Wang, Z.; Wang, G.; Liu, R. Transcriptomic analysis reveals overdominance playing a critical role in nicotine heterosis in Nicotiana tabacum L. BMC Plant Biol. 2018, 18, 48. [Google Scholar] [CrossRef] [Green Version]
  40. Kong, X.; Chen, L.; Wei, T.; Zhou, H.; Bai, C.; Yan, X.; Miao, Z.; Xie, J.; Zhang, L. Transcriptome analysis of biological pathways associated with heterosis in Chinese cabbage. Genomics 2020, 112, 4732–4741. [Google Scholar] [CrossRef]
  41. Liu, T.; Duan, W.; Chen, Z.; Yuan, J.; Xiao, D.; Hou, X.; Li, Y. Enhanced photosynthetic activity in pak choi hybrids is associated with increased grana thylakoids in chloroplasts. Plant J. 2020, 103, 2211–2224. [Google Scholar] [CrossRef]
  42. Ni, Z.; Kim, E.D.; Ha, M.; Lackey, E.; Liu, J.; Zhang, Y.; Sun, Q.; Chen, Z.J. Altered circadian rhythms regulate growth vigour in hybrids and allopolyploids. Nature 2009, 457, 327–331. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  43. Ko, D.K.; Rohozinski, D.; Song, Q.; Taylor, S.H.; Juenger, T.E.; Harmon, F.G.; Chen, Z.J. Temporal shift of circadian-mediated gene expression and carbon fixation contributes to biomass heterosis in maize hybrids. PLoS Genet. 2016, 12, e1006197. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  44. Song, G.S.; Zhai, H.L.; Peng, Y.G.; Zhang, L.; Wei, G.; Chen, X.Y.; Xiao, Y.G.; Wang, L.; Chen, Y.J.; Wu, B.; et al. Comparative transcriptional profiling and preliminary study on heterosis mechanism of super-hybrid rice. Mol. Plant 2010, 3, 1012–1025. [Google Scholar] [CrossRef] [PubMed]
  45. Toniutti, L.; Breitler, J.C.; Guittin, C.; Doulbeau, S.; Etienne, H.; Campa, C.; Lambot, C.; Herrera Pinilla, J.C.; Bertrand, B. An altered circadian clock coupled with a higher photosynthesis efficiency could explain the better agronomic performance of a new coffee clone when compared with a standard variety. Int. J. Mol. Sci. 2019, 20, 736. [Google Scholar] [CrossRef] [Green Version]
  46. Shahzad, K.; Zhang, X.; Guo, L.; Qi, T.; Tang, H.; Zhang, M.; Zhang, B.; Wang, H.; Qiao, X.; Feng, J. Comparative transcriptome analysis of inbred lines and contrasting hybrids reveals overdominance mediate early biomass vigor in hybrid cotton. BMC Genom. 2020, 21, 140. [Google Scholar] [CrossRef] [Green Version]
  47. Berridge, M.J.; Lipp, P.; Bootman, M.D.; Berridge, M.; Lipp, P.; Bootman, M. The versatility and universality of calcium signaling. Nat. Rev. Mol. Cell Biol. 2000, 1, 11–21. [Google Scholar] [CrossRef]
  48. Hetherington, A.M.; Brownlee, C. The generation of Ca2+ signals in plants. Annu. Rev. Plant Biol. 2004, 55, 401–427. [Google Scholar] [CrossRef] [Green Version]
  49. Wang, Y.; Yu, Y.; Huang, M.; Gao, P.; Chen, H.; Liu, M.; Chen, Q.; Yang, Z.; Sun, Q. Transcriptomic and proteomic profiles of II YOU 838 (Oryza sativa) provide insights into heat stress tolerance in hybrid rice. PeerJ 2020, 8, e8306. [Google Scholar] [CrossRef] [Green Version]
  50. Zhang, J.; Yao, D.; Wang, P.; Guan, S.Y.; Ma, J.; Fu, Y.P. Cloning and functional prediction of differentially expressed genes in the leaves of Glycine max parents and hybrids at the seedling stage. Genet. Mol. Res. 2014, 13, 474–483. [Google Scholar] [CrossRef]
  51. Li, R.; Tian, M.; Nie, S.; Zhang, L. Changes in alternative splicing revealed special metabolic pathways related to heterosis of heading Chinese cabbage. Horticulturae 2023, 9, 17. [Google Scholar] [CrossRef]
Figure 1. Heat map of correlation analysis based on transcriptome data in all transcripts.
Figure 1. Heat map of correlation analysis based on transcriptome data in all transcripts.
Plants 12 01195 g001
Figure 2. The percentages (%) in the graph represent the ratios ofthe additive expression pattern, dominant expression pattern and over-dominant expression pattern.
Figure 2. The percentages (%) in the graph represent the ratios ofthe additive expression pattern, dominant expression pattern and over-dominant expression pattern.
Plants 12 01195 g002
Figure 3. Analysis of genes related to heterosis. (a) Wien map of differentially expressed genes in strong heterosis hybrids. (b) Wien map of differentially expressed genes in weak heterosis hybrids. (c) GO enrichment of differentially expressed genes in strong heterosis hybrids. (d) GO enrichment analysis of differentially expressed genes in weak heterosis hybrids. (e) KEGG enrichment analysis of differentially expressed genes in strong heterosis hybrids. (f) KEGG enrichment analysis of differentially expressed genes in weak heterosis hybrids. The size of the bubble represents the number of genes contained in the pathway, and the color of the bubble represents the enrichment significance in the pathway.
Figure 3. Analysis of genes related to heterosis. (a) Wien map of differentially expressed genes in strong heterosis hybrids. (b) Wien map of differentially expressed genes in weak heterosis hybrids. (c) GO enrichment of differentially expressed genes in strong heterosis hybrids. (d) GO enrichment analysis of differentially expressed genes in weak heterosis hybrids. (e) KEGG enrichment analysis of differentially expressed genes in strong heterosis hybrids. (f) KEGG enrichment analysis of differentially expressed genes in weak heterosis hybrids. The size of the bubble represents the number of genes contained in the pathway, and the color of the bubble represents the enrichment significance in the pathway.
Plants 12 01195 g003
Figure 4. Relationship histogram between module and traits. (a): Relationship histogram between module and plant gross weight. (b): Relationship histogram between module and mid-parent valueof plant gross weight.
Figure 4. Relationship histogram between module and traits. (a): Relationship histogram between module and plant gross weight. (b): Relationship histogram between module and mid-parent valueof plant gross weight.
Plants 12 01195 g004
Figure 5. Heat map of differential expression genes related to heterosis. (a) The cluster heatmap of genes involving in circadian rhythm-plant pathway. (b) The cluster heatmap of genes regulating calcium. Green indicates the lowest expression. Red indicates the highest expression. The gene expression pattern is indicated in parentheses. D represents the female parent in the cross combination with strongest heterosis. E represents the male parent in the cross combination with strongest heterosis. DE represents the hybrid in the cross combination with strongest heterosis.
Figure 5. Heat map of differential expression genes related to heterosis. (a) The cluster heatmap of genes involving in circadian rhythm-plant pathway. (b) The cluster heatmap of genes regulating calcium. Green indicates the lowest expression. Red indicates the highest expression. The gene expression pattern is indicated in parentheses. D represents the female parent in the cross combination with strongest heterosis. E represents the male parent in the cross combination with strongest heterosis. DE represents the hybrid in the cross combination with strongest heterosis.
Plants 12 01195 g005
Table 1. Quantity statistics of differentially expressed genes.
Table 1. Quantity statistics of differentially expressed genes.
GroupFemale Parent vs. Male ParentFemale Parent vs. HybridMale Parent vs. HybridDEGs Ratio
A-AE-E10,2522841637465.23
A-AF-F72033813471973.14
A-AG-G86433141409860.44
A-AH-H99513578521162.96
B-BE-E10,0433412582966.45
B-BF-F70532349513670.81
B-BG-G83642554344254.50
B-BH-H10,2153004622466.90
C-CE-E80785990442474.85
C-CF-F65805533387272.14
C-CG-G60444667231263.78
C-CH-H78805095703676.79
D-DE-E90643009637668.53
D-DF-F58151796224451.93
D-DG-G78533313282255.52
D-DH-H74623495355064.84
DEGs Ratio: the ratio of DEGs (there were differential expression in two comparison groups (female parent vs. hybrid or male parent vs. hybrid)) to DEGs (there were differential expression in a comparison group (female parent-vs-male parent)).
Table 2. A number of genes in each of the 12 expression patterns of differentially expressed genes.
Table 2. A number of genes in each of the 12 expression patterns of differentially expressed genes.
GroupThe Number of Genes
P1P2P3P4P5P6P7P8P9P10P11P12
AE5756898062139385203975415771519
AF5194279511234638139423337599216
AG386476117711925391412604121161412
AH4774811302178167514536712121742250
BE7717001166228936013422846902115
BF3993275041789312161359224199159
BG4284509961162412110117102317
BH5484689922703525152271412127951
CE37640517269641538801257471560250124
CF1802301089712139998650322674853032
CG10213215104701046477255426380961
CH1961921531104712425952921451952435208
DE62372873617533421966127428122257
DF2091758819031666678248085
DG25337114649105417942823116912
DH3663801462120359177459791471036
Average40141411431391669118413419192101841
Standard error44.1844.1681.42150.0099.79116.2833.168.835.2343.782.9813.13
P1 and P2 conform to an additive expression pattern. P3, P4, P5 and P6 conform toa dominant expression pattern. P7, P8, P9, P10, P11 and P12 conform to an over-dominant expression pattern.
Table 3. The code of inbred lines and hybrids of Chinese cabbage.
Table 3. The code of inbred lines and hybrids of Chinese cabbage.
EFGH
AAEAFAGAH
BBEBFBGBH
CCECFCGCH
DDEDFDGDH
Table 4. Mid-parent heterosis value analysis of plant gross weight in hybrids.
Table 4. Mid-parent heterosis value analysis of plant gross weight in hybrids.
Hybrids
Codes
Heterosis LevelMid-Parent Heterosis
AEmiddle87.25
AFstrong227.83
AGmiddle72.65
AHweak25.51
BEmiddle84.36
BFmiddle112.74
BGweak28.63
BHweak15.69
CEstrong141.44
CFstrong146.32
CGmiddle105.44
CHmiddle97.09
DEstrong233.98
DFmiddle121.61
DGmiddle62.37
DHweak30.09
Table 5. Screening conditions for different expression patterns.
Table 5. Screening conditions for different expression patterns.
Expression PatternsScreening Conditions
P1a: FPKMF > FPKMM
b: FPKMM < FPKMH < FPKMF
P2a: FPKMF < FPKMM
b: FPKMF < FPKMH < FPKMM
P3a: FPKMF < FPKMM
b: FPKMH = FPKMM
P4a: FPKMF > FPKMM
b: FPKMH = FPKMM
P5a: FPKMF > FPKMM
b: FPKMH = FPKMF
P6a: FPKMF < FPKMM
b: FPKMH = FPKMF
P7a: FPKMF = FPKMM
b: FPKMH < FPKMF
P8a: FPKMF > FPKMM
b: FPKMH < FPKMF
c: FPKMH < FPKMM
P9a: FPKMF < FPKMM
b: FPKMH < FPKMF
c: FPKMH < FPKMM
P10a: FPKMF = FPKMM
b: FPKMH > FPKMF
c: FPKMH > FPKMM
P11a: FPKMF > FPKMM
b: FPKMH > FPKMF
c: FPKMH > FPKMM
P12a: FPKMF < FPKMM
b: FPKMH > FPKMF
c: FPKMH > FPKMM
FPKMF represents the FPKM in female parent; FPKMH represents the FPKM in hybrid; FPKMM represents the FPKM in male parent. “=”means that there was no difference between groups.
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Li, R.; Nie, S.; Zhang, N.; Tian, M.; Zhang, L. Transcriptome Analysis Reveals a Major Gene Expression Pattern and Important Metabolic Pathways in the Control of Heterosis in Chinese Cabbage. Plants 2023, 12, 1195. https://doi.org/10.3390/plants12051195

AMA Style

Li R, Nie S, Zhang N, Tian M, Zhang L. Transcriptome Analysis Reveals a Major Gene Expression Pattern and Important Metabolic Pathways in the Control of Heterosis in Chinese Cabbage. Plants. 2023; 12(5):1195. https://doi.org/10.3390/plants12051195

Chicago/Turabian Style

Li, Ru, Shanshan Nie, Ning Zhang, Min Tian, and Lugang Zhang. 2023. "Transcriptome Analysis Reveals a Major Gene Expression Pattern and Important Metabolic Pathways in the Control of Heterosis in Chinese Cabbage" Plants 12, no. 5: 1195. https://doi.org/10.3390/plants12051195

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop