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TaER Expression Is Associated with Transpiration Efficiency Traits and Yield in Bread Wheat

  • Jiacheng Zheng,

    Affiliation State Key Laboratory of Crop Stress Biology for Arid Areas and College of Agronomy, Northwest A&F University, Yangling, Shaanxi, China

  • Zhiyuan Yang,

    Affiliation State Key Laboratory of Crop Stress Biology for Arid Areas and College of Agronomy, Northwest A&F University, Yangling, Shaanxi, China

  • Pippa J. Madgwick,

    Affiliation Department of Plant Biology and Crop Science, Rothamsted Research, Harpenden, Hertfordshire, United Kingdom

  • Elizabete Carmo-Silva,

    Affiliation Department of Plant Biology and Crop Science, Rothamsted Research, Harpenden, Hertfordshire, United Kingdom

  • Martin A. J. Parry ,

    martin.parry@rothamsted.ac.uk (MP); huyingang@126.com (YGH)

    Affiliation Department of Plant Biology and Crop Science, Rothamsted Research, Harpenden, Hertfordshire, United Kingdom

  • Yin-Gang Hu

    martin.parry@rothamsted.ac.uk (MP); huyingang@126.com (YGH)

    Affiliations State Key Laboratory of Crop Stress Biology for Arid Areas and College of Agronomy, Northwest A&F University, Yangling, Shaanxi, China, Institute of Water Saving Agriculture in Arid Regions of China, Yangling, Shaanxi, China

Abstract

ERECTA encodes a receptor-like kinase and is proposed as a candidate for determining transpiration efficiency of plants. Two genes homologous to ERECTA in Arabidopsis were identified on chromosomes 6 (TaER2) and 7 (TaER1) of bread wheat (Triticum aestivum L.), with copies of each gene on the A, B and D genomes of wheat. Similar expression patterns were observed for TaER1 and TaER2 with relatively higher expression of TaER1 in flag leaves of wheat at heading (Z55) and grain-filling (Z73) stages. Significant variations were found in the expression levels of both TaER1 and TaER2 in the flag leaves at both growth stages among 48 diverse bread wheat varieties. Based on the expression of TaER1 and TaER2, the 48 wheat varieties could be classified into three groups having high (5 varieties), medium (27 varieties) and low (16 varieties) levels of TaER expression. Significant differences were also observed between the three groups varying for TaER expression for several transpiration efficiency (TE)- related traits, including stomatal density (SD), transpiration rate, photosynthetic rate (A), instant water use efficiency (WUEi) and carbon isotope discrimination (CID), and yield traits of biomass production plant-1 (BYPP) and grain yield plant-1 (GYPP). Correlation analysis revealed that the expression of TaER1 and TaER2 at the two growth stages was significantly and negatively associated with SD (P<0.01), transpiration rate (P<0.05) and CID (P<0.01), while significantly and positively correlated with flag leaf area (FLA, P<0.01), A (P<0.05), WUEi (P<0.05), BYPP (P<0.01) and GYPP (P<0.01), with stronger correlations for TaER1 than TaER2 and at grain-filling stage than at heading stage. These combined results suggested that TaER involved in development of transpiration efficiency -related traits and yield in bread wheat, implying a function for TaER in regulating leaf development of bread wheat and contributing to expression of these traits. Moreover, the results indicate that TaER could be exploitable for manipulating important agronomical traits in wheat improvement.

Introduction

In many regions of the world, water deficits impose serious constraint on plant growth and crop productivity. Plant transpiration efficiency (TE) is critical to plant survival and has important implications for both carbon cycling and water balance. Plants have evolved a variety of ways of controlling TE; understanding this control is essential to underpin attempts to improve crop productivity with limited water availability. TE is affected significantly and variably by canopy characteristics and leaf anatomy (i.e. leaf thickness, mesophyll cell size and position, stomatal density) and activity (stomatal conductance). In Arabidopsis thaliana, ERECTA (ER) was demonstrated to regulate the development of leaf architecture, and be a major gene contributing to TE, ER was the major contributor to a locus for carbon isotopic discrimination (Δ) and was negatively related to transpiration efficiency [1]. Thus, understanding the ER genotypic variation of leaf traits will be valuable to in attempts to improve TE, photosynthesis and crop productivity.

ER is associated with numerous functions that affect plant development and TE [2]. The ER gene was first isolated from Arabidopsis thaliana and belongs to the receptor-like kinase family (RLKs) with an N-terminal extracellular domain and C-terminal intracellular kinase that transduces extracellular signals into the cells to control a wide range of physiological responses [3, 4, 5]. The role of ER has been examined by both forward and reverse genetic approaches. Mutations to ER in Arabidopsis conferred decreased TE, but ER complementation led to restoration of TE [1]. In transgenic tomato plants, the expression of a truncated ER protein from Arabidopsis (atΔKinase), increased the number of stomata per leaf, transpiration and photosynthetic rates [6]. Over-expression in Arabidopsis of the PdERECTA gene from Populus nigra L. (35S:PdERECTA) increased photosynthetic rate, whilst decreasing transpiration rate and thereby increasing water use efficiency (WUEi) [7]. Complete function loss of three ER-family genes (ER, ER-LIKE1 (ERL1) and ERL2) in Arabidopsis resulted in the generation of high-density stomatal clusters and a 50–200% increase of the stomatal index [8]. ER appears to play a central role in the epidermal cell differentiation signaling pathway, inhibiting stomatal development and leading to reduced stomatal density and conductance. Therefore, ER is a prime candidate gene for studying the natural diversity of TE and photosynthesis in crops.

Wheat is a major cereal crop in the world, and is cultivated in arid and semi-arid regions of the world, where water deficit and other environmental fluctuations limit its growth, development and yield. Since ER has been theorized to play a major role in plant development and TE for a number of species, this study investigates the multi-gene ER family in bread wheat and tests whether its expression correlates with transpiration efficiency (as evidenced by stomatal density, stomatal conductance, carbon isotope discrimination) and yield. The goal is to establish whether the TaER genes could be used in approaches to improve transpiration efficiency and yield in wheat.

Materials and Methods

Plant material, growth conditions and sampling

Forty-eight bread wheat varieties with diverse carbon isotope discrimination (CID) values were sown in October, 2013 in the experimental field at Northwest A&F University, Yangling, Shaanxi, China (N 34°10’, E 108°10’, 526 m elevation). Details on the 48 varieties are provided in S1 Table; most of them are from the main wheat production areas of China, with two varieties (Drysdale and Quarrion) from Australia, which were characterized with low CID and high TE. Each variety was sown in 3 rows of 2 m length, with 25 cm between rows and 6.7 cm between plants. The wheat was grown without irrigation and dependent on the soil moisture and rainfall. The flag leaves of three plants of each variety were collected at heading (Z55) and grain-filling (Z73) stages [9], respectively. Epidermal samples taken from each leaf were used for monitoring the stomata density, and the remainder of each sample was quickly frozen in liquid nitrogen and stored at -80°C for preparation of total RNA.

Sequences identification and analysis of TaER genes

Two ER sequences from Triticum aestivum (ER2 from chromosome 7B, JQ599261.2 and ER1 from chromosome 7D, JQ599260.2 [10]) were used to search for additional wheat TaER sequences with the BLASTN program on the URGI wheat genome database (http://urgi.versailles.inra.fr/Platform). Homologous sequences of TaER with at least 90% similarity were found on the chromosomes 6 and 7. These sequences were assembled with Geneious 6.0.5 software (Biomatters Ltd., USA), based on ER1, ER2 and sequences from T. urartu and Ae. tauschii (progenitors of the A and D genomes, respectively) [11,12].

The phylogenetic tree of the six cDNA sequences was obtained using the Geneious Tree Builder software, and the amino acid sequences were deduced from the cDNA sequence of TaER genes. The functional domains of TaER were identified by a BLAST survey with the deduced proteins in SMART databank (http://smart.embl-heidelberg.de) and the Conserved Domain Search (http://www.ncbi.nlm.nih.gov/Structure/cdd/wrpsb.cgi).

RNA extraction and cDNA synthesis

Total RNA was extracted according to the manufacturer’s recommendation using RNeasy Plant Mini Kit (QIAGEN, Germany). RNA concentration and purity were tested by Gene Quant Pro spectrophotometry (Amersham Biosciences, USA) and agarose gel electrophoresis. cDNA was synthesized with oligo(dT)12–18 by Super Script III Reverse Transcriptase (Invitrogen, USA) according to the manufacturer’s instructions. cDNA was stored at -20°C and then used for amplification.

Expression analysis of TaER by qRT-PCR

The six cDNA sequences of the two TaER genes were aligned to design specific primers for TaER1 or TaER2, selecting regions with high similarity among the three copies of each gene but with diversity between TaER1 and TaER2. These primers were used to differentiate the specific expression of TaER1 and TaER2 in the flag leaves of the 48 wheat varieties at heading (Z55) and grain-filling (Z73) stages. Three housekeeping genes of TaActin, TaSand and TaCell were used to standardize the background expression in wheat. Details of the primers used for TaER1, TaER2, TaActin, TaSand and TaCell were listed in S2 Table. Each cDNA sample was used for three technical replicates according to the specifications of the SYBR Premix ExTaq Kit (TaKaRa, China) using the real time PCR system ABI 7300 (Applied Bio systems, USA). The reaction system included 10μl 2×SYBR MIX, 0.3μl for each of the forward and reverse primer, 2μl (50ng) template cDNA, ddH2O up to 20μl. The amplification procedure included an initial step of 95°C for 20s, followed by 40 cycles of 95°C for 5s, 61°C for 30s. Data was analyzed using the formula:

Where NE is the relative expression of target gene, E is the primer efficiency, Ct value is collected where the fluorescence is above the threshold value, X indicates values from the target gene, R indicates the geometric mean of values from the three reference genes [13, 14, 15].

Measurement of stomatal density and flag leaf area

Leaf epidermal samples of the 48 wheat varieties were collected at the grain-filling (Z73) stage, from both the adaxial (top) and abaxial (bottom) surface of flag leaves from three plants. The leaf surface was brushed with 1 cm2 of transparent nail polish for about 20 s, and covered with sellotape avoiding veins, if possible. The sellotape was then removed and placed on a microscope slide. Leaf epidermal samples were observed with a Zeiss Axiophot upright light microscope (Zeiss, Germany). Images were recorded using a QImaging Retiga Exi CCD digital camera (QImaging, Canada) and the MetaMorph Microscopy Automation & Image Analysis software (Molecular Devices, USA). An epidermal area free of debris was selected and oriented to allow as many stomata as possible inside the area of the image acquired (viewing area). Three images were collected from each slide. The total number of stomata in each image was counted and the average stomatal density (SD) of each flag leaf was estimated using the formula:

The flag leaves of five plants in each plot were measured to investigate flag leaf area (FLA) at the grain-filling stage (Z73) using the formula: where leaf length and leaf width are the longest and widest dimensions of the flag leaf. [16]

Measurement of stomatal related traits

At heading (Z55) and grain-filling (Z73) stages, the photosynthesis rate (A), stomatal conductance (gs), transpiration rate (E) and instant water use efficiency (WUEi) of the flag leaf were measured with a photosynthesis system (Li-6400, USA). The leaves were wide enough to completely fill the chamber area. Conditions in the leaf chamber were as reference CO2 concentration = 400 μmol mol-1, PPFD = 1800 μmol m-2 s-1, relative humidity 50–70% and block temperature = 20°C. Photosynthetic traits were measured for five plants of each of the 48 wheat varieties between 9:00 and 11:00 am in sunny and windless weather. After the measurements were concluded, samples were taken for TaER expression analyses.

Measurement of CID, BYPP and GYPP

At the Z75 developmental stage, the flag leaves of three plants were collected and dried to constant weight, ground into fine powder and sent for measurement of δ13C using an Isotopic-Ratio Mass Spectrometer (Delta-V advantage, Germany) in the Lab of Stable Isotopes, Chinese Academy of Forestry Sciences (Beijing). An additional standard, Pee Dee Belemnite (PDB), was also measured. The CID value (Δ) was estimated using the formula:

Where δs is the δ13C of the sample, and δa is the δ13C of atmospheric CO2, δa = -8 ‰ [17].

After harvest (Z93), biomass yield per plant (BYPP) and grain yield per plant (GYPP) were also investigated as described by Chen et al. [18], using five replicate plants for each of the 48 wheat varieties.

Data analysis

Analysis of variance was used to assess variation of TaER expression, transpiration efficiency related traits, CID values and yield-related traits among the 48 wheat varieties. Varieties were grouped according to TaER expression following hierarchical cluster analysis of both TaER1 and TaER2 expression at the Z55 and Z73 developmental stages. Correlation analysis was performed between TaER expressions and these measured traits using the Pearson Product Moment Correlation test. All of the analyses used the SPSS Statistics Software version 19.0 (IBM SPSS Statistics, USA).

Results

Characterization of TaER genes in wheat

In previous work, the sequences of ER2 (TaER_B1) and ER1 (TaER_D1) were isolated by homology-based cloning with ER family genes, and localized on chromosomes 7B and 7D of bread wheat by using the nullisomic-tetrasomic lines of Chinese Spring [10]. A BLAST search using those cDNA sequences in the URGI databank revealed homologous sequences of TaER on the short arm of chromosome 7 and the long arm of chromosome 6. Copies of each gene, corresponding to the three bread wheat genomes (A, B and D,) were identified. TaER1 was located on the short arm of chromosome 7 in all three genomes and the genes were named TaER1_AS, TaER1_BS (equivalent to TaER_B1) and TaER1_DS (equivalent to TaER_D1). TaER2 was located on the long arm of chromosome 6 in all three genomes and the genes were named TaER2_AL, TaER2_BL and TaER2_DL. Alignment between TaER1 and TaER2 showed 75.4% identical nucleotides, while the three copies of TaER1 and TaER2 showed 94.4% and 95.9% identical nucleotides, respectively. Both TaER1 and TaER2 contained 27 exons and 26 introns, cluster analysis indicated that the copies of TaER genes were divided into two groups (corresponding to each of TaER1 and TaER2), and in each case the gene copies encoded by genome A were more similar to those encoded by genome D than to those encoded by genome B (Fig 1).

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Fig 1. Phylogenetic tree of TaER genes family.

Two genes (TaER1 and TaER2) are encoded by each of the three genomes A, B and D (short arm of chromosome 7 for TaER1 and long arm of chromosome 6 for TaER2). Six copies of cDNA sequences of TaER were aligned, and phylogenetic links were obtained based on their homology. Numbers relate to the phylogenetic distance between each of the TaER gene copies.

https://doi.org/10.1371/journal.pone.0128415.g001

Alignment of the deduced amino acid sequences of TaER revealed a predicted extracellular domain consisting of leucine-rich repeat (LRR) elements, a Serine/Threonine (Ser/Thr) protein kinase domain at the C-terminal, and a transmembrane region from amino acids 579 to 589, which shared the same conserved domains as other ER family proteins. Alignment of the predicted sequences of TaER copies showed the high homology in the kinase region but the variable extracellular and transmembrane regions. In TaER1, there were 93% identical amino acids across genomes with identical amino acids in the kinase region; in TaER2, there were 93.2% identical amino acids across genomes with 18 amino acids varied in the kinase region. The Ser/Thr kinase region showed 268 highly conserved residues and the 11 typical sub-domains were recognized by homology to other ER family proteins (Fig 2).

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Fig 2. Sequence alignment of TaER Ser/Thr kinase domain.

Red stars indicate different amino acid residues between chromosomes 6 and 7. The lack of black background indicates different amino acids among the genomes A, B and D. Roman numerals on top of sequences indicate the 11 subdomains of TaER protein kinases.

https://doi.org/10.1371/journal.pone.0128415.g002

Expression of TaER1 and TaER2 in flag leaves of 48 wheat varieties

The expression levels of TaER1 and TaER2 in wheat flag leaves were higher at heading (Z55) stage than at grain-filling (Z73) stage, with similar expression patterns in both TaER1 and TaER2 at the two stages (Fig 3, S3 Table). Significant variations were observed on the expression levels of TaER1 and TaER2 in the flag leaves at both stages among the 48 diverse bread wheat varieties (Fig 3, S3 Table). Cluster analysis on the expression levels of two TaER genes, classified these varieties into three groups as: 5 varieties with high TaER expression in group I, 27 varieties with intermediate TaER expression in group II and 16 varieties with low TaER expression in group III (Fig 4, S3 Table). The distribution of genotypes per group implied that there were relatively few genotypes with higher TaER expressions, but most genotypes with intermediate TaER expression across these wheat varieties.

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Fig 3. Relative expression of TaER1 and TaER2 in flag leaves of 48 wheat genotypes at heading (Z55) and grain-filling (Z73) stage.

Group I: high TaER expression; Group II: intermediate TaER expression; Group III: low TaER expression. Uppercase letters represent significant differences among the three groups (P<0.01). The reference genes were TaActin, TaCell and TaSand. Values are presented with the mean ± SD calculated from the formula [13, 14, 15]:

https://doi.org/10.1371/journal.pone.0128415.g003

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Fig 4. Cluster analysis of TaER expression in the 48 wheat genotypes (P<0.01).

Group I: high TaER expression; Group II: intermediate TaER expression; Group III: low TaER expression. The numbers of Y axis present the code of the diverse wheat varieties (S1 Table), X axis presents the square of euclidean distance.

https://doi.org/10.1371/journal.pone.0128415.g004

At both developmental stages, the expression levels of TaER1 and TaER2 were significantly different (P< 0.01) among the three groups (Fig 3, Table 1). The expression of both genes was about 30–40% lower in group III compared to group I at both developmental stages. In each group, significant differences (P< 0.05) were also detected among different wheat varieties (S3 Table). The wheat variety Drysdale (No.42) showed the highest expression level of both TaER genes.

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Table 1. TaER relative expression in the three groups of 48 wheat varieties

https://doi.org/10.1371/journal.pone.0128415.t001

Correlation between TaER expression and TE related traits

The stomatal density of flag leaf (SD) and flag leaf area (FLA) were significantly different among the 48 wheat varieties at the grain-filling stage (Z73) (S5 Table). SD and FLA were also significantly different (P< 0.01) among the three groups (Fig 5A, Table 2). SD was the lowest and FLA was the highest in the group of varieties with high TaER expression (group I), within this group, the varieties Fengchan3 (No. 36) and Shijiazhuang8 (No. 3) had the lowest SD and the highest FLA. At both heading (Z55) and grain-filling (Z73) stages, negative linear correlations were found between TaER expression and SD; whereas positive linear correlations were detected between TaER expression and FLA (Fig 5B, Table 3).

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Fig 5. Correlation between TaER expression with SD of flag leaf and FLA.

A: Stomatal density (SD) of flag leaf and flag leaf area (FLA) of the 48 wheat genotypes; B: Regression analysis between TaER expression with SD of flag leaf and FLA. Group I: high TaER expression; Group II: intermediate TaER expression; Group III: low TaER expression. Uppercase letters represent significant differences among the three groups (P< 0.01).

https://doi.org/10.1371/journal.pone.0128415.g005

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Table 2. Transpiration efficiency related traits and yield in the three groups of 48 wheat varieties

https://doi.org/10.1371/journal.pone.0128415.t002

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Table 3. Correlation coefficient between TaER expressions with transpiration efficiency related traits and yield.

https://doi.org/10.1371/journal.pone.0128415.t003

Variation in photosynthesis rate (A), stomatal conductance (gs), transpiration rate (E) and instant water use efficiency (WUEi) among the 48 wheat varieties (S5 Table) at grain-filling stage (Z73) was closely correlated with TaER expression levels in the corresponding groups (Fig 6A, Table 2). Photosynthesis rate was higher, transpiration rate was lower and WUEi was higher in wheat varieties with high expression of TaER. The varieties Drysdale (No. 42) and Fengchan3 (No. 36) displayed the highest A and WUEi, and the variety Shijiazhuang8 (No. 3) had the lowest E.

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Fig 6. Correlation between TaER expression and transpiration efficiency related traits.

A: Photosynthetic rate (A), transpiration rate (E) and instant water use efficiency (WUEi) of the 48 wheat genotypes; B: Regression analysis between TaER expression with A, E and WUEi. Group I: high TaER expression; Group II: intermediate TaER expression; Group III: low TaER expression. Upper and lowercase letters represent significant differences among the three groups (uppercase P< 0.01, lowercase P< 0.05).

https://doi.org/10.1371/journal.pone.0128415.g006

Regression analyses confirmed that TaER expression was significantly and positively correlated with A and WUEi, while significantly and negatively correlated with E (Fig 6B, Table 3), but was not significantly correlated with gs at heading (Z55) and grain-filling (Z73) stages. The significance of these correlations was stronger for TaER1 than for TaER2.

Correlation between TaER expression and CID, BYPP or GYPP

The carbon isotope discrimination (CID) of flag leaf was determined at grain filling (Z73) stage, and the biomass yield plant-1 (BYPP) and grain yield plant-1 (GYPP) were determined after harvest (Z93) (S6 Table). CID, BYPP and GYPP were significantly different (P< 0.05) between groups of wheat genotypes characterized by different levels of TaER expression (Fig 7A, Table 2). In general, cultivars with high TaER expression had low CID and high BYPP and GYPP, with group I varieties Drysdale (No. 42) and Fengchan3 (No. 36) showing the lowest CID and the highest BYPP. Correlation analysis indicated that CID was negatively correlated with TaER expression, but BYPP and GYPP were positively correlated (Fig 7B, Table 3). At grain-filling (Z73) stage, TaER1 expression was more strongly correlated with CID, BYPP and GYPP than TaER2 (Table 3).

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Fig 7. Correlation between TaER expression with CID, BYPP and GYPP.

A: Flag leaf carbon isotope discrimination (CID), biomass yield per plant (BYPP) and grain yield per plant (GYPP) of the 48 wheat genotypes; B: Regression analysis between TaER expression with CID, BYPP and GYPP. Group I: high TaER expression; Group II: intermediate TaER expression; Group III: low TaER expression. Upper and lowercase letters represent significant differences among the three groups (uppercase P< 0.01, lowercase P< 0.05).

https://doi.org/10.1371/journal.pone.0128415.g007

Correlation analysis among TE- and yield- related traits

Correlation analysis between the measured traits was performed in the 48 wheat varieties (Table 4). The results showed that there were significant correlations (P< 0.05) among most traits, but gs did not correlate with SD, FLA or CID. Similarly, not all traits correlated with harvest index (HI), but significant correlations with HI were observed for A, gs and GYPP. GYPP was positively correlated with FLA, A, gs, WUEi, BYPP and HI, but negatively correlated with SD, E and CID.

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Table 4. Correlation coefficient between transpiration efficiency related traits and yield.

https://doi.org/10.1371/journal.pone.0128415.t004

Discussion

ER has multiple effects on plant development, growth and physiology. Gene Ontology analysis revealed several pathways potentially mediated by ER [1]. Although most functional analyses have been performed in Arabidopsis, the presence of ER and ER-Like members in several crop species suggests that it may provide a novel breeding target. This study provided a detailed characterization of TaER genes in bread wheat and showed that a correlation exists between TaER expression and transpiration efficiency traits related to development and productivity of wheat.

TaER genes in wheat

Six copies of TaER, homologues of the well-characterized ERECTA (ER) genes in Arabidopsis, were identified in the genome of bread wheat (using data currently available in the public domain). The TaER1 and TaER2 genes were located on chromosomes (6 and 7) and occurred in the three wheat genomes (A, B and D). The six copies had similar predicted amino acid sequences, reflecting the relatively conserved evolutionary history of the ER family in bread wheat [2]. Cluster analysis suggested that sequences encoded by genomes A and D are more closely related than genome B. These results would suggest that the three copies maybe not be complementary, but likely have parallel functions. This hypothesis could be tested in future experiments by silencing the individual TaER genes.

TaER expression in wheat

Variations were observed in the expression levels of TaER1 and TaER2 among the 48 wheat genotypes. TaER1 and TaER2 had conserved amino acid sequences and probably overlapping functions. The 48 wheat varieties were clustered into three groups as high, moderate and low of TaER expression levels; these significant variations may regulate the change of agronomical traits during the wheat development. Most studies on the expression of ERECTA have been carried out in mutants of Arabidopsis and these did not provide evidence on the expressional diversity of this gene in a panel of germplasm. In this study, the intraspecific diversity in the expression of TaER genes has been shown in flag leaves of 48 wheat genotypes at two growth stages, which are sufficient to provide a potentially useful estimate of intra-specific phenotypic variability. This finding is in agreement with results for anatomical and physiological changes following overexpression of PdERECTA in Arabidopsis [7]. Moreover, as the total expression of the three copies in A, B and D genome of TaER1 and TaER2 were evaluated in this study, to clarify whether there were variations among the three copies, the expression patterns of the three copies in A, B and D genome for TaER1 and TaER2 were further evaluated in four genotypes with two for high expression and two for low expression of TaER1 and TaER2, which showed highly similar expression patterns with that of TaER1 and TaER2 common expression, although there were variations among the three copies, especially for that of TaER1 at heading stage (S4 Table), this suggested that the total expression of TaER1 and TaER2 could be used to evaluate the diversity of TaER expression in different wheat varieties, and the variation seen within the 48 genotypes may be due to TaER expression diversity and that TaER is a critical factor in the wheat leaf development.

Effect of TaER on leaf anatomy

Compelling evidence already suggests that ER affects leaf development and stomata formation [19]. Here, SD and FLA varied greatly among the high, medium and low TaER expression groups within the 48 wheat genotypes, the expression of both TaER1 and TaER2 were negatively and positively correlated with SD and FLA, respectively. Since leaf anatomy is a primary determinant of water relations between the plant and the environment [20] and TaER expression is significantly correlated with leaf anatomy of SD and FLA traits, so we predict TaER similarly regulates the development of epidermal cells and affects stomatal density in wheat leaves. This could be investigated further in transgenic wheat plants in which TaER is either overexpressed or silenced.

Correlation of TaER expression with flag leaf traits was stronger at grain-filling (Z73) stage than that at heading (Z55) stage. It is possible that the development of leaf anatomy at heading stage is regulated by a combination of TaER in addition to other factors, such as TMM (TOO MANY MOUTHS) and EPF (EPIDERMAL PATTERNING FACTOR) [20]. The stronger correlation coefficients found for TaER1 than TaER2 indicates that the former has a stronger effect on the development of wheat leaf anatomy.

Association of TaER expression with transpiration efficiency related traits

The variation in SD and FLA probably led to the diversity in transpiration efficiency related traits seen among the 48 genotypes. In this study, TaER expression was positively correlated with A and WUEi, but negatively correlated with E. This is in agreement with previous studies in Arabidopsis. The link between TaER expression and photosynthesis rate offers another strategic target for breeding or biotechnological approaches to increase photosynthesis in wheat. However, there was only a weak correlation between TaER expression and gs. A possible reason might be that gs is not only determined by genetic variation but is also strongly influenced by environmental factors [21]. These results are consistent with TaER expression indirectly controlling photosynthesis.

As with SD and FLA, the correlation coefficients between TaER expression and transpiration efficiency related traits were higher at grain-filling (Z73) stage than that at heading (Z55) stage. At heading stage, the wheat organs were under rapid change, hence measured data were more variable. At grain-filling (Z73) stage, almost all of the vegetative organs were formed, measured data were less variable and correlation coefficients were higher. Moreover, TaER1 expression was more strongly correlated with the diverse transpiration efficiency related traits than TaER2. These results support that TaER1 has a stronger effect on the regulation of wheat development than TaER2. Silencing studies within the TaER family would provide more evidence for the functional effects of TaER1 and TaER2.

Regulation of transpiration efficiency related traits and yield by TaER

CID provides a reliable integrated measurement of A, E and WUE, and is proposed as an indicator of transpiration efficiency in the long term, avoiding issues associated with instant measurements made under varying environmental conditions [21]. AtER was suggested as the major gene contributing 20–60% of CID variation in Arabidopsis. Masle et al. [1] showed that the gene product of ER influences significantly CID and WUE in Arabidopsis, with lower transcript levels relating to higher CID and lower WUE. Here, it was also found that genotypes with higher TaER expression levels had lower CID and higher WUEi of flag leaf in bread wheat. Correlation analyses also suggested that TaER expression was positively correlated with BYPP and GYPP. It is proposed that TaER expression could be used as a rapid and reliable criterion for selecting superior genotypes for wheat breeding.

Conclusions

Anatomical and physiological traits determining transpiration efficiency, such as stomatal density, photosynthetic and transpiration rates, carbon isotope discrimination and yield traits were measured to evaluate the correlation between TaER expression with transpiration efficiency related traits and yield in 48 wheat varieties. TaER expression was associated with higher flag leaf area (FLA), photosynthetic rate (A) and WUEi, lower stomatal density (SD), transpiration rate (E) and CID, higher biomass yield per plant (BYPP) and grain yield per plant (GYPP). In addition, TaER1 had a stronger effect at grain-filling (Z73) stage on the development of bread wheat than TaER2. The functions of the two genes could be further investigated by independent silencing of the TaER genes.

Supporting Information

S1 Table. Name and planting region of the 48 wheat varieties.

https://doi.org/10.1371/journal.pone.0128415.s001

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S2 Table. Primer sequences used for expression analysis of TaER1 and TaER2.

https://doi.org/10.1371/journal.pone.0128415.s002

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S3 Table. TaER relative expression in 48 wheat varieties.

https://doi.org/10.1371/journal.pone.0128415.s003

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S4 Table. Relative expression of three homologous copies in the A, B and D genome of TaER1 and TaER2 in 4 wheat varieties.

https://doi.org/10.1371/journal.pone.0128415.s004

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S5 Table. Transpiration efficiency related traits of 48 wheat varieties at grain- filling (Z73) stage.

https://doi.org/10.1371/journal.pone.0128415.s005

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S6 Table. Carbon isotope discrimination and yield-related traits of the 48 wheat varieties.

https://doi.org/10.1371/journal.pone.0128415.s006

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Acknowledgments

This work was supported by the sub-project of the 863 Program (2013AA102902) of the Ministry of Science and Technology, and the China 111 Project (B12007), P. R. China. Jiacheng Zheng was supported by a Joint PhD scholarship of the Chinese Scholarship Council. Pippa Madgwick, Elizabete Carmo-Silva and Martin Parry acknowledge financial support from the BBSRC 20:20 Wheat Institute Strategic Programme (BBSRC BB/J/00426X/1). We thank Andy Phillips for the assembled sequence of TaER, Till Pellny for advice on the reference genes (TaActin, TaSand, TaCell) and qRT-PCR techniques.

Author Contributions

Conceived and designed the experiments: MAJP YGH. Performed the experiments: JCZ ZYY PJM ECS. Analyzed the data: JCZ YGH. Contributed reagents/materials/analysis tools: JCZ ZYY. Wrote the paper: JCZ.

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