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Shoot chloride exclusion and salt tolerance in grapevine is associated with differential ion transporter expression in roots

Abstract

Background

Salt tolerance in grapevine is associated with chloride (Cl−) exclusion from shoots; the rate-limiting step being the passage of Cl− between the root symplast and xylem apoplast. Despite an understanding of the physiological mechanism of Cl− exclusion in grapevine, the molecular identity of membrane proteins that control this process have remained elusive. To elucidate candidate genes likely to control Cl− exclusion, we compared the root transcriptomes of three Vitis spp. with contrasting shoot Cl− exclusion capacities using a custom microarray.

Results

When challenged with 50 MM Cl−, transcriptional changes of genotypes 140 Ruggeri (shoot Cl− excluding rootstock), K51-40 (shoot Cl− including rootstock) and Cabernet Sauvignon (intermediate shoot Cl− excluder) differed. The magnitude of salt-induced transcriptional changes in roots correlated with the amount of Cl− accumulated in shoots. Abiotic-stress responsive transcripts (e.g. heat shock proteins) were induced in 140 Ruggeri, respiratory transcripts were repressed in Cabernet Sauvignon, and the expression of hypersensitive response and ROS scavenging transcripts was altered in K51-40. Despite these differences, no obvious Cl− transporters were identified. However, under control conditions where differences in shoot Cl− exclusion between rootstocks were still significant, genes encoding putative ion channels SLAH3, ALMT1 and putative kinases SnRK2.6 and CPKs were differentially expressed between rootstocks, as were members of the NRT1 (NAXT1 and NRT1.4), and CLC families.

Conclusions

These results suggest that transcriptional events contributing to the Cl− exclusion mechanism in grapevine are not stress-inducible, but constitutively different between contrasting varieties. We have identified individual genes from large families known to have members with roles in anion transport in other plants, as likely candidates for controlling anion homeostasis and Cl− exclusion in Vitis species. We propose these genes as priority candidates for functional characterisation to determine their role in chloride transport in grapevine and other plants.

Background

Grapevine (Vitis vinifera L.), used for wine, table grape and dried grape production, is an economically important crop plant that is moderately sensitive to salinity [1]. Grapevine salt stress symptoms include reduced stomatal conductance, reduced photosynthesis [2],[3] and leaf burn [4], which are generally associated with increases in shoot chloride (Cl−) rather than sodium (Na+) concentrations [3]. Reduced vigour [5] and reduced yield [6] are further effects of salt stress, with a strong positive correlation between the two [5]. Certain non-vinifera Vitis spp. rootstocks are used commercially to constrain shoot Cl− accumulation and confer improved salt tolerance to grafted V. vinifera scions [7],[8]. Despite a detailed understanding of the physiology of shoot Cl− accumulation in grapevine and other plants, the genes responsible for this process across the plant kingdom are not known [9]. This is in contrast to the control of long-distance Na+ transport in plants where numerous reports have targeted known genes in order to improve the salt tolerance of plants, particularly cereals e.g. [10]-[13]. Due to extensive natural variation in the shoot Cl− exclusion capacity of Vitis spp. [14],[15] grapevine represents an ideal model to identify candidate genes involved in controlling shoot Cl− exclusion.

Solutes travel from the roots to the shoot in the xylem. Physiological studies using radiotracers and fluorescent dyes in grapevine have indicated that the transfer of solutes to the xylem apoplast involves a symplastic step, and that rootstocks confer Cl− exclusion to a grafted scion by reducing net xylem loading of Cl−[15],[16]. Patch clamp studies of xylem parenchyma protoplasts identified the passive quickly activating anion conductance (X-QUAC) as capable of catalysing the majority of Cl− flux to the xylem of barley roots [17]. Cl− entry to the root xylem is down-regulated by abscisic acid (ABA), as demonstrated by 36Cl− fluxes in excised roots and whole seedlings of barley [18], and reduces X-QUAC of maize xylem parenchyma cells [19]. Given that ABA rises in concentration in plant roots exposed to salt stress [20], anion transporters expressed in cells that surround the root xylem, especially those that change activity when plants are salt treated are likely to be good targets to explore for improving our understanding how shoot Cl− exclusion is conferred.

There have been a limited number of studies that have provided insights to the genetic elements that control long-distance transport of Cl−. Like grapevine, Citrus spp. are moderately salt-sensitive woody perennial crops frequently grown on salt-excluding rootstocks. Brumos et al.[21] compared the partial leaf transcriptomes of Citrus rootstocks Cleopatra mandarin (a good shoot Cl− excluder) and Carrizo citrange (a poor shoot Cl− excluder) exposed to NaCl and KCl stress using a cDNA microarray covering 6,875 putative unigenes. They concluded that a nitrate (NO) transporter with homology to GmNRT1-2 from soybean was differentially expressed between rootstocks and therefore was deemed a candidate gene for influencing Cl− movement. Using the same germplasm, Brumos et al.[22] used quantitative PCR to measure root expression of three candidate genes for the control of long-distance Cl− transport derived from the literature. Candidates included a homolog of a cation chloride co-transporter (CcCCC1), CcICln1 (a putative regulator of chloride channel conductance) and CcSLAH1, a homolog of the plant guard cell slow anion channels (SLAC) [22]. Of these genes SLAH1 was more highly expressed in the chloride accumulating rootstock under 90 MM NaCl stress. In guard cells, SLAC chloride channels meditate ABA induced passive Cl− efflux causing stomatal closure [23],[24]. SLAC homologs (SLAH) in plant roots are therefore particularly interesting candidates for xylem loading of Cl−, but their role in roots remains uncharacterised. CCC was proposed to regulate retrieval of Na+, K+ and Cl− from the Arabidopsis root xylem but was not regulated transcriptionally by salt [22],[25]. Furthermore, questions remain as to how CCC can act directly in xylem loading on the plasma membrane due to unfavourable electrochemical gradients [9]. ICln1 homologs from rat and Xenopus laevis elicit Cl− currents in voltage clamp experiments [26]. In Citrus, ICln1 exhibited strong repression in the Cl− excluder after application of 4.5 MM Cl−[22]. However, ICln proteins from plants remain uncharacterised. Whilst these genes are good candidates for regulating Cl− transport in Citrus, analyses of entire root transcriptomes is likely to provide a more complete list of factors that mediate long-distance transport of Cl−.

Gene expression studies of V. vinifera have been greatly aided by the draft genome sequence of Pinot Noir inbred line PN40024 [27],[28]. These studies have concentrated on berry development [29],[30], leaf responses to heat stress [31] and to UV radiation [32]. The most comprehensive grapevine expression study to date compared the transcriptome of 54 samples representing different vegetative and reproductive organs at various developmental stages [33]. Although abiotic stress was not analysed in this study, grapevine roots were found to express more organ-specific transcripts than leaves [33]. This is consistent with findings from Tillett et al.,[34] who compared large-scale EST libraries from roots and shoots of Cabernet Sauvignon and identified 135 root enriched transcripts. These findings indicate that shoot expression analyses of grapevine, while useful, might not give a complete picture of root gene expression patterns, and therefore studies into root responses to abiotic stresses are required. Two microarray studies have examined the effect of salinity stress on transcript levels of Cabernet Sauvignon shoot tips [35],[36]. Increased levels of a transcript encoding a putative NRT were observed, while decreased expression of a chloride channel (CLC) with sequence similarity to Arabidopsis AtCLC-d was detected by two probe sets, but this was not statistically significant [36].

We performed a comparative microarray of mRNAs derived from roots of salt stressed and control Cabernet Sauvignon, 140 Ruggeri and K51-40 rooted leaves as an unbiased method to identify candidates for long-distance transport of Cl−. We aimed to test the hypothesis that the differences in Cl− exclusion between rootstocks 140 Ruggeri and K51-40 could be due to expression differences in genes that encode membrane transport proteins which facilitate root-to-shoot Cl− translocation. The identification of genes that prevent excessive shoot Cl− accumulation in grapevine will facilitate continued rootstock development by providing genetic markers for rootstock breeding programs. Furthermore, this study will aid a greater understanding of plant Cl− homeostasis by using grapevine as a model species to elucidate genes that underpin the Cl− exclusion trait in plants in general.

Methods

Preparation of rooted-leaves

Grapevine, being a woody perennial crop, is challenging to use in controlled conditions experiments, especially where large amounts of material and multiple replicates are required. We therefore used the method of Schachtman and Thomas [37] where leaves are excised from a parent plant and grown as rooted-leaves. This is consistent with previous studies of Cl− accumulation in vines, where it was demonstrated that root and leaf phenotypes acquired with this system are similar to field observations [15],[16]. Rooted leaves were established from pot-grown grapevines of K51-40 (Vitis champinii X Vitis riparia), 140 Ruggeri (Vitis berlandieri X Vitis rupestris) and Cabernet Sauvignon (Vits vinifera) established from cuttings and maintained in a glasshouse as described previously [15]. After approximately 3 weeks, rooted-leaves were transferred to aerated hydroponic tanks containing modified Hoagland Solution with the following nutrients (in mM) for a two-week pre-treatment period: KNO3, 1.0; Ca(NO3)2 · 4H2O, 1.0; MgSO4 · 7H2O, 0.4; KH2PO4, 0.2; H3BO3, 4.6 × 10−2; MnCl2 · 4H2O, 9.1 × 10−3; ZnSO4 · 7H2O, 7.6 × 10-4; CuSO4 · 5H2O, 3.2 × 10-4; Na2MoO4 · 2H2O, 2.4 × 10-4; EDTA-Fe-Na, 7.1 × 10-2 (pH 6.5) [15].

Response of intact rooted-leaves to short term salinity

Rooted-leaves of K51-40, 140 Ruggeri and Cabernet Sauvignon were subjected to nutrient solution only (control) or to 50 MM Cl− (Na+: Ca2+: Mg2+ = 6:1:1) in nutrient solution for 4 days. At harvest, the rooted-leaves of each genotype were washed in de-ionised water, blotted dry with paper towel, weighed, then separated into lamina, petiole and roots. Fresh weights of all plant parts were also obtained. Samples were divided equally for RNA extraction and ion composition analysis. Samples for RNA extraction were snap frozen in liquid nitrogen and stored at minus 80°C. Root, petiole and lamina samples for ion analysis were weighed before being dried in an oven at 60°C and retained for Cl− analysis.

For stele and cortex expression studies roots were salt-treated and harvested as described above, lateral roots were removed from main roots and then cortex was stripped from stele of the main root using fine tweezers. Three biological replicates were harvested, each consisting of dissected tissue from three rooted-leaves. Tissue samples were immediately frozen in liquid nitrogen and stored at minus 80°C for RNA extraction.

Ion analyses

Laminae, petiole and root samples were dried at 60°C for at least 72 h and ground to a fine powder using a mortar and pestle. Cl− concentration was measured by silver ion titration with a chloridometer (Model 442-5150, Buchler Instruments, Lenexa, Kansas, USA) from extracts prepared by digesting 20-100 mg dry samples in 4 ML of acid solution containing 10% (v/v) acetic acid and 0.1 M nitric acid overnight before analysis.

RNA extraction

Frozen root tissues were ground to a fine powder in liquid nitrogen using a mortar and pestle. RNA was extracted using the Spectrum Plant Total RNA Kit (Sigma, St. Louis, Missouri, USA) following the manufacturer's protocol. RNA was DNase I treated with Turbo DNA-free (Life Technologies, Carlsbad, California, USA) for 1 hour at 37°C to remove contaminating genomic DNA. RNA was precipitated at minus 80°C overnight in 5 volumes of 100% ethanol (v/v) and 1/10 volumes of 3 M NaOAC. After ethanol precipitation, RNA was resuspended in nuclease free water and analysed on a NanoDrop 1000 spectrophotometer (Thermo Fisher Scientific, Waltham, Massachusetts, USA). Only RNA samples with 260/280 and 260/230 absorbance ratios greater than 1.8 were used. RNA integrity was screened on a Bioanalyzer 2100 (Agilent Technologies, Santa Clara, California, USA) and only RNA samples with an RNA integrity number (RIN) above 8.5 were used.

Microarray chip design, labelling and hybridisation

Custom 8x60K gene expression microarrays were designed using eArray (Release 7.6) (Agilent Technologies). Oligonucleotide probes (60-mers) were designed against 26,346 annotated V. vinifera transcripts from the 12x Genoscope build available from http://www.genoscope.cns.fr/externe/GenomeBrowser/Vitis/. The Agilent 60-mer probe format is considered more tolerant to sequence mismatches than 25-mers, and more suitable for analysis of polymorphic DNA sequences [38]. Also, the use of a custom Agilent expression array enabled us to print a subset of probes for 90 putative anion transporters multiple times on the array (Additional file 1). This multi-probe approach increases the robustness of the expression values obtained when the probes for these genes are averaged. Probes that detect differential gene expression many times show a greater probability of genuine differential expression when the B-statistic probability (log-odds) of differential gene expression is calculated. The higher the B-statistic, the greater the chance that the gene is differentially expressed (B-statistic = 0 represents 50:50 chance of differential gene expression).

Twenty-two microarrays were used which consisted of 4 biological replicates for Cabernet Sauvignon (±50 MM Cl−), 4 biological replicates of K51-40 (±50 MM Cl−) and 3 biological replicates of 140 Ruggeri (±50 MM Cl−). Each biological replicate consisted of roots from 4 rooted-leaves pooled together. Single colour labelling, hybridisations and image analysis were performed at the Ramaciotti Centre for Gene Function Analysis (University of New South Wales, Australia).

Functional annotation of genes

Gene functional annotation, which included InterPro descriptions, Gene Ontology terms and Arabidopsis orthologs, was obtained from BioMart at EnsemblPlants (plants.ensembl.org/biomart/martview/). Additional functional annotation was gathered from Grimplet et al.[39], and this annotation was used for the tables and figures presented in this manuscript.

Microarray data analysis

Scanned images were analysed with Feature Extraction Software 10.7.3 (Agilent Technologies, Santa Clara, California, USA) and the Cy3 median signal intensities for each spot on the arrays were imported into R for further processing. The data was log(2) transformed and quantile normalized. Since the microarray hybridizations were performed at different dates we observed batch effects that we corrected for with the ComBat package [40]. The quality of the microarray hybridisation and reproducibility amongst biological replicates was validated using arrayQualityMetrics version 3.12.0 [41]. Differentially expressed genes were identified using the Linear Model for Microarray Data (LIMMA) package [42], and the Benjamini and Hochberg correction method was applied to account for multiple testing [43]. To filter the probes, the probe sequences were blasted against the predicted cDNAs of the 12xV1 genome sequence at EnsemblPlants. Probes with an e-value ≥1×10-10 and probes that showed no blast hit were excluded from the initial analyses. Gene expression changes were considered significant when a threshold fold change of greater than or equal to 1.41 was reached (log(2) FC ±0.5) and a false discovery rate (FDR) corrected probability of P ≤0.05. The raw data for the microarray are available at the Gene Expression Omnibus database (http://www.ncbi.nlm.nih.gov/geo/) under accession number GSE57770.

Hierarchical clustering and co-expression analysis was performed using Genesis 1.7.6 [44] using tab delimited text files of the log(2) fold change values of gene expression of averaged probes. Transcripts and experiments were clustered using the average linkage method. Singular enrichment analysis was performed using Agrigo [45]. At the time of writing, the Agrigo server is incompatible with 12xV1 V. vinifera gene IDs. Therefore transcripts that were differentially expressed (identified after filtering) were entered into the Agrigo server using the 12xV0 transcript ID's (Genoscope). The hypergeometric method with Hochberg (FDR) multi-test adjustment was used to identify statistically significant GO terms (P <0.05).

Phylogenetic analyses

V. vinifera protein sequences of interest were obtained from EnsemblPlants using the 12xV1 gene IDs. V. vinifera amino acid sequences were used as a query in a protein-protein BLAST (blastp) at the National Centre for Biotechnology Information (NCBI) against non-redundant protein sequences limited to Arabidopsis thaliana (taxid: 3702). Arabidopsis sequences with the best total score were reciprocally blasted at EnsemblPlants against the Vitis vinifera peptide database. Arabidopsis and grapevine sequences that were obtained using this approach were aligned using Clustal W2 [46]. Phylogenetic trees were generated with Geneious 6.1.2 (Biomatters) using the neighbour-joining method and the Jukes-Cantor genetic distance model. A consensus tree was generated by re-sampling 1000 times using the bootstrap method. Branch lengths are proportional to the amount of divergence between nodes in units of substitutions per site. Gene identifiers for the protein sequences used are shown in Additional file 2, while the multiple sequence alignment is shown in Additional file 3.

Quantitative real-time PCR (qRT-PCR)

One microgram of total RNA was reverse transcribed in a 20 μL reaction using iScript cDNA Synthesis Kit (Bio-Rad, Hercules, California, USA). The procedure was modified from the manufacturer's to include an initial RNA denaturation step of 65°C for 5 Minutes then incubation on ice for 1 Minute, and cDNA synthesis step of 42°C for 1 hour. cDNA was diluted 1 in 5. Two microliters of cDNA was used as a template for PCR and qRT-PCR reactions. PCR targets were first amplified from cDNA using KAPA taq (KAPA Biosystems, Woburn, Massachusetts, USA) following manufacturer's procedures. Fragments of the correct size and target were confirmed by agarose gel and sequencing. PCR fragments, or linearised plasmid containing the PCR fragment, were serially diluted and used as a template for qRT-PCR in duplicate. Standard curves were generated using iCycler iQ optical system software version 3.1 (Bio-Rad), which also calculates the reaction efficiency of each primer pair using the formula E = 10-1/slope. qRT-PCR was performed on a Bio-Rad iCycler. Reactions consisted of 250 nM forward and reverse primer, 1x KAPA SYBR FAST qPCR Master Mix (KAPA Biosystems), and 2 μL of diluted cDNA. Reactions were performed in triplicate following a three-step protocol consisting of 40°Cycles of the following: 95°C 15 sec, 56°C 20 sec, 72°C 10 sec (plus data acquisition). Melt curve analysis was performed by heating PCR products from 52°C to 92°C for 20 seconds increasing at 0.5°C per cycle with continuous fluorescence detection. Relative expression ratios were calculated using the primer pair efficiency and the formula described by Pfaffl [47], with the geometric mean of VvActin1, VvUbiquitin-L40 and VvElongation-factor-1-α used as the reference for normalisation [48]. Normalised expression values were transformed to log(2) values for comparison with microarray data. Primers used for qRT-PCR are listed in Additional file 4. Primers were designed using Primer3 [49]. Primers were designed to amplify single products from the target gene between 140 and 250 bp with an optimal GC content of 50% and, where possible, designed to span an intron to ensure that cDNA targets were amplified. Before their use, primers were screened for potential non-selective amplification using PrimerBLAST at NCBI against the Refseq RNA database limited to Vitis species.

Results

Salt treatment, grapevine growth and ion accumulation

Following 4-days of 50 MM Cl− treatment, roots of 140 Ruggeri retained significantly more Cl− compared to those of Cabernet Sauvignon and K51-40 (Figure 1A). Conversely, Cabernet Sauvignon and K51-40 petioles and laminae accumulated significantly more Cl− compared to 140 Ruggeri (Figure 1B and C). K51-40 accumulated the highest amount of Cl− in aerial tissues under salt stress (Figure 1B and C). Under control conditions, 140 Ruggeri also accumulated significantly less petiole and laminae Cl− than K51-40, indicating that the Cl− exclusion mechanism may be active in low Cl− conditions (Figure 1B and C). Overall, the shoot Cl− accumulation of varieties can be expressed as 140 Ruggeri < Cabernet Sauvignon < K51-40.

Figure 1
figure 1

Differential chloride accumulation in tissues of different Vitis spp. Chloride concentration (% dry weight) in the roots (A), petiole (B) and laminae (C) of hydroponically grown rooted-leaves under control (white bars) or 50 MM Cl− (black bars) conditions. Bars represent the mean ± SEM of 4 biological replicates. Statistical significance was determined by one-way ANOVA with Bonferroni post-hoc test (P <0.05). CS = Cabernet Sauvignon, 140 R = 140 Ruggeri.

Validation of microarray data using real-time quantitative PCR (qRT-PCR)

To validate the microarray expression data and further quantify mRNA expression levels, we measured the expression of 12 genes by qRT-PCR and compared the datasets. Expression ratios of genes from control and 50 MM Cl− treated samples were analysed by linear regression and an R2 value of 0.88 was observed, indicating good correlation (Additional file 5a). Similarly, qRT-PCR and microarray ratios for 12 genes were compared between varieties under control conditions, which provided an R2 value of 0.89, also demonstrating good correlation (Additional file 5b).

Differentially expressed genes due to chloride stress

Following Cl− stress 1361 unique genes were differentially expressed in at least one grapevine variety (Figure 2, Additional file 6). The number of differentially expressed genes due to Cl− treatment was positively correlated with Cl− accumulation in shoot tissues. The Cl− accumulator K51-40 had the highest number of Cl− responsive transcripts (817), followed by the intermediate accumulator Cabernet Sauvignon (511), while the Cl− excluder 140 Ruggeri had the least number of Cl− responsive transcripts (252) (Figure 2). This correlation is consistent with findings in Citrus leaves when salt tolerant and sensitive rootstocks were compared after salt stress [21].

Figure 2
figure 2

Transcriptomic response of Vitis spp. to 50 MM Cl-treatment. Venn diagram showing the number of significantly differentially expressed unique transcripts predicted by the 12xV1 annotation of the V. vinifera genome in Cabernet Sauvignon, 140 Ruggeri and K51-40 roots under 50 MM Cl− stress. Significance was determined as P <0.05, ≥1.41-fold change.

Cluster analysis

The transcript profiles of Cabernet Sauvignon, 140 Ruggeri and K51-40 roots exposed to high Cl− were grouped by hierarchical clustering (Figure 3). 140 Ruggeri and Cabernet Sauvignon had the most similar transcriptional response to Cl− in roots, while the Cl− includer K51-40 had a unique response (Figure 3, top dendrogram). Gene clusters were examined by singular enrichment analysis (SEA) of gene ontology (GO) terms. Three clusters of interest showed enrichment of GO biological processes (Figure 3). Other gene clusters showed no significant enrichment of GO terms.

Figure 3
figure 3

Hierarchical clustering of chloride responsive transcripts in grapevine roots. Transcripts (rows) that changed in response to 50 MM Cl− in at least one variety with a fold change ≥ ±1.41 (P <0.05) were clustered. The response of each grapevine variety (columns) was also grouped (dendrogram above). Log(2) fold changes not statistically significant were set to 0. Clusters of interest are shown to the right of the heatmap, and contain genes that responded uniquely in each variety (A, B and C). Expression profiles and enriched GO biological processes for each cluster are also shown to the right of the heat map. CS = Cabernet Sauvignon, 140 R =140 Ruggeri.

In 140 Ruggeri, Cl− treatment induced the expression of transcripts involved in abiotic stress tolerance (Figure 3, Cluster A), including glutathione-S-transferases (GST) and heat shock proteins (HSP) (Additional file 7). Overexpression of GSTs in tobacco enhances growth under salt stress [50], while HSPs act as molecular chaperones that help maintain correct protein conformation under abiotic stress [51]. These unique trancriptional changes might enable 140 Ruggeri to perform better under salt stress relative to other grapevine genotypes.

In K51-40, Cl− treatment repressed genes involved in the hypersensitive response and flavonoid biosynthesis (Figure 3, Cluster B; Additional file 8). Flavonoids have diverse roles in plants including scavenging of reactive oxygen species (ROS) and pathogen defence [52]. Under salt stress, leakage of photosynthetic and respiratory electrons may react with oxygen, leading to ROS production and subsequent oxidative stress [53]. Therefore the transcriptional regulation of flavonoid biosynthesis in K51-40 might prevent damage from excessive ROS production. In Cabernet Sauvignon, Cl− treatment repressed mitochondrial specific transcripts, such as NADH dehydrogenases, c-type cytochromes and pentatricopeptide repeat (PPR) domain proteins (Figure 3, Cluster C; Additional file 9). Transcriptional repression of respiratory transcripts in Cabernet Sauvignon probably functions to reduce ROS production.

The stress-inducible phytohormone ABA restricts anion entry to the root xylem [18] and inward anion currents (anion efflux) from xylem parenchyma protoplasts from barley [17] and maize [19]. We therefore investigated whether high Cl− treatment reduces the expression of genes likely to facilitate Cl− transport to aerial tissues of 140 Ruggeri. Only four membrane transporters were repressed in 140 Ruggeri upon Cl− treatment and none were predicted to facilitate anion movement across membranes (Additional file 10).

Transcriptional differences between grapevine varieties under control conditions

Given that Cl− accumulation in shoot tissues was significantly different between grapevine varieties in the absence of salt stress (Figure 1B and C), we hypothesised that there might be a difference in gene expression of anion transporters under control conditions. Under these conditions, 4527 genes were differentially expressed between 140 Ruggeri and K51-40 with approximately half (2310 genes) being lower in 140 Ruggeri (Additional file 11). Genes encoding 214 membrane integral proteins were expressed differently between roots of K51-40 and 140 Ruggeri (Additional file 12). Multigene families have been proposed as regulators of salt tolerance and anion homeostasis in plants, including NRT, ALMT, SLAH and CLC[9],[54]. Members from these and other gene families encoding membrane proteins, as well as possible regulatory proteins, that were expressed differently between rootstocks, are summarised (Table 1) and described below. As an alternative analysis, genes with a high B-statistic (log-odds) for differential expression between rootstocks are listed in Table 2.

Table 1 Differentially expressed genes between contrasting rootstocks encoding putative solute transporters under control conditions
Table 2 Highly significantly differentially expressed genes between contrasting rootstocks under control conditions

NRT/POT

The NRT or proton dependent oligopeptide (POT) gene family is involved in the acquisition and whole plant homeostasis of nitrogen; different family members transport NO3-, amino acids and various peptides [55]. In our study, 8 NRT1 genes were expressed differently between rootstocks (Table 1). Grapevine NRT1 gene family members were poorly annotated in functional databases. To assign putative functions, we produced a phylogeny of the grapevine NRTs uncovered in our microarray screen using Arabidopsis NRT1s. Homologs of AtNRT1.4, AtNRT1.11, nitrate excretion transporter 1 (AtNAXT1), AtNAXT2 and glucosinolate transporter 1 (AtGTR1) were identified, as well as three other Vitis NRTs with uncharacterised Arabidopsis homologs (Figure 4). Two grapevine NRTs homologous to Arabidopsis AtNRT2.5 and AtNRT2.7, as well as a homolog of Arabidopsis oligopeptide transporter 4 (OPT4) were more abundantly expressed in 140 Ruggeri (Table 1). Differential expression of VvNAXT1, VvNAXT2, VvNRT1.11 (all higher in 140 Ruggeri) and VvNRT1.4 (higher in K51-40) was also highly significant (Table 2).

Figure 4
figure 4

Phylogenetic relationship between Arabidopsis and grapevine NRT/POT gene family members. Unrooted neighbour-joining tree of Arabidopsis and grapevine (bold) NRT/POT family members with bootstrap values from 1000 iterations. Scale = substitutions per site. Gene identifiers for the protein sequences used are shown in Additional file 2, while the multiple sequence alignment is shown in Additional file 3.

In Arabidopsis roots, AtNRT1.8 is induced and AtNRT1.5 repressed by salt and cadmium stress [56]. AtNRT1.5 is the only NRT1 isoform with a confirmed role in root xylem loading of NO3-[57], and mutants of atnrt1.5 grow better under NaCl stress than wildtype [58]. Conversely, AtNAXT1 effluxes NO3- under acid load, and is regulated at the post-transcriptional level [59]. We further investigated expression patterns of Vitis orthologs of these genes. VvNRT1.8 and VvNRT1.5 were identified phylogenetically (Figure 4). They were oppositely regulated by salt stress in Cabernet Sauvignon and 140 Ruggeri, but not K51-40, although the expression changes were small (Figure 5A and B). VvNAXT1 was unresponsive to salt in all three genotypes (Figure 5C), which is consistent with the response of its homolog in Arabidopsis [59]. Interestingly, VvNRT1.4 was strongly repressed (3 fold) by salt stress in K51-40 (Figure 5D). In spite of these differences in salt response, the largest transcriptional differences in grapevine NRT1 mRNAs were observed between genotypes under control conditions, especially between the contrasting rootstocks 140 Ruggeri and K51-40 (Figure 5E - H). This suggests of a role of some of these genes in Cl− exclusion in the absence of stress (Figure 6). Arabidopsis AtNRT1.5 is considered important for plant salt tolerance [58], possibly due a role in anion loading to the xylem [57]. In grapevine, VvNRT1.5 was not preferentially expressed in the root stele under salt stress (Additional file 13), which contrasts with AtNRT1.5[57]. Furthermore, VvNRT1.5 was more abundant in 140 Ruggeri than K51-40 (Figure 5F; Figure 6B). These data reduce the likelihood of VvNRT1.5 having a role in xylem loading of Cl− in grapevine. Based on transcriptional data, we suggest that VvNRT1.4 is the best NRT1 candidate for xylem loading of Cl− due to a much greater abundance in K51-40 roots under control conditions (Figure 5D; Figure 6C).

Figure 5
figure 5

mRNA expression changes of four Vitis NRT1 family members in three grapevine genotypes under salt stress and control conditions. (A - D) Log2 mRNA fold changes of VvNRT1.8 (A) VvNRT1.5 (B) VvNAXT1 (C) VvNRT1.4 (D) in response to 50 MM Cl− treatment as determined by qRT-PCR (filled symbols) and microarray hybridisation (open symbols). (E - H) Log2 mRNA fold differences of VvNRT1.8 (E) VvNRT1.5 (F) VvNAXT1 (G) VvNRT1.4 (H) between grapevine genotypes under control conditions as determined by qRT-PCR (filled symbols) and microarray hybridisation (open symbols). For qRT-PCR data points, the bars represent the mean ± SEM of four biological replicates. CS = Cabernet Sauvignon, 140 R = 140 Ruggeri. The E-value of VvNRT1.5 probe is above the threshold used for all other probes analysed in this study.

Figure 6
figure 6

Relative transcript abundances of membrane proteins in roots of grapevine genotypes under control conditions measured by qRT-PCR, and a model indicating possible molecular mechanisms for reduced net xylem loading of Cl-in 140 Ruggeri. (A - B) relative expression levels of VvNAXT1 (A) and VvNRT1.5 (B) measured by qRT-PCR, which represent possible avenues for cortical or epidermal efflux of Cl− out of roots. (C - E) relative expression levels of VvNRT1.4 (C), VvALMT1 (D) and VvSLAH3 (E) measured by qRT-PCR, which represent possible avenues for xylem loading of Cl−. Bars represent the mean of four biological replicates ± SEM. Transcript abundance is relative to the Cabernet Sauvignon biological replicate with the lowest cycle threshold (Ct) value, which was set to 1. Statistical differences were determined using one way ANOVA with Holm-Sidak's multiple comparisons test to compare the means. (F - G) proposed model for reduced net xylem loading of Cl− in 140 Ruggeri relative to K51-40. (F) In 140 Ruggeri, anion efflux from cortical or epidermal root cells could be mediated through putative anion channels VvNRT1.5 and VvNAXT1 which are transcriptionally more abundant in the Cl− excluder. Xylem loading of Cl− could be restricted through reduced VvNRT1.4 abundance, or inhibition of VvSLAH3 and VvALMT by higher [Ca2+]cyt mediated by VvCAX3 (directly, or in partnership with Ca2+ dependent protein kinases). (G) In K51-40, anion efflux to the xylem apoplast could be enhanced through increased abundance of VvALMT1 and VvNRT1.4, and activation of VvALMT1 and VvSLAH3 by SnRK2 kinases.

ALMT

Chelation of toxic aluminium in the rhizosphere by the efflux of organic acids from roots is facilitated by plasma membrane aluminium-activated malate transporters (ALMT) [60]. ALMTs are a large multigene family with multiple roles; despite their name most ALMTs are not activated by aluminium and they allow the permeation of various anions. For example, ALMTs function in anion homeostasis and mineral nutrition, (ZmALMT1) [61], or Cl− transport across the tonoplast (AtALMT9) [62]. Root ALMTs might therefore have a role in Cl− exclusion. Three ALMT1 homologs were differentially expressed between rootstocks (Table 1). Whether these proteins mediate Cl− fluxes, and the directionality of such fluxes, remains unresolved, but Cl− exclusion could arise through efflux of Cl− to the rhizosphere (higher expression in 140 Ruggeri, VIT_06s0009g00450, VIT_08s0105g00250) (Table 1) or reduced Cl− entry in the cortex and restricted xylem loading of Cl− (lower expression in 140 Ruggeri, VIT_06s0080g00170) (Table 1; Figure 6D and G).

Calcium transporters (CAX and ACA)

Calcium exchangers (CAX) mediate Ca2+/cation antiport activity across the tonoplast. Roles of CAXs include cell specific storage of Ca2+ by CAX1 [63], while Arabidopsis cax3 mutants are sensitive to NaCl, LiCl and acidic pH, suggesting a possible role in salt tolerance [64]. Three grapevine CAX transcripts were more abundant in roots of 140 Ruggeri compared to K51-40 (Table 1). In addition to CAX, the plant plasma and vacuolar membranes harbour auto-inhibited Ca2+-ATPases (ACA), of which Arabidopsis ACA4 can improve salt tolerance of yeast [65]. Six ACAs were differentially expressed between 140 Ruggeri and K51-40. These data indicate that genes regulating cytosolic free calcium ([Ca2+]cyt) in roots could be important for grapevine Cl− exclusion.

CLC

Two CLCs showed differential expression between rootstocks under control conditions. A gene homologous to Arabidopsis AtCLCb (VIT_14s0068g02190) was less abundant in 140 Ruggeri (Table 1). Another CLC with homology to AtCLCf (VIT_19s0015g01850) was less abundant in K51-40 (Table 1). Differential expression of VvCLCf was also identified as highly statistically significant (Table 2).

SLAHand ABA signalling

Homologs of the Arabidopsis SLAC1 anion channel (AtSLAH1 and AtSLAH3) are plasma membrane localized, expressed in the root vasculature, and functionally complement guard cell anion efflux in the slac1 mutant [23]. This indicates that SLAHs might be involved in anion homeostasis [23] and loading to the xylem sap [54]. VvSLAH3 was more abundant in the Cl− excluder 140 Ruggeri compared to K51-40 under control conditions (Table 1; Figure 6E). This contrasts with Citrus, where CcSLAH1 was up-regulated by 90 MM salt stress in a Cl− accumulating rootstock [22]. Reconstitution in X. laevis oocytes has demonstrated that plant SLAC/SLAH activity is tightly regulated by kinase/phosphatase activity following an ABA signal [66]. Homologs of the Arabidopsis ABA signalling machinery were differentially expressed between rootstocks. The ABA receptor VvPYL1/RCAR11 was more highly expressed in 140 Ruggeri (Table 1). Two SNF1-related protein kinase 2 (SnRK2) family members including the Vitis ortholog of SnRK2.6 (open stomata 1 (OST1)) were repressed in 140 Ruggeri, and multiple calcium dependent protein kinases (CPK) were differentially expressed between rootstocks (Table 1). Homologs of these genes in other plants have proven roles in ABA induced activation of SLAC1 in guard cells [67] and might be involved in SLAH3 regulation in Vitis roots.

Other candidates

Two ABC transporters were significantly differentially expressed between rootstocks; a C-type (ABCC 12) (VIT_09s0002g02430) (higher in 140 Ruggeri) and multidrug resistance 12-type (VIT_02s0025g00930) (higher in K51-40) (Table 2). A role in Cl− transport has not been identified for ABC transporters in plants, although reports suggest roles in arsenic tolerance [68] and salt tolerance [69]. A C3HC4-type ring finger protein was more abundant in the tolerant variety 140 Ruggeri (Table 2). A C3HC4 protein was potentially crucial for abiotic stress tolerance in rice roots [70]. A phospholipase A2 precursor (VIT_11s0016g02570) was also expressed alternatively between rootstocks (Table 2). The product of a phospholipase A2 activates a tonoplast H+/Na+ antiporter in cultured cells of California poppy [71].

Discussion

Shoot chloride exclusion is one of several traits that underpins salt tolerance. However, the root-localised anion transport proteins (or their regulators) thought to be crucial for salt tolerance remain unidentified [9],[15],[16],[22]. We therefore analysed the genome wide transcriptional response of grapevine roots to Cl− stress. Cabernet Sauvignon repressed transcripts encoding respiratory proteins, probably to reduce ROS production under salt stress. Although ROS may act as signalling molecules in eukaryotes [72],[73], it has previously been reported that ROS production in grapevine cells that contrast in salt-tolerance represents a manifestation of cellular damage rather than an adaptive response [74]. We therefore propose a hierarchy exists in the magnitude of transcriptional responses to Cl− stress (K5140> > Cabernet Sauvignon> > 140 Ruggeri) that correlates with the amount of damage in the laminae. However, these differences in varietal responses to stress do not explain differential Cl− exclusion, which was statistically significant before salt stress (Figure 1).

Studies indicate that there is natural variation in the ability to tolerate salt stress in various plant species including Citrus[22], rice [70], barley [75],[76], and Arabidopsis [77]. Our data support the hypothesis that Cl− exclusion in grapevine is mediated by anion transporters or channels that are differentially expressed between non-stressed 140 Ruggeri and K51-40. To this end, we have proposed a testable model for Cl− exclusion based on the expression levels of candidate genes identified in our study (Figure 6). These candidate genes for Cl− exclusion are subsequently discussed in the context of this model and existing literature.

In plant roots, anion movement across the plasma membrane of xylem parenchyma cells for loading to xylem vessels occurs through unidentified anion channels with fast and slow activation kinetics (X-QUAC and X-SLAC respectively) [17]. Anion conductances in Arabidopsis guard cells with homologous activation kinetics have been characterised, and the channels eliciting these currents identified. The slowly activating anion conductance in guard cells has been attributed to AtSLAC1 and AtSLAH3 channels [24],[78], while guard cell QUAC is mediated by AtALMT12 [79]. It is therefore feasible that X-SLAC and X-QUAC arise from SLAH and ALMT channels in root cells. We identified VvSLAH3 and three VvALMT1 transcripts that were expressed differently between rootstocks. Thermodynamics predicts that the loading of Cl− into the xylem under low apoplastic [Cl−] occurs by passive transport [80]. Therefore, transcripts that encode putative anion transport proteins with a high abundance in K51-40 are good candidates for controlling xylem loading of Cl−. Our results suggest that VvALMT1 may be involved in xylem loading of Cl− (Figure 6D and G). VvSLAH3 transcript was more abundant in 140 Ruggeri (Table 1; Figure 6E). For it to be involved in xylem loading of Cl− there are two alternatives. Arabidopsis SLAH3 has been shown to be much more permeable for NO3− than Cl−[78]. If this is the case in grapevine, the pathway for anion transport in 140 Ruggeri could be more NO3- selective than in K51-40, thus resulting in greater discrimination against Cl− loading of the xylem in 140 Ruggeri. Alternatively, SLAH3 could be permeable to Cl− but the extent of post-translational control differs between varieties, as elaborated below.

Cellular anion conductance must be tightly regulated to avoid uncontrolled electrolyte efflux [54], and for this reason complex signalling networks exist in plants. Upon an ABA induced rise in [Ca2+]cyt, guard cell SLAC may be activated by calcium dependent protein kinases CPK23 and CPK21 [67]. Alternatively, the Ca2+ independent kinase SnRK2.6 (OST1) can activate both guard cell SLAC and QUAC in response to ABA [81]. In contrast, opposite regulation by ABA and [Ca2+]cyt occurs in root cells, with X-QUAC being inhibited by ABA and by high [Ca2+]cyt[17],[19]; whether kinases are involved in this regulation have not yet been determined. A transcript encoding the VvPYL1/RCAR11 ABA receptor was significantly more abundant in roots of 140 Ruggeri compared to K51-40. The Cl− excluder might therefore be more sensitive to ABA, or may be primed for any slight increase in ABA concentration. Differential expression of vacuolar CAXs and ACAs between rootstocks might function to maintain [Ca2+]cyt signals in root cells of 140 Ruggeri, thus participating in the Ca2+ dependent down-regulation of X-QUAC and X-SLAC (Figure 6F). AtCPK20 interacts with AtSLAH3 in Arabidopsis pollen tubes [82]. Differential expression of VvCPK20, among other CPKs, between rootstocks might indicate an involvement of these kinases in VvSLAH3 regulation. In addition, differential expression of VvSnRK2.6 and VvSnRK2.7 between rootstocks implicates both the Ca2+ dependent and independent ABA signalling machinery in grapevine roots as possible mediators of Cl− exclusion (Figure 6G). The sheer number of genes potentially involved in X-QUAC and X-SLAC mediated pathways, possible kinase redundancy or multiple kinase targets, could explain the observations that Cl− exclusion in grapevine is polygenic [15],[83].

Arabidopsis has 53 NRT1 genes and rice has 80 NRT1 members. This has led to the question [55]: are there unidentified anionic substrates for NRTs beyond just nitrate or peptides to account for such large gene families? The large number of NRT1 genes identified in our screen suggests they might play some key role in Cl− homeostasis. Plasma membrane localisation of plant NRTs heightens the possibility for roles in cellular Cl− fluxes. However, the anion selectivities of plant NRTs have been rarely examined [9]. AtNAXT1 was shown not to transport Cl−[59], but characterisation of the remaining 6 Arabidopsis NAXTs is yet to be reported. If permeable to Cl−, greater abundance of VvNAXT1 and VvNAXT2 in 140 Ruggeri compared to K51-40 (Table 1; Table 2; Figure 6A) could allow the Cl− excluding rootstock to excrete Cl− back to the external medium instead of transporting it to the shoot (Figure 6F). This function might be enhanced under salinity stress if cytosolic pH is reduced, as AtNAXT1 actively excretes anions under acid load, possibly to balance proton extrusion by H+-ATPases [59]. This cannot work as the sole mechanism of Cl− exclusion, as 140 Ruggeri still retains more Cl− in the roots compared to Cabernet Sauvignon and K51-40 (Figure 1A). Other stress responsive plant NRT1s (VvNRT1.8, VvNRT1.5) showed similar expression profiles to orthologous genes in Arabidopsis. However, VvNRT1.5 was less abundant in the root stele compared to the cortex (Additional file 13), indicating that this gene is more likely to be involved in cortical efflux of Cl− rather than Cl− loading to the xylem (Figure 6F and G). Excessive Cl− in the root zone or cytoplasm could inhibit NO3- transport (both uptake and efflux) due to the well-documented antagonism between these anions [84],[85]. Therefore, differences in NRT1 expression in salt stressed grapevine roots also could be a compensatory mechanism to overcome this ionic antagonism.

Multiple studies have linked plant CLCs to salt tolerance [86]-[89]. VvCLCb and VvCLCf were expressed differently between rootstocks under control conditions. In Arabidopsis, AtCLCb is a vacuolar NO3-/H+ exchanger [90], as is AtCLCa[91]. A single missense mutation in AtCLCa changes the selectivity from NO3- to Cl−[92],[93]. It is therefore possible that VvCLCb in Vitis roots participates in Cl− sequestration in cell vacuoles, although greater expression in K51-40 does not fully support this. AtCLCf is associated with the trans-Golgi network [94], so a role in salt tolerance is less likely. Further study into Vitis CLCs is therefore needed before concluding a role in grapevine salt tolerance.

Candidate genes for plant Cl− exclusion identified by Brumos et al.[22] were not highlighted in our study. Our array design had two probes for the putative Cl− conductance regulator VvICln (VIT_16s0022g01560) and neither were salt responsive, consistent with short-term stress response in Citrus but contrasting with the long-term results [22]. On the other hand, one probe showed statistically significant differential expression between varieties under control conditions but was greater in the Cl− excluding rootstock (data not shown). This means if VvICln contributes to Cl− exclusion in 140 Ruggeri, it must act as a negative regulator of Cl− conductance. This seems unlikely given data in animals and plants [22],[26]. VvCCC and VvSLAH1 were also not differentially expressed, and so if they are involved may be regulated at the post-translational level, which cannot be highlighted by microarray technology. Indeed the activity of many plant anion channels is modified by phosphorylation events such as AtNRT1.1 [95], AtSLAC1 [96] and AtCLCa [97]. Differences in expression of SLAC/SLAH regulators SnRK2 and CPK between rootstocks ensures VvSLAH1 remains a candidate for Cl− homeostasis in Vitis. In future studies, it would be valuable to identify interacting partners of the protein kinases identified as differentially expressed in this study, and any functional changes induced by such interactions.

Conclusions

Using a whole root transcriptome approach, a detailed analysis of root mRNA profiles of contrasting grapevine genotypes is presented. This provides a complement to earlier physiological studies of the same varieties that have demonstrated the mechanism of shoot Cl− exclusion as the restriction of its net xylem loading at the root [15],[16],[98]. A valuable list of candidate genes likely to mediate shoot Cl− exclusion has been identified. Future functional characterisation of these genes, including the elucidation of protein-protein interactions, may enable their use in grapevine rootstock breeding efforts. More broadly the further study of these genes and their homologs in other species will aid our understanding of long distance Cl− transport in plants.

Availability of supporting data

Data supporting the results of this article are available in the Gene Expression Omnibus repository (http://www.ncbi.nlm.nih.gov/geo/) under accession number GSE57770. An ArrayQualityMetrics report is available at http://dx.doi.org/10.6070/H4CZ354H.

Additional files

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Acknowledgements

The Authors thank Dr. Virginie Masson for help with data mining. Daniele Belluoccio is acknowledged for assistance with microarray chip design. We thank Dr. Haijun Gong for designing the primers for VvNAXT1. SWH was supported by an Australian Postgraduate Award and the Australian Grape and Wine Authority (GWR_PH1001). MG is supported by an Australian Research Council Future Fellowship (FT130100709). This research was funded by a Wine 2030 Research grant to SWH and also by Australia's grape growers and winemakers through their investment body, the Australian Grape and Wine Authority, with matching funds from the Australian Government (grant number CSP1002) awarded to RRW, ARW and MG.

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Correspondence to Matthew Gilliham.

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The authors declare that they have no competing interests.

Authors' contributions

SWH, ARW, RRW and MG contributed to project conception. SWH, ARW, RRW and DB harvested rooted leaves for expression studies. UB analysed the raw microarray data, performed microarray data normalization and performed the statistical analysis. DB propagated and maintained the plant material and performed ion content measurements. SWH performed all other analyses, drafted the initial manuscript and prepared the final version with MG. MG and RRW supervised the research. All authors read and approved the final manuscript.

Electronic supplementary material

12870_2014_273_MOESM1_ESM.xlsx

Additional file 1: List of 90 predicted V. vinifera genes encoding putative anion transporters, and their predicted functional annotation, that were spotted onto the custom Agilent microarray slides multiple times for B-statistic analysis.(XLSX 12 KB)

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Additional file 2: Gene identifiers and annotations of the amino acid sequences used in the phylogenetic analysis of interesting NRT1 members.(XLSX 11 KB)

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Additional file 3: Multiple sequence alignment of Arabidopsis and grapevine NRT members for the data presented in Figure 4. Shading is representative of the Blosum62 score matrix as follows: black (100% similar) dark grey (80% similar) light grey (60% similar) unshaded (<60% similar). (DOCX 775 KB)

Additional file 4: List of primers used in this study.(XLSX 10 KB)

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Additional file 5: Correlation between expression ratios determined by Agilent custom gene expression array and qRT-PCR. (a) Gene expression ratios of control to salt treated samples were compared for 12 genes (VIT_00s0229g00130, VIT_01s0011g06550, VIT_02s0012g01160, VIT_06s0004g03520, VIT_06s0080g00170, VIT_08s0040g01890, VIT_08s0040g03220, VIT_11s0016g05170, VIT_13s0019g00330, VIT_14s0108g00700, VIT_15s0021g00330, VIT_16s0050g01860) in all 3 grapevine varieties by microarray and qRT-PCR. (b) Gene expression ratios of varietal differences under control conditions were compared for 12 genes (VIT_01s0011g06550, VIT_02s0012g01160, VIT_06s0004g03520, VIT_06s0080g00170, VIT_08s0040g01890, VIT_08s0040g03220, VIT_11s0016g05170, VIT_13s0019g00330, VIT_14s0108g00700, VIT_15s0021g00330, VIT_16s0050g01860, VIT_17s0000g05550) and 3 grapevine cultivars as in (a). Linear regression analysis R2 value shown inset. For qRT-PCR primers see Additional file 4. Gene expression levels obtained via qRT-PCR were normalised to the geometric mean of VvActin, VvEF1-a, and VvUBQ-L40. (TIFF 523 KB)

12870_2014_273_MOESM6_ESM.xlsx

Additional file 6: List of 1361 differentially expressed ( P <0.05, ≥ ±1.41 fold) unique transcripts in at least one Vitis spp. genotype under 50 mM Cl-treatment.(XLSX 264 KB)

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Additional file 7: Unique transcripts that were significantly up-regulated ( P <0.05, ≥1.41 fold) in 140 Ruggeri in response to 50 mM Cl-treatment and clustering together (cluster A, Figure 3).(XLSX 23 KB)

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Additional file 8: Unique transcripts that were significantly down-regulated ( P <0.05, ≤ −1.41 fold) in K51-40 in response to 50 mM Cl-treatment and clustering together (cluster B, Figure 3).(XLSX 47 KB)

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Additional file 9: Unique transcripts that were significantly down-regulated ( P <0.05, ≤ -1.41 fold) in Cabernet Sauvignon in response to 50 mM Cl-treatment and clustering together (cluster C, Figure 3).(XLSX 31 KB)

12870_2014_273_MOESM10_ESM.xlsx

Additional file 10: Transcripts encoding putative membrane transporters or channels that were significantly down-regulated ( P <0.05, ≥ 1.41 fold) in 140 Ruggeri in response to 50 mM Cl-treatment.(XLSX 15 KB)

12870_2014_273_MOESM11_ESM.xlsx

Additional file 11: List of 4527 unique transcripts that were significantly differentially expressed ( P <0.05, ≥ ±1.41 fold) between 140 Ruggeri and K51-40 under control conditions (non-salt).(XLSX 414 KB)

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Additional file 12: List of 214 unique transcripts encoding putative membrane transporters or channels that were significantly differentially expressed ( P <0.05, ≥ ±1.41 fold) between 140 Ruggeri and K51-40 under control conditions (non-salt).(XLSX 36 KB)

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Additional file 13: VvNRT1.5 expression in different root tissues of grapevine. (a) Levels of VvNRT1.5 transcript in enriched fractions of the root cortex and stele of salt stressed (50 mM Cl−) grapevine determined by qRT-PCR. Bars are SEM of 3 biological replicates. Asterisk represents significant difference in the stele compared to the cortex (Student's t-test, P <0.05). (b) Levels of VvPIP1.1 transcript in enriched fractions of the root cortex and stele of salt stressed (50 mM Cl−) grapevine determined by qRT-PCR. Bars are SEM of 3 biological replicates. Asterisk represents significant difference in the stele compared to the cortex (Student's t-test, P <0.05). VvPIP1.1 is known to be expressed in the root stele [99], and is therefore used as a control for adequate enrichment of stele and cortex root fractions in (a). (TIFF 113 KB)

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Henderson, S.W., Baumann, U., Blackmore, D.H. et al. Shoot chloride exclusion and salt tolerance in grapevine is associated with differential ion transporter expression in roots. BMC Plant Biol 14, 273 (2014). https://doi.org/10.1186/s12870-014-0273-8

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