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Transcript and protein profiling identify candidate gene sets of potential adaptive significance in New Zealand Pachycladon

Abstract

Background

Transcript profiling of closely related species provides a means for identifying genes potentially important in species diversification. However, the predictive value of transcript profiling for inferring downstream-physiological processes has been unclear. In the present study we use shotgun proteomics to validate inferences from microarray studies regarding physiological differences in three Pachycladon species. We compare transcript and protein profiling and evaluate their predictive value for inferring glucosinolate chemotypes characteristic of these species.

Results

Evidence from heterologous microarrays and shotgun proteomics revealed differential expression of genes involved in glucosinolate hydrolysis (myrosinase-associated proteins) and biosynthesis (methylthioalkylmalate isomerase and dehydrogenase), the interconversion of carbon dioxide and bicarbonate (carbonic anhydrases), water use efficiency (ascorbate peroxidase, 2 cys peroxiredoxin, 20 kDa chloroplastic chaperonin, mitochondrial succinyl CoA ligase) and others (glutathione-S-transferase, serine racemase, vegetative storage proteins, genes related to translation and photosynthesis). Differences in glucosinolate hydrolysis products were directly confirmed. Overall, prediction of protein abundances from transcript profiles was stronger than prediction of transcript abundance from protein profiles. Protein profiles also proved to be more accurate predictors of glucosinolate profiles than transcript profiles. The similarity of species profiles for both transcripts and proteins reflected previously inferred phylogenetic relationships while glucosinolate chemotypes did not.

Conclusions

We have used transcript and protein profiling to predict physiological processes that evolved differently during diversification of three Pachycladon species. This approach has also identified candidate genes potentially important in adaptation, which are now the focus of ongoing study. Our results indicate that protein profiling provides a valuable tool for validating transcript profiles in studies of adaptive divergence.

Background

It has been postulated that genes of co-ordinated function that offer an organism some selective advantage (adaptive gene sets) might be identifiable in studies that examine differential gene expression (DGE) across species ranges and heterogeneous environments [1, 2]. Similarly, DGE studies that compare expression profiles of closely related species, such as those that have formed during Late Tertiary radiation of New Zealand's alpine genera, might also help to identify candidate genes that have played a role in species diversification. To investigate this approach, in an earlier study we compared microarray expression profiles for natural populations of two closely related alpine plant species from the largely endemic New Zealand genus Pachycladon (Brassicaceae). Analyses of logfold ratios and ontology analyses in this experiment suggested that secondary metabolite profiles differed among and between populations of these two species. HPLC-UV/GC-MS analyses confirmed these predictions, leading to the hypothesis that herbivory was a major driver of diversification of P. fastigiatum and P. enysii [3]. These results provided encouragement that transcriptome profiling used in a predictive sense provided a promising approach for helping to identify putative adaptations between closely related species.

However, a potential shortcoming with this approach is that gene expression differences between species may also result from genetic drift [4]. Moreover, due to posttranslational modifications, transcript abundances may not correlate with protein abundances [5]. Profiling of proteomes, which have different underlying evolutionary dynamics from transcriptomes [6], provides an alternative approach for the prediction of downstream physiological processes. In the present study we have compared findings from gene expression profiles obtained using heterologous microarrays [3] with findings from protein expression profiles generated by shotgun proteomics. During shotgun proteomics, proteins levels are calculated by determining the number of spectral counts that identify a protein [7] and proteins are identified by searching MS-MS spectra of peptides against reference protein data bases. Our aim was to determine to what extent gene expression profiles were indicative of protein expression profiles and vice versa, and to evaluate both methods with respect to their potential for predicting physiological differences among New Zealand Pachycladon species. For this purpose, we also characterized glucosinolate chemotypes and evaluated the extent to which these were predicted from the protein and transcript expression data.

The genus Pachycladon is of allopolyploid origin (< 2 Mya:[8]) and has diversified into ten morphologically and ecologically diverse species within the last million years. Nine of the species are endemic to the Southern Alps of New Zealand and one is native to Tasmania. The nine New Zealand species form three distinct groups distinguished by their genetic characteristics, morphological features and habitat preferences [9]. Species differ markedly in their preference for certain soil types. For example, the group consisting of P. novae-zelandiae and P. wallii are restricted to soils derived from schist whereas another group consisting of P. fastigiatum, P. enysii and P. stellatum are confined to greywacke soils. There are also the limestone specialist P. fasciarium and the basicole P. exile. The remaining two species, P. cheesemanii and P. latisiliquum are geological generalists. These preferences have led to the hypothesis that adaptation to different soils has to a large part driven diversification and evolution of distinct Pachycladon species. Since species also differ in their altitudinal ranges [10], adaptation to different altitudes has been suggested as another possible driver of diversification.

In this study, we compared three Pachycladon species with distinct ecological attributes. These species were P. cheesemanii (CH), P. exile (EX) and P. novae-zelandiae (NZ). The former two are sister species [9] and resemble close overseas Pachycladon relatives Transberingia and Crucihimalaya [11]. P. cheesemanii and P. exile are both polycarpic perennials with a woody caudex, exhibit leaf heterophylly with ovate to broadly elliptic early (basal) leaves with branched hairs on the lamina and petiole and serrate to lobed later (cauline) leaves; they have slender and terminal inflorescences and narrow petals and terete (cylindrical) siliques with uniseriate wingless seeds. P. exile is much smaller in all parts than P. cheesemanii. P. cheesemanii occurs along a wide altitudinal range (10-1600 m) on greywacke, semi-schist, schist and plutonics substrates, it is a true generalist. P. exile is a lowland species (25-500 m) that grows on base-rich soils. It was previously recorded from a few sites in Central Otago but is now known with certainty from only one limestone site and has recently been classified as nationally critical in New Zealand [12]. P. novae-zelandiae is also a polycarpic perennial with a semi-woody caudex but is morphologically distinct from P. cheesemanii and P. exile. It does not produce heteroblastic leaves. Rather it produces oblong to elliptic leaves that are either lobed or crenate and are either hairy (simple or branched trichomes) or glabrous; it has lateral inflorescences, and laterally compressed siliques with biseriate wingless seeds. P. novae-zelandiae grows at much higher altitudes (1080-2031 m) and is confined to schist soils. In summary, P. cheesemanii and P. exile are morphologically similar, lower altitude species that are very closely related but which differ in their soil substrate specificities (generalist and basicole respectively). In contrast, P. novae-zelandiae is a more distantly related alpine species restricted to schist. Given their different ecologies and degrees of relatedness, the three species are expected to differ in their gene and protein expression profiles. In the instances that protein profiles corroborate inferences from comparative transcript analyses, these observations have been used to predict physiological differences between species as well as candidate genes for adaptive diversification.

Results

Transcriptome - proteome correlations

To investigate the extent to which transcriptional patterns were congruent with protein expression patterns, we calculated correlation coefficients for 1074 genes surveyed by both transcript and protein profiling (table 1, A). Given the non-normal distributions of both the log2 spectral abundance factors and the log2 fluorescence intensities, we used Spearman's rank correlation coefficient. Each species' proteome correlated most strongly with its own transcriptome with the highest correlation observed in P. cheesemanni (0.52) and the lowest in P. novae-zelandiae (0.34). The transcript profile (for 1074 genes) for each species correlated most strongly with the proteome (for 1074 genes) of P. cheesemanii. This was largely due to the fact that the three transcriptomes correlated very strongly with one another (0.74-0.91, table 1, B) and the P. cheesemanii transcriptome had the highest correlation with its own proteome. The three proteomes correlated much more weakly with each other (0.59-0.75, table 1, C) than did the three transcriptomes, indicating greater differences between the protein profiles than between the transcript profiles. Correlations between both transcriptomes and proteomes mirrored phylogenetic relationships with the profiles of sister species P. cheesemanii and P. exile being most similar. Interestingly, both the transcriptome and proteome of P. novae-zelandiae were found to be more similar to those of P. exile than to those of P. cheesemanii.

Table 1 Correlations of transcript and protein expression statistics of a common gene set

Overlap in transcript and protein up-regulation

For each of the three Pachycladon species, we identified up- and down-regulated transcripts and proteins using linear model analysis and Wilcoxon rank and t-tests, respectively. The number of up- and down-regulated transcripts and proteins are summarized in table 2 and gene identifiers, descriptions, transcript and protein expression statistics are provided in additional file 1, table S1. We compared expression in each species with expression in the other two species combined (6 group comparisons) and separately (6 pair wise comparisons). For example, expression in CH was compared to expression in EX+NZ (group comparison) but also to EX and NZ separately (pair wise comparisons). For each of the twelve comparisons, we intersected the lists of up-regulated transcripts with lists of up-regulated proteins and found significant overlap (i.e. different from random expectations given the size of our data sets) in seven cases (figure 1). The extent of overlap between transcript and protein profiles is limited partially as a result of relative sizes of the different data sets (transcript data set: 9404 genes, protein data set: 1489 genes, overlap of both data sets: 1074 genes). For example, of the 371 transcripts up-regulated in P. cheesemanii when compared with NZ+EX combined, only 126 were present in the protein data set. This means the 29 genes found up-regulated by both transcript and protein profiling in P. cheesemanii represent an overlap of 23% (29 of 126). Conversely, of the 124 proteins up-regulated in P. cheesemanii only 90 were present in the transcript data set. In this case we have found 32% (29 of 90) of the transcripts maximally identifiable by transcript profiling. Interestingly, across the three Pachycladon species, an average of 23.6% of the transcript patterns were confirmed by protein patterns (average of upper percentages in figure 1) whereas on average only 12.6% of the protein patterns were predicted by transcript patterns (average of lower percentages in figure 1). These percentages did differ greatly between species (figure 1). Transcript patterns were best confirmed by proteins patterns in P. novae-zelandiae (average of 30.2%) and protein patterns were best confirmed by transcript patterns in P. cheesemanii (average of 24.5%). The disagreement of transcript and protein profiling remaining after correcting for different numbers of genes captured by both analyses presumably is explained by the different kinetics of protein and transcript accumulation and degradation.

Table 2 Numbers of up-regulated transcripts and proteins in P. cheesemanii, P. exile and P. novae-zelandiae
Figure 1
figure 1

Overlap in differential expression patterns from both transcript and protein profiling. Numbers of differentially expressed genes in P. cheesemanii (CH), P. exile (EX) and P. novae-zelandiae (NZ) identified by transcript (T) profiling, protein profiling (P) or both (TP). Differential expression is defined as significantly higher or lower expression in one species compared with the other two combined (panel A - 6 group comparisons) or separately (panel B - 6 pair wise comparisons) and was determined by linear model analysis (transcripts) or Wilcoxon rank and t-tests (proteins). Numbers are corrected for relative sizes of transcript and protein data sets. In other words, only a subset of all differentially expressed transcripts and proteins is given. This subset consists of genes found amongst the 1074 loci surveyed by both transcript and protein profiling. For a summary of all differentially expressed transcripts and proteins refer to table 2. Upper percentages depict the proportion of transcripts confirmed by protein analysis and lower percentages depict the proportion of proteins confirmed by transcript analysis (see text for details). Statistically significant overlap (p value < 0.05%) is denoted with a star. For locus IDs, gene descriptions, transcript and protein expression statistics of genes identified as being up-regulated by both methods (TP) in CH, EX and NZ see table 3.

Our goal was to identify genes specifically up- and down-regulated in each species with respect to the other two (group comparisons) in the set of 1074 genes that were covered by both transcript and protein profiling. In these comparisons the greatest overlap between transcript and protein profiles was found for P. cheesemanii (29 genes up-regulated, 2 genes down-regulated), followed by P. exile (4 genes up-regulated, 4 genes down-regulated) and P. novae-zelandiae (8 genes up-regulated, no overlap in down-regulation). Gene identifiers, descriptions, and expression statistics for these are compiled in table 3. From the genes equally identified by both approaches, some interesting observations and predictions can be derived. For example, three isoforms of carbonic anhydrases were differentially expressed in P. cheesemanii (At3g01500, AtβCA1, chloroplast-located, At5g14740, AtβCA2, cytosol-located) and P. novae-zelandiae (At1g23730, AtβCA3, cytosol-located) (table 3). These genes catalyze the interconversion of carbon dioxide and bicarbonate and have been shown to be involved in photosynthesis, respiration, pH regulation, inorganic carbon transport, ion transport, and water and electrolyte balance [13]. Other genes found up-regulated by both approaches in P. cheesemanii are genes involved in translation, photosynthesis light reactions, the calvin cycle, pentose phosphate pathway, fatty acid beta oxidation, serine metabolism, oxidative stress, protein folding and others (table 3). The four commonly up-regulated genes in P. exile are associated with very different processes such as Calvin cycle, S-adenosylmethione biosynthetic process, carbohydrate metabolism and others (table 3). In P. novae-zelandiae, two genes encoding vegetative storage proteins are up-regulated which have been implicated in responses to insects and other stress factors. Also up-regulated in P. novae-zelandiae are genes involved in transport, toxin catabolism and response to oxidative stress (table 3). Two and four genes were found to be down-regulated by transcript and protein profiling in P. cheesemanii and P. exile, respectively. The former two are involved in cell wall modification (pectinmethylesterase) and carbohydrate metabolism (glycosyl hydrolyase) and the latter four represent the two vegetative storage proteins up-regulated in P. novae-zelandiae, a universal stress protein and a phosphoglucomutase (table 3). Since none of the down-regulated transcripts in P. novae-zelandiae (table 2) were captured by the common set of 1074 genes, no overlap in down-regulated transcripts and proteins was observed in P. novae-zelandiae.

Table 3 Genes up-regulated in P. cheesemanii, P. exile and P. novae-zelandiae in transcript and protein profiling

Glucosinolate profiles and hydrolysis products

To test how faithfully both transcript and protein expression patterns would predict physiological differences between species, we examined a trait, which we had previously shown to vary greatly in Pachycladon, namely, glucosinolate biosynthesis and hydrolysis [3]. Glucosinolate biosynthesis and hydrolysis genes found to be differentially regulated in the twelve comparisons by either transcript or protein profiling are summarized in table 4.

Table 4 Glucosinolate metabolism loci up-regulated in transcript and protein profiling

Expectations for glucosinolate profiles were that P. cheesemanii would have higher levels of alkenyl and hydroxyalkyl glucosinolates (suggested by up-regulation of AOP2 and AOP3 transcript levels) than P. exile and P. novae-zelandiae and P. cheesemanii would have higher levels of four carbon (C4) glucosinolates than P. exile (suggested by the up-regulation of methylthioalkylmalate isomerase protein levels, MAM-I, At2g43100) (table 4). Conflicting predictions were made for P. novae-zelandiae since the up-regulation of methionine chain elongation proteins, such as MAM-I (At2g43100) and two proteins of methylthioalkylmalate dehydrogenase (MAM-D, At5g14200, At1g31180, [14]) suggests higher levels of C4 glucosinolates in P. novae-zelandiae than in the other two species. However, up-regulation of MAM-I and methylthioalkylmalate synthase (MAM1, At5g23010) transcript levels in P. cheesemanii when compared to P. novae-zelandiae suggests higher levels of C4 glucosinolates in the former (table 4). Contradictory predictions were also derived for P. exile, as up-regulation of MAM1 transcripts indicated higher C4 levels in P. exile than in P. novae-zelandiae and down-regulation of MAM-I proteins suggested higher levels of C4 glucosinolates in P. novae-zelandiae and P. cheesemanii when compared to P. exile (table 4). To verify these predictions we analyzed glucosinolate profiles in the same specimens that had been used for transcript and protein profiling. Fourteen compounds were identified across the three species (additional file 2, figure S1). Interestingly, P. cheesemanii and P. exile had very distinct glucosinolate profiles whereas P. cheesemanii and P. novae-zelandiae, despite being less closely related than P. cheesemanii and P. exile, shared their two major compounds allyl and S -2-hydroxy-3-butenyl glucosinolate (figure 2). This high similarity in glucosinolate profiles between P. cheesemanii and P. novae-zelandiae was also surprising given that P. cheesemanii and P. exile had been found to have more similar transcript and protein profiles than P. cheesemanii and P. novae-zelandiae (table 1). P. exile did produce almost no alkenyl glucosinolates (allyl, 3-butenyl, S-2-hydroxy-3-butenyl combined) and P. cheesemanii and P. novae-zelandiae did not differ significantly in their production of alkenyl glucosinolates (85 μmol/g vs. 77.8 μmol/g, p value >0.05) (additional file 2, figure S1). Thus the prediction from AOP2 gene expression suggesting higher levels of alkenyl glucosinolates in P. cheesemanii when compared to P. exile and P. novae-zelandiae was only fulfilled for P. exile. Hydroxy alkenyl glucosinolates were not detected in any of the three species contrary to the up-regulation of AOP3 transcripts in P. cheesemanii. As previously discussed [3], AOP3 expression might be an artefact of cross-hybridization of AOP2 transcripts with the AOP3 probe and as such constitute a drawback of using a heterologous microarray. P. novae-zelandiae however produced slightly more C4 glucosinolates than P. cheesenmanii (59 μmol/g vs 48 μmol/g, p value = 0.059, additional file 2, figure S1) and also accumulated three additional C4 glucosinolates (4-methylthiobutyl, 4-methylsulfinylbutyl, 3butenyl) compared to P. cheesemanii which only accumulated the C4 compound S-2-hydroxy-3 butenyl glucosinolate (figure 2). P. exile did not produce any C4 glucosinolates. Thus the differential expression of MAM-I and the two MAM-D proteins (up in P. novae-zelandiae, up in P. cheesemanii, down in P. exile) proved to be a reliable indicator of metabolite profiles whereas up-regulation of MAM-I transcripts in P. cheesemanii and MAM1 transcripts in P. exile did not. Neither array nor protein profiling captured the expression of 2-oxoacid-dependent dioxygenase which has recently been shown to catalyze the production of 2-hydroxy-3-butenyl glucosinolates from 3-butenyl glucosinolates [15] and which we predict to be up-regulated in P. cheesemanii and P. novae-zelandiae when compared with P. exile.

Figure 2
figure 2

Hierarchical clustering of glucosinolate profiles. Fourteen compounds were identified across individuals of P. cheesemanii (CH, n = 12), P. exile (EX, n = 13) and P. novae-zelandiae (NZ, n = 12). Data used for hierarchical clustering represent proportions from total contents; for comparisons of concentrations see additional file 2, figure S1. Note that CH and NZ share their two major compounds allyl and S-2OH3-butenyl glucosinolate despite being less closely related than CH and EX. *The glucosinolate profiles for P. novae-zelandiae and P. cheesemanii were independently confirmed during the analysis of glucosinolate breakdown products in both species (table 5). Abbreviations: 3MTP, 3-methylthiopropyl glucosinolate; 4MTB, 4-methylthiobutyl glucosinolate; 3MSOP, 3-methylsulfinylpropyl glucosinolate; 4MSOB, 4-methylsulfinylbutyl glucosinolate; allyl, 2-propenyl glucosinolate; 3-butenyl, 3-butenyl glucosinolate; S-2OH3-butenyl, S-2-hydroxy-3-butenyl glucosinolate; 6MSOH, 6-methylsulfinylhexyl glucosinolate; 7MTH, 7-methylthioheptyl glucosinolate 7MSOH, 7-methylsulfinylheptyl glucosinolate; 8MSOO, 8-methylsulfinyloctyl glucosinolate; 1MOI3M, 1-methoxy-indolyl-3-methyl glucosinolate; 4OHI3M, 4-hydroxy-indolyl-3-methyl glucosinolate, 4MOI3M, 4-methoxy-indolyl-3-methyl glucosinolate.

Expectations for glucosinolate hydrolysis were that during glucosinolate hydrolysis P. exile would produce isothiocyanates (predicted by up-regulation of ESM1 transcripts, At3g14210, and down-regulation of ESP proteins, At1g54040) and P. novae-zelandiae would produce nitriles (predicted by strong up-regulation of the ESP protein, At1g54040 and the down-regulation of ESM1 transcripts, At3g14210) (table 4). There were no particular expectations for P. cheesemanii although in the absence of myrosinase-associated enzymes, glucosinolates will most likely convert into isothiocyanates. Interestingly, transcript and protein profiling revealed other myrosinase-associated genes to be up-regulated in P. exile (At1g54000, At1g54010, At1g54030) and P. novae-zelandiae (At1g54000, At1g54030, At3g14220) and down-regulated in P. cheesemanii (At1g54000), P. exile (At3g14220) and P. novae-zelandiae (At1g54030) (table 4). All of these additional loci are located in close proximity to ESP (At1g54040) or ESM1 (At3g14210) in A. thaliana. Due to being recently classified as nationally critical in New Zealand, no plants of P. exile were available for glucosinolate hydrolysis analysis. However, the comparison of glucosinolate hydrolysis products of P. cheesemanii and P. novae-zelandiae, confirmed our predictions. Both species have the same major glucosinolates but whereas in P. cheesemanii all compounds hydrolyzed into isothiocyanates, in P. novae-zelandiae, the two major compounds were converted into their corresponding nitriles and epithionitriles (table 5). This ESP-associated polymorphism in glucosinolate hydrolysis products had been found earlier in two other closely related Pachycladon species, namely P. enysii (up-regulates ESP and produces nitriles) and P. fastigiatum (up-regulates ESM1 and produces isothiocyanates) [3]. However, P. enysii and P. fastigiatum's glucosinolate profiles were different from those of P. cheesemanii and P. novae-zelandiae in that both of the latter produced S-2-hydroxy-3-butenyl, a compound neither present in P. enysii nor P. fastigiatum. The strong differential expression of myrosinase-associated transcripts and proteins is consistent with the hypothesis that glucosinolate hydrolysis has been under selection during the divergence of Pachycladon species.

Table 5 Glucosinolate hydrolysis products (nmol/g fresh weight, mean ± SD) of P. novae-zelandiae and P. cheesemanii

In summary, predictions of glucosinolate metabolism from protein profiling were more accurate than predictions from transcript profiling. Based on protein profiles we predicted that P. novae-zelandiae would accumulate more C4 glucosinolates than the other two species and would produce nitriles in hydrolysis instead of isothiocyanates. Both predictions were confirmed. In contrast, the prediction from transcript profiles that P. cheesemanii would produce more alkenyl glucosinolates than P. novae-zelandiae and P. exile was only validated for P. exile.

Discussion

In this study we compared protein profiles with transcript profiles for three species of New Zealand alpine Pachycladon. We employed a heterologous approach to obtain both transcript and protein profiles using Arabidopsis microarrays for transcript quantification and the Arabidopsis genome as a reference for the quantification of peptide spectra. Such a heterologous approach may limit the number of transcripts and proteins that can be unambiguously identified and whose expression can be reliably quantified. Thus we cannot rule out that these limitations contributed to some of the incongruence we found between transcript and protein patterns. However, the fact that we obtained both transcript and protein data for a set of 1074 genes and that we found significant correlations and overlap in differential transcript and protein expression demonstrates that the benefits of using heterologous approaches outweigh their drawbacks. Heterologous microarray studies have long been perceived as a valuable tool for the study of species diversity [16]. Our study is one of the first that combines the use of heterologous microarrays with heterologous shotgun proteomics in the context of ecological prediction.

We adopted two approaches to estimate congruence between transcript and protein profiles. First, we determined 'overall congruence' through correlations of transcript and protein abundance for a set of 1074 genes surveyed by both microarray analyses and shotgun proteomics. These correlations differed between species and the highest correlation was found in P. cheesemanii (0.52). The coefficients we observed were consistent with those found in other, non-plant systems (0.2-0.5, [17, 18]). We then determined congruence in differential expression by investigating down- stream prediction (from transcriptome to proteome) and up-stream prediction (from proteome to transcriptome). We found that transcript patterns predicted protein patterns best in P. novae-zelandiae (30.2%), followed by P. exile (20%) and P. cheesemanii (19.2%). Up-stream prediction was on average much weaker (12.6%) than down-stream prediction (23.6%), and the results differed markedly between the three species (P. cheesemanii 24.5%, followed by P. exile 10% and P. novae-zelandiae 3.2%). Given considerable incongruence of transcript and protein patterns, we suggest that for the prediction of physiologies consideration needs to be given to both transcript and protein profiles. Although more minor in scope than transcript profiling, protein profiling not only proved to be a valuable tool for validation of transcript profiling but, in this study, was also a more accurate predictor of metabolite patterns than transcript profiling.

Interestingly, proteomes were more dissimilar between species than transcriptomes. This may be due to different protein turnover rates in these species, or it may be explained as a consequence of a greater divergence of the species' proteomes. In other words, depending on down-stream processes such as translation, post-transcriptional modification and protein degradation, relatively similar transcription profiles may give rise to relatively dissimilar protein profiles. Thus small differences in transcript levels may manifest themselves in large differences in protein levels and vice versa, which may also be an explanation for the relatively large degree of discordance between transcript and protein profiles. Transcript and protein profiles largely mirrored inferred phylogenetic relatedness among species [8, 9] with the profiles of P. cheesemanii and P. exile being more similar to each other than each was to the profiles of P. novae-zelandiae. Interestingly, P. cheesemanii and P. novae-zelandiae had more similar glucosinolate profiles than did P. cheesemanii and P. exile. The former species shared their main two compounds allyl and S-2-hydroxy-3-butenyl. P. exile neither produced alkenyl nor C4 glucosinolates, thus its profile is most similar to that of the P. fastigiatum chemotype 2 [3]. In contrast to P. cheesemanii and P. exile, P. novae-zelandiae produced a complex blend of glucosinolates. The finding that similarity patterns in glucosinolate profiles do not correspond to phylogenetic relationships might be explained by selection for glucosinolate metabolism during diversification of Pachycladon species, and is an hypothesis that requires further investigation.

In the present study, a number of candidate genes have been identified as having been potentially important during diversification of Pachycladon species. These include myrosinase-binding proteins two of which, namely, ESP (At1g54040) and ESM1 (At3g14210) have been shown to direct glucosinolate hydrolysis towards nitriles and isothiocyanates and thus directly affect the toxicity and palatability of plant tissue to herbivores [19, 20]. We found the ESP protein up-regulated in P. novae-zelandiae (and confirmed nitrile- and epithionitrile-specifying activity) along with genes that in A. thaliana are physically linked to ESP, such as At1g54030 and At1g54000, as well as At3g14220 which is physically linked to ESM1. In P. exile, there was evidence for up-regulation of At1g54000, At1g54010, At1g54030 and ESM1. Given previous observations [3] of up-regulation of ESM1 in P. fastigiatum (and confirmed isothiocyanate-specifying activity), At1g54030 and At1g54020 in P. fastigiatum and ESP in P. enysii (and confirmed nitrile-specifying activity), we hypothesize that at least two gene clusters have been under selection during Pleistocene species radiation of Pachycladon [8]. These two clusters correspond to five loci on A. thaliana chromosome one (At1g54000-At1g54040) and two loci on chromosome three (At3g14210, At3g14220) which are all annotated as myrosinase-associated proteins. We have begun to characterize both clusters in several Pachycladon species regarding their gene structure and nucleotide diversity patterns.

Other genes of potential adaptive significance in Pachycladon are genes which mediate differences in the glucosinolate profiles of Arabidopsis. These include methylthioalkylmalate synthase (At5g23010), methylthioalkylmalate isomerases (At2g43100, At3g58990) and methylthioalkylmalate dehydrogenases (At5g14200, At1g31180), which specify side chain lengths of aliphatic glucosinolates and oxo-acid-dependent-dioxygenases which catalyze the synthesis of alkenyl (At4g03060) and hydroxyalkenyl (At2g25450) glucosinolates. Their potential importance in divergence of Pachycladon species is suggested in the present study by the up-regulation of At2g43100, At1g31180 and At5g14200 in P. novae-zelandiae and of At4g03060 and At2g43100 in P. cheesemanii. Previous findings of up-regulation of At5g23010, At2g43100, At3g58990, At5g14200, At1g31180, At4g03060 in P. enysii [3], as well as the presence of strikingly different glucosinolate profiles among Pachycladon species (this study and [3]) are also consistent with an hypothesis of adaptive diversification of glucosinolate metabolism in Pachycladon.

In addition to the potential significance of glucosinolate biosynthesis and hydrolysis genes during Pachycladon diversification, we observed expression patterns that may be indicative of ecophysiological differences among Pachycladon species. For example, the up-regulation of different beta carbonic anhydrase genes in P. cheesemanii (At3g01500, AtβCA1, chloroplast-located, At5g14740, AtβCA2, cytosol-located, [13]) and P. novae-zelandiae (At1g23730, AtβCA3, cytosol-located, [13]) suggests differential recruitment of carbonic anhydrases during Pachycladon diversification and regulation of physiological processes requiring the interconversion of carbon dioxide and bicarbonate. Chloroplast isoforms may contribute to maintenance of adequate carbon dioxide concentration for Rubisco whereas cytoplasmic isoforms may provide bicarbonate to phosphoenolpyruvate decarboxylase [21]. This is the primary carboxylating enzyme in C4 and CAM plants and is also an enzyme replenishing tricarboxylic acid cycle intermediates in leaves of C3 plants [21]. Reports of co-localization of carbonic anhydrases with phosphoenolpyruvate decarboxylase and pyruvate kinase in roots indicate a role of carbonic anhydrases in re-assimilation of carbon dioxide into metabolic intermediates also in non-photosynthetic tissues [21]. Thus the differential expression of three beta carbonic anhydrases suggests that P. novae-zelandiae and P. cheesemanii may regulate carbon dioxide and bicarbonate supply to Rubisco and phosphoenolpyruvate decarboxylase differently.

Interestingly, a suite of genes up-regulated in P. cheesemanii have recently been found important in the drought responses of Populus genotypes that exhibit contrasting leaf carbon isotope discrimination measurements (an estimate of intrinsic water use efficiency, [22]). These are genes involved in oxidative stress (ascorbate peroxidase and 2 cys peroxiredoxin) and protein folding (20kDa chloroplastic chaperonin (table 3, [22]). Other genes involved in drought response in Populus were genes involved in carbon fixation (chloroplast glyceraldehyde-3-phosphate dehydrogenase B), photosynthesis (oxygen evolving enhancer 1), ATP synthesis (chloroplast ATP synthase alpha) and protein folding (heat shock cognate 70kDa protein). Up-regulated in P. cheesemanii was a similar set of genes: for carbon fixation (chloroplast glyceraldehyde-3-phosphate dehydrogenase A subunit 2), photosynthesis (oxygen evolving enhancer 3), ATP synthesis (chloroplast ATP synthase gamma) and protein folding (chaperonin 60). In Populus, abundances of some proteins, amongst them a mitochondrial succinyl CoA ligase protein, was found to be correlated with leaf carbon isotope discrimination [22]. The same gene is among the few genes specifically up-regulated in P. exile (table 3). Oxidative stress genes and chloroplast-localized molecular chaperones have also been found up-regulated or constitutively higher expressed in drought resistant genotypes of potato [23] and barley [24]. Among these were homologues of glutathione-S-transferase and glutathione transporters which were also up-regulated in P. novae-zealandiae as well as a homologue of thioredoxin which was up-regulated in P. cheesemanii. Given that many elements of the transcriptomic and proteomic signatures of drought response in Populus, Solanum and Hordeum are found in differential transcript and protein patterns of Pachycladon, we hypothesize differences in drought resistance and water use efficiency between Pachcyladon species. These differences may have evolved in response to differences in soil water availability between species' habitats. Based on our findings we have initiated comparisons of carbon dioxide assimilation rates and carbon isotope discrimination to characterize photosynthesis and water use efficiency in Pachycladon. Furthermore, efforts are underway to measure soil moisture levels and other environmental parameters at native Pachycladon sites.

Other genes potentially interesting for species diversification in Pachycladon are serine racemase (At4g11640, up-regulated in P. cheesemanii ) and two vegetative storage proteins (At5g24770, At5g24780, up-regulated in P. novae-zelandiae, down -regulated in P. exile ). However, their biological roles in plant metabolism are not fully understood, hindering the interpretation of their differential expression in Pachyladon in the context of diversification. Serine racemase is primarily expressed in elongating and developing cells such as root tips, developing leaves and shoot meristems in A. thaliana [25]. The enzyme has been demonstrated to have a higher dehydration than racemisation activity leading to the hypothesis that it has a role in providing pyruvate from serine in highly dividing cells. Pyruvate is a key metabolic intermediate of many pathways, such as glycolysis and the biosynthesis of amino acids, organic acids and fatty acids. Thus, similarly to carbonic anydrase, serine racemase may act in the regeneration of metabolic intermediates. One of the vegetative storage proteins (At5g24770) has been shown to have an 'anti-insect' activity that is associated with its phosphatase activity, and is primarily expressed in Arabidopsis flowers. It is induced by wounding, methyl jasmonate, phosphate deprivation and insect feeding and assumed to also play a role in temporary amino acid storage [26]. Given these multiple roles in abiotic and biotic stress responses, the preferential expression in P. novae-zelandiae may confer this species an advantage in coping with stress compared to P. exile and P. cheesemanii.

Conclusion

In summary, although shotgun proteomics provided information on fewer genes than transcript profiling, it provided a valuable means for validating high throughput gene expression data and predicting physiological attributes of plants. The combined application of transcript and protein profiling has allowed us to identify candidate genes potentially important in adaptive diversification. In Pachycladon we identified genes with confirmed or predicted roles in glucosinolate biosynthesis and hydrolysis, carbon dioxide bicarbonate conversion, water use efficiency and general stress-related processes. From these gene sets we predict that adaptation to herbivores and pathogens and soil moisture have been important in driving diversification of Pachycladon species. Differences in photosynthesis and carbon fixation may indicate selection for different growth rates. Characterization of gene clusters, physiological and habitat differences in Pachycladon are underway to follow up predictions from this comparative profiling study. Microarray analyses of Pachycladon roots are also underway to help test the hypothesis that adaptation to different soil types has been a major driver of diversification in Pachycladon.

Methods

Sampling

Five Pachycladon species were initially sampled (P. cheesemanii: accession Bob's cove, CH; P. exile: accession Awahokomo, EX; P. novae-zelandiae: accession Old man range, NZ; P. fastigiatum, accession Serpentine creek, FA; P. enysii, accession: Avalanche peak, PE). Seeds were stratified at 4°C for a week and then germinated on potting soil in early July 2007. Plants were grown in shade houses at Landcare Research (Lincoln, NZ) for seven months. In February 2008, roots and above-ground plant tissues of each plant were separately flash frozen and ground in liquid nitrogen. Ground material was partially allocated to RNA analysis and partially freeze-dried for protein and metabolite analysis. Replicate plant numbers were as follows: CH, n = 12; EX, n = 13; NZ, n = 12; FA, n = 8; EN, n = 8. P. cheesemanii, P. exile and P. novae-zelandiae were grown until all three species started producing their first seeds. By sampling leaves, flowers and siliques we expected to increase the probability of capturing expression differences. P. fastigiatum and P. enysii were harvested in rosette stage to enable a valid comparison with a previous field study [3]. Here we will only report the results for the comparisons of the three fruiting species (CH, EX, NZ) whereas the results for the P. enysii - P. fastigiatum comparison will be reported elsewhere.

Five descendants of one P. cheesemanii (from Bob's cove) and one P. novae-zelandiae (from Old man range) individual were grown in growth chambers (MPI for Chemical Ecology, Jena, Germany) under Arabidopsis growing conditions as previously described [3] for the analysis of glucosinolate hydrolysis products. P. exile was not available for the follow up experiment on glucosinolate hydrolysis products since its recently changed conservation status to 'nationally critical' [12] prevented the collection of further plants in the wild.

Microarray analysis

RNA was isolated, quantified and quality checked as described in [3] separately for each plant and subsequently pooled for each species. CDNA synthesis, labelling and hybridization were done according to [27]. An Arabidopsis thaliana genome-wide array (spotted with the AROS version 1.0 genome set available from Operon Biotechnologies) was provided by Plant and Food Research (Auckland, NZ). The array had been successfully used in heterologous hybridizations involving FA and EN previously [3]. Hybridizations with DNA from P. enysii, P. fastigiatum and P. novae-zelandiae yielded no differences in signal intensities across species [3]. Moreover, sequence divergence between P. exile and P. fastigiatum, the most distant species in the Pachycladon radiation, has been found to be less than one per cent (0.0088 ± 0.0016 substitutions/site, unpublished data). The diversification of Pachycladon has been estimated to have occurred within the last 0.8 mya [8] which is consistent with the low level of genetic divergence between species. For these reasons, we did not expect the genetic distance between individual Pachycladon genomes to contribute to the differences in gene expression measured using A. thaliana microarrays. A total of 36 two channel microarrays were hybridized: five root samples were hybridized in a loop-wise fashion using ten arrays; five leave samples were hybridized in a loop-like fashion using fourteen arrays; five root and three leaf samples were hybridized in a loop-like fashion using twelve arrays (additional file 3, table S2). Each sample was thus hybridized multiple times while being labelled either with Cy3 or Cy5 (additional file 3, table S2). Data analysis used the R-based package limma [28]. The statistical analysis made use of three loop designs (additional file 3, table S2) involving additional replicates for some species. All 36 arrays were subjected to data pre-processing, e.g. filtering of low intensity signals, background correction, within array normalization and between array normalization. Linear models were fitted to the log2 Cy5/Cy3 ratios separately for each gene. Since the focus of this study was on CH, EX and NZ, the number of differentially expressed genes was calculated for six contrasts. These contrasts involve all pair wise comparisons between the three species (CH vs. EX, EX vs. NZ, CH vs. NZ) as well as comparisons of each species against the remaining two species combined (CH vs. EX+NZ, EX vs. CH+NZ, NZ vs. CH+EX). Each of the six contrasts was determined three times using different pre-processing parameters (data not shown) and the number of differentially expressed genes was determined conservatively by reporting only those genes that had been identified as differentially expressed in all three analyses. P-values were adjusted using the method by Benjamini and Hochberg [29] as implemented in limma. Microarray data have been deposited at the Gene Expression Omnibus genomics data repository hosted by NCBI (GEO accession nr: GSE19017).

Shotgun proteomics

Three randomly selected plants of each species (CH, EX, NZ, FA, EN) were selected to provide triplicates for proteome analysis.

Protein extraction and SDS-PAGE

20 mg freeze dried leaf powder was suspended in 600 μl of 10% TCA in acetone, 0.07% β-mercaptoethanol, and incubated at -20°C for 45 minutes. The extract was centrifuged for 30 minutes at 16,000 × g, and the pellet was collected and washed with 600 μl 100% acetone followed by the centrifugation for 30 minutes at 16,000 × g. The acetone washing step was repeated three times for the complete removal of pigments, lipids and other lipophilic molecules. The colourless resulting pellet was lyophilized in a vacuum centrifuge and protein quantification was performed by Bradford assay. Extracted proteins in sodium dodecyl sulfate (SDS) sample buffer (50 μg per well) were separated on 7.5% Bis-Tris polyacrylamide gels at 180 V for 1 h. After electrophoresis, proteins were visualized using Coomassie Blue. The gels were then washed twice in water (10 min per wash), before individual lanes were cut into 16 slices of equal sizes from top to bottom. Proteins in each slice were reduced, alkylated and subjected to trypsin digestion as previously described [30].

Nanoflow liquid chromatography - tandem mass spectrometry

The tryptic digest extracts from 1DE gel slices were analyzed by nanoLC-MS/MS using a LTQ-XL ion-trap mass spectrometer (Thermo, CA, USA). Reversed phase columns were packed in-house to approximately 7 cm (100 μm i.d.) using 100 Å, 5 mM Zorbax C18 resin (Agilent Technologies, CA, USA) in a fused silica capillary with an integrated electrospray tip. A 1.8 kV electrospray voltage was applied via a liquid junction up-stream of the C18 column. Samples were injected onto the C18 column using a Surveyor autosampler (Thermo, CA, USA). Each sample was loaded onto the C18 column followed by initial wash step with buffer A (5% (v/v) ACN, 0.1% (v/v) formic acid) for 10 min at 1 μL min-1. Peptides were subsequently eluted from the C18 column with 0%-50% Buffer B (95% (v/v) ACN, 0.1% (v/v) formic acid) over 58 min at 500 nL min-1 followed by 50-95% Buffer B over 5 min at 500 nL min-1. The column eluate was directed into a nanospray ionization source of the mass spectrometer. Spectra were scanned over the range 400-1500 amu. Automated peak recognition, dynamic exclusion, and tandem MS of the top six most intense precursor ions at 35% normalization collision energy were performed using the Xcalibur software (version 2.06) (Thermo, CA, USA) [30].

Protein identification

Raw files were converted to mzXML format and processed through the global proteome machine (GPM) software using version 2.1.1 of the X!Tandem algorithm, freely available from http://www.thegpm.org[31, 32]. For each experiment, the 16 fractions were processed sequentially with output files for each individual fraction, and a merged, non-redundant output file was generated for protein identifications with log (e) values less than -1. MSMS spectra were searched against the A. thaliana protein database within GPM containing 30480 protein sequences as of April 2008. The database also incorporated common human and trypsin peptide contaminants. The search was performed against a reversed sequence database to evaluate the false discovery rate (FDR). Search parameters included MS and MS/MS tolerances of ± 2 Da and ± 0.2 Da, tolerance of up to 3 missed tryptic cleavages and K/R-P cleavages. Fixed modifications were set for carbamidomethylation of cysteine and variable modifications were set for oxidation of methionine. Only proteins that were present in all replicates and had a minimum of 2 peptides were included in further analysis. After filtering, protein level false discovery rates were calculated at less than 1% (M. Mirzaei, D. Pascovici, T. Keighley, C. Voelckel, P. B. Heenan, P. A. Haynes: Shotgun proteomic profiling of five species of New Zealand Pachycladon, submitted).

Quantitative proteomic analysis

Protein abundance data were calculated based on normal spectral abundance factor (NSAF) values as described previously [7]. For each sample, i, the number of spectral counts (SpC ) identifying a protein, k, was divided by the molecular weight of the protein in kDa. (SpC/MW) k values were then divided by the sum of (SpC/MW) for all (N ) proteins in the experiments to give the NSAF i values. Spectral counts identifying more than one isoform of a gene locus were combined and expressed as NSAF per locus. For each protein k, the sum S of all spectral counts obtained from the three replicates was calculated, and the corresponding NSAF S were deduced and used as a measure of protein abundance. Proteins reproducibly present in all three replicates of at least one of the five species were included in further analyses (1489 proteins). Here we focus on proteome differences between the three fruiting species CH, EX and NZ. Using NSAF i , we performed Wilcoxon Rank tests to determine species-specific expression (CH vs EX+NZ, EX vs CH+NZ and NZ vs CH+EX) and t-tests to determine up- and down-regulation in all pair wise comparisons of the three species (CH vs EX, EX vs NZ, CH vs NZ). The use of t-tests in the pair wise comparison was possible because once a spectral fraction was added to the spectral count data, the resulting NSAF values were normally distributed. However, NSAF distributions in the three species comparisons were not sufficiently normal to warrant the application of a t-test. Hence the Wilcoxon test has been used instead. P-values were adjusted for multiple testing using the Benjamini-Hochberg correction [29].

Transcript-protein correlations

Correlation of transcript and protein levels was estimated by correlating abundances of a common set and by intersecting lists of species-specific transcripts and proteins. For the former approach log2 fluorescence intensities for transcripts were determined by a separate channel analysis as implemented in the limma package [33]. Three such analyses with different pre-processing parameters were done with the most conservative approach yielding log2 fluorescence intensities for 9404 genes. This list was intersected with the list of 1489 proteins and their respective NSAF S , resulting in a common set of 1074 loci. Given the non-normal distributions of transcript and protein data, Spearman-correlation coefficients were calculated to estimate correlations within transcriptomes, within proteomes and within transcriptomes and proteomes of each species. Lists of differentially expressed transcripts and proteins were obtained as described above and intersected to determine the overlap between them (figure 1). Statistical significance of this overlap was evaluated by comparison with a distribution of overlap values generated from 10000 random calculations.

Metabolite analysis

Glucosinolates

For glucosinolate analysis, 100 mg of freeze-dried leave tissue from 8-13 plants of each of the five species was extracted with 80% methanol (v:v) and HPLC-UV-quantified after conversion into desulfoglucosinolates as previously described [3]. Only glucosinolate profiles from the three fruiting species were analyzed. Profiles from individual plants were clustered using Euclidean distance and the Ward clustering algorithm as implemented in the R package cluster [34].

Glucosinolate hydrolysis products

Glucosinolates along with their glucosinolate hydrolysis products were determined from five P. cheesemanii (accession: Bob's cove) and P. novae-zelandiae (accession: Old man range) plants after autolysis of fresh plant samples in water, extraction of glucosinolate hydrolysis products into dichloromethane and analysis by gas chromatography-flame ionisation detection as described in [3].

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Acknowledgements

We especially thank Mark Westoby and the ARC-NZ Research Network for Vegetation Function for facilitating this international collaboration. We thank the MPICE gardening team for growing plants, Beate Rothe for help with glucosinolate analysis and Patrick Biggs for help with the statistical analysis. Our work was funded by the NZ Marsden Fund and the Alexander von Humboldt Foundation through a Feodor Lynen Fellowship to CV. PH acknowledges support from the NSW Government in the form of a Biofirst Fellowship.

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Correspondence to Peter J Lockhart.

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Authors' contributions

CV and PBH undertook plant growth, sampling and RNA extractions. MM, DP and PAH obtained and analyzed protein data. LL, SS and BJ labeled and hybridized RNA samples to microarrays and provided expression raw data. MR quantified glucosinolates and glucosinolate hydrolysis products. CV analyzed transcript, protein and metabolite data. CV and PJL wrote the paper. All authors edited and approved the final manuscript.

Electronic supplementary material

12862_2009_1367_MOESM1_ESM.XLS

Additional file 1: Table S1. Table S1 summarises expression statistics for differentially expressed transcripts and proteins. Six worksheets contain details on up-regulated transcripts and proteins in P. cheesemanii, P. exile and P. novae-zelandiae, respectively. (XLS 919 KB)

12862_2009_1367_MOESM2_ESM.DOC

Additional file 2: Figure S1. Figure S1 summarises individual and total glucosinolate contents of P. cheesemanii, P. exile and P. novae-zelandiae. (DOC 78 KB)

Additional file 3: Table S2. Table S2 illustrates the microarray hybridization scheme. (DOC 54 KB)

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Voelckel, C., Mirzaei, M., Reichelt, M. et al. Transcript and protein profiling identify candidate gene sets of potential adaptive significance in New Zealand Pachycladon. BMC Evol Biol 10, 151 (2010). https://doi.org/10.1186/1471-2148-10-151

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