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Copyright © 2008, The American Society for Biochemistry and Molecular Biology Integration of Metabolomic and Proteomic Phenotypes Analysis of Data Covariance Dissects Starch and RFO Metabolism from Low and High Temperature Compensation Response in Arabidopsis Thaliana* ![]() From the ‡Max Planck Institute of Molecular Plant Physiology, 14424 Potsdam, Germany, §GoFORSYS (Golmer Forschungseinrichtung für Systembiologie), Institute of Biochemistry and Biology, University of Potsdam, 14424 Potsdam, Germany, ‖School of Life Sciences, Arizona State University, Tempe, Arizona 85287, **CC-FG (Competence Center - Functional Genomics), Ernst-Moritz-Arndt- University of Greifswald, Germany, ‡‡Institute of Biochemistry and Biology, University of Potsdam, Germany, §§Department of Molecular Plant Physiology and Systems Biology, University of Vienna, Austria ¶¶To whom correspondence should be addressed: Ph.: 49-331-567-8109; Fax: 49-331-567-8134; E-mail: weckwerth/at/mpimp-golm.mpg.de ¶These authors contributed equally to this work. Received June 11, 2007; Revised April 7, 2008. Author's Choice - Final Version Full Access Creative Commons Attribution Non-Commercial License applies to Author Choice Articles This article has been cited by other articles in PMC.Abstract Statistical mining and integration of complex molecular data including metabolites, proteins, and transcripts is one of the critical goals of systems biology (Ideker, T., Galitski, T., and Hood, L. (2001) A new approach to decoding life: systems biology. Annu. Rev. Genomics Hum. Genet. 2, 343–372). A number of studies have demonstrated the parallel analysis of metabolites and large scale transcript expression. Protein analysis has been ignored in these studies, although a clear correlation between transcript and protein levels is shown only in rare cases, necessitating that actual protein levels have to be determined for protein function analysis. Here, we present an approach to investigate the combined covariance structure of metabolite and protein dynamics in a systemic response to abiotic temperature stress in Arabidopsis thaliana wild-type and a corresponding starch-deficient mutant (phosphoglucomutase-deficient). Independent component analysis revealed phenotype classification resolving genotype-dependent response effects to temperature treatment and genotype-independent general temperature compensation mechanisms. An observation is the stress-induced increase of raffinose-family-oligosaccharide levels in the absence of transitory starch storage/mobilization in temperature-treated phosphoglucomutase plants indicating that sucrose synthesis and storage in these mutant plants is sufficient to bypass the typical starch storage/mobilization pathways under abiotic stress. Eventually, sample pattern recognition and correlation network topology analysis allowed for the detection of specific metabolite-protein co-regulation and assignment of a circadian output regulated RNA-binding protein to these processes. The whole concept of high-dimensional profiling data integration from many replicates, subsequent multivariate statistics for dimensionality reduction, and covariance structure analysis is proposed to be a major strategy for revealing central responses of the biological system under study. Metabolomic technologies enable the very rapid non-targeted analysis of metabolites and provide a diagnostic tool for pattern recognition of biological samples (2–5). Typical pattern recognition methods are variance discrimination algorithms such as principal components analysis (PCA)1 or independent component analysis (ICA) (2, 6–9). Independent component analysis is an extension of covariance analysis by looking for kurtosis thresholds or high entropy (8, 10) and thus adds a further value for biological interpretation. Variance discrimination of samples relies strongly on a high biological variability of independent biological replicate analysis (4, 11, 12). Recently, we demonstrated that these covariance matrixes of experimentally determined metabolite levels are connected with the elasticities of pathway reaction networks (13). Consequently, changes in the structure of these covariance networks reveal biochemical regulations (4). This was confirmed by using topology studies of differential metabolite correlation/covariance networks to investigate a silent phenotype sucrose synthase antisense plant and alterations in a starch-deficient Arabidopsis thaliana mutant (9, 14). Further we used a computational kinetic model of the Calvin cycle coupled to sucrose biosynthesis in plant leaf metabolism to demonstrate changes in metabolite correlation/covariance networks as a response to protein phosphorylation and enzymatic regulation (15, 16). The statistical model implies that variance discrimination analysis such as PCA will optimize sample grouping according to differences in biochemical regulation, thus providing for the first time a fundamental relationship between large scale profiling methods such as metabolomics combined with multivariate data analyses, biochemical regulation, and pattern recognition (4, 12) (see Fig. 1
Molecular responses of temperature acclimation at 4 and 32 °C after 3 days were investigated in a sugar accumulating starch-deficient A. thaliana plant mutant phosphoglucomutase (PGM) and its corresponding wild-type (WT) ancestor. Metabolites and proteins were identified and quantified from the same tissue samples according to Weckwerth et al. (11). Typical metabolite stress markers and novel members of the RNA-binding protein family indicating involvement of post-transcriptional mechanisms were identified with a significant impact on genotype discrimination, temperature treatment, and cold acclimation, respectively. We propose the applicability of the whole process to all kinds of biological systems revealing systemic responses to environmental conditions and correlative sets of biomarkers. EXPERIMENTAL PROCEDURES Reagents— Chemicals were purchased from Sigma (Taufkirchen, Germany), except d-sorbitol-P13PCB6B, dl-leucine-2,3,3-dB3B, and l-aspartic acid-2,3,3-dB3B, which were obtained from Isotech (Miamisburg, OH). Acetonitrile was from J. T. Baker (Deventer, Netherlands), endoproteinase Lys-C from Roche Applied Science, and PoroszymeP®P immobilized trypsin from Applied Biosystems (Foster City, CA). Plant Material and Harvest— A. thaliana plants Col-0 (wild-type) and a plastidic PGM mutant (27) were cultivated simultaneously under identical phytotron conditions set as follows: The light conditions were 160 μE for 8 h followed by 16 h at 0 μE (darkness). Relative humidity and temperature conditions were set to 70% and 20 °C during the light and dark period, respectively. Plants were harvested at the developmental stage 5.10 (28) after 3 days at 4, 20 (control), and 32 °C, with 12 different plants per treatment and genetic background, respectively. Enzymatic activity was quenched by immediately freezing the plants in liquid nitrogen. The material of two plants per experiment was pooled to give six samples per treatment and genetic background. Tissues were stored at −80 °C until further analysis. Extraction Procedure and Sample Preparation for Metabolite and Protein Analysis from One Sample— Frozen leaf tissue was individually homogenized under liquid nitrogen using a pre-chilled mortar and pestle. Approximately 50 mg of powdered material was used for analysis. Simultaneous extraction of metabolites and proteins from individual plants was performed as described in Weckwerth et al. (11, 29) with modifications. For metabolite extraction, 1 ml of the extraction mixture containing methanol:chloroform:water (2.5:1:0.5 v:v:v) and 10 μl of an internal standard solution containing 2 mg/ml each d-sorbitol-P13PCB6B, dl-leucine-2,3,3-dB3B, and l-aspartic acid-2,3,3-dB3B was added. Soluble metabolites were extracted by mixing the solution at 4 °C for 10 min. After centrifugation for 6 min at 20,000 rpm, the supernatant was separated into chloroform and water/methanol phases. The aqueous phase was used for metabolite analysis. Samples were derivatized by dissolving the dried metabolite pellet in 20 μl of methoxyamine hydrochloride (40 mg/ml pyridine) and shaking the mixture for 90 min at 30 °C. After the addition of 180 μl of N-methyl-N-trimethylsilyltrifluoroacetamid, the mixture was incubated at 37 °C for 30 min with vigorous shaking. A solution of even numbered fatty acid methylesters, methylcaprylate (C8-ME), methylcaprate (C10-ME), methyllaurate (C12-ME), methylmyristate (C14-ME), methylpalmitate (C16-ME), methylstearate (C18-ME), methyleicosanoate (C20-ME), methyldocosanoate (C22-ME), lignoceric acid methylester (C24-ME), methylhexacosanoate (C26-ME), methyloctacosanoate (C28-ME), and triacontanoic acid methylester (C30-ME) (each 0.8 mg/ml CHClB3B) was spiked into the derivatized sample prior to injection into the gas chromatography (GC). The remaining proteins pellets were dissolved in 200 μl of protein extraction buffer (50 mm HEPES-KOH, 40% sucrose (w/v), 1% β-mercaptoethanol, pH 7.5) per 50 mg of fresh weight. 600 μl of (3 volumes) TE-buffer (10 mm Tris, 1 mm EDTA-Na2)-equilibrated phenol were added and shaken for 30 min at 4 °C. After centrifugation at 4,000 × g and 4 °C for 8 min, the soluble proteins were dissolved in the upper phenolic phase (the high sucrose concentration causes a phase inversion). The phenolic phase was separated and the proteins precipitated out of the phenolic phase overnight in 5 volumes of ice-cold acetone. After centrifugation at 4,000 × g and 4 °C for 8 min the pellets were washed 3 times with ice-cold methanol and stored at −80 °C until further use. The dried protein pellets were then digested in two steps using endoproteinase Lys-C (1:100) first and then PoroszymeP®P immobilized trypsin according to the manufacturer's instructions (buffer 1: Lys-C digestion buffer (50 mm Tris, 8 m urea, 100 mm methylamine, pH 7.5); buffer 2: trypsin digestion buffer (50 mm Tris, 10% acetonitrile, 10 mm CaCl2, pH 7.5), after Lys-C digestion the sample is 1:4 diluted to have an end concentration of 2 m urea). Protein content was determined using the Bradford assay employing ovalbumin as the standard protein. The protein digest was desalted with SPECP®P C18 columns. After lyophilization the pellet was stored at −20 °C until use. GC-TOF-MS Analysis— The GC-TOF-MS analysis was performed on an HP 5890 gas chromatograph with deactivated standard spit/splitless liners containing glasswool (Agilent, Böblingen, Germany). One-μl sample was injected in the splitless mode at 230 °C injector temperature. GC was operated on an MDN-35 capillary, 30 m × 0.32 mm inner diameter, 25-μm film (SUPELCO, Bellefonte, PA), at constant flow of 2-ml/min helium. The temperature program started with 2 min isocratic at 85 °C, followed by temperature ramping at 15 °C/min to a final temperature of 360 °C, which was held for 8 min. Data acquisition was performed on a Pegasus II TOF mass spectrometer (LECO, St. Joseph, MI) with an acquisition rate of 20 scans sP−1P in the mass range of m/z = 85–600. The obtained data were analyzed at first by defining a reference chromatogram with the maximum number of detected peaks over a signal/noise threshold of 50. Afterward all chromatograms were matched against the reference with a minimum match factor of 800. Compounds were annotated by retention index and mass spectra comparison to a user defined spectra library. Selected unique fragment ions specific for each individual metabolite were used for quantification. LC-MS Shotgun Protein Analysis— Prior to MS analysis, pellets of protein digests were dissolved in 5% formic acid. 10 μg per sample were concentrated on a pre-column and subsequently loaded onto a 50 cm silica-based C18 RP monolithic column (50 μm inner diameter) (30). Elution of the peptides was performed using a 4 h gradient from 100% solvent A (5% acetonitrile, 0.1% formic acid in water) to 100% solvent B (90% acetonitrile, 0.1% formic acid in water) using the Agilent nano high pressure liquid chromatography (HPLC) system (Agilent, Böblingen, Germany) with a flow rate of 400 nL per min. Eluting peptides were analyzed with a linear ion trap mass spectrometer (Thermo Electron, San Jose, CA) operated in a data-dependent mode. Each full MS scan was followed by three MS/MS scans in which the three most abundant peptide molecular ions were dynamically selected for collision-induced dissociation using a normalized collision energy of 35%. The temperature of the heated capillary and electrospray voltage was 150 °C and 1.9 kV, respectively. After MS analysis, DTA files were created from raw files and searched against a database using Bioworks 3.1. With DTASelect, a list of identified proteins was obtained using the following criteria: Xcorr: −1 2.0, −2 2.0, −3 3.3 (31) for hits with at least 2 different peptides. For quantitative analysis, Contrast was used to compare and align identified proteins and peptides from different runs and to determine the ion count per protein (32). Only proteins were included in the list, which at least appeared in five of the six independent replicates of one experimental treatment thereby ensuring reproducibility of the analysis. According to Liu et al. (2004) (33) the cumulative sum of recorded peptides per protein called spectral count was applied as a quantitative measure (33). All the identified peptide product ion spectra can be downloaded from ProMEX to reveal identification criteria and to judge the quality of the spectra. ProMEX is a mass spectral reference library for plant proteomics and can be searched also with unknown samples (34). Statistical Data Analysis— All data were normalized to mg fresh weight and stable isotope-labeled standard compounds. Statistical tests were performed in Matlab® 7.0 (Mathworks, Natick, MA) on the basis of log-transformed data. For ICA an in-house Matlab script was used (10). The covariance of the data was first analyzed by PCA giving a restricted set of principal components covering 95% of variance. ICA was then applied to these new components, and new independent components were ranked by the kurtosis measure. The contributions of each metabolite/protein to an independent component can be obtained by combining the transformation matrix W of PCA with the transformation matrix V of ICA to a direct transformation U = W*V. The elements of the i-th vector in U represent the individual contributions; the loading (see Fig. 3A
To test for differences in the median concentrations of metabolites and proteins between stressed and unstressed plants we used Kruskal-Wallis one-way analysis (ANOVA) by ranks implemented in Matlab® 7.0. Differences were considered statistically significant at p < 0.05. RESULTS AND DISCUSSION Parallel Metabolite and Protein Analysis by Combining an Integrative Extraction Protocol with GC-TOF-MS and LC-Ion Trap-MS Analysis— Plant material was extracted using an extraction protocol for sequential isolation of metabolites and proteins from one sample to minimize technical standard deviation, increase sample throughput, and exploit metabolite-protein covariance for sample classification (9, 11, 29) (see Fig. 1 All the identified proteins and their corresponding peptide product ion spectra can be downloaded from ProMEX site, a mass spectral reference library for plant proteomics (34). This library can also be used to search with unknown samples for protein identification. All the entries in the data base indicate the experimental conditions under which the protein was detected (34). Correlation Network Topology Analysis and Sample Pattern Recognition Reveal the Structure of the Metabolite-Protein Covariance Matrix— In recent studies we have proposed that the differential correlation between two components of a data matrix, say a specific metabolite and a protein, reflects the underlying biochemical regulation (4, 9, 14, 15). Following this line we analyzed the correlation network topology of the starch-deficient mutant PGM versus the corresponding wild-type under different temperature regimes 4, 20, and 32 °C (see Fig. 2
ICA of the metabolites alone gave almost complete separation of sample groups (data not shown). The extracted transformation vectors IC1–IC3 indicated the occurrence of specific metabolites giving similar relative metabolite level responses for different processes because of a time-lag effect or analogous biochemical regulation. This was indeed recently demonstrated in an analysis of temperature-treated plants (43) and the diurnal rhythm of a plant (9). In contrast, the sample pattern of the proteins in ICA revealed a sample pattern according to the performed experiment, showing the genotype separation on the one hand and the temperature gradient on the other. No further biological characteristics were observed using the protein data alone. In Fig. 1 Biomarker Identification Based on Combined Metabolite-Protein Covariance Analysis— Because of a clear sample discrimination by ICA in Fig. 3 In Fig. 4A
Fructose is highly accumulated in PGM (see supplemental Table S1), thus PGM and WT separate based on the loadings for fructose (see Fig. 4A Because of an improved recognition of sample pattern, which is demonstrated with “proof of concept-metabolite markers” like proline, raffinose, and galactinol (see above), it is possible to assign specific proteins to these processes. In a recent study we investigated the proteins separating PGM and WT (9). The loadings of proteins with respect to their differentiating capability can be seen in the biclustering diagram in Fig. 4A High protein loadings for IC3, general temperature response similar for 4 and 32 °C, is observed for At2g44650 (see Fig. 4A IC2 encodes differences between 4 and 32 °C temperature acclimation (see Fig. 3A Other protein markers with very high loadings on IC2 were also RNA-binding proteins, which is also in agreement with recent studies (53, 57–70). Kim et al. (71) demonstrated that over-expression of a glycine-rich RNA-binding protein resulted in enhanced cold-shock resistance in Escherichia coli. A novel candidate At2g21660 (ATGRP7) is a homologue of this protein family. It was identified in our study as the strongest cold treatment marker increasing under cold and decreasing under heat (highest loadings on IC2; see Fig. 4
CONCLUSION A method is presented combining high throughput metabolite and protein profiling for the investigation of systemic responses of A. thaliana to abiotic stress. The integration clearly benefits from the heterogeneity of the data, thus, improves sample pattern recognition and therefore biological interpretation and identification of potential correlative metabolite-protein biomarker. However, a principle drawback of the presented profiling methods is its unbiased nature. For instance, the coverage of metabolic enzymes is comparatively low, as is the overlap between metabolites and their corresponding enzymes. This agrees with the observation that sample pattern recognition is indeed complementary for both of the molecular fractions, metabolites, and proteins (9, 80). Consequently, the integration of metabolite and protein data adds a further level of complementary information resulting in a better sample pattern recognition. However, for a detailed analysis of the interaction between metabolic enzymes and their corresponding metabolites, targeted approaches are much more feasible (81–84). Also, the quantitative pathway activity information captured in the metabolic network can be compared at the system level with metabolic fluxes estimated by metabolic flux analysis that uses only the metabolic data set (85). In future work system responses to abiotic temperature stress can be compared based on such modeling approaches and by the integration of metabolic and proteomic data sets. In summary, metabolite profiling using GC-TOF-MS provides a very rapid and comprehensive technique for characterizing biological samples based on identification and quantification of hundreds of compounds. However, sample classification generally relies on covariance between metabolites. Integration of proteomics data from the same sample introduces a further level of causality and reveals an increased information extraction based on complementary sample patterns. Consequently, correlated metabolites and proteins can be assigned to distinct biological processes, thereby generating new hypothesis about the interaction of different biochemical building blocks. Besides transcript profiling the integration of enzyme activities represents an important complement to the described mass spectrometry-based protein profiling method. Especially, high throughput platforms for measuring many different enzymatic activities at the same time are very useful (86). Another very important aspect is flux measurement. Especially in the case of abiotic stress it will be interesting to reveal metabolic fluxes between central sugar metabolism and the RFO because these RFO were identified in our study as rather independent general stress markers. The whole concept of high-dimensional data integration from many replicates and multivariate statistics for covariance structure analysis is proposed to be a unique way to reveal systemic responses of the biological system under study, which is a prerequisite for gene/protein function discovery in the genome/systems biology era. Supplemental Data
Acknowledgments We thank Megan McKenzie for revising the manuscript. Footnotes Published, MCP Papers in Press, April 28, 2008, DOI 10.1074/mcp.M700273-MCP200 Author's Choice—Final version full access. 1The abbreviations used are: PCA, principal components analysis; ICA, independent component analysis; WT, wild-type; GC, gas chromatography; TOF-MS, time-of-flight mass spectrometry; RFO, raffinose family oligosaccharides; GAPDH, glyceraldehyde-3-phosphate dehydrogenase; PGM, phosphoglucomutase. *This work was supported by the Max Planck Society. The costs of publication of this article were defrayed in part by the payment of page charges. This article must therefore be hereby marked “advertisement” in accordance with 18 U.S.C. Section 1734 solely to indicate this fact. SThe on-line version of this article (available at http://www.mcponline.org) contains supplemental Tables S1 and S2. REFERENCES 1. Ideker, T., Galitski, T., and Hood, L. 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