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Molecular & Cellular Proteomics 8:612-623, 2009.
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| ABSTRACT |
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A role of specific lipid domains composed of sterols and sphingolipids for cellular sorting and trafficking processes was proposed more than 20 years ago (3). It is hypothesized that the distinct lipid composition of lipid rafts creates a special environment that facilitates protein-protein interactions, protein recruitment in cellular trafficking events, and endocytosis and signaling (4–6). Natural sterols and sphingolipids from plants, fungi, or animals have been shown to be capable of inducing the formation of membrane heterogeneities (7). Recent studies on giant blebs produced from cultured mammalian cells allowed visualization of patchy lipid heterogeneity (8). These patches had a temperature-dependent size up to micrometer scales.
In mammalian cells, lipid rafts have been shown to play a role in many different events: endocytosis via caveolae (9), virus budding or pathogen entry (10), regulation of exocytosis (11), actin cytoskeleton organization (12), and apoptosis (13). Cholesterol-dependent segregation of lipid raft proteins from non-raft proteins was visualized in mammalian cells and is consistent with the view that raft domains in the plasma membrane of cells are usually small and highly dispersed, but their size can be modulated by oligomerization of raft components (2).
Although in the mammalian system and in yeast the concept of lipid rafts and their role in cellular processes has been widely studied using a variety of biochemical and cell biological tools, in plants our actual knowledge of the composition and role of such membrane microdomains remained under debate for a long time (14). In recent years, several proteomics studies were carried out on detergent-resistant membrane fractions of Arabidopsis, tobacco, mustard seedlings, or Medicago nodules (15–18). However, most of these studies present long lists of proteins identified in the biochemical preparation of detergent-resistant domains and compare them with whole plasma membrane preparations. Thus, a quantitative proteomics study allowing a distinction of proteins co-purifying in the detergent-resistant membrane (DRM)1 fraction versus true proteins dependent on sterol-rich membrane regions has not yet been carried out in plants.
The aim of this study was to characterize the composition of plasma membrane detergent-resistant domains using comparative quantitative proteomics techniques in combination with selective disruption of the sterol-rich membrane domains by chemical treatment. Thereby a differentiation between co-purifying "non-raft" proteins and sterol-dependent "raft-associated" proteins was possible, giving new insights into the lipid raft model in plants.
| Materials and Methods |
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Preparation of Plasma Membrane and Detergent-resistant Fraction—
Plasma membranes were purified from the microsomal pellet (100,000 x g) over a two-phase system of dextran and polyethylene glycol (22) using 6.4% dextran, 6.4% polyethylene glycol, 5 mM phosphate buffer, pH 7.8, and 5 mM KCl. Protein concentration was determined by Bradford assay. The plasma membrane pellet was then treated with the non-ionic detergent Triton X-100 for 30 min at 4 °C at a ratio of protein to detergent of 1:15 and shaken at 60 rpm. Treated membranes were then taken up in 2.4 M sucrose to a final concentration of 1.8 M and overlaid by a sucrose step gradient from 1.8 to 0.15 M. After gradient centrifugation at 250,000 x g for 18 h, a ringlike structure was visible at the interface of 1.4 and 0.15 M sucrose concentrations. The fractions of 1 ml above and 1 ml below the interface were collected as the detergent-resistant membrane fraction. The DRM fraction was diluted five times with 10 mM Tris-HCl buffer, pH 8, and membranes were pelleted at 200,000 x g for 1 h.
Isolated plasma membranes (300 µg) were treated with the sterol-disrupting agent methyl-β-cyclodextrin (mβcd) at a final concentration of 5, 15, or 30 mM for 1 h at 37 °C as described previously (23). Membranes were then washed in phosphate buffer and pelleted prior to Triton X-100 treatment for DRM preparation.
Protein Analysis and Identification by LC/MS/MS—
DRMs were pelleted at 100,000 x g. Pellets were resuspended in 6 M urea and 2 M thiourea for denaturation and were subsequently subjected to reduction in DTT, and free SH groups were carbamidomethylated using iodoacetamide (24). This was followed by digestion with Lys-C and with trypsin (24). Digested samples were desalted over C18 Stop And Go Extraction tips (Empore Disk, Varian Inc.) (25).
Tryptic peptide mixtures were analyzed by LC/MS/MS using nanoflow HPLC (Proxeon Biosystems) and an Orbitrap hybrid mass spectrometer (LTQ-Orbitrap, Thermo Electron) as mass analyzer. Peptides were eluted from a 75-µm analytical column (Reprosil C18, Dr. Maisch GmbH) on a linear gradient running from 4 to 64% acetonitrile in 90 min and sprayed directly into the LTQ-Orbitrap mass spectrometer. Proteins were identified by MS/MS by information-dependent acquisition of fragmentation spectra of multiple charged peptides. Up to five data-dependent MS/MS spectra were acquired in the linear ion trap for each FTMS full-scan spectrum acquired at 30,000 full-width half-maximum resolution settings with an overall cycle time of approximately 1 s. Fragment MS/MS spectra from raw files were extracted as DTA files and then merged to peak lists using the default settings of DTASuperCharge version 1.18 (SourceForge, Inc.) with a tolerance for precursor ion detection of 50 ppm.
Fragmentation spectra were searched against a non-redundant Arabidopsis protein database (TAIR8, version April 2008; 31,921 entries) using the Mascot algorithm (version 2.2.0; Matrix Science). The database contained the full Arabidopsis proteome and commonly observed contaminants (human keratin, trypsin, and lysyl endopeptidase); thus no taxonomic restrictions were used during the automated database search. The following search parameters were applied: trypsin as cleaving enzyme; peptide mass tolerance, 10 ppm; MS/MS tolerance, 0.8 Da; and one missed cleavage allowed. Carbamidomethylation of cysteine was set as a fixed modification, and methionine oxidation was chosen as a variable modification. "15N metabolic labeling" was chosen as a quantitative method for Mascot database searching, allowing identification of labeled and unlabeled peptides within the same database search. Only peptides with a length of more than five amino acids were considered.
In general, peptides were accepted without manual interpretation if they displayed a Mascot score greater than 31 (as defined by Mascot p < 0.01 significance threshold). Peptides with a score greater than 24 were manually inspected requiring a series of three consecutive y or b ions to be accepted; in addition, mass accuracy and delta scores were taken into account when single peptides were accepted. Original MS/MS spectra considered for quantitation in this analysis will be deposited in the Promex spectral library, and spectra of accepted "single peptide" hits are included in supplemental Fig. 1. Using the above criteria for protein identification, the rate of false identifications as determined by the "decoy database" function implemented in Mascot version 2.2.0 was 3.4% on a 95% confidence level. The false positive rate in 15N-labeled samples was higher because of increased ambiguity in protein identification resulting from a higher number of isobaric amino acids in labeled samples (26).
Peptide assignment to proteins was done according to the Mascot default settings, i.e. each redundant peptide was primarily assigned to the highest scoring protein. Isoforms of protein only appear in the tables as a separate protein entry if they were assigned at least one unique peptide. A summary of all identified peptides and their respective quantitative values is presented in supplemental Table 2.
Quantitative Protein Analysis—
Ratios between labeled and unlabeled forms of each tryptic peptides were calculated in MSQuant version 1.4.3 (released May 30, 2008; SourceForge, Inc.). Quantitative information was taken from extracted ion chromatograms of the labeled and unlabeled form of each identified peptide. Thereby co-elution of both peptide forms was made a requirement, and it was manually inspected in MSQuant that the pairs of labeled and unlabeled forms actually fit with the expected isotope envelope distributions. Peptides that did not meet these criteria were omitted from the analysis as described previously (21).
Intensity ratios of the labeled 15N form to unlabeled 14N form of each identified peptide were averaged across all peptides belonging to the same protein within one experimental set. Peptides conserved in multiple members of a protein family were identified using the "show subsets" option in Mascot, and the respective peptides present in multiple proteins were excluded from quantitative analysis if the redundant peptides displayed ratios significantly different (p < 0.05;
2 test) from unique peptides of the same protein (27, 28). Peptides meeting the criteria for sequence identification but for which only 14N forms or only 15N forms were quantified were manually assigned the ratios 0.1 (14N form only) or 10 (15N form only). This affected only peptides for which the pairing labeled or unlabeled peak was at noise level. Because quantitative information was extracted from full-scan spectra with a very low level of noise as obtained in the Orbitrap mass analyzer, no minimum threshold was set for quantitation (29). Protein abundance ratios were converted into log2 values. Only those proteins were considered for further analysis for which intensity ratios were obtained in both paired reciprocal experiments. Ratios of 15N to 14N forms and the respective standard deviation as calculated by MSQuant for each identified peptide and the number of peptides used for quantitation for each protein are presented in supplemental tables. The average relative error of quantitation for all 465 quantified proteins was 10.6%.
Reciprocal Labeling Experimental Setup and Statistical Analysis—
For comparative proteomics analysis, plasma membranes of 15N-labeled cell cultures were treated with mβcd, whereas plasma membranes of control cells were left untreated. In a paired reciprocal experiment using the same starting material, 14N cells were treated with mβcd, whereas 15N cells were left untreated. Labeled and unlabeled plasma membranes were treated with Triton X-100 in one combined sample prior to DRM preparation over a sucrose gradient. The work flow of the experimental setup is shown in Fig. 1. The paired reciprocal experiments (Fig. 1) were independently repeated four times. Protein ratios of each replicate experimental set were z-score-standardized to allow comparison between experiments. In result tables and figures, the averages and S.D. of z-transformed protein ratios from all biological replicate experiments are presented. In general, 60% of all identified proteins were found in at least two independent reciprocal experimental setups, and 25% of all identified proteins were found in all four replicate experiments (supplemental Fig. 2).
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In summary, the data analysis work flow is based on first determining the variation between cultures based on 15N/14N ratios in independent 1:1 mixtures before mβcd treatment is applied. The ratios in two control experiments showed normal distribution (see Fig. 2B) and were used to define ratio-dependent standard deviations (31). In a second step, the distances to the diagonal in a graphic display of ratios in reciprocal experiments (Fig. 2A) was calculated. Then for each data point the ratio between the distance and the S.D. was calculated, and the p value was determined by a two-tailed t distribution. Subsequently a multiple testing correction was applied to the whole data set using the false discovery rate method introduced by Benjamini and Hochberg (32). Reported proteins correspond to a cutoff false discovery rate of 5%.
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-cholestane (Sigma-Aldrich) was used as internal standard. Extracted lipids were hydrolyzed with 4 M HCl for 1 h at 80 °C and extracted with 2-hexane. The solvents were evaporated, and samples were diluted in 1:1 chloroform:methanol.
Sterols were subsequently separated by UPLC (Waters) over a C18 column during a 25-min gradient using water and acetonitrile as mobile phases. Eluting peaks were directly ionized by APCI before detection in an LTQ-Orbitrap mass spectrometer (Thermo Fisher). Ions were detected in the m/z range 100–1000, and 500,000 ions were collected in the Orbitrap detector set to a resolution of 30,000 full-width half-maximum. Total ion chromatograms were extracted, and peak volumes were compared relative to the internal standard 3β-hydroxy-5
-cholestane.
Bioinformatics Analysis and Functional Classification—
Proteins were classified to functional groups using the MapMan nomenclature developed for plant genes (34). GPI-anchored proteins were annotated based on published literature and predictions (35–37). Graphs were created using SigmaPlot version 10 (Systat Software), and statistical tests were carried out using Excel Analyze-it package version 2.07.
| RESULTS |
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Effect of mβcd on Plant Plasma Membrane Proteins—
In total, 792 proteins were identified in DRM preparations, and for 465 proteins quantitative information from both reciprocal subsets in at least one independent reciprocal experiment was obtained. About 15% of all the proteins with reciprocal quantitative data were found to be significantly depleted from DRM preparations upon mβcd treatment of plasma membranes (Fig. 2A, blue dots). A full list of proteins that were found to be depleted from DRM preparations upon mβcd treatment in at least one reciprocal experiment is presented in supplemental Table 1. A core set of 37 proteins was identified as mβcd-responsive in DRM preparations of at least two independent reciprocal experimental sets (Table I). These mβcd-responsive proteins are primary candidates for being associated with or located in a sterol-rich membrane microenvironment (lipid rafts). Among all proteins identified as sterol-dependent proteins, we observed a significant (p < 0.03, Fisher exact test) over-representation of single transmembrane domain proteins (supplemental Fig. 3). We found about 2% of the quantified proteins to be enriched in DRM preparations after mβcd treatment in individual experiments (Fig. 2A, red dots).
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Among the mβcd-responsive (sterol-dependent) proteins a large number of cell wall-related proteins, fasciclin-like arabinogalactan proteins and glycosyl hydrolase family proteins were identified, and most of these proteins have been shown to be GPI-anchored (35). Proteins of primary cell wall synthesis, such as CesA proteins (CesA9 At2g21770 and CesA10 At2g25540) or Cobra (At5g60920) could not be classified because of the lack of a reciprocal quantitative value. Among the non-responsive (non-sterol-dependent) cell wall proteins were mainly proteins with functions in cell wall precursor synthesis and cell wall-degrading enzymes (supplemental Table 1).
Remorins, plant-specific plasma membrane-associated proteins of unknown structure and function, have widely been used as a marker for lipid rafts in plants (16). Two members of this protein family (At2g45820 and At3g61260) have been found as mβcd-responsive in several independent reciprocal experiments. Thus, remorins classify as sterol-dependent proteins in our mβcd treatment experiments.
Surprisingly proteins with functions in signaling such as receptor-like kinases, calcium signaling proteins, and G-protein signaling components showed a strong distribution to non-sterol dependent proteins (not responsive or even enriched by mβcd), and fewer proteins in these functional groups were found to be sterol-dependent (mβcd-responsive) proteins (Fig. 5). In total, four receptor-like kinases (At1g53730, At2g25790, At3g46290, and At5g49760) were identified as members of the sterol-dependent proteins in at least one reciprocal experimental set. In contrast, 10 other receptor-like kinases (At1g25320, At1g29740, At1g73080, At3g24540, At3g28450, At4g08850, At5g46330, At5g46330, At5g65700, and At5g67200) were identified as non-sterol-dependent proteins under the growth conditions for cell cultures in this study. Among non-sterol-dependent receptor kinases, we also found the FLS2 receptor (At5g46330) and two kinases involved in brassinosteroid signaling (At3g13380 and At3g51740). Another 35 receptor-like kinases were identified in DRM fractions but could not be classified into sterol-dependent or non-sterol-dependent proteins as they lacked a reciprocal quantitative value.
Variable and Constant Components of Sterol-rich Membrane Regions—
The identified proteins with signaling functions (receptor-like kinases, calcium signaling proteins, and G-protein signaling proteins) showed a larger experiment-to-experiment deviation from the mean ratio change upon mβcd treatment than did proteins in the functional category of cell wall, lipid-modifying, and vesicle trafficking (Fig. 6). Thus, the effect of mβcd on signaling proteins is significantly more variable for the different proteins within a functional category and independent experimental sets compared with the effect of mβcd on cell wall or lipid-modifying proteins. This is a strong indication for different classes of mβcd-responsive (i.e. sterol-dependent) proteins. We propose that the variability of the mβcd response among signaling proteins is an indication for a more variable and condition-dependent association of signaling proteins with sterol-rich membrane microdomains.
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| DISCUSSION |
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Action of mβcd on Plant Plasma Membranes—
The precise effect of mβcd on sterols in the plant has not been studied up to date. Therefore, it is well possible that in our experiments the plant lipid rafts were not completely disrupted by the mβcd treatment as mβcd may not have such a strong effect on plant-specific sterols compared with cholesterol as the dominant sterol in mammalian plasma membranes. It has been shown recently that mβcd acts with different efficiencies on different membrane types, requiring vastly different concentrations and incubation times for different mammalian cell types and tissues (40). It has also been shown on mammalian cells that mβcd removes sterol from the membranes without destroying the bilayer (41).
Our analysis of sterol composition in the DRM preparations after mβcd treatment of plasma membranes indicates that sterols are indeed being removed under the conditions applied in this study. We still observed a strong increase in the removal of sterols when increasing the mβcd concentration from 15 to 30 mM, but this effect was different for individual sterol species. However, we observed a saturation effect on the efficiency with which proteins are being removed from the plasma membrane by mβcd at concentrations between 15 and 30 mM. The mβcd concentration used for the comparative analysis was 25 mM. Thus, it is likely that the mβcd effect on protein was saturated in this study.
Typical contaminants and co-purifying proteins in plasma membrane and DRM preparations such as ribosomal proteins, vacuolar ATPase subunits, or transcription initiation factors (15, 16) did not show any differential response to mβcd treatment. This indicates that the strategy applied here to use depletion of proteins from plasma membranes and DRM by mβcd treatment is a valid means to dissect and characterize the biochemical properties of DRM also in plants. This work is the first detailed global analysis specifically of sterol-rich membrane microdomains in plants, and by its design in reciprocal experiments it allows the precise definition of different categories of proteins in this compartment.
The combination of the analysis of proteins removed from detergent-resistant domain preparations in reciprocal labeling experiments with the subsequent demonstration that these particular proteins are being enriched in the supernatant after pelleting of mβcd-treated membranes is the first evidence in plants that biochemical preparations of detergent-resistant domains and the actual sterol-rich membrane domains (lipid rafts) are not equal. This is an important conclusion drawn from our study, and it is well supported by work from the animal and yeast models where recent findings have strongly suggested that DRMs in standard biochemical preparations are not of the same composition as the in vivo functional lipid rafts in cells (42).
Characterization of Sterol-dependent Proteins—
In our study, cell wall-related proteins as well as lipid- and glucan-modifying proteins were the predominant classes of proteins identified as sterol-dependent in all experiments. In contrast, proteomics studies on mammalian cell cultures using mβcd as a cholesterol-disrupting agent revealed a strong enrichment of signaling proteins, kinases, receptors, and transporters in lipid rafts (23). Although the functional groups of proteins removed by mβcd treatment differ between the animal and plant cells, they share common biochemistry: most proteins depleted after treatment of plant cells are experimentally proven to be GPI-anchored proteins (35, 36). Of the 37 core proteins found as responding to mβcd in plant DRM (Table I), only eight are not modified with a glycosylphosphatidylinositol group, and one of them is predicted to be farnesylated. Furthermore 22 of the GPI-anchored proteins were also found to be released to the supernatant after pelleting of mβcd-treated plasma membrane, and they showed the strongest amplitude of mβcd responses in all experiments. These findings in plants are supported by earlier work on mammalian cells that the GPI anchor may be one of the (important) signals targeting a protein to lipid rafts and that the interaction of these proteins is specific to sterol-rich membrane domains (43–45). Furthermore in agreement with our findings, also quite a large percentage of proteins highly enriched as part of lipid rafts in HeLa cells (23) or human embryonic kidney cells (38) are actually GPI-anchored proteins.
The plant-specific structure of the cell wall requires anchoring and coordinated points of synthesis and modification. In fact, it has clearly been shown in plants that correct membrane targeting of GPI-anchored proteins is essential for cell wall biosynthesis. Mutants with deficient synthesis of GPI anchors display abnormal cell shapes (46). Interestingly in mammalian characterizations of lipid rafts using mβcd, many cytoskeletal proteins were found to be enriched in sterol-rich membrane domains. Thus, possibly in plants the cell wall proteins, which make up the biggest functional group of proteins identified as responding to mβcd, anchor the "plant skeleton" (cell wall) to the plasma membrane in a similar way as mammalian cells anchor their cytoskeleton (47, 48).
The Concept of Constant and Variable Proteins in Sterol-rich Membrane Regions—
Surprisingly a large proportion of proteins published as "lipid raft" proteins as concluded from their proteomics detection in DRM fractions (15, 16), such as many of the receptor-like kinases, did not show drastic depletion from DRM upon mβcd treatment. Moreover we observed an almost equal distribution of signaling proteins to sterol-dependent proteins and not sterol-dependent proteins (Fig. 3). Thus, in our experiments a substantial number of these signaling proteins did not classify as sterol-dependent proteins in our study.
We therefore conclude that sterol-rich membrane regions in plants consist of a "constant" core component mainly containing cell wall-related proteins and lipid-modifying activities and a dynamic component that includes the receptor-like kinases and other signaling proteins. For example, a given receptor-like kinase may be found responsive to mβcd in one experimental set if under these particular conditions it is associated with sterol-rich membrane regions, whereas it may not be classified as mβcd-responsive in the experimental set carried out a few weeks later. Dynamic polarized protein localization has been observed previously in response to pathogen infections (49). When cell cultures are treated with the elicitor peptide flg22, receptor kinase FLS2 displays a strong enrichment in DRM fractions, supporting the concept of stimulation-induced membrane microdomain localization of signaling proteins.2 Thus, diurnal effects of different harvesting times or subtle differences in cell culture conditions may lead to the observed experiment-to-experiment variability in sterol-dependent behavior especially among signaling proteins. The more variable mβcd-responsive proteins such as receptor kinases and transporters may be viewed as condition-dependent raft-associated proteins that may under particular circumstances (e.g. stimulation of any kind) display mβcd-sensitive behavior.
In contrast, cell wall proteins, lipid-modifying proteins, and a set of proteins involved in vesicle transport seem to be a more constant component of plant sterol-rich membrane microdomains independent of external conditions. These findings are in agreement with the model of rafts consisting of a core of mβcd-sensitive proteins, most of which are GPI-anchored, and a peripheral zone with other proteins (38). The majority of proteins we identified in detergent-resistant domains were not responsive to mβcd and thus in our view are not part of the raft model but part of membrane region that is still resistant to Triton X-100 treatment (38).
Conclusion—
In summary, our study is the first comprehensive analysis of plant sterol-rich microdomains making use of the sterol-disrupting drug mβcd, which has already been used in other organisms to characterize and develop models of lipid rafts. We conclusively showed that DRM preparations in plants are not equal to sterol-rich microdomains known as lipid rafts. Rather DRMs include sterol-rich membrane subdomains but also consist of a large fraction of sterol-independent proteins not affected by mβcd treatment. In addition, this work provides the first evidence from plants that the sterol-rich membrane domains are dynamic structures consisting of a core set of structural cell wall-related proteins with GPI anchors and a condition-dependent variable protein component mainly with signaling functions.
| ACKNOWLEDGMENTS |
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| FOOTNOTES |
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Published, MCP Papers in Press, November 25, 2008, DOI 10.1074/mcp.M800346-MCP200
1 The abbreviations used are: DRM, detergent-resistant membrane; mβcd, methyl-β-cyclodextrin; GPI, glycosylphosphatidylinositol; APCI, atmospheric pressure chemical ionization; UPLC, ultraperformance LC; SUBA database, Arabidopsis Subcellular Database; GFP, green fluorescent protein. ![]()
2 N. Zappel and R. Panstruga, personal communication. ![]()
* This work was funded by an Emmy-Noether Fellowship of the German Research Foundation (Deutsche Forschungsgemeinschaft) (to W. S.). ![]()
S The on-line version of this article (available at http://www.mcponline.org) contains supplemental material. ![]()
To whom correspondence should be addressed. Tel.: 493315678113; Fax: 493315678403; E-mail: wschulze{at}mpimp-golm.mpg.de
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