![]() | ![]() |
Formats:
|
||||||||||||||||||||||
Copyright © 2006, EMBO and Nature Publishing Group When transcriptome meets metabolome: fast cellular responses of yeast to sudden relief of glucose limitation 1Department of Biotechnology, Bioprocess Technology Section, Delft University of Technology, Delft, The Netherlands 2Department of Biotechnology, Industrial Microbiology Section, Delft University of Technology, Delft, The Netherlands 3Information and Communication Theory Group, Faculty of Electrical Engineering, Mathematics and Computer Science, Delft University of Technology, Delft, The Netherlands aDepartment of Biotechnology, Section of Industrial Microbiology, TU Delft, Industrial Microbiology, Julianalaan 67, Delft 2628BC, The Netherlands. Tel.: +31 152782412; Fax: +31 152782355; E-mail: j.m.daran/at/tnw.tudelft.nl Received January 11, 2006; Accepted July 4, 2006. This article has been cited by other articles in PMC.Abstract Within the first 5 min after a sudden relief from glucose limitation, Saccharomyces cerevisiae exhibited fast changes of intracellular metabolite levels and a major transcriptional reprogramming. Integration of transcriptome and metabolome data revealed tight relationships between the changes at these two levels. Transcriptome as well as metabolite changes reflected a major investment in two processes: adaptation from fully respiratory to respiro-fermentative metabolism and preparation for growth acceleration. At the metabolite level, a severe drop of the AXP pools directly after glucose addition was not accompanied by any of the other three NXP. To counterbalance this loss, purine biosynthesis and salvage pathways were transcriptionally upregulated in a concerted manner, reflecting a sudden increase of the purine demand. The short-term dynamics of the transcriptome revealed a remarkably fast decrease in the average half-life of downregulated genes. This acceleration of mRNA decay can be interpreted both as an additional nucleotide salvage pathway and an additional level of glucose-induced regulation of gene expression. Keywords: glucose pulse, metabolome, Saccharomyces cerevisiae, systems biology, transcriptome Introduction It is essential for any organism to rapidly and efficiently adjust its metabolism and physiology to changes in nutrient availability and other environmental parameters (Causton et al, 2001; Gasch and Werner-Washburne, 2002). In the yeast Saccharomyces cerevisiae, nutrient responses have been most extensively studied for glucose, the preferred carbon and energy source for this yeast (see for review Gancedo, 1998; Rolland et al, 2002). Changes in extracellular glucose availability trigger a variety of cellular responses. Addition of glucose to S. cerevisiae cells that exhibit a fully respiratory metabolism elicits a range of transcriptional, translational and post-translational modifications. These changes are preceded and, to a large extent, triggered by changes of intracellular metabolites and low-molecular-weight effectors. Changes of intracellular metabolite pools occur within seconds of a perturbation of the extracellular glucose concentration. For example, after a glucose pulse to respiring cells, the concentrations of metabolites of the upper part of glycolysis (e.g. fructose-6-phosphate (F6P) and fructose-1,6-bisphosphate (F1,6P2)) rapidly increase, whereas those of metabolites from the lower part of glycolysis (e.g. 2- and 3-phosphoglycerate (2PG, 3PG) and phosphoenolpyruvate (PEP)) rapidly decrease (Theobald et al, 1993; Visser et al, 2004). These changes have a strong impact on the energy status of the cells. Immediately after a glucose pulse, intracellular ATP concentration decreases, whereas ADP and AMP levels slightly increase, thus leading to a decrease in the energy charge. Remarkably, a substantial decrease in the overall adenine nucleotide (‘AXP') pools is reproducibly observed in studies on the fast dynamics of glucose responses in S. cerevisiae (Theobald et al, 1997). This phenomenon is among the aspects of glucose responses in yeast that remain to be elucidated. In addition to metabolites and cofactors, perturbation of the extracellular glucose concentration causes rapid changes of second messenger molecules such as cAMP (Thevelein et al, 2005) and D-myo-inositol-(1,4,5)-triphosphate (IP3) (Belde et al, 1993). These in turn contribute to responses at the transcriptional level and at the post-transcriptional level, where glucose triggers the specific inactivation and proteolysis of many proteins, including the gluconeogenic enzymes fructose-1,6-biphosphatase and several hexose transporters via a process called catabolite inactivation (Mazon et al, 1982; Mercado et al, 1991). The most extensively documented way in which glucose affects transcription is called glucose catabolite repression and encompasses the coordinated downregulation of the transcription of large groups of genes involved in respiration, metabolism of non-glucose carbon sources and several hexose transporters (Gancedo, 1998). In addition to a downregulation of transcription, glucose induces accelerated degradation of specific mRNAs, such as the transcript of SDH1 and SDH2 that encode subunits of succinate dehydrogenase (Lombardo et al, 1992; Cereghino et al, 1995) and SUC2 that encodes invertase (sucrose utilization) (Cereghino and Scheffler, 1996). For a quantitative systems analysis of the dynamic responses to glucose availability, it is essential that experimental conditions are tightly controlled. Steady-state chemostat cultures are excellently suited as a reproducible and stable experimental baseline (Hoskisson and Hobbs, 2005; Ronen and Botstein, 2006). A typical experimental design then consists in the application of a defined perturbation (e.g. a glucose pulse) to a steady-state chemostat culture, followed by rapid sampling, quenching of metabolism and analysis of relevant intracellular and extracellular components (Theobald et al, 1997). So far, analysis of the rapid transient (timescale 1 s to 5 min after a perturbation) has mainly been studied at the metabolome level (Theobald et al, 1997; Visser et al, 2004). An often-implicit assumption in these studies is that, over these short time periods, the concentrations of active enzymes in the cells remain constant. In that case, the measured responses allow for direct identification and quantification of kinetic interactions at the metabolome level. However, verification of this important assumption by simultaneous analysis of gene expression at the transcriptional or translational level has so far not been attempted. The present study represents the first dedicated attempt to integrate quantitative datasets obtained at the metabolite and transcript level during the first minutes after a defined metabolic perturbation of S. cerevisiae. To this end, we analyzed levels of key metabolites in primary metabolism as well as genome-wide mRNA levels in the first 5 min after glucose pulse to aerobic, glucose-limited chemostat cultures of yeast. To investigate the apparent lack of conservation of the adenine nucleotide pool observed in previous studies, special attention was paid to the dynamics of purine metabolism. Our results provide new insights into the chronology of events between the metabolic and the primary transcriptional responses to glucose in S. cerevisiae and show a biologically significant correlation between metabolome and transcriptome with respect to energy requirement and nucleotide metabolism during the initial phase of growth acceleration after glucose pulse. Results and discussion Global transcriptional responses following a glucose pulse In glucose-limited cultures of S. cerevisiae where metabolism is fully respiratory, the very low residual glucose concentration (0.15 mM) was instantaneously increased to 5.6 mM by pulsing a concentrated glucose solution (Figure 1A
Multiclass statistical analysis yielded a set of 1154 genes that displayed significant changes in transcription between at least two time points. Analysis of this set of genes by K-means clustering identified five glucose-responsive gene clusters (Figure 1B Glucose-responsive transcripts were subsequently analyzed to assess the enrichment of functional categories (Figure 2A
In order to identify the regulatory networks responsible for the transcriptional response to the glucose pulse, our dataset was combined with the genome-wide yeast location analysis datasets for 102 transcription factors from Harbison et al (2004). Thus, 12 transcription factors could be assigned to the clusters of upregulated genes with high confidence (Figure 2B The 12 transcription factors found significantly linked to the clusters of downregulated genes were in good agreement with the transcriptional network involved in glucose catabolite repression (Figure 2B Addition of glucose to carbon-limited chemostat cultures results in a drain of the adenine nucleotides The 5.6-mM glucose pulse to aerobic, carbon-limited cultures resulted in an immediate increase in the rate of glucose consumption. As described previously, the acceleration of glucose consumption was accompanied by switching to respiro-fermentative metabolism (Visser et al, 2004), evidenced by the accumulation of ethanol and, to a lesser extent, acetate and pyruvate in the cultures (Figure 1A
Following its early drop, the AXP pool recovered at a rate of approximately 0.01 μmol/g DW/s (calculated from the total nucleotide pool slope), whereas at steady state the net adenine nucleotide synthesis rate was only 0.0001 μmol /g DW/s (calculated from AXP concentration at steady state at a growth rate of 0.05/h; see Supplementary information 6), that is, about two orders of magnitude lower than the observed recovery rate. This implies a strong increase in the adenine biosynthesis rate and an important role of the salvage pathway. Metabolic inter-relations explain transcriptome co-responses: the adenine nucleotide pool drain is accompanied by upregulation of purine biosynthesis, C1 and sulfur metabolism Consistent with the drop in adenosine nucleotide pool that has been previously discussed, the genes of the de novo purine biosynthesis pathway, by which the AXP pool is synthesized, were found significantly overrepresented among the upregulated genes (Figure 2A
The transcriptional regulation of the purine biosynthesis and part of the 10-formyl THF (SHM2 and MTD1) pathways has been shown to be under the control of Bas1p, a myb-like transcriptional activator (Denis et al, 1998; Denis and Daignan-Fornier, 1998). In agreement with this, the transcript level of BAS1 itself was coordinately upregulated more than two-fold. Integration of the data presented in this study and the supporting Bas1p location analysis by chromatin immunoprecipitation data (Harbison et al, 2004) agreed on the regulation of the glycine cleavage pathway (ADE3, GCV1, GCV2 and GCV3) by Bas1p as well. These results were also supported by the presence of TGACTC Bas1p binding site in the promoter of the latter genes. Altogether, these data would confirm the regulation by Bas1p of both purine and C1 metabolism derived from glycine. On the other hand, a complex including differentially expressed MET28, MET31 and MET32 transcriptionally regulated the sulfur metabolism in a time-dependent manner (Figure 2 Finally, the methyl transfer converts Adomet to S-adenosylhomocysteine, which can be recycled to methionine via a few steps, in which an adenosine moiety is released. The gene involved in this pathway, SAH1, was also found to be significantly upregulated (Figure 4A Although the metabolic crosstalks are quite apparent from a biochemical network, the regulatory network that coordinates the upregulation of genes involved in de novo purine biosynthesis, serine biosynthesis, THF metabolism, sulfur metabolism and purine salvage pathway is not trivial. Alternately, upregulation of purine and THF metabolism on the one hand and sulfur metabolism on the other can be explained as discussed above. However, no available reports can relate serine biosynthesis gene regulation to THF metabolism, as current transcriptome and metabolome data seem to relate them to one another. Although some phenotypic evidences relate the serine biosynthetic pathway to purine metabolism, as a mutation in SER1 (initially named ADE9) leads to an adenine requirement, no molecular basis had been demonstrated so far (Buc and Rolfes, 1999). While the search for BAS1 binding motif (TGACTC) in the promoter sequences of the SER1, SER2, SER3 and SER33 identified this binding motif in SER2 and SER33, location analysis data for BAS1 failed to report any binding activity on SER gene promoters. However, ChIP on chip data revealed that the SER33 promoter sequence was bound by Cbf1 (Harbison et al, 2004), member of the Cbf1/Met30/Met4/Met28 complex (Thomas and Surdin-Kerjan, 1997; Blaiseau and Thomas, 1998) that regulates sulfur metabolism. Furthermore, genome-wide transcriptome analysis of S. cerevisiae grown in chemostat revealed that SER33 was specifically upregulated under sulfur limitation (Tai et al, 2005). These experimental facts suggest that cytosolic processes leading to C1 transfer for methionine and Adomet biosynthesis (serine biosynthesis, 5-methyl-THF synthesis) are coordinately controlled by central sulfur metabolism regulation. Ribosome biogenesis is upregulated after relief from glucose limitation The higher requirement of methylation substrate as deduced from the data mentioned above could be sustained as many genes involved in ribosomal RNA synthesis, processing and modification were upregulated following glucose addition (Figure 2A
The ribosomes undergo modifications such as conversion of uridines into pseudouridines and addition of methyl group to specific nucleotides with a majority at the 2′-O position of the ribose (Bachellerie and Cavaille, 1997). Consistently, five genes participating in Adomet-dependent methylation activity were upregulated (NOP1 +2.1, NOP58 +2.7, SNU13 +2.9, SPB1 +2.3, DIM1 +2.0). In good agreement with literature, FHL1 and RAP1 (transcription factors involved in transcriptional control of ribosome biogenesis) targets were significantly overrepresented within the set of upregulated genes (Figure 2B The role of methylation reactions using Adomet should be taken into consideration in explaining a part of the drain of the AXP pools in the first minute following the addition of glucose (Figure 3 New insight into central carbon metabolism by integration of metabolite and transcript levels The transcriptome analysis of the response of S. cerevisiae to a sudden relief from glucose limitation classified 565 genes with downregulated transcription (clusters D and E; Figure 1B In addition, the integration of the central carbon metabolism metabolite data with transcript analysis allows better understanding of the very early metabolic response of the cell facing a sudden increase of environmental glucose concentration. As previously reported (Visser et al, 2004), a rapid and transient increase of the metabolites of the top part of the glycolysis (Figure 6A–C
To restore redox homeostasis, yeast produces ethanol and glycerol (Figure 1A
Our results are consistent with the notion that trehalose-6-phosphate (T6P) inhibition of glucose phosphorylation is required to avoid excessive phosphorylation and ‘glucose-accelerated death' (Blazquez et al, 1993; Francois and Parrou, 2001). The concentration of T6P increased by 15-fold within the first 180 s following the addition of glucose to reach a concentration (4.8 mM) (Figure 6I The response of the metabolites of the upper part of the glycolysis was extremely rapid (within the first 30 s) and preceded all detectable transcriptional control. However, we also measured a significant increase in fructose-2,6-biphosphate (F2,6P2) about 120 s after the perturbation (Figure 6D Fast decay of downregulated transcripts indicates active mRNA degradation The average half-life of yeast poly(A)+ mRNA in S. cerevisiae has previously been estimated around 30 min using a temperature-sensitive RNA-pol II mutant (Wang et al, 2002). Figure 8A
In S. cerevisiae and higher eukaryotes, mRNA degradation can be initiated by poly(A) tail shortening (van Hoof and Parker, 2002). After poly(A) tail removal, mRNA degradation involves the decapping enzyme Dcp1p (LaGrandeur and Parker, 1998) and the 5′-to-3′ exonuclease Xrn1p (Heyer et al, 1995). This mechanism was indeed proposed for the faster decay of SHD1, SHD2 and SUC2 genes (Prieto et al, 2000). Additionally, 3′ degradation may occur, which involves the exosome, a complex of 3′-to-5′ exonucleases. In addition to the mRNA degradation, the exosome is involved in the processing of several RNA species. In yeast, the exosome is recruited via the fixation of Puf3p on AU-rich motif located in the 3′UTR of a gene (Olivas and Parker, 2000; Jackson et al, 2004). Possible involvement of 3′ degradation was investigated by a systematic analysis of the 250 base pairs downstream of the stop codon of 163 downregulated genes belonging to the significantly overrepresented functional categories (Figure 2A With the exception of the responses in purine and sulfur metabolism, many of the transcriptional events after the relief from glucose limitation have previously been linked to the TOR signal transduction pathway. In particular, the TOR pathway has been implicated in the regulation of mRNA turnover in S. cerevisiae (Albig and Decker, 2001) and in the expression of genes for ribosomal RNA and ribosomal proteins (Martin et al, 2004; Schawalder et al, 2004; Rudra et al, 2005). In mammalian cells, mTOR has been proposed to be a homeostatic ATP sensor (Dennis et al, 2001). Based on the transcript levels alone, this would have offered an attractive explanation for the observed upregulation of TOR targets after relief from glucose limitation. However, the metabolite data revealed that, in fact, intracellular ATP concentrations decreased after the glucose pulse. This observation underlines how simultaneous analysis at different information levels (transcriptome, metabolome) can improve interpretation of biological phenomena. Conclusion In the present study, we exploit the accurate control of chemostat cultures to generate reproducible perturbation experiments. Although this approach has been previously achieved to study the rapid dynamics of metabolite pools in S. cerevisiae (Theobald et al, 1997; Visser et al, 2004), this is the first time this approach has been integrated with simultaneous transcriptome analyses. Our data reveal a clear and sequential adaptation of vital cellular processes in response to a sudden relief of glucose limitation. The first significant changes in gene expression were only visible between 120 and 210 s and were restricted to specific functional categories (Figure 2A Dynamic stimulus response studies are a vital element in integrative systems biology. The present study illustrates how high-quality data can be generated by the use of tightly controlled cultivation conditions and appropriate analytical tools. Experiments that, in addition to transcriptome and metabolome data, include information at other relevant information levels (e.g. proteome, phosphoproteome and fluxome, references) will be essential to meet the longstanding challenge of cellular physiology/systems biology: to come to an integral understanding of the responses of living cells to their physical and chemical environment. Materials and methods Strains and growth conditions Chemostat cultivation S. cerevisiae (CEN PK 113-7D) was cultivated in an aerobic carbon-limited chemostat culture in a 7-l fermentor (Applikon, Schiedam, The Netherlands) with a working volume of 4 l on the adapted doubled mineral medium (Verduyn et al, 1992) with 27.1 g/l of glucose and 1.42 g/l of ethanol, to support a biomass concentration of about 15 g DW/l. The dilution rate was 0.05/h and the airflow rate was 200 l/h. Other fermentation parameters are a pH controlled at 5, a temperature controlled at 30°C, an overpressure of 0.3 bar, stirrer speed of 600 r.p.m. and dissolved oxygen higher than 70%. Glucose pulse experiment At the age of 140 h, the steady-state chemostat culture was perturbed by the addition of 20 ml of glucose solution (200 g/l) to the fermentor so that the residual glucose concentration was suddenly increased to about 1 g/l (5.56 mM). The glucose solution was rapidly injected by a pneumatic system (<1 s). Samples were taken prior to the glucose pulse (steady-state samples) and within 360 s after the perturbation. Sampling methods Metabolite sampling method Sample for intracellular metabolite analysis was obtained by withdrawing 1 ml of broth from the fermentor by a rapid sampling set up (Lange et al, 2001) into 5 ml of 60% (v/v) methanol/water at −40°C to immediately quench the metabolic activities. The sample was then processed according to the intracellular sampling processing method described by Wu et al (2005) to give about 500 μl of intracellular metabolite solution that is ready for further analysis. Sample for extracellular metabolite analysis was obtained following the method described by Mashego et al (2003). Sampling for microarrays Sampling of cells from chemostats, probe preparation and hybridization to Affymetrix Genechip® microarrays were performed as described previously (Piper et al, 2002) The results for the initial steady state, 30, 60, 120, 300 and 330 s were derived from at least two independently cultured replicates (for the number of replicates analyzed per time point, see Supplementary information 1). The time point at 210 s was derived from a single culture. Microarray analysis Data acquisition and analysis Acquisition and quantification of array images and data filtering were performed using Affymetrix Gene Chip Operating System (GCOS). Before comparison, all arrays were globally scaled to a target value of 150 using the average signal from all gene features using GCOS. The complete set of .CEL files is deposited at Genome Expression Omnibus database (Barrett et al, 2005) (http://www.ncbi.nlm.nih.gov/geo) series accession number GSE3821. To eliminate insignificant variations, genes with values below 12 were set to 12 as described by Piper et al (2002). From the 9335 transcript features on the YG-S98 array, a filter was applied to extract 6383 yeast open reading frames, of which there were 6084 different genes. This discrepancy was owing to several genes being represented more than once when suboptimal probe sets were used in the array design. To represent the variation in replicate measurements, the coefficient of variation (mean deviation divided by the mean) (Supplementary information 1) was calculated as described previously (Boer et al, 2003). For statistical analyses, Microsoft Excel running the significance analysis of microarrays (SAM Version 1.12) add-in was used (Tusher et al, 2001) for multiclass analysis. Genes were called significantly changed in expression using SAM with an expected median false discovery rate of 0.6%. Hierarchical clustering of the obtained sets of significantly changed expression levels was subsequently performed using Genespring Version 7.2 (Agilent Technologies Inc., Palo Alto, CA). Two main profiles (ascendent and descendent) were identified. K-means analysis of ascending and descending profiles gene subsets was performed using Genespring Version 7.2 (Agilent Technologies Inc., Palo Alto, CA). For the statistical assessment of overrepresentation of MIPS functional categories (FUNCAT) (http://mips.gsf.de/projects/funcat) (Ruepp et al, 2004) and GO biological processes (http://www.geneontology.org/) (Eilbeck et al, 2005) in the SAM-identified transcripts, a test employing hypergeometric distribution, FunSpec (http://funspec.med.utoronto.ca/) (Robinson et al, 2002), was used using a P-value cutoff of 0.01 with a Bonferroni correction. The probability was calculated as follows: the P-value of observing z genes, belonging to the same functional category, is: ![]() where N is the total number of genes in a functional category (Ruepp et al, 2004), M is the total number of genes in the cluster (upregulated clusters A, B, C and downregulated clusters D, E) and G is the total number of gene features on the YG98S array (6383). The up- and downregulated data inspection for overrepresentation of transcription factors as defined by ChIP on chip analysis (http://jura.wi.mit.edu/fraenkel/download/release_v24/bound_by_factor/ORFs_bound_by_factor_v24.0.p005b_041213.txt) was also performed employing an in-house version of the hypergeometric distribution test. Applying the same formula, the probability was calculated where N is the total number of genes where the TF can bind upstream (Harbison et al, 2004), M is the total number of genes in the cluster (upregulated clusters A, B, C and downregulated clusters D, E) and G is the total number of gene features on the YG98S array (6383). A search for conserved octa-nucleotide sequences in the 3′ untranslated region (250 nt) was performed using regulatory sequence analysis tools (van Helden et al, 2000) (http://rsat.scmbb.ulb.ac.be/rsat/). The occurrence of the discovered motif in the group of genes tested (163 genes) was compared with the expected occurrence of a group of same size randomly picked. The E-value represents the probability of finding the number of patterns with the same level of overrepresentation, which would be expected by chance alone. For instance, the E-value of a given motif is of the order of 10−6, indicating that, if we would submit random sequences to the program, such a level of overrepresentation would be expected every 1 000 000 trials. Motif structures were edited using the Weblogo program (Crooks et al, 2004). The sequence templates used to generate the Weblogo motifs are available as Supplementary information 9. Analytical methods Extracellular metabolites The concentration of glucose and glycerol in the supernatant was measured with the Enzytec™ enzymatic kit (kit no. 1002781 for glucose, 1002809 for glycerol). The pyruvate concentration was measured by the Sigma Diagnostic kit (726-UV). The concentration of ethanol and acetic acid was measured by gas chromatography using a Chromopack CP 9001 with CP 9010 liquid sampler, connected to a Flame Ionisation Detector on an Innowax 15 m column (Hewlett Packard) with helium as the carrier gas. Intracellular metabolites Glycolytic intermediates (G6P, F6P, F1,6P2, F2,6P2, 2PG, 3PG, PEP), and TCA cycle intermediates (citrate, α-ketoglutarate, succinate, fumarate and malate), pentose phosphate pathway intermediate (6PG) and carbon storage intermediates (G1P, T6P) were analyzed by ESI-LC-MS/MS according to van Dam et al (2002) and the quantification was performed applying the isotope dilution LC-ESI-MS/MS (IDMS) method (Wu et al, 2005). In the case of F2,6P2, only peaks were measured instead of the absolute level and therefore the data are presented as the ratio to the steady-state condition. NAD/NADH ratio was calculated by assuming that the lumped reaction catalyzed by aldolase, triphosphate-isomerase, glyceraldehyde-dehydrogenase, phosphoglycerate-kinase and phosphoglucomutase is close to equilibrium: ![]() The NAD/NADH ratio is presented as the normalized value to the steady-state condition. Nucleotide concentrations in the cell extract were analyzed by an ion pairing LC-ESI MS/MS method as described by Wu (2005) and quantified applying the IDMS method (Wu et al, 2005). All metabolite concentrations are provided in Supplementary information 5 and 7. Calculation of mRNA half-life mRNA degradation is modeled as
![]() The data and program used for this calculation can be accessed in Supplementary information 8a and 8b, respectively. The results were compared with the mRNA half-life calculated by Wang et al (2002) available at the following URL: http://www-genome.stanford.edu/turnover/. Supplemental Materials Content Click here to view.(24K, doc) Supplementary Data 1 Click here to view.(26K, doc) Supplementary Data 2 Click here to view.(776K, xls) Supplementary Data 3 Click here to view.(96K, doc) Supplementary Data 4 Click here to view.(164K, doc) Supplementary Data 5 Click here to view.(27K, doc) Supplementary Data 6 Click here to view.(41K, xls) Supplementary Data 7 Click here to view.(74K, xls) Supplementary Data 8a Click here to view.(1.7M, xls) Supplementary Data 8b Click here to view.(33K, doc) Supplementary Data 9 Click here to view.(110K, doc) Acknowledgments The work performed in the Kluyver Centre for Genomics of Industrial Fermentation (Programs 1.07 and 5.5) was supported by the Netherlands Genomics Initiative. References
|
PubMed related articles
Your browsing activity is empty. Activity recording is turned off. |
|||||||||||||||||||||
Mol Biol Cell. 2001 Feb; 12(2):323-37.
[Mol Biol Cell. 2001]Funct Integr Genomics. 2002 Sep; 2(4-5):181-92.
[Funct Integr Genomics. 2002]Microbiol Mol Biol Rev. 1998 Jun; 62(2):334-61.
[Microbiol Mol Biol Rev. 1998]FEMS Yeast Res. 2002 May; 2(2):183-201.
[FEMS Yeast Res. 2002]Anal Biochem. 1993 Oct; 214(1):31-7.
[Anal Biochem. 1993]Biotechnol Bioeng. 2004 Oct 20; 88(2):157-67.
[Biotechnol Bioeng. 2004]Biochem Soc Trans. 2005 Feb; 33(Pt 1):253-6.
[Biochem Soc Trans. 2005]FEBS Lett. 1993 May 24; 323(1-2):113-8.
[FEBS Lett. 1993]Eur J Biochem. 1982 Oct; 127(3):605-8.
[Eur J Biochem. 1982]FEBS Lett. 1991 Oct 7; 291(1):97-100.
[FEBS Lett. 1991]Microbiol Mol Biol Rev. 1998 Jun; 62(2):334-61.
[Microbiol Mol Biol Rev. 1998]Mol Cell Biol. 1992 Jul; 12(7):2941-8.
[Mol Cell Biol. 1992]Mol Biol Cell. 1995 Sep; 6(9):1125-43.
[Mol Biol Cell. 1995]EMBO J. 1996 Jan 15; 15(2):363-74.
[EMBO J. 1996]Microbiology. 2005 Oct; 151(Pt 10):3153-9.
[Microbiology. 2005]Proc Natl Acad Sci U S A. 2006 Jan 10; 103(2):389-94.
[Proc Natl Acad Sci U S A. 2006]Biotechnol Bioeng. 2004 Oct 20; 88(2):157-67.
[Biotechnol Bioeng. 2004]Nature. 2004 Sep 2; 431(7004):99-104.
[Nature. 2004]EMBO J. 2000 Jan 17; 19(2):282-94.
[EMBO J. 2000]Nucleic Acids Res. 2000 Mar 15; 28(6):1390-6.
[Nucleic Acids Res. 2000]Cell. 2004 Dec 29; 119(7):969-79.
[Cell. 2004]EMBO J. 2005 Feb 9; 24(3):533-42.
[EMBO J. 2005]Proc Natl Acad Sci U S A. 2002 Oct 15; 99(21):13431-6.
[Proc Natl Acad Sci U S A. 2002]Curr Genet. 2003 Jun; 43(3):139-60.
[Curr Genet. 2003]Genome Biol. 2003; 4(11):233.
[Genome Biol. 2003]Biotechnol Bioeng. 2004 Oct 20; 88(2):157-67.
[Biotechnol Bioeng. 2004]Anal Biochem. 1993 Oct; 214(1):31-7.
[Anal Biochem. 1993]Enzyme Microb Technol. 2000 Jun 1; 26(9-10):706-714.
[Enzyme Microb Technol. 2000]J Biol Chem. 2000 Oct 6; 275(40):30987-95.
[J Biol Chem. 2000]Mol Microbiol. 1998 Nov; 30(3):557-66.
[Mol Microbiol. 1998]Mol Gen Genet. 1998 Aug; 259(3):246-55.
[Mol Gen Genet. 1998]Nature. 2004 Sep 2; 431(7004):99-104.
[Nature. 2004]Yeast. 1999 Sep 30; 15(13):1347-55.
[Yeast. 1999]Nature. 2004 Sep 2; 431(7004):99-104.
[Nature. 2004]Microbiol Mol Biol Rev. 1997 Dec; 61(4):503-32.
[Microbiol Mol Biol Rev. 1997]EMBO J. 1998 Nov 2; 17(21):6327-36.
[EMBO J. 1998]J Biol Chem. 2005 Jan 7; 280(1):437-47.
[J Biol Chem. 2005]Trends Biochem Sci. 1997 Jul; 22(7):257-61.
[Trends Biochem Sci. 1997]J Biol Chem. 2003 Jan 31; 278(5):3265-74.
[J Biol Chem. 2003]J Biol Chem. 2005 Jan 7; 280(1):437-47.
[J Biol Chem. 2005]Biotechnol Bioeng. 2004 Oct 20; 88(2):157-67.
[Biotechnol Bioeng. 2004]Anal Biochem. 1993 Oct; 214(1):31-7.
[Anal Biochem. 1993]J Biol Chem. 2004 Mar 5; 279(10):9125-38.
[J Biol Chem. 2004]J Bacteriol. 2001 Feb; 183(4):1441-51.
[J Bacteriol. 2001]Genome Biol. 2003; 4(1):R3.
[Genome Biol. 2003]FEBS Lett. 1993 Aug 23; 329(1-2):51-4.
[FEBS Lett. 1993]FEMS Microbiol Rev. 2001 Jan; 25(1):125-45.
[FEMS Microbiol Rev. 2001]Proc Natl Acad Sci U S A. 2002 Apr 30; 99(9):5860-5.
[Proc Natl Acad Sci U S A. 2002]Curr Biol. 2002 Apr 16; 12(8):R285-7.
[Curr Biol. 2002]EMBO J. 1998 Mar 2; 17(5):1487-96.
[EMBO J. 1998]Mol Cell Biol. 1995 May; 15(5):2728-36.
[Mol Cell Biol. 1995]J Biol Chem. 2000 May 12; 275(19):14155-66.
[J Biol Chem. 2000]EMBO J. 2000 Dec 1; 19(23):6602-11.
[EMBO J. 2000]Mol Biol Cell. 2001 Nov; 12(11):3428-38.
[Mol Biol Cell. 2001]Cell. 2004 Dec 29; 119(7):969-79.
[Cell. 2004]Nature. 2004 Dec 23; 432(7020):1058-61.
[Nature. 2004]EMBO J. 2005 Feb 9; 24(3):533-42.
[EMBO J. 2005]Science. 2001 Nov 2; 294(5544):1102-5.
[Science. 2001]Biotechnol Bioeng. 2004 Oct 20; 88(2):157-67.
[Biotechnol Bioeng. 2004]Yeast. 1992 Jul; 8(7):501-17.
[Yeast. 1992]Anal Biochem. 2005 Jan 15; 336(2):164-71.
[Anal Biochem. 2005]Biotechnol Bioeng. 2003 Aug 20; 83(4):395-9.
[Biotechnol Bioeng. 2003]J Biol Chem. 2002 Oct 4; 277(40):37001-8.
[J Biol Chem. 2002]Nucleic Acids Res. 2005 Jan 1; 33(Database issue):D562-6.
[Nucleic Acids Res. 2005]J Biol Chem. 2002 Oct 4; 277(40):37001-8.
[J Biol Chem. 2002]J Biol Chem. 2003 Jan 31; 278(5):3265-74.
[J Biol Chem. 2003]Proc Natl Acad Sci U S A. 2001 Apr 24; 98(9):5116-21.
[Proc Natl Acad Sci U S A. 2001]Nucleic Acids Res. 2004; 32(18):5539-45.
[Nucleic Acids Res. 2004]Genome Biol. 2005; 6(5):R44.
[Genome Biol. 2005]BMC Bioinformatics. 2002 Nov 13; 3():35.
[BMC Bioinformatics. 2002]Nucleic Acids Res. 2004; 32(18):5539-45.
[Nucleic Acids Res. 2004]Nature. 2004 Sep 2; 431(7004):99-104.
[Nature. 2004]Yeast. 2000 Jan 30; 16(2):177-87.
[Yeast. 2000]Genome Res. 2004 Jun; 14(6):1188-90.
[Genome Res. 2004]Anal Biochem. 2005 Jan 15; 336(2):164-71.
[Anal Biochem. 2005]Anal Biochem. 2005 Jan 15; 336(2):164-71.
[Anal Biochem. 2005]Proc Natl Acad Sci U S A. 2002 Apr 30; 99(9):5860-5.
[Proc Natl Acad Sci U S A. 2002]Nature. 2004 Sep 2; 431(7004):99-104.
[Nature. 2004]Adv Microb Physiol. 1977; 15():253-306.
[Adv Microb Physiol. 1977]Proc Natl Acad Sci U S A. 2002 Apr 30; 99(9):5860-5.
[Proc Natl Acad Sci U S A. 2002]