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Journal of Bacteriology, August 2003, p . 4638-4643, Vol . 185, No . 15 Microarray Transcription Analysis of Clinical Staphylococcus aureus Isolates Resistant to Vancomycin
Emmanuel Mongodin,1, Departments of Medicine,1 Microbiology/Immunology, Medical College of Virginia at Virginia Commonwealth University,2 the Hunter Holmes McGuire Veterans Affairs Medical Center, Richmond, Virginia,3 The Institute for Genomic Research, Rockville, Maryland4 Received 7 February 2003/ Accepted 5 April 2003
We sought to assess genomic changes in gene transcription (the transcriptome) by DNA microarray and took a number of approaches different from those taken by others in trying to understand genomic changes associated with the VISA phenotype . First, we used clinical VISA isolates as parents rather than vancomycin-susceptible laboratory strains . There is evidence that there is something unique about VISA isolates that allows them to become resistant to vancomycin more easily than other S . aureus isolates (13) . Second, we sought to amplify the phenotype by continued exposure of VISA isolates to vancomycin in vitro, further increasing the vancomycin MIC . We hypothesized that in this way, we would create isogenic strain sets that exaggerate the changes present in clinical VISA isolates . Third, we compared stable mutants of VISA strains for which vancomycin MICs were increased and we did not grow strains in the presence of the antibiotic, removing any direct effect of the antibiotic on transcription . Generation of mutants. Mutants were generated from the clinical VISA isolates HIP5827 (vancomycin MIC = 8 µg/ml) and MU50 (8 µg/ml) by streaking 10 µl of an overnight culture onto vancomycin-containing brain heart infusion gradient plates (0 to 8 µg of vancomycin/ml) and incubating the plates overnight at 37°C . Colonies that grew at the highest concentration of vancomycin were grown in subcultures in broth containing a similar concentration of vancomycin . This procedure was repeated with increasing gradient concentrations of vancomycin until mutants for which the stable vancomycin MIC was 32 µg/ml were obtained for HIP5827 (mutant VP-32) and MU50 (mutant MU50-32), which usually required no more than three gradients (three vancomycin passages) . In addition, a more susceptible derivative of HIP5827 (P-100; MIC = 2 µg/ml) was obtained by 100 serial passages in the absence of vancomycin . The MICs for all VISA derivatives and parents were determined by E-test strips and confirmed each time the strains underwent further analysis . The growth characteristics of P-100, VP-32, Mu50-32, and both parents were examined in brain heart infusion broth without antibiotics . VP-32 and Mu50-32 grew more slowly in the absence of the antibiotic than did P-100, HIP5827, or Mu50 . VP-32 and Mu50-32 required 9 h to reach an optical density at 600 nm (OD600) of 0.75, while HIP5827, P-100, and Mu50 reached this OD in 4 h . Growth curves as measured by OD were confirmed by determining viable cell counts at intervals during growth in the absence and presence of vancomycin for all strains . Transmission electron microscopy (EM) was performed on VP-32, P-100, and HIP5827 to assess cell wall thickness . Parent strains and their resistant derivatives were prepared for EM using standard procedures, as described by Cui et al . (4) . Examples of a single cell for each isolate are shown in Fig . 1 . The cell wall diameters of 30 to 40 individual cells for each isolate were measured with ImagePro (MediCybernetics, Silver Spring, Md.) software . Only cells that could be measured at three different points were selected . The mean values (in nanometers ± standard deviations) for cell wall diameters were 21.68 ± 4.45 (P-100), 26.27 ± 4.66 (HIP5827), and 30.51 ± 4.66 (VP-32) . The cell wall diameter measurements were significantly different among all three strains by analysis of variance (P < 0.001) . The total cellular diameters and cytoplasmic diameters were measured from EMs and converted to values for the total cellular and cytoplasmic volumes . Subtraction of these values yielded the cell wall volumes . The ratios of the cell wall volumes to the total cellular volumes were 16.04% for P-100, 19.67% for HIP5827, and 22.70% for VP-32 .
Microarray transcriptional profiling of mutants. The entire microarray procedure is described in detail elsewhere (http://www.tigr.org/microarray/Vanco_Paper/) . In brief, 2,688 unique PCR products (from 50 to 1,200 bp) representing 98.7% of the 2,723 open reading frames (ORFs) composing the COL genome being sequenced at The Institute for Genomic Research were printed onto UltraGAPS slides (Corning Life Sciences, Acton, Mass.) by means of a Molecular Dynamics Generation III array spotter (Amersham Biosciences, Piscataway, N.J.) . Total RNA was extracted from mechanically disrupted S . aureus cells grown to mid-log phase without antibiotics . RNA (2 µg) was used for indirect labeling with either Cy3 or Cy5 dyes, leading to production of 3 µg of cDNA with 170 pmol of dye molecule incorporated per microgram of cDNA produced . TIFF images of the hybridized arrays were analyzed using TIGR-Spotfinder (http://www.tigr.org/software/) software, the data set was normalized by applying the LOWESS algorithm (block mode; smooth parameter: 0.33) and using TIGR-MIDAS (http://www.tigr.org/software/) software, and significant changes were identified with SAM (significance analysis of microarrays; http://www-stat.stanford.edu/~tibs/SAM/index.html) software (19) . Several controls were employed to ensure that the data obtained were of good quality . First, each ORF was present in duplicate on the array . Second, three independent RNA batches per strain were used . Third, the quality of the RNA samples was checked in self-hybridization experiments . Finally, each RNA preparation was used to make probes for at least two separate arrays for which the incorporated dye was reversed (dye flip) . To compare the results obtained for P-100/VP-32 to those obtained for Mu50/Mu50-32, the same parameters were used for both pairs during the SAM analysis: number of permutations, 1,000; median number of falsely called significant genes, 4.6; median false discovery rate, 3% . There were no differences in transcription between P-100 and HIP5827, and comparisons of each with VP-32 yielded similar data . The data in Fig . 2 show the P-100/VP-32 comparisons . Although there were approximately 150 genes with altered expression in each strain pair, only 51 genes were common to both P-100/VP-32 and Mu50/Mu50-32 (Fig . 2A): 35 genes with increased expression (Fig . 2B) and 16 with decreased expression (Fig . 2C) . Those genes significantly altered in either VP-32 or Mu50-32 but not altered in the other strain are presented as supplemental data at http://www.tigr.org/microarray/Vanco_Paper/ . The largest increases in transcription (from 16- to 30-fold for VP-32 and from 11- to 24-fold for Mu50-32) were seen in the 11-gene de novo purine biosynthesis operon purED (Fig . 2 and 3) . The transcription of 13 out of 16 genes involved in purine biosynthesis in S . aureus (purE-purD, purA [SA0018], and purB [SA1969]) was increased in the vancomycin-resistant S . aureus strains compared to that of the genes in their isogenic parents as well as that of a xanthine/uracil permease family gene (SA2242) . In addition, seven cell wall-associated genes were found to have their expression increased in VP-32 as well as in Mu50-32: three encoding peptidoglycan hydrolases (lytM, atl, and one for an N-acetylmuramoyl-L-alanine amidase family protein [SA0276]); two LysM domain protein genes (LysM domains are found in enzymes involved in bacterial cell wall degradation); one encoding a putative cell division protein (SA1062); and sdrD, encoding a protein tethered to the cell wall (7) . No significant changes were seen in transcription of genes in P-100, HIP5827, and VP-32 when each strain was grown in the absence and presence of vancomycin .
Transcription of the purED operon of Bacillus subtilis is under the partial control of PurR, a repressor that binds to two specific pur boxes within the promoter-operator region of purE (14, 20) . Under the assumption that increased transcription of purED in VP-32 and Mu50-32 is related to changes in purR, we sequenced purR and the upstream region of purE . The set of primers used for the PCR amplification of purR and purE is available at http://www.tigr.org/microarray/Vanco_Paper/ . The upstream region of purE showed no evidence of mutations in comparison to that of its isogenic parent isolate for either VP-32 or Mu50-32 . A single base pair substitution was identified in both VP-32 and Mu50-32 at nucleotide 140 of purR (T
Conclusions. In the present study we showed that when VISA strains were made more vancomycin resistant by in vitro passage, the phenotypic changes that distinguished VISA from vancomycin-susceptible strains (increased cell wall thickness, decreased cell wall cross-linking, and reduced growth rate) were greatly exaggerated, providing sets of isogenic mutants that were suitable for transcriptional profiling . An analysis of the transcriptomes of two passage-generated, highly vancomycin-resistant VISA isolates compared to those of their parents revealed a striking increase in transcription (from 15- to 30-fold) for each gene in an 11-gene purine biosynthetic operon (confirmed by real-time PCR and associated with a mutation in the operon's regulator [purR]) . The finding that the transcription of other genes in the purine biosynthetic pathway (e.g., purA, purB, guaC, and a xanthine/uracil permease family protein gene), unlinked to the purE-purD operon and not regulated by purR, was also increased provides some support for the contention that there was a true increase in purine biosynthesis in the vancomycin-resistant mutants . Explanations for the increase in purine biosynthesis are speculative at this point but we can offer the following hypothesis that is consistent with microarray data . As shown in Fig . 3, metabolic alterations are directed toward increased production of AMP . AMP can be degraded via deoD, phosphorylated to produce ATP for further energy use, or reduced to dATP by nrdD and incorporated into nucleic acids . The transcription of both deoD and nrdD is decreased in vancomycin-resistant derivatives, suggesting that AMP is shunted toward ATP for use as an energy source . The biosynthesis of polymers is one of the most energetically demanding of all cellular processes, and one of the most abundant large polymers in gram-positive bacteria is peptidoglycan . The ratio of cell wall volume to total cell volume in VP-32 was increased 41% over that measured for P-100 . The demands for a 41% increase in cell wall content in vancomycin-resistant cells would require a large increase in ATP generation for energy . ATP generation through substrate-level phosphorylation would likely be reduced as cells became more vancomycin resistant, because precursor metabolites would be shunted to cell wall construction . An increase in purine biosynthesis, therefore, would supply more AMP for phosphorylation by remaining pathways . Markedly slowed cellular growth could be either a symptom of the cell's energy deficiency or another factor that contributes to decreased ATP production . An additional group of genes with increased transcription in the vancomycin-resistant passage derivatives were those involved in cell wall hydrolysis . An absolute increase in cell wall hydrolytic enzyme activity may be required to accommodate the insertion of new cell wall subunits into the growing peptidoglycan polymer . The results of this analysis provide new insights into the demands that resistance to vancomycin places on the cell . Progressive increases in resistance to vancomycin that occur by mutation and selection are accompanied by increases in cell wall thickness and in the transcription of genes involved in purine biosynthesis and cell wall autolysis to meet the energetic and constructive demands of new cell wall biosynthesis . The costs to the cell of using these mechanisms for resistance may explain why this phenotype is relatively uncommon despite the abundance of vancomycin in the clinical environment .
This work was supported in part by NIH grants R-37AI 35705 (G . L . Archer) and U-01AI 45667 (S . Gill) and VA Merit Grant 0010 (M . W . Climo) . E . Mongodin and J . Finan contributed equally to this project .
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