Effects of a small, volatile bacterial molecule on Pseudomonas aeruginosa bacteria using whole cell high-resolution magic angle spinning nuclear magnetic resonance spectroscopy and genomics
- Authors:
- Published online on: July 6, 2018 https://doi.org/10.3892/ijmm.2018.3760
- Pages: 2129-2136
Abstract
Introduction
Pseudomonas aeruginosa (PA) is an ubiquitous Gram-negative bacterium that inhabits a wide array of natural environments, and is important in a clinical context, as it is a multi-antibiotic-resistant human pathogen associated with hospital infections (1,2) and is a major cause of morbidity and mortality in patients with cystic fibrosis (CF). PA colonizes the lower respiratory and gastrointestinal tracts, as well as the mucosa and skin of hospitalized patients treated with broad-spectrum antibiotics. The development of chronic PA respiratory infections is mediated through a complex adaptive process that effects essential physiological changes in both bacterial cells and the host, that allow PA to survive and persist in the host environment. PA cells secrete small molecules that act as specific chemical signals to positively regulate pathogenic pathways (3), which direct the production of virulence factors for pathogenic infection, host colonization and interspecies microbial interactions (4). Knowledge on the bacterial signals required to promote the pathogen adaptation and/or transition from acute to chronic infection remains rudimentary (5).
Bacterial cell walls are complex, consisting of integrated macromolecules including carbohydrates, lipids and proteins (6). The structure and synthesis of these cell walls is unique, with many of the components not found anywhere else in nature (7). Current understanding of bacterial cell wall structures is based on data derived from the destructive analyses of its individual components (7), and as such, this in vitro data may not faithfully reflect the native structural and conformational information. An alternative approach to such analyses is the non-targeted profiling of the physiological state of bacterial cells, such as metabolomic profiling.
Metabolomics is the comprehensive determination of the low molecular weight metabolite complement within a biological sample. As metabolites are downstream from gene transcription and enzyme activities, metabolomics has the potential to provide a more accurate snapshot of the actual physiological state of a cell or cells, as opposed to transcriptome and proteome profiling (8).
To this end, metabolomics has been used to study the responses of bacteria to different physiological states and stressors (9–11), and nuclear magnetic resonance (NMR) spectroscopy has been employed to profile microbial species for differentiation and classification, including in vivo profiles of yeast strains, and of marine unicellular algae via magic-angle spinning (12).
Cell high-resolution magic-angle spinning (HRMAS) NMR spectroscopy can be used to distinguish detailed structures present on bacteria (13,14). Moreover, multi-dimensional HRMAS NMR is a powerful tool for the in vivo analysis of live bacterial cells (15). HRMAS is a novel non-destructive methodology that substantially improves spectral line-widths to allow high-resolution spectra to be obtained from intact cells, cell tissue cultures (16,17) and unprocessed tissues (18,19). 1H HRMAS NMR has also enabled the investigation of the associations between metabolites and cellular processes (21), and NMR spectroscopic analyses have reported the presence of bacteria and PA on extracted cells (22). To avoid chemical modifications by the extraction/purification of metabolites, and to maintain cell integrity, in the present study, we applied HRMAS NMR methodology to live PA to characterize and quantify the metabolic profile of these cells and their surface structures. We also specifically focus on specific metabolites that are likely involved in PA-mediated host inflammation.
Materials and methods
Cell samples
The PA strain used in the present study was RifR human clinical isolate UCBPP-PA14. The mutants of PA14 described in this study are isogenic to UCBPP-PA14. The bacteria were grown at 37°C in Luria-Bertani (LB) broth or on plates of LB agar containing appropriate antibiotics or the compounds, unless mentioned otherwise. The overnight PA14 cultures were grown in LB and diluted the following day in fresh medium in triplicate. A total of 10 ml of culture adjusted to an OD600 of 2.0 nm was centrifuged, and the pellet was washed once with PBS.
NMR spectroscopy
Following bacterial growth in LB to an OD600 of 2.5, bacterial samples (50 and 40 µl) were introduced into the 4-mm Zr rotor and 10 µl D2O (deuterium lock reference) containing 10 mM trimethylsilyl propionic-2,2,3,3-d4 acid (TSP; Mw=172, δ=0 ppm, external chemical shift reference) was added to the rotor with the sample plus 10 µl TSP/D2O solution (50 mM). 1H HRMAS NMR spectroscopy experiments were performed on a Bruker Bio-Spin Avance NMR spectrometer (600.13 MHz) using a 4-mm triple resonance (1H, 13C, 2H) HRMAS probe (Bruker Biospin Corp, Billerica, MA, USA). The temperature was controlled at 4°C by a BTO-2000 unit in combination with a MAS pneumatic unit (Bruker).
Samples were spun at 3,000 Hz, and two different types of one-dimensional (1D) proton spectra were acquired using a water-suppressed spin-echo Carr-Purcell-Meiboom -Gill (CPMG) pulse sequence [90°-(τ-180°-τ)n-acquisition], as previously described (23). CPMG includes inter-pulse delay (τ=2π/ωr=400 µsec); 256 transients; spectral width of 7.2 kHz; 8 k data points; and TR=3 sec. Further investigation of the metabolites was performed using a novel approach that combines a two-dimensional (2D), solid-state, HRMAS proton (1H) NMR method, total through-bond correlation spectroscopy (TOBSY) (24), which maximizes the advantages of HRMAS, and a robust classification strategy. Typical acquisition parameters were as follows: 2 k points direct dimension (13 ppm spectral width), 200 points indirect dimension (7.5 ppm spectral width), 8 scans with 2 dummy scans, 1 sec water pre-saturation, 2 sec total repetition time, 45 msec mixing time and total acquisition time 45 min.
Quantification of metabolites
Concentrations using MestReC software (Mestrelab Research, Santiago de Compostela, Spain), an automated fitting routine based on the Levenberg-Marquardt algorithm, was applied after manual peak selection, adjusting peak positions, intensities, linewidths and Lorentzian/Gaussian ratio until the residual spectrum was minimized, as previously described (25,26). The metabolite concentration (mol/kg) was calculated using the following equation:
Mass TSP(mg)Mol Weight(TSP)×Met Peak AreaTSP Peak Area×NTSPNMET×1,000g/kgSample Weight(mg) where mass TSP was constant (0.069 mg), the molecular weight of TSP=172.23 g/mol, metabolites (Met), NTSP is the number of proton of TSP (9 1H) and NMet is the number of proton of metabolites, as previously described (27).Statistical analysis
The data are presented as the means ± standard error. Statistical analysis was performed using the Student's t-test: two paired samples were used for means. A p-value <0.05 was considered to indicate a statistically significant difference (Table I).
Table I1H chemical shift (δ, ppm) of metabolites detected in 1D and 2D HRMAS spectra of bacterial cells. |
Microarray hybridization
Biotinylated cRNA was generated with 10 µg total cellular RNA, according to the protocol outlined by Affymetrix Inc. (Santa Clara, CA, USA). cRNA was hybridized onto GeneChip P. aeruginosa Genome Array oligonucleotide arrays (Affymetrix Inc.), stained, washed and scanned according to the Affymetrix protocol.
Genomic data analysis
The PA14 cells were grown in 50 ml of Luria-Bertani (LB) broth at 37°C without agitation and with 3.0 mM 2-aminoacetophenone (2-AA). Triplicate samples from 2 independent experiments were harvested at OD600=2.0, and total RNA was purified using the RNAeasy spin column (Qiagen, Valencia, CA). The quality of the RNA was analyzed using a BioAnalyzer system (Agilent Technologies, Santa Clara, CA, USA). cDNA synthesis, labeling and hybridization was performed according to the GeneChip® P. aeruginosa Genome array (Affymetrix Inc).
The Affymetrix DAT files were processed using the Affymetrix-Gene Chip Operating System (GCOS) to create. Cel files. The raw intensity. Cel files from the 12 chips, 3 replicates each, were normalized by robust multi-chip analysis (RMA) (Bioconductor release 1.7) with PM-only models. Array quality control (QC) metrics generated by Affymetrix Microarray Suite 5.0 were used to assess the hybridization quality. The normalized expression values were analyzed by significance analysis of microarrays (SAM) using the permuted unpaired two-class test. Three replicates of PA14 in the absence of 2-AA were used as the controls and the experimental groups consisted of 2-AA-treated PA14 cultures in 3 replicates. Genes whose transcript levels exhibited either up- or downregulation (absolute fold change of >1.5) and a q-value of <20% in response to 2-AA treatment versus the controls were further analyzed.
Results and Discussion
NMR metabolomic and genomic analysis was carried out on PA, strain PA14. A representative 1D 1H CPMG HRMAS NMR spectrum obtained from live bacterial cells of the PA14 strain is shown in Fig. 1. The spectrum allows for the direct identification of several metabolites, such as aminoacids, osmolites and phospholipids [1, leucine; 2, isoleucine; 3, valine; 4, lactate; 5, alanine; 6, lysine; 7, bonded alanine; 8, phospholipids; 9, glutamate; 10, glutamine; 12, aspartate; 16, phosphor-choline; 17, betaine compounds; 18, glycine; 19, uridine monophosphate (UMP); 22, citrulline; 24, nicotinamide adenine dinucleotide (NAD)]. This novel approach to bacterial cell analysis is fast and provides important information. However, the peaks overlap in the 1D NMR spectra, and it is thus difficult to assign particular peaks to specific molecules. 2D 1H-1H TOBSY HRMAS was performed in order to better identify and resolve particular molecules, thus completing the metabolic profiling of bacterial cells (Fig. 2). Fig. 2 shows representative superimposed 2D 1H-1H TOBSY HRMAS NMR spectra of PA14 and PA14 + 2-AA. Compared to 1D spectra, 2D NMR spectra allowed for the clearer discrimination of signals. In the 2D NMR spectra, additional metabolites were identified, such as: 11, glutathione; 13, cysteine; 21, N-acetyl signal; 23, tyrosine; 24, phenylalanine. As shown for the TOBSY MR spectra, the capsular polysaccharides were identified due to their N-acetyl signal (represented by the number 21) (2.02÷2.33/4.10÷4.33 ppm). In addition, glutathione (represented by the number 11), a major cell antioxidant, was detected with higher resolution than in the 1D spectrum. The major difference was in the 18 signals derived from the N-acetyl compound.
The 24 metabolites were identified from the combined analysis of the 1D and 2D spectra of PA and are listed in Table I. We detected N-acetyl compound (signal at 2.02÷2.33/4.10÷4.33 ppm), which is a constituent of the capsular polysaccharides (28). The use of TOSBY in HRMAS enabled us to detect all these metabolites, even when they were present in small amounts and hidden within other resonances (Fig. 2). The acetylation of bacterial surface polysaccharides, such as capsular polysaccharides (CPSs), is common in pathogens and has been shown to have immunogenic and functional importance (29). Other metabolites, such as betaine compounds were also detected. These molecules are well known to act as osmoprotectors and have been shown to preserve L-homoserine lactone (HSL), the Pseudomonas Quinolone Signal (PQS) and 2-heptyl-4-quinolone (HHQ) bacterial cell-to-cell signaling (30). Betaine is synthesized from betaine aldehyde via the betB gene product (31). Betaine compounds were increased by 2-AA, thus indicating that 2-AA promotes osmoprotection to possibly increase bacterial survival in harsh conditions of the host environment.
The expression of the enzyme betaine aldehyde, NAD(P)+ oxidoreductase [EC .2.1.8, betaine aldehyde dehydrogenase (BADH)], involved in the second step of choline metabolism; betaine aldehyde dehydrogenase is induced by choline even when PA cells are grown in the presence of other carbon and nitrogen sources, such as glucose and ammonium (33). BADH from PA thus appears to be a suitable target for antimicrobial agents. In addition, in order to participate in the catabolism of choline, this enzyme may be crucial in the mechanisms of defense against osmotic and oxidative stress, both of which are conditions present in infected tissues (34). The acid product of the BADH from the PA reaction, glycine betaine, is a very efficient osmoprotectant and most likely acts as such in PA cells growing in the hyper-osmotic environment of infected tissues (35). Most importantly, the inhibition of PaBADH will give rise to increased intracellular levels of betaine aldehyde, a highly toxic compound (36). In fact, a PA strain defective in BADH cannot grow in choline, even if glucose is also present in the growth medium, due to the toxicity of betaine aldehyde (36). The finding that PA-BADH is expressed in the presence of other carbon compounds, such as glucose, provided that choline is also present in the bacterial growth medium (32), supports the possibility of using its inhibition as a means to combat the pathogen.
In relation to citrulline, we know that ornithine carbamoyl-transferase (OTCase), (EC 2.1.3.3) catalyzes the carbamoylation of the γ-amino group of ornithine by carbamoyl phosphate to provide citrulline and inorganic phosphate (37). This thermodynamically favored reaction operates in the synthesis of the amino acid, as performed in this study. PA catabolic OTCase catalyzes the second reaction in the arginine deiminase pathway, which is involved in ATP synthesis under conditions of energy depletion (38–40). The coupling system involving the production and deamination of ATP from ADP, citrulline and Pi in the presence of carbamate may be used to determine the catabolic OTCase activity (41). In this study, in the presence of 2-AA, we observed an increase in citrulline in the bacterial cells.
Comparing the whole-genome transcriptome profiles of PA cells grown with or without 2-AA demonstrates that this in vivo signal molecule reprograms the expression of 614 genes at late exponential and early stationary growth, when many virulence-related functions are most highly expressed (42). The analysis of the respective functions of these genes (Fig. 3) demonstrated that they encode several metabolic functions, including central intermediary, amino acid, carbon and energy metabolism pathways. As such, 2-AA promotes profound metabolic changes in PA14 cells. We further performed whole cell HRMAS NMR spectroscopy to identify and quantify the PA14 cell metabolome (Fig. 2), using a novel method, TOBSY, which combines 1D and 2D solid-state, 1H HRMAS NMR (24). TOBSY maximizes the advantages of HRMAS and, using a robust classification strategy, the 2D data enable a more complete determination of metabolites. While certain metabolites are clearly detected and quantified using 1D spectra, including glycine, betaine compounds and glutamate (Fig. 2); other metabolites, including lysine, UMP and citrulline, require 2D NMR to resolve and quantify their resonances that overlap in the 1D spectra. The combined use of 1D and 2D spectra can thus provide complete and unambiguous metabolite identification in complex biological samples. Comparing the whole-genome transcriptome profiles and metabolome studies of PA14 cells grown with or without 2-AA demonstrates that this molecule profoundly reprograms the gene expression and metabolism of the cell.
In conclusion, the combination of 1D and 2D 1H HRMAS NMR is a powerful in vivo technique which can be used in a variety of studies, including studies using live bacterial cells, as reported herein. Multi-dimensional HRMAS NMR using intact bacterial cells represents a promising method that may provide in vivo information on metabolomics in live bacteria. To this end, it can be complementary to existing chemical and biological methods, and likely complementary to mass spectrometry, which is a powerful metabolomics technique, but nevertheless is also a destructive technique. On the other hand, multi-dimensional in vivo HRMAS NMR is a promising method to determine the in vivo metabolome of live intact bacterial cells and the effects of compounds produced by PA, as they may induce the emergence of phenotypes that promote chronic infections in in vitro and in vivo (animal) models. To this end, our in vivo 1H HRMAS NMR technique should prove a helpful tool in gene function validation, the study of pathogenesis mechanisms, the classification of microbial strains into functional/clinical groups, and the testing of bacterial molecules as performed here. Moreover, the technique may be used to find drugs that block the conversion of bacterial cells into the persister state and enables them to survive traditional antibiotic treatments and thereby cause persistent and relapsing infections.
Acknowledgments
This study was supported in part by Shriners Hospital for Children research grants 87100 and 85200 in addition to NIH grant AI105902 to LGR and NIH grant R01AI134857. We would like to thank Dr Scott Stachel for providing comments on the manuscript and editing.
Competing interests
The authors declare that they have no competing interests.
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