Abstract
The subsurface mine environments characterized by high levels of toxic metals and low nutrient availability represent an extreme threat to bacterial persistence. In recent study, the genomic analysis of the Acinetobacter johnsonii strain RB2-047 isolated from the Rozália Gold Mine in Slovakia was performed. As expected, the studied isolate showed a high level of heavy metal tolerance (minimum inhibitory concentrations were 500 mg/L for copper and nickel, 1,500 mg/L for lead, and 250 mg/L for zinc). The RB2-047 strain also showed noticeable resistance to several antibiotics (ampicillin, kanamycin, chloramphenicol, tetracycline and ciprofloxacin). The genomic composition analysis demonstrated a low number of antibiotic and metal resistance coding genes, but a high occurrence of efflux transporter genes located on the bacterial chromosome. The experimental inhibition of efflux pumps resulted in decreased tolerance to Zn and Ni (but not to Cu and Pb) and to all antibiotics tested. In addition, the H33342 dye-accumulation assay confirmed the high efflux activity in the RB2-047 isolate. These findings showed the important role of efflux pumps in the adaptation of Acinetobacter johsonii strain RB2-047 to metal polluted mine environment as well as in development of multi-antibiotic resistance.
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Introduction
In recent years, the investigation of microbial communities from extreme environments has led to many advances in molecular biology, medicine, as well as in biotechnology (Merino et al. 2019). Understanding of the mechanisms responsible for the ability of microorganisms to adapt to extreme environmental conditions is crucial from an evolutionary and ecological point of view. The structure of the microbial genome and the acquisition or loss of some genes through natural selection, genetic recombination, mutations or horizontal gene transfer play a significant role in their adaptation processes (Wani et al. 2022).
In this study, we focused on the identification of genetic determinants responsible for the ability of Acinetobacter sp. to adapt to the heavy metal-contaminated subsurface mine environment using whole-genome sequence analysis. Bacteria belonging to the Acinetobacter genus are Gram-negative, strictly aerobic, non-motile coccobacilli with lacking pigmentation. They inhabit diverse environments, including water, soil, food, and wastewater (Al Atrouni et al. 2016; Ghaima et al. 2018; Ekwanzala et al. 2020). In addition, they can be found as nosocomial pathogens and commensals in the clinical setting (Wong et al. 2017). Multiple antibiotic resistance of Acinetobacter spp. causes significant difficulties in treating infections. Firstly, multidrug resistance had been detected mainly in A. baumannii species, but later, it has also been reported in many other species (Kämpfer 2014).
As mentioned above, members of the genus Acinetobacter have been isolated from various environments, including areas contaminated with heavy metals (Ghaima et al. 2018; Ekwanzala et al. 2020). Heavy metal pollution of soil and water is a global environmental problem as heavy metals are toxic to living organisms in certain concentrations, not degradable and difficult to remove from the contaminated environment (Sodhi et al. 2022). Heavy metals are stressors that could activate various protective and/or adaptive responses in bacteria, e.g., active efflux of the substance out of the cell, reduced influx of the target substance into the cell, enzymatic modification of the target molecule or its target site in the cell (Poole 2012; Kämpfer 2014).
Several genetic determinants involved in heavy-metal tolerance have been identified in Acinetobacter spp. with efflux pumps appearing to be the most prevalent adaptive mechanism to heavy metals, e.g. cop operon consisting of genes involving in copper ion efflux from the cell, mer operon involved in the transport of mercury ions out of the cell, chr operon with chrA and chrB genes encoding proteins involved in chromium tolerance, czc operon consisting of genes encoding CzcABCD proteins, which ensure efflux of cobalt, zinc and cadmium cations out of the cell or ars operon consisting of genes associated with the reduction of arsenate to arsenite and its efflux from the bacterial cell (Mindlin et al. 2016; Marwa et al. 2019; Bazzi et al. 2020; Petrova et al. 2023).
Interestingly, many studies have been documented that heavy-metal presence in the environment also leads to the development of bacterial multiple antibiotic resistance (reviewed in Squadrone 2020; Vats et al. 2022, Sodhi et al. 2023). Metal-induced co-selection for antibiotic resistance poses a risk of the expansion of the soil bacterial resistome, even under conditions of isolation of the bacterial community from antibiotic residues (Timková et al. 2020). The physical co-location and linkage of genes encoding microbial resistance to metals and antibiotics on the same genetic element (chromosome, integrons, transposons, or plasmids) could result in the phenomenon called cross-resistance, which occurs when only one gene encodes resistance to both, metals and antibiotics (Zhao et al. 2019). Despite the high prevalence of Acinetobacter spp. in heavy-metal contaminated environments, there are few studies addressing genetic determinants of antibiotic resistance induced by the presence of heavy metals in this genus. However, multiple resistance to heavy metals seems to be often linked with the presence of beta-lactamase genes (Furlan et al. 2019; Jia et al. 2021; Petrova et al. 2023). From this point of view, it was also interesting to exam the antibiotic susceptibility and its genetic determinants of the Acinetobacter isolate obtained from an isolated mine environment.
Materials and methods
Origin of the RB2-047 isolate
The RB2-047 isolate was obtained from the gold-bearing ore bacterial community of the Rozália Gold Mine in Hodruša-Hámre village (Slovakia) according to our previous study (Timková et al. 2020). Mining activities in the region were mainly focused on gold and silver ore mining and processing in the past, while today mining is focused mainly on gold, and less on copper, silver and lead (Sejkora et al. 2015; Chovan et al. 2016). The ore sample was collected directly in the mine from the depth of about 600 m below the surface (14th level of the Rozália mine) 3 days after the blasting and initiation of mining activity. The collected ore material was characterized by high concentrations of metals such as Zn (1,455 mg/kg), Fe (35,902 mg/kg), Mn (21,967 mg/kg), Cd (9 mg/kg) and Pb (653 mg/kg) (Timková et al. 2020). The primary identification of the isolate was performed using Matrix-Assisted Laser Desorption/Ionization Time-Of-Flight Mass Spectrometry (MALDI-TOF MS) and it was identified as Acinetobacter johnsonii with the score value of 2.188 according to our previous study (Nosáľová et al. 2021).
Metal and antibiotic tolerance testing
Metal and antibiotic tolerance of the RB2-047 isolate was examined by the agar-dilution method and the minimum inhibitory concentration (MIC) was determined as the lowest metal or antibiotic concentration resulting in non-visible growth of the isolate (Schumacher et al. 2018; Timková et al. 2020). The RB2-047 isolate was inoculated onto the Mueller-Hinton agar (Merck KGaA, Germany) supplemented with one of the selected metals or antibiotics to final concentration, and cultivated at the laboratory temperature (~ 25 °C) for 48 h. Heavy metals were added to the culture medium in the form of ZnCl2, NiCl2·6H2O, CuCl2·2H2O or Pb(C2H3O2)2·3H2O solutions (Centralchem, Slovakia) to final concentrations of the ZnCl2, NiCl2 and CuCl2 ranged from 2 to 1,000 mg/L, concentrations of Pb(C2H3O2)2 ranged from 2 to 2,000 mg/L. The final concentrations of ampicillin ranged from 0.25 to 400 mg/L, concentrations of kanamycin, chloramphenicol, tetracycline and ciprofloxacin ranged from 0.25 to 10 mg/L in the culture medium (SERVA, Germany).
In addition, the agar-dilution method was used to examinate the effect of efflux pump inhibitor cyanide 3-chlorophenylhydrazone (CCCP) (Sigma-Aldrich, Germany) on heavy-metal and antibiotic tolerance of the RB2-047 isolate. Bacterial cells were inoculated onto the Mueller-Hinton agar supplemented with heavy metals or antibiotics using the same concentrations as described above and CCCP with a final concentration of 50 µM CCCP. The growth of the isolate was compared against control without CCCP addition.
Measurement of the efflux pump activity using H33342 dye-accumulation assay
The efflux pump activity in the RB2-047 isolate was investigated using the Hoechst 33,342 (H33342) dye-accumulation assay and efflux pump inhibitor CCCP (Choi et al. 2017). Escherichia coli strain 1–22 carrying the tetA gene encoding the efflux pump responsible for tetracycline resistance was used as a positive control.
Five microliters of Luria-Bertani (LB) broth (Merck, Germany) were inoculated by 1 µL of bacterial culture and cultivated at 25 °C (RB2-047 isolate) or at 37 °C (E. coli 1–22) for 18 h. Subsequently, bacterial culture was diluted with LB broth to a value of 0.5 McFarland turbidity standard (McFarland densitometer, Biosan, Latvia). Bacterial culture of 176 µL was transferred to the wells of a 96-well microtiter plate with or without 50 µM efflux pump inhibitor CCCP and then 2.5 µM H33342 was added to each well. Each bacterial culture, the RB2-047 strain as well as control, was tested in triplicates in the presence and absence of CCCP. Fluorescence was measured at 37 °C every 10 min for 2 h using the Fluorescence microplate reader (BMG LABTECH, Germany). Then, the H33342 accumulation ratio (HAR) was calculated as the average amount of H33342 accumulated in the presence of CCCP (HAC) divided by H33342 accumulated in the absence of CCCP (HA).
DNA extraction
The total genomic DNA of the RB2-047 isolate was extracted from the overnight culture cultivated in Luria Bertani broth (Merck KgaA, Germany) using the GenElute Bacterial Genomic DNA Kit (Sigma-Aldrich, USA). The quality of the extracted DNA was inspected by electrophoresis in a 1% agarose gel stained with ethidium bromide (0.5 µg/L) and visualized under UV light using the GEL LOGIC 212 PRO detection system (Carestream, USA). DNA concentration and purity were measured using NanoDrop 2000c Spectrophotometer (Thermo Scientific, USA).
The 16S rRNA gene sequence analysis
The 16S rRNA gene was amplified according to the protocol of Nosáľová et al. (2021). PCR amplicons were sequenced in both directions using the Sanger sequencing method by Eurofins Genomics (Köln, Germany). The sequences obtained were assembled using the CAP3 tool (Huang and Madan 1999) and analyzed using the BLASTN search tool against the GenBank 16S rRNA sequence database (Altschul et al. 1990).
The phylogenetic analysis was performed using the MEGAX v10.2.4 software (Kumar et al. 2018). The 16S rDNA sequence was aligned with other 16S rRNA gene sequences of representatives of the Acinetobacter genus obtained from the GenBank database using the ClustalW tool. The phylogenetic tree was constructed using the Neighbor-Joining algorithm with 1,000 bootstrap replications. The evolutionary distances were calculated using Kimura 2-parameter model (Kimura 1980).
The whole-genome sequence analysis
Whole-genome sequencing of the RB2-047 isolate was performed using the Illumina HiSeq 2000 technology by paired-end strategy (2 × 150 bp) in NovaSeq 6000 mode using S4 PE150 XP kit (Eurofins Genomics Europe Sequencing GmbH, Köln, Germany).
The raw reads were further processed by tools implemented in the Unipro UGENE v35.0 cross-platform bioinformatic software (Okonechnikov et al. 2012; Golosova et al. 2014). The quality of sequences was evaluated by the FastQC v0.11.9 tool, followed by sequence trimming using the Trimmomatic v0.39 tool with the minimum average quality threshold of 20. Filtered reads were de novo assembled using the SPAdes v3.12.0 tool and contigs shorter than 200 bp were excluded from further analyses.
The draft genome sequence was annotated by the RAST annotation server (Aziz et al. 2008; Overbeek et al. 2014; Brettin et al. 2015) and the results were checked using the BLASTN search tool (Altschul et al. 1990). The complete chromosome and plasmid sequences of the RB2-047 isolate were deposited in the GenBank database under the accession number JADDYQ000000000.
Bacterial genomic relatedness was examined by the average nucleotide identity (ANI) and in silico DNA-DNA hybridization (DDH) analysis. The ANI value was calculated to compare the genome sequences of the RB2-047 isolate to reference sequences of Acinetobacter spp. using the Kostas Lab average nucleotide identity online calculator with the cut-off value of 95% indicating the same species (http://enve-omics.ce.gatech.edu/ani/) (Goris et al. 2007; Rodriguez-R and Konstantinidis 2014). In silico DNA–DNA hybridization analysis was performed using the Type (Strain) Genome Server (TYGS) with the recommended species cut-off value of 70% (Meier-Kolthoff and Göker 2019). TYGS was also used to examine the genome BLAST distance phylogeny (GBDP) to determine the phylogenetic position of the RB2-047 isolate within the genus Acinetobacter.
Identification of metal tolerance and antibiotic resistance determinants
Genetic determinants of metal tolerance and antibiotic resistance of the RB2-047 isolate were predicted using RAST annotation server (Aziz et al. 2008; Overbeek et al. 2014; Brettin et al. 2015). The presence of antibiotic resistance genes were investigated using the ResFinder 4.1 tool (Zankari et al. 2017; Bortolaia et al. 2020) and Comprehensive Antibiotic Resistance Database (CARD) (Alock et al. 2023). All results were subsequently verified using the BLASTN search tool (Altschul et al. 1990).
In addition, in silico comparative genomic analysis of the RB2-047 isolate was performed using other A. johnsonii genome sequences obtained from the GenBank database, while strains were isolated from different environments. All A. johnsonii genomes were analyzed using RAST annotation server, ResFinder 4.1 tool and CARD.
The plasmid sequence analysis
The server mlplasmids v2.1.0 was used to identify plasmid related sequences using Acinetobacter baumanii as a model (https://sarredondo.shinyapps.io/mlplasmids/) (Arredondo-Alonso et al. 2018). Plasmid suspected sequences were examined using the ORF finder tool (https://www.ncbi.nlm.nih.gov/orffinder/), and open reading frames identified were analyzed using the BLASTP search tool (Altschul et al. 1990). In parallel, the plasmid suspected sequences were annotated using the Bakta tool (Schwenger et al. 2021).
The presence of toxin/antitoxin (TA) genes were determined using TADB 2.0, an online bacterial type II TA loci prediction tool (Xie et al. 2018). The list of toxins/antitoxin genes was completed based on the results of the TADB 2.0 annotation process. All TA genes were subsequently verified by the BLASTX search tool using NCBI Uni-ProtKB and Reference protein databases (Altschul et al. 1990).
Plasmid maps were constructed using ApE—A plasmid Editor v3.1.3 (Davis and Jorgensen 2022).
Statistical analysis of the data
Results were analyzed using statistical tools implemented in LibreOffice Calc v7.3.6.2. The accumulation of H33342 dye was evaluated by one-way ANOVA and a p-value of 0.05 was used as the cut-off for statistical significance. Difference between the H33342 dye accumulation in the absence/presence of efflux pump inhibitor CCCP was assessed by Student’s t-test and a p-value of 0.05 was used as the cut-off for statistical significance.
Results
Metal and antibiotic tolerance testing
The RB2-047 isolate showed the highest degree of tolerance towards lead (1,500 mg/L), and the lowest tolerance to zinc (250 mg/L). The addition of 50 µM CCCP to the culture medium led to observable decrease of MIC value for Ni and Zn but not for Pb and Cu in the agar-dilution testing of the efflux pump activity (Fig. 1a).
The RB2-047 isolate showed the highest resistance to ampicillin (MIC value of 400 mg/L) and the highest sensitivity to tetracycline (MIC value of 1 mg/L). The presence of CCCP significantly decreased tolerance of the RB2-047 isolate to kanamycin, chloramphenicol, tetracycline and ciprofloxacin (MIC reached half of the previous values) but tolerance to ampicillin was not affected by the inhibitor (Fig. 1b).
Measurement of the efflux pump activity using H33342 dye-accumulation assay
The highest level of H33342 accumulation was recorded at the beginning of the measurement, which decreased significantly over time (p < 0.05, one-way ANOVA). This finding could point to the activation of efflux pumps. The dye accumulation showed highly similar trend in the presence of CCCP, but the fluorescence values were significantly higher (p < 0.05, Student’s t-test), i.e., the activity of efflux pumps was inhibited and the efflux of H33342 from bacterial cells was reduced (Fig. 2).
The difference in H33342 accumulation in the presence and absence of CCCP was the highest after 30 min. Then, after 50 min of measurement, the HAR decreased and remained approximately at the same level until decline after 90 min (Fig. 3).
The 16S rRNA gene sequence analysis
The 16S rRNA gene sequence (1,418 bp) of the RB2-047 isolate showed a 99.51% similarity to the sequence of A. johnsonii strain ATCC 17,909 deposited in the GenBank database (MK184297).
The phylogenetic analysis based on the 16S rRNA gene sequences confirmed the closest relationship of the RB2-047 isolate to the A. johnsonii group (Fig. 4).
The whole-genome sequencing analysis
A total of 7,903,000 raw reads were obtained using whole-genome sequencing giving 700x coverage of the RB2-047 genome. These reads were assembled into the draft genome of 3,378,761 bp consisting of 518 contigs with N50 of 38,820 bp, a maximum contig length of 214,542 bp and the G + C content of 41.8%. In addition, two sequences were identified as complete circular plasmids.
The ANI value between the RB2-047 genome and closely related A. johnsonii DSMZ genome (NZ_BBTB00000000.1) was calculated as 95.86%, which is slightly above the threshold cut-off value of 95% for the same species classification according to Goris et al. (2007).
In silico DDH value between the RB2-047 isolate and its closest relative (A. johnsonii CIP 64.6, GenBank accession number NZ_APON00000000.1) reached the threshold value of 70% for the same species classification. However, the phylogenetic analysis based on the in silico DDH clearly confirmed the close relationship of the RB2-047 isolate with A. johnsonii species (Fig. 5).
Identification of metal and antibiotic resistance determinants
Genome annotation revealed the presence of various genes associated with antibiotic and/or metal tolerance of the RB2-047 isolate. All these genetic determinants were located on the bacterial chromosome (Table 1).
Most genes encode efflux transporter proteins belonging to the ATP-binding cassette (ABC) transporters. We identified genes encoding metal transport proteins such as corC or chrA/B, also multidrug transport protein genes were detected (e.g., brc, ydhE/norM, macA).
Copper tolerance is mediated by several cooper resistance genes (copBCD) and transcriptional regulators (cusS, cusR). In addition, we found genes of czc operon which ensure efflux of cobalt, zinc and cadmium cations out of the cell and genes encoding regulator transcription factors associated with the tolerance to mercury (merR) and cadmium and lead (cadR).
Only one antibiotic resistance gene encoding beta-lactamase OXA-211 with carbapenemase activity was found in the RB2-047 genome.
In silico comparative genomic analysis of the RB2-047 isolate
Five A. johnsonii genome sequences obtained from the GenBank database were used for in silico comparative genomic analysis of the RB2-047 isolate. These isolates were found in different environments. The genome of the RB2-047 isolate showed the highest number of protein-coding genes within the Acinetobacter collection, while the GC content or the number of tRNA genes were similar among the isolates. The number of antibiotic resistance genes was the highest in the clinical isolate XBB1 (10), followed by the Acsw19 isolate from sewage (5). Only one antibiotic resistance gene (blaOXA−211 or blaOXA−373) was found in other isolates (Table 2).
Copper resistance gene copB or copper resistance gene regulatory elements cusRS were present in all compared isolates except for A. johnsonii Acsw19. Similarly, copper or chromium resistance genes (copBCD or chrAB) were present in all compared bacteria except for A. johnsonii Acsw19 (Table 2).
We noticed the presence of specific beta-lactam resistance genes in all compared isolates. Only a single blaOXA−211 gene was found in the RB2-047 genome; as well as in the A. johnsonii M19 genome.
The RB2-047 isolate showed the presence of various efflux pump genetic determinants responsible for multi-resistance against a wide range of compounds. Similarly high number of efflux pump determinants was found in the clinical isolate A. johnsonii XBB1, also a significantly higher number of antibiotic resistance genes (e.g., aph(6)-Id, blaPER−1, blaOXA−58, tet(Y)) was confirmed.
The plasmid analysis
The genome sequences of the RB2-047 isolate included two complete circular plasmids with a size of 4.9 kb (RB2-047-1) and 2.3 kb (RB2-047-2) (Online Resource 1). Another uncomplete plasmid contig (NODE_73) was identified using the mlplasmid server v2.1.0. A detailed annotation of plasmid’s sequences is shown in Table 3.
No genetic determinants of metal tolerance or antibiotic resistance were detected in analyzed plasmids. All plasmid-like sequences showed GC content lower than rest of the RB2-047 genome and encoded genes necessary for plasmid replication and maintenance only.
Discussion
The present study follows our previous work of Timkova et al. (2020), which demonstrated a positive correlation between increased ampicillin-chloramphenicol and nickel-copper tolerance as well as a linkage between increased tetracycline-kanamycin and zinc-lead tolerance in the bacterial community from the mine subsurface environment (Rozália Gold Mine in Hodruša-Hámre village, Slovakia). The RB2-047 strain isolated from the same environment was identified as Acinetobacter johnsonii by polyphasic approach—a combination of MALDI-TOF MS (Nosáľová et al. 2021) as well as 16S rRNA gene and whole-genome sequence analysis (this study). It showed multiple antibiotic resistance (to ampicillin, kanamycin, chloramphenicol, tetracycline and ciprofloxacin) and high tolerance to several heavy metals (Zn, Ni, Cu and Pb). The RB2-047 isolate showed significantly higher MIC values of selected metals compared to the A. lwoffii strain ZS207 isolated from former gold and arsenic mine, where MIC observed reached a value of 114 mg/L for copper, 106 mg/L for Ni and 92 mg/L for Zn (Walter et al. 2020).
Most of the genes associated with heavy-metal resistance in the BR2-047 isolate encoded efflux transporters. The high efflux pump activity was also confirmed by the H33342 accumulation test in the presence/absence of the efflux pump inhibitor CCCP. In addition, lower MIC for Ni and Zn in the presence of the inhibitor in the agar-dilution test confirmed the important role of efflux pumps in the adaptation of bacterium to the presence of these heavy metals in the environment. On the other hand, the efflux activity appears to be less efficient in the development of Cu and Pb tolerance or it is possible that the activity of the efflux pumps transporting Cu and Pb out of the cell was not affected by CCCP. The high Pb tolerance of the RB2-047 isolate could be provided by non-specific efflux pumps (e.g., metal transporting ATPase) or other mechanisms, as we did not detect any genes in the RB2-047 genome that could participate in the development of Pb tolerance (e.g., pbr operon). Very similar genetic determinants were also found in the Acinetobacter species isolated from a brown mud created during aluminum production near Ziar nad Hronom (Slovakia), and the isolate showed a similarly high tolerance to the same metals (Petrová et al. 2023). Similar findings reported Furlan et al. (2019) in multi-drug resistant Acinetobacter seifertii obtained from soil of a corn crop field. According to in silico comparative genomic analysis, Acinetobacter johnsonii isolates found in environments with high metal (RB2-047 and XBB1) showed similar numbers and types of efflux pump genes. This fact points to the importance of the efflux mechanism in the adaptation of bacteria to extreme conditions (this study).
Generally, efflux activity is one of the fastest and most effective mechanism in the bacterial repertoire of stress responses and many of them have also been found among Acinetobacter spp. (Hassan et al. 2013; Alcalde-Rico et al. 2016; Kornelsen and Kumar 2021). For the first time, the genes encoding proteins potentially involved in the efflux, transport or reduction of antimicrobials, as well as heavy metals, were identified in the genome of A. johnsonii originated from creosote-polluted groundwater in Fredensborg (Denmark) (Kaas et al. 2017). Multidrug resistant A. johnsonii strains have been isolated from a variety of environments, e.g., from the Ba River and the Tiaozi River in China (Zhao et al. 2014; Jia et al. 2021), or from antimony mine tailings in Nandan County (China) (Gu et al. 2020).
Multi-antibiotic resistance of Acinetobacter spp. has been recorded mainly in clinical setting but have also been well documented in environmental isolates (including A. johnsonii) (Eze et al. 2022; Hubeny et al. 2022; Mapipa et al. 2022; Kisková et al. 2023). The natural resistance to various antibiotic compounds and the ability to develop a new antibiotic resistance under selection pressure is the most remarkable characteristic of Acinetobacter species (Kittinger et al. 2018; Furlan et al. 2019; Din et al. 2021). Our results showed that efflux pumps also play an important role in the development of multi-antibiotic resistance in environmental isolates of Acinetobacter johnsonii species. The effect of the CCCP inhibitor on the efflux activity was less apparent in the presence of ampicillin in the culture medium. This finding suggests that other mechanisms are also significantly involved in the development of ampicillin resistance, e.g., the presence of beta-lactamases, in the RB2-047 isolate.
Analysis of the RB2-047 genome revealed the presence of only one chromosomally located antibiotic resistance gene blaOXA-211 belonging to the group of beta-lactamase genes. This gene appears to be found only in the genus Acinetobacter according to BLASTN analysis. Recently, more than 210 beta-lactamases (including several types of oxacillinases, OXA enzymes) have been identified in the genus Acinetobacter (Zhao and Hu 2012; Hubeny et al. 2022; Nogbou et al. 2022). Also, a variety of beta-lactamase genes were identified in A. johnsonii (Espinal and Roca 2011; Montaña et al. 2016; Baraka et al. 2021). Zhao and Hu (2012) demonstrated that the spread of Acinetobacter oxacillinases into other species is more limited than other beta-lactamase genes and they enables Acinetobacter spp. to adapt easily to newly developed beta-lactam antibiotics. The identification of beta-lactamase genes and other antibiotic resistance determinants among Acinetobacter species demonstrates their potential to acquire and stably maintain resistance determinants in their genomes (Montaña et al. 2016). Beta-lactamase genes appear to be linked to a similar profile of heavy-metal tolerance determinants as shown by the RB2-047 isolate (Furlan et al. 2019; Petrová et al. 2023). In silico comparative genomic analysis confirmed these findings also in other environmental Acinetobacter johnsonii species (this study).
Environmental isolates M19, IC001, LXL C1 and RB2-047 showed a significantly lower number of antibiotic resistance genes compared to the clinical isolate XBB1 or the Acw19 isolate from sewage, i.e., from the environment with a much higher selection pressure of antibiotic. Almost complete absence of antibiotic resistance genes in the RB2-047 genome could be explained by the isolation of the bacterial community in gold mine environment and the absence of selection pressure of antibiotic pollution.
The members of the Acinetobacter genus frequently possess multiple plasmids which are the key players in the adaptability of Acinetobacter spp. to various living conditions in the environment and in the clinical setting (Zong and Zhang 2013; Tang et al. 2020; Maslova et al. 2022). In our study, plasmid-related contigs represented just a minor fraction of the RB2-047 genome (less than 2.5%) as identified by mlplasmid server v2.1.0. We can speculate that the low number of plasmids in our isolate is the result of the spatial isolation of the gold mine environment. On the other hand, a population of 10 plasmids with genes related to the high level of tolerance to arsenic and other heavy metals were found in the environmental strain of Acinetobacter lwoffii obtained from a similar environment (former gold and arsenic mine in Poland) (Walter et al. 2020). Both RB2-047-1 plasmid and NODE_73 contig encode one potential TA system belonging to the type II toxin/antitoxin system RelE/ParE family toxin. Generally, RelE/ParE TA systems are linked to environmental and nutrient stress responses (LeRoux et al. 2020), which is supported by the evidence of RelE/ParE family of TA systems in plasmids of Enterobacteriaceae family, predominantly in E. coli and Salmonella sp., where they act as major vectors of beta-lactam, aminoglycoside and quinolone antibiotic resistance (Kamruzzaman and Iredell 2019). Although these systems were also found in various members of the genus Acinetobacter (Jurenaite et al. 2013; Walter et al. 2020; Alattraqchi et al. 2021), recent study appears to provide the first evidence of the RelE/ParE family in A. johnsonii. Nevertheless, it is not likely that such a small plasmid (≤ 5 kb) participates in the adaptation of A. johnsonii RB2-047 to the environmental stress.
Metal/formaldehyde-sensitive transcriptional repressor (RcnR-like protein clustered with metal resistance protein CzcD) was detected in the NODE_73 sequence. Repressor is involved in a metal tolerance in many bacteria; it mainly regulates the transcription of rcnA gene encoding the nickel and cobalt efflux protein (Denby et al. 2016; Mindlin et al. 2016). However, this gene was not found in the RB2-047 genome. Moreover, a metal/formaldehyde-sensitive repressor was found to regulate the IncP1-type plasmid conjugation (Zoolkefli et al. 2021).
It is accepted that metal-tolerant bacteria have a potential application in bioremediation of environments contaminated by heavy metals and organic pollutants (Ghaima et al. 2018). Two decades ago, a successful experiment was performed using A. johnsonii isolated from a wastewater treatment plant in UK that was able to accumulate La3+ from solution via precipitation of cell-bounded LaPO4 (Boswell et al. 2001). Bejestani et al. (2013) described the Acinetobacter sp. isolated from effluent samples collected in Tehran (Iran), which was not only tolerant to zinc, copper, chromium, and mercury, but also had the extensive capability to remove zinc from medium. Several other strains of Acinetobacter spp. have been successfully used in the bioremediation of heavy metals such as chromium, nickel, copper, zinc, lead, cadmium and uranium (Bhattacharya and Gupta 2013; Irawati et al. 2015; Li et al. 2018). Acinetobacter species have also been shown to be effective in oxidizing toxic As(III) to As(V) which represents a potential detoxification mechanism because it generates a less toxic and less mobile form of arsenate (Nagvenkar and Ramaiah 2009). According to recent knowledge about the multi-metal resistance and genetic features, the RB-047 strain showed a high potential for application in the bioremediation of heavy metal polluted environments, however, further investigation is needed in this area.
Conclusion
Our study confirmed the importance of efflux activity in response to environmental stress in bacteria. We have identified several efflux pump and metal resistance genes located on the bacterial chromosome of the RB2-047 isolate. The strain showed the presence of only one chromosomally located antibiotic resistance gene blaOXA-211. Generally, environmental isolates showed significantly lower number of antibiotic resistance genes compared to the clinical isolate. This fact could lead to the hypothesis, that antibiotic tolerance in clinical bacteria is encoded mainly by specific antibiotic resistance determinants, while antibiotic and metal tolerance in environmental isolates may be the result mainly of the non-specific efflux pump activity.
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Acknowledgements
We thank Professor Sedláková-Kaduková from the University of Ss. Cyril and Methodius in Trnava (Slovakia) for arranging the ore sampling for the purposes of this study. The work was financially supported by The Scientific Grant Agency of the Ministry of Education, Science, Research and Sport of the Slovak Republic and the Slovak Academy of Sciences VEGA Grant No. 1/0229/17, Slovak Research and Development Agency Grant Nos. APVV-16-0171 and SK-PL-18-0012 and Pavol Jozef Šafárik University in Košice Grant No. VVGS-PF-2019-1044.
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Open access funding provided by The Ministry of Education, Science, Research and Sport of the Slovak Republic in cooperation with Centre for Scientific and Technical Information of the Slovak Republic.
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IT performed sample collection, experiments, data analysis, wrote the main manuscript text; LM performed sample collection and wrote the main manuscript text; LN performed bacteria isolation and identification; MK was responsible for the material and technical support of the experiments; ZL wrote the main manuscript text; NP wrote the main manuscript text; PP He was responsible for leading the research team and planning and execution of the research; JK performed data analysis, prepared figures, was responsible for the final editing of the article, its submission for publication and correspondence with the editors of the journal. All authors reviewed the manuscript.
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Timková, I., Maliničová, L., Nosáľová, L. et al. Genomic insights into the adaptation of Acinetobacter johnsonii RB2-047 to the heavy metal-contaminated subsurface mine environment. Biometals 37, 371–387 (2024). https://doi.org/10.1007/s10534-023-00555-0
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DOI: https://doi.org/10.1007/s10534-023-00555-0